Quantitative genetics
Quantitative genetics is a branch of population genetics that deals with phenotypes that vary continuously (in characters such as height or mass)—as opposed to discretely identifiable phenotypes and geneproducts (such as eyecolour, or the presence of a particular biochemical).
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Both branches use the frequencies of different alleles of a gene in breeding populations (gamodemes), and combine them with concepts from simple Mendelian inheritance to analyze inheritance patterns across generations and descendant lines. While population genetics can focus on particular genes and their subsequent metabolic products, quantitative genetics focuses more on the outward phenotypes, and makes summaries only of the underlying genetics.
Due to the continuous distribution of phenotypic values, quantitative genetics must employ many other statistical methods (such as the effect size, the mean and the variance) to link phenotypes (attributes) to genotypes. Some phenotypes may be analyzed either as discrete categories or as continuous phenotypes, depending on the definition of cutoff points, or on the metric used to quantify them.[1]^{:27–69} Mendel himself had to discuss this matter in his famous paper,[2] especially with respect to his peas attribute tall/dwarf, which actually was "length of stem".[3][4] Analysis of quantitative trait loci, or QTL,[5][6][7] is a more recent addition to quantitative genetics, linking it more directly to molecular genetics.
Gene effects
In diploid organisms, the average genotypic "value" (locus value) may be defined by the allele "effect" together with a dominance effect, and also by how genes interact with genes at other loci (epistasis). The founder of quantitative genetics  Sir Ronald Fisher  perceived much of this when he proposed the first mathematics of this branch of genetics.[8]
Being a statistician, he defined the gene effects as deviations from a central value—enabling the use of statistical concepts such as mean and variance, which use this idea.[9] The central value he chose for the gene was the midpoint between the two opposing homozygotes at the one locus. The deviation from there to the "greater" homozygous genotype can be named "+a" ; and therefore it is "a" from that same midpoint to the "lesser" homozygote genotype. This is the "allele" effect mentioned above. The heterozygote deviation from the same midpoint can be named "d", this being the "dominance" effect referred to above.[10] The diagram depicts the idea. However, in reality we measure phenotypes, and the figure also shows how observed phenotypes relate to the gene effects. Formal definitions of these effects recognize this phenotypic focus.[11][12] Epistasis has been approached statistically as interaction (i.e., inconsistencies),[13] but epigenetics suggests a new approach may be needed.
If 0<d<a, the dominance is regarded as partial or incomplete—while d=a indicates full or classical dominance. Previously, d>a was known as "overdominance".[14]
Mendel's pea attribute "length of stem" provides us with a good example.[3] Mendel stated that the tall truebreeding parents ranged from 6–7 feet in stem length (183 – 213 cm), giving a median of 198 cm (= P1). The short parents ranged from 0.75–1.25 feet in stem length (23 – 46 cm), with a rounded median of 34 cm (= P2). Their hybrid ranged from 6–7.5 feet in length (183–229 cm), with a median of 206 cm (= F1). The mean of P1 and P2 is 116 cm, this being the phenotypic value of the homozygotes midpoint (mp). The allele affect (a) is [P1mp] = 82 cm = [P2mp]. The dominance effect (d) is [F1mp] = 90 cm.[15] This historical example illustrates clearly how phenotype values and gene effects are linked.
Allele and genotype frequencies
To obtain means, variances and other statistics, both quantities and their occurrences are required. The gene effects (above) provide the framework for quantities: and the frequencies of the contrasting alleles in the fertilization gametepool provide the information on occurrences.
Commonly, the frequency of the allele causing "more" in the phenotype (including dominance) is given the symbol p, while the frequency of the contrasting allele is q. An initial assumption made when establishing the algebra was that the parental population was infinite and random mating, which was made simply to facilitate the derivation. The subsequent mathematical development also implied that the frequency distribution within the effective gametepool was uniform: there were no local perturbations where p and q varied. Looking at the diagrammatic analysis of sexual reproduction, this is the same as declaring that p_{P} = p_{g} = p; and similarly for q.[14] This mating system, dependent upon these assumptions, became known as "panmixia".
Panmixia rarely actually occurs in nature,[16]^{:152–180}[17] as gamete distribution may be limited, for example by dispersal restrictions or by behaviour, or by chance sampling (those local perturbations mentioned above). It is wellknown that there is a huge wastage of gametes in Nature, which is why the diagram depicts a potential gametepool separately to the actual gametepool. Only the latter sets the definitive frequencies for the zygotes: this is the true "gamodeme" ("gamo" refers to the gametes, and "deme" derives from Greek for "population"). But, under Fisher's assumptions, the gamodeme can be effectively extended back to the potential gametepool, and even back to the parental basepopulation (the "source" population). The random sampling arising when small "actual" gametepools are sampled from a large "potential" gametepool is known as genetic drift, and is considered subsequently.
While panmixia may not be widely extant, the potential for it does occur, although it may be only ephemeral because of those local perturbations. It has been shown, for example, that the F2 derived from random fertilization of F1 individuals (an allogamous F2), following hybridization, is an origin of a new potentially panmictic population.[18][19] It has also been shown that if panmictic random fertilization occurred continually, it would maintain the same allele and genotype frequencies across each successive panmictic sexual generation—this being the Hardy Weinberg equilibrium.[13]^{:34–39}[20][21][22][23] However, as soon as genetic drift was initiated by local random sampling of gametes, the equilibrium would cease.
Random fertilization
Male and female gametes within the actual fertilizing pool are considered usually to have the same frequencies for their corresponding alleles. (Exceptions have been considered.) This means that when p male gametes carrying the A allele randomly fertilize p female gametes carrying that same allele, the resulting zygote has genotype AA, and, under random fertilization, the combination occurs with a frequency of p x p (= p^{2}). Similarly, the zygote aa occurs with a frequency of q^{2}. Heterozygotes (Aa) can arise in two ways: when p male (A allele) randomly fertilize q female (a allele) gametes, and vice versa. The resulting frequency for the heterozygous zygotes is thus 2pq.[13]^{:32} Notice that such a population is never more than half heterozygous, this maximum occurring when p=q= 0.5.
In summary then, under random fertilization, the zygote (genotype) frequencies are the quadratic expansion of the gametic (allelic) frequencies: . (The "=1" states that the frequencies are in fraction form, not percentages; and that there are no omissions within the framework proposed.)
Notice that "random fertilization" and "panmixia" are not synonyms.
Mendel's research cross – a contrast
Mendel's pea experiments were constructed by establishing truebreeding parents with "opposite" phenotypes for each attribute.[3] This meant that each opposite parent was homozygous for its respective allele only. In our example, "tall vs dwarf", the tall parent would be genotype TT with p = 1 (and q = 0); while the dwarf parent would be genotype tt with q = 1 (and p = 0). After controlled crossing, their hybrid is Tt, with p = q = ½. However, the frequency of this heterozygote = 1, because this is the F1 of an artificial cross: it has not arisen through random fertilization.[24] The F2 generation was produced by natural selfpollination of the F1 (with monitoring against insect contamination), resulting in p = q = ½ being maintained. Such an F2 is said to be "autogamous". However, the genotype frequencies (0.25 TT, 0.5 Tt, 0.25 tt) have arisen through a mating system very different from random fertilization, and therefore the use of the quadratic expansion has been avoided. The numerical values obtained were the same as those for random fertilization only because this is the special case of having originally crossed homozygous opposite parents.[25] We can notice that, because of the dominance of T [frequency (0.25 + 0.5)] over tt [frequency 0.25], the 3:1 ratio is still obtained.
A cross such as Mendel's, where truebreeding (largely homozygous) opposite parents are crossed in a controlled way to produce an F1, is a special case of hybrid structure. The F1 is often regarded as "entirely heterozygous" for the gene under consideration. However, this is an oversimplification and does not apply generally—for example when individual parents are not homozygous, or when populations interhybridise to form hybrid swarms.[24] The general properties of intraspecies hybrids (F1) and F2 (both "autogamous" and "allogamous") are considered in a later section.
Self fertilization – an alternative
Having noticed that the pea is naturally selfpollinated, we cannot continue to use it as an example for illustrating random fertilization properties. Selffertilization ("selfing") is a major alternative to random fertilization, especially within Plants. Most of the Earth's cereals are naturally selfpollinated (rice, wheat, barley, for example), as well as the pulses. Considering the millions of individuals of each of these on Earth at any time, it's obvious that selffertilization is at least as significant as random fertilization. Selffertilization is the most intensive form of inbreeding, which arises whenever there is restricted independence in the genetical origins of gametes. Such reduction in independence arises if parents are already related, and/or from genetic drift or other spatial restrictions on gamete dispersal. Path analysis demonstrates that these are tantamount to the same thing.[26][27] Arising from this background, the inbreeding coefficient (often symbolized as F or f) quantifies the effect of inbreeding from whatever cause. There are several formal definitions of f, and some of these are considered in later sections. For the present, note that for a longterm selffertilized species f = 1. Natural selffertilized populations are not single " pure lines ", however, but mixtures of such lines. This becomes particularly obvious when considering more than one gene at a time. Therefore, allele frequencies (p and q) other than 1 or 0 are still relevant in these cases (refer back to the Mendel Cross section). The genotype frequencies take a different form, however.
In general, the genotype frequencies become for AA and for Aa and for aa.[13]^{:65}
Notice that the frequency of the heterozygote declines in proportion to f. When f = 1, these three frequencies become respectively p, 0 and q Conversely, when f = 0, they reduce to the randomfertilization quadratic expansion shown previously.
Population mean
The population mean shifts the central reference point from the homozygote midpoint (mp) to the mean of a sexually reproduced population. This is important not only to relocate the focus into the natural world, but also to use a measure of central tendency used by Statistics/Biometrics. In particular, the square of this mean is the Correction Factor, which is used to obtain the genotypic variances later.[9]
For each genotype in turn, its allele effect is multiplied by its genotype frequency; and the products are accumulated across all genotypes in the model. Some algebraic simplification usually follows to reach a succinct result.
The mean after random fertilization
The contribution of AA is , that of Aa is , and that of aa is . Gathering together the two a terms and accumulating over all, the result is: . Simplification is achieved by noting that , and by recalling that , thereby reducing the righthand term to .
The succinct result is therefore .[14] ^{:110}
This defines the population mean as an "offset" from the homozygote midpoint (recall a and d are defined as deviations from that midpoint). The Figure depicts G across all values of p for several values of d, including one case of slight overdominance. Notice that G is often negative, thereby emphasizing that it is itself a deviation (from mp).
Finally, to obtain the actual Population Mean in "phenotypic space", the midpoint value is added to this offset: .
An example arises from data on ear length in maize.[28]^{:103} Assuming for now that one gene only is represented, a = 5.45 cm, d = 0.12 cm [virtually "0", really], mp = 12.05 cm. Further assuming that p = 0.6 and q = 0.4 in this example population, then:
G = 5.45 (0.6 − 0.4) + (0.48)0.12 = 1.15 cm (rounded); and
P = 1.15 + 12.05 = 13.20 cm (rounded).
The mean after longterm selffertilization
The contribution of AA is , while that of aa is . [See above for the frequencies.] Gathering these two a terms together leads to an immediately very simple final result:
. As before, .
Often, "G_{(f=1)}" is abbreviated to "G_{1}".
Mendel's peas can provide us with the allele effects and midpoint (see previously); and a mixed selfpollinated population with p = 0.6 and q = 0.4 provides example frequencies. Thus:
G_{(f=1)} = 82 (0.6 − .04) = 59.6 cm (rounded); and
P_{(f=1)} = 59.6 + 116 = 175.6 cm (rounded).
The mean – generalized fertilization
A general formula incorporates the inbreeding coefficient f, and can then accommodate any situation. The procedure is exactly the same as before, using the weighted genotype frequencies given earlier. After translation into our symbols, and further rearrangement:[13] ^{:77–78}
Here, G_{0} is G, which was given earlier. (Often, when dealing with inbreeding, "G_{0}" is preferred to "G".)
Supposing that the maize example [given earlier] had been constrained on a holme (a narrow riparian meadow), and had partial inbreeding to the extent of f = 0.25, then, using the third version (above) of G_{f}:
G_{0.25} = 1.15 − 0.25 (0.48) 0.12 = 1.136 cm (rounded), with P_{0.25} = 13.194 cm (rounded).
There is hardly any effect from inbreeding in this example, which arises because there was virtually no dominance in this attribute (d → 0). Examination of all three versions of G_{f} reveals that this would lead to trivial change in the Population mean. Where dominance was notable, however, there would be considerable change.
Genetic drift
Genetic drift was introduced when discussing the likelihood of panmixia being widely extant as a natural fertilization pattern. [See section on Allele and Genotype frequencies.] Here the sampling of gametes from the potential gamodeme is discussed in more detail. The sampling involves random fertilization between pairs of random gametes, each of which may contain either an A or an a allele. The sampling is therefore binomial sampling.[13]^{:382–395}[14]^{:49–63}[29]^{:35}[30]^{:55} Each sampling "packet" involves 2N alleles, and produces N zygotes (a "progeny" or a "line") as a result. During the course of the reproductive period, this sampling is repeated over and over, so that the final result is a mixture of sample progenies. The result is dispersed random fertilization These events, and the overall endresult, are examined here with an illustrative example.
The "base" allele frequencies of the example are those of the potential gamodeme: the frequency of A is p_{g} = 0.75, while the frequency of a is q_{g} = 0.25. [White label "1" in the diagram.] Five example actual gamodemes are binomially sampled out of this base (s = the number of samples = 5), and each sample is designated with an "index" k: with k = 1 .... s sequentially. (These are the sampling "packets" referred to in the previous paragraph.) The number of gametes involved in fertilization varies from sample to sample, and is given as 2N_{k} [at white label "2" in the diagram]. The total (Σ) number of gametes sampled overall is 52 [white label "3" in the diagram]. Because each sample has its own size, weights are needed to obtain averages (and other statistics) when obtaining the overall results. These are , and are given at white label "4" in the diagram.
The sample gamodemes – genetic drift
Following completion of these five binomial sampling events, the resultant actual gamodemes each contained different allele frequencies—(p_{k} and q_{k}). [These are given at white label "5" in the diagram.] This outcome is actually the genetic drift itself. Notice that two samples (k = 1 and 5) happen to have the same frequencies as the base (potential) gamodeme. Another (k = 3) happens to have the p and q "reversed". Sample (k = 2) happens to be an "extreme" case, with p_{k} = 0.9 and q_{k} = 0.1 ; while the remaining sample (k = 4) is "middle of the range" in its allele frequencies. All of these results have arisen only by "chance", through binomial sampling. Having occurred, however, they set in place all the downstream properties of the progenies.
Because sampling involves chance, the probabilities ( ∫_{k} ) of obtaining each of these samples become of interest. These binomial probabilities depend on the starting frequencies (p_{g} and q_{g}) and the sample size (2N_{k}). They are tedious to obtain,[13]^{:382–395}[30]^{:55} but are of considerable interest. [See white label "6" in the diagram.] The two samples (k = 1, 5), with the allele frequencies the same as in the potential gamodeme, had higher "chances" of occurring than the other samples. Their binomial probabilities did differ, however, because of their different sample sizes (2N_{k}). The "reversal" sample (k = 3) had a very low Probability of occurring, confirming perhaps what might be expected. The "extreme" allele frequency gamodeme (k = 2) was not "rare", however; and the "middle of the range" sample (k=4) was rare. These same Probabilities apply also to the progeny of these fertilizations.
Here, some summarizing can begin. The overall allele frequencies in the progenies bulk are supplied by weighted averages of the appropriate frequencies of the individual samples. That is: and . (Notice that k is replaced by • for the overall result—a common practice.)[9] The results for the example are p_{•} = 0.631 and q_{•} = 0.369 [black label "5" in the diagram]. These values are quite different to the starting ones (p_{g} and q_{g}) [white label "1"]. The sample allele frequencies also have variance as well as an average. This has been obtained using the sum of squares (SS) method [31] [See to the right of black label "5" in the diagram]. [Further discussion on this variance occurs in the section below on Extensive genetic drift.]
The progeny lines – dispersion
The genotype frequencies of the five sample progenies are obtained from the usual quadratic expansion of their respective allele frequencies (random fertilization). The results are given at the diagram's white label "7" for the homozygotes, and at white label "8" for the heterozygotes. Rearrangement in this manner prepares the way for monitoring inbreeding levels. This can be done either by examining the level of total homozygosis [(p^{2}_{k} + q^{2}_{k}) = (1 − 2p_{k}q_{k})] , or by examining the level of heterozygosis (2p_{k}q_{k}), as they are complementary.[32] Notice that samples k= 1, 3, 5 all had the same level of heterozygosis, despite one being the "mirror image" of the others with respect to allele frequencies. The "extreme" allelefrequency case (k= 2) had the most homozygosis (least heterozygosis) of any sample. The "middle of the range" case (k= 4) had the least homozygosity (most heterozygosity): they were each equal at 0.50, in fact.
The overall summary can continue by obtaining the weighted average of the respective genotype frequencies for the progeny bulk. Thus, for AA, it is , for Aa , it is and for aa, it is . The example results are given at black label "7" for the homozygotes, and at black label "8" for the heterozygote. Note that the heterozygosity mean is 0.3588, which the next section uses to examine inbreeding resulting from this genetic drift.
The next focus of interest is the dispersion itself, which refers to the "spreading apart" of the progenies' population means. These are obtained as [see section on the Population mean], for each sample progeny in turn, using the example gene effects given at white label "9" in the diagram. Then, each is obtained also [at white label "10" in the diagram]. Notice that the "best" line (k = 2) had the highest allele frequency for the "more" allele (A) (it also had the highest level of homozygosity). The worst progeny (k = 3) had the highest frequency for the "less" allele (a), which accounted for its poor performance. This "poor" line was less homozygous than the "best" line; and it shared the same level of homozygosity, in fact, as the two secondbest lines (k = 1, 5). The progeny line with both the "more" and the "less" alleles present in equal frequency (k = 4) had a mean below the overall average (see next paragraph), and had the lowest level of homozygosity. These results reveal the fact that the alleles most prevalent in the "genepool" (also called the "germplasm") determine performance, not the level of homozygosity per se. Binomial sampling alone effects this dispersion.
The overall summary can now be concluded by obtaining and . The example result for P_{•} is 36.94 (black label "10" in the diagram). This later is used to quantify inbreeding depression overall, from the gamete sampling. [See the next section.] However, recall that some "nondepressed" progeny means have been identified already (k = 1, 2, 5). This is an enigma of inbreeding—while there may be "depression" overall, there are usually superior lines among the gamodeme samplings.
The equivalent postdispersion panmictic – inbreeding
Included in the overall summary were the average allele frequencies in the mixture of progeny lines (p_{•} and q_{•}). These can now be used to construct a hypothetical panmictic equivalent.[13]^{:382–395}[14]^{:49–63}[29]^{:35} This can be regarded as a "reference" to assess the changes wrought by the gamete sampling. The example appends such a panmictic to the right of the Diagram. The frequency of AA is therefore (p_{•})^{2} = 0.3979. This is less than that found in the dispersed bulk (0.4513 at black label "7"). Similarly, for aa, (q_{•})^{2} = 0.1303—again less than the equivalent in the progenies bulk (0.1898). Clearly, genetic drift has increased the overall level of homozygosis by the amount (0.6411 − 0.5342) = 0.1069. In a complementary approach, the heterozygosity could be used instead. The panmictic equivalent for Aa is 2 p_{•} q_{•} = 0.4658, which is higher than that in the sampled bulk (0.3588) [black label "8"]. The sampling has caused the heterozygosity to decrease by 0.1070, which differs trivially from the earlier estimate because of rounding errors.
The inbreeding coefficient (f) was introduced in the early section on Self Fertilization. Here, a formal definition of it is considered: f is the probability that two "same" alleles (that is A and A, or a and a), which fertilize together are of common ancestral origin—or (more formally) f is the probability that two homologous alleles are autozygous.[14][27] Consider any random gamete in the potential gamodeme that has its syngamy partner restricted by binomial sampling. The probability that that second gamete is homologous autozygous to the first is 1/(2N), the reciprocal of the gamodeme size. For the five example progenies, these quantities are 0.1, 0.0833, 0.1, 0.0833 and 0.125 respectively, and their weighted average is 0.0961. This is the inbreeding coefficient of the example progenies bulk, provided it is unbiased with respect to the full binomial distribution. An example based upon s = 5 is likely to be biased, however, when compared to an appropriate entire binomial distribution based upon the sample number (s) approaching infinity (s → ∞). Another derived definition of f for the full Distribution is that f also equals the rise in homozygosity, which equals the fall in heterozygosity.[33] For the example, these frequency changes are 0.1069 and 0.1070, respectively. This result is different to the above, indicating that bias with respect to the full underlying distribution is present in the example. For the example itself, these latter values are the better ones to use, namely f_{•} = 0.10695.
The population mean of the equivalent panmictic is found as [a (p_{•}q_{•}) + 2 p_{•}q_{•} d] + mp. Using the example gene effects (white label "9" in the diagram), this mean is 37.87. The equivalent mean in the dispersed bulk is 36.94 (black label "10"), which is depressed by the amount 0.93. This is the inbreeding depression from this Genetic Drift. However, as noted previously, three progenies were not depressed (k = 1, 2, 5), and had means even greater than that of the panmictic equivalent. These are the lines a plant breeder looks for in a line selection programme.[34]
Extensive binomial sampling – is panmixia restored?
If the number of binomial samples is large (s → ∞ ), then p_{•} → p_{g} and q_{•} → q_{g}. It might be queried whether panmixia would effectively reappear under these circumstances. However, the sampling of allele frequencies has still occurred, with the result that σ^{2}_{p, q} ≠ 0.[35] In fact, as s → ∞, the , which is the variance of the whole binomial distribution.[13]^{:382–395}[14]^{:49–63} Furthermore, the "Wahlund equations" show that the progenybulk homozygote frequencies can be obtained as the sums of their respective average values (p^{2}_{•} or q^{2}_{•}) plus σ^{2}_{p, q}.[13]^{:382–395} Likewise, the bulk heterozygote frequency is (2 p_{•} q_{•}) minus twice the σ^{2}_{p, q}. The variance arising from the binomial sampling is conspicuously present. Thus, even when s → ∞, the progenybulk genotype frequencies still reveal increased homozygosis, and decreased heterozygosis, there is still dispersion of progeny means, and still inbreeding and inbreeding depression. That is, panmixia is not reattained once lost because of genetic drift (binomial sampling). However, a new potential panmixia can be initiated via an allogamous F2 following hybridization.[36]
Continued genetic drift – increased dispersion and inbreeding
Previous discussion on genetic drift examined just one cycle (generation) of the process. When the sampling continues over successive generations, conspicuous changes occur in σ^{2}_{p, q} and f. Furthermore, another "index" is needed to keep track of "time": t = 1 .... y where y = the number of "years" (generations) considered. The methodology often is to add the current binomial increment (Δ = "de novo") to what has occurred previously.[13] The entire Binomial Distribution is examined here. [There is no further benefit to be had from an abbreviated example.]
Dispersion via σ^{2}_{p,q}
Earlier this variance (σ ^{2}_{p,q} [35]) was seen to be:
With the extension over time, this is also the result of the first cycle, and so is (for brevity). At cycle 2, this variance is generated yet again—this time becoming the de novo variance ()—and accumulates to what was present already—the "carryover" variance. The second cycle variance () is the weighted sum of these two components, the weights being for the de novo and = for the"carryover".
Thus,

( 1)
The extension to generalize to any time t , after considerable simplification, becomes:[13]^{:328}

( 2)
Because it was this variation in allele frequencies that caused the "spreading apart" of the progenies' means (dispersion), the change in σ^{2}_{t} over the generations indicates the change in the level of the dispersion.
Dispersion via f
The method for examining the inbreeding coefficient is similar to that used for σ ^{2}_{p,q}. The same weights as before are used respectively for de novo f ( Δ f ) [recall this is 1/(2N) ] and carryover f. Therefore, , which is similar to Equation (1) in the previous subsection.
In general, after rearrangement,[13]
The graphs to the left show levels of inbreeding over twenty generations arising from genetic drift for various actual gamodeme sizes (2N).
Still further rearrangements of this general equation reveal some interesting relationships.
(A) After some simplification,[13] . The lefthand side is the difference between the current and previous levels of inbreeding: the change in inbreeding (δf_{t}). Notice, that this change in inbreeding (δf_{t}) is equal to the de novo inbreeding (Δf) only for the first cycle—when f_{t1} is zero.
(B) An item of note is the (1f_{t1}), which is an "index of noninbreeding". It is known as the panmictic index.[13][14] .
(C) Further useful relationships emerge involving the panmictic index.[13][14]
.
(D) A key link emerges between σ ^{2}_{p,q} and f. Firstly [13]....
Secondly, presuming that f_{0} = 0, the righthand side of this equation reduces to the section within the brackets of Equation (2) at the end of the last subsection. That is, if initially there is no inbreeding, ! Furthermore, if this then is rearranged, . That is, when initial inbreeding is zero, the two principal viewpoints of binomial gamete sampling (genetic drift) are directly interconvertible.
Selfing within random fertilization
It is easy to overlook that random fertilization includes selffertilization. Sewall Wright showed that a proportion 1/N of random fertilizations is actually self fertilization , with the remainder (N1)/N being cross fertilization . Following path analysis and simplification, the new view random fertilization inbreeding was found to be: .[27][37] Upon further rearrangement, the earlier results from the binomial sampling were confirmed, along with some new arrangements. Two of these were potentially very useful, namely: (A) ; and (B) .
The recognition that selfing may intrinsically be a part of random fertilization leads to some issues about the use of the previous random fertilization 'inbreeding coefficient'. Clearly, then, it is inappropriate for any species incapable of self fertilization, which includes plants with selfincompatibility mechanisms, dioecious plants, and bisexual animals. The equation of Wright was modified later to provide a version of random fertilization that involved only cross fertilization with no self fertilization. The proportion 1/N formerly due to selfing now defined the carryover genedrift inbreeding arising from the previous cycle. The new version is:[13]^{:166}
.
The graphs to the right depict the differences between standard random fertilization RF, and random fertilization adjusted for "cross fertilization alone" CF. As can be seen, the issue is nontrivial for small gamodeme sample sizes.
It now is necessary to note that not only is "panmixia" not a synonym for "random fertilization", but also that "random fertilization" is not a synonym for "cross fertilization".
Homozygosity and heterozygosity
In the subsection on "The sample gamodemes – Genetic drift", a series of gamete samplings was followed, an outcome of which was an increase in homozygosity at the expense of heterozygosity. From this viewpoint, the rise in homozygosity was due to the gamete samplings. Levels of homozygosity can be viewed also according to whether homozygotes arose allozygously or autozygously. Recall that autozygous alleles have the same allelic origin, the likelihood (frequency) of which is the inbreeding coefficient (f) by definition. The proportion arising allozygously is therefore (1f). For the Abearing gametes, which are present with a general frequency of p, the overall frequency of those that are autozygous is therefore (f p). Similarly, for abearing gametes, the autozygous frequency is (f q).[38] These two viewpoints regarding genotype frequencies must be connected to establish consistency.
Following firstly the auto/allo viewpoint, consider the allozygous component. This occurs with the frequency of (1f), and the alleles unite according to the random fertilization quadratic expansion. Thus:
Consider next the autozygous component. As these alleles are autozygous, they are effectively selfings, and produce either AA or aa genotypes, but no heterozygotes. They therefore produce "AA" homozygotes plus "aa" homozygotes. Adding these two components together results in:
for the AA homozygote; for the aa homozygote; and for the Aa heterozygote.[13]^{:65}[14] This is the same equation as that presented earlier in the section on "Self fertilization – an alternative". The reason for the decline in heterozygosity is made clear here. Heterozygotes can arise only from the allozygous component, and its frequency in the sample bulk is just (1f): hence this must also be the factor controlling the frequency of the heterozygotes.
Secondly, the sampling viewpoint is reexamined. Previously, it was noted that the decline in heterozygotes was . This decline is distributed equally towards each homozygote; and is added to their basic random fertilization expectations. Therefore, the genotype frequencies are: for the "AA" homozygote; for the "aa" homozygote; and for the heterozygote.
Thirdly, the consistency between the two previous viewpoints needs establishing. It is apparent at once [from the corresponding equations above] that the heterozygote frequency is the same in both viewpoints. However, such a straightforward result is not immediately apparent for the homozygotes. Begin by considering the AA homozygote's final equation in the auto/allo paragraph above: . Expand the brackets, and follow by regathering [within the resultant] the two new terms with the commonfactor f in them. The result is: . Next, for the parenthesized " p^{2}_{0} ", a (1q) is substituted for a p, the result becoming . Following that substitution, it is a straightforward matter of multiplyingout, simplifying and watching signs. The end result is , which is exactly the result for AA in the sampling paragraph. The two viewpoints are therefore consistent for the AA homozygote. In a like manner, the consistency of the aa viewpoints can also be shown. The two viewpoints are consistent for all classes of genotypes.
Extended principles
Other fertilization patterns
In previous sections, dispersive random fertilization (genetic drift) has been considered comprehensively, and selffertilization and hybridizing have been examined to varying degrees. The diagram to the left depicts the first two of these, along with another "spatially based" pattern: islands. This is a pattern of random fertilization featuring dispersed gamodemes, with the addition of "overlaps" in which nondispersive random fertilization occurs. With the islands pattern, individual gamodeme sizes (2N) are observable, and overlaps (m) are minimal. This is one of Sewall Wright's array of possibilities.[37] In addition to "spatially" based patterns of fertilization, there are others based on either "phenotypic" or "relationship" criteria. The phenotypic bases include assortative fertilization (between similar phenotypes) and disassortative fertilization (between opposite phenotypes). The relationship patterns include sib crossing, cousin crossing and backcrossing—and are considered in a separate section. Self fertilization may be considered both from a spatial or relationship point of view.
"Islands" random fertilization
The breeding population consists of s small dispersed random fertilization gamodemes of sample size ( k = 1 ... s ) with " overlaps " of proportion in which nondispersive random fertilization occurs. The dispersive proportion is thus . The bulk population consists of weighted averages of sample sizes, allele and genotype frequencies and progeny means, as was done for genetic drift in an earlier section. However, each gamete sample size is reduced to allow for the overlaps, thus finding a effective for .
For brevity, the argument is followed further with the subscripts omitted. Recall that is in general. [Here, and following, the 2N refers to the previously defined sample size, not to any "islands adjusted" version.]
After simplification,[37]
Notice that when m = 0 this reduces to the previous Δ f. The reciprocal of this furnishes an estimate of the " effective for ", mentioned above.
This Δf is also substituted into the previous inbreeding coefficient to obtain [37]
where t is the index over generations, as before.
The effective overlap proportion can be obtained also,[37] as
The graphs to the right show the inbreeding for a gamodeme size of 2N = 50 for ordinary dispersed random fertilization (RF) (m=0), and for four overlap levels ( m = 0.0625, 0.125, 0.25, 0.5 ) of islands random fertilization. There has indeed been reduction in the inbreeding resulting from the nondispersed random fertilization in the overlaps. It is particularly notable as m → 0.50. Sewall Wright suggested that this value should be the limit for the use of this approach.[37]
Allele shuffling – allele substitution
The genemodel examines the heredity pathway from the point of view of "inputs" (alleles/gametes) and "outputs" (genotypes/zygotes), with fertilization being the "process" converting one to the other. An alternative viewpoint concentrates on the "process" itself, and considers the zygote genotypes as arising from allele shuffling. In particular, it regards the results as if one allele had "substituted" for the other during the shuffle, together with a residual that deviates from this view. This formed an integral part of Fisher's method,[8] in addition to his use of frequencies and effects to generate his genetical statistics.[14] A discursive derivation of the allele substitution alternative follows.[14]^{:113}
Suppose that the usual random fertilization of gametes in a "base" gamodeme—consisting of p gametes (A) and q gametes (a)—is replaced by fertilization with a "flood" of gametes all containing a single allele (A or a, but not both). The zygotic results can be interpreted in terms of the "flood" allele having "substituted for" the alternative allele in the underlying "base" gamodeme. The diagram assists in following this viewpoint: the upper part pictures an A substitution, while the lower part shows an a substitution. (The diagram's "RF allele" is the allele in the "base" gamodeme.)
Consider the upper part firstly. Because base A is present with a frequency of p, the substitute A fertilizes it with a frequency of p resulting in a zygote AA with an allele effect of a. Its contribution to the outcome, therefore, is the product . Similarly, when the substitute fertilizes base a (resulting in Aa with a frequency of q and heterozygote effect of d), the contribution is . The overall result of substitution by A is, therefore, . This is now oriented towards the population mean [see earlier section] by expressing it as a deviate from that mean :
After some algebraic simplification, this becomes
 the substitution effect of A.
A parallel reasoning can be applied to the lower part of the diagram, taking care with the differences in frequencies and gene effects. The result is the substitution effect of a, which is
The common factor inside the brackets is the average allele substitution effect,[14]^{:113} and is
It can also be derived in a more direct way, but the result is the same.[39]
In subsequent sections, these substitution effects help define the genemodel genotypes as consisting of a partition predicted by these new effects (substitution expectations), and a residual (substitution deviations) between these expectations and the previous genemodel effects. The expectations are also called the breeding values and the deviations are also called dominance deviations.
Ultimately, the variance arising from the substitution expectations becomes the socalled Additive genetic variance (σ^{2}_{A})[14] (also the Genic variance [40])— while that arising from the substitution deviations becomes the socalled Dominance variance (σ^{2}_{D}). It is noticeable that neither of these terms reflects the true meanings of these variances. The "genic variance" is less dubious than the additive genetic variance, and more in line with Fisher's own name for this partition.[8][29]^{:33} A lessmisleading name for the dominance deviations variance is the "quasidominance variance" [see following sections for further discussion]. These latter terms are preferred herein.
Gene effects redefined
The genemodel effects (a, d and a) are important soon in the derivation of the deviations from substitution, which were first discussed in the previous Allele Substitution section. However, they need to be redefined themselves before they become useful in that exercise. They firstly need to be recentralized around the population mean (G), and secondly they need to be rearranged as functions of β, the average allele substitution effect.
Consider firstly the recentralization. The recentralized effect for AA is a• = a  G which, after simplification, becomes a• = 2q(apd). The similar effect for Aa is d• = d  G = a(qp) + d(12pq), after simplification. Finally, the recentralized effect for aa is (a)• = 2p(a+qd).[14]^{:116–119}
Secondly, consider the rearrangement of these recentralized effects as functions of β. Recalling from the "Allele Substitution" section that β = [a +(qp)d], rearrangement gives a = [β (qp)d]. After substituting this for a in a• and simplifying, the final version becomes a•• = 2q(βqd). Similarly, d• becomes d•• = β(qp) + 2pqd; and (a)• becomes (a)•• = 2p(β+pd).[14]^{:118}
Genotype substitution – expectations and deviations
The zygote genotypes are the target of all this preparation. The homozygous genotype AA is a union of two substitution effects of A, one from each sex. Its substitution expectation is therefore β_{AA} = 2β_{A} = 2qβ (see previous sections). Similarly, the substitution expectation of Aa is β_{Aa} = β_{A} + β_{a} = (qp)β ; and for aa, β_{aa} = 2β_{a} = 2pβ. These substitution expectations of the genotypes are also called breeding values.[14]^{:114–116}
Substitution deviations are the differences between these expectations and the gene effects after their twostage redefinition in the previous section. Therefore, d_{AA} = a••  β_{AA} = 2q^{2}d after simplification. Similarly, d_{Aa} = d••  β_{Aa} = 2pqd after simplification. Finally, d_{aa} = (a)••  β_{aa} = 2p^{2}d after simplification.[14]^{:116–119} Notice that all of these substitution deviations ultimately are functions of the geneeffect d—which accounts for the use of ["d" plus subscript] as their symbols. However, it is a serious non sequitur in logic to regard them as accounting for the dominance (heterozygosis) in the entire gene model : they are simply functions of "d" and not an audit of the "d" in the system. They are as derived: deviations from the substitution expectations!
The "substitution expectations" ultimately give rise to the σ^{2}_{A} (the socalled "Additive" genetic variance); and the "substitution deviations" give rise to the σ^{2}_{D} (the socalled "Dominance" genetic variance). Be aware, however, that the average substitution effect (β) also contains "d" [see previous sections], indicating that dominance is also embedded within the "Additive" variance [see following sections on the Genotypic Variance for their derivations]. Remember also [see previous paragraph] that the "substitution deviations" do not account for the dominance in the system (being nothing more than deviations from the substitution expectations), but which happen to consist algebraically of functions of "d". More appropriate names for these respective variances might be σ^{2}_{B} (the "Breeding expectations" variance) and σ^{2}_{δ} (the "Breeding deviations" variance). However, as noted previously, "Genic" (σ ^{2}_{A}) and "QuasiDominance" (σ ^{2}_{D}), respectively, will be preferred herein.
Genotypic variance
There are two major approaches to defining and partitioning genotypic variance. One is based on the genemodel effects,[40] while the other is based on the genotype substitution effects[14] They are algebraically interconvertible with each other.[36] In this section, the basic random fertilization derivation is considered, with the effects of inbreeding and dispersion set aside. This is dealt with later to arrive at a more general solution. Until this monogenic treatment is replaced by a multigenic one, and until epistasis is resolved in the light of the findings of epigenetics, the Genotypic variance has only the components considered here.
Genemodel approach – Mather Jinks Hayman
It is convenient to follow the Biometrical approach, which is based on correcting the unadjusted sum of squares (USS) by subtracting the correction factor (CF). Because all effects have been examined through frequencies, the USS can be obtained as the sum of the products of each genotype's frequency' and the square of its geneeffect. The CF in this case is the mean squared. The result is the SS, which, again because of the use of frequencies, is also immediately the variance.[9]
The , and the . The
After partial simplification,
The last line is in Mather's terminology.[40]^{:212} [41][42]
Here, σ^{2}_{a} is the homozygote or allelic variance, and σ^{2}_{d} is the heterozygote or dominance variance. The substitution deviations variance (σ^{2}_{D}) is also present. The (weighted_covariance)_{ad}[43] is abbreviated hereafter to " cov_{ad} ".
These components are plotted across all values of p in the accompanying figure. Notice that cov_{ad} is negative for p > 0.5.
Most of these components are affected by the change of central focus from homozygote midpoint (mp) to population mean (G), the latter being the basis of the Correction Factor. The cov_{ad} and substitution deviation variances are simply artifacts of this shift. The allelic and dominance variances are genuine genetical partitions of the original genemodel, and are the only eugenetical components. Even then, the algebraic formula for the allelic variance is effected by the presence of G: it is only the dominance variance (i.e. σ^{2}_{d} ) which is unaffected by the shift from mp to G.[36] These insights are commonly not appreciated.
Further gathering of terms [in Mather format] leads to , where . It is useful later in Diallel analysis, which is an experimental design for estimating these genetical statistics.[44]
If, following the lastgiven rearrangements, the first three terms are amalgamated together, rearranged further and simplified, the result is the variance of the Fisherian substitution expectation.
That is:
Notice particularly that σ^{2}_{A} is not σ^{2}_{a}. The first is the substitution expectations variance, while the second is the allelic variance.[45] Notice also that σ^{2}_{D} (the substitutiondeviations variance) is not σ^{2}_{d} (the dominance variance), and recall that it is an artifact arising from the use of G for the Correction Factor. [See the "blue paragraph" above.] It now will be referred to as the "quasidominance" variance.
Also note that σ^{2}_{D} < σ^{2}_{d} ("2pq" being always a fraction); and note that (1) σ^{2}_{D} = 2pq σ^{2}_{d}, and that (2) σ^{2}_{d} = σ^{2}_{D} / (2pq). That is: it is confirmed that σ^{2}_{D} does not quantify the dominance variance in the model. It is σ^{2}_{d} which does that. However, the dominance variance (σ^{2}_{d}) can be estimated readily from the σ^{2}_{D} if 2pq is available.
From the Figure, these results can be visualized as accumulating σ^{2}_{a}, σ^{2}_{d} and cov_{ad} to obtain σ^{2}_{A}, while leaving the σ^{2}_{D} still separated. It is clear also in the Figure that σ^{2}_{D} < σ^{2}_{d}, as expected from the equations.
The overall result (in Fisher's format) is
The Fisherian components have just been derived, but their derivation via the substitution effects themselves is given also, in the next section.
Allelesubstitution approach – Fisher
Reference to the several earlier sections on allele substitution reveals that the two ultimate effects are genotype substitution expectations and genotype substitution deviations. Notice that these are each already defined as deviations from the random fertilization population mean (G). For each genotype in turn therefore, the product of the frequency and the square of the relevant effect is obtained, and these are accumulated to obtain directly a SS and σ^{2}.[46] Details follow.
σ^{2}_{A} = p^{2} β_{AA}^{2} + 2pq β_{Aa}^{2} + q^{2} β_{aa}^{2}, which simplifies to σ^{2}_{A} = 2pqβ^{2}—the Genic variance.
σ^{2}_{D} = p^{2} d_{AA}^{2} + 2pq d_{Aa}^{2} + q d_{aa}^{2}, which simplifies to σ^{2}_{D} = (2pq)^{2} d^{2}—the quasiDominance variance.
Upon accumulating these results, σ^{2}_{G} = σ^{2}_{A} + σ^{2}_{D} . These components are visualized in the graphs to the right. The average allele substitution effect is graphed also, but the symbol is "α" (as is common in the citations) rather than "β" (as is used herein).
Once again, however, refer to the earlier discussions about the true meanings and identities of these components. Fisher himself did not use these modern terms for his components. The substitution expectations variance he named the "genetic" variance; and the substitution deviations variance he regarded simply as the unnamed residual between the "genotypic" variance (his name for it) and his "genetic" variance.[8][29]^{:33}[47][48] [The terminology and derivation used in this article are completely in accord with Fisher's own.] Mather's term for the expectations variance—"genic"[40]—is obviously derived from Fisher's term, and avoids using "genetic" (which has become too generalized in usage to be of value in the present context). The origin is obscure of the modern misleading terms "additive" and "dominance" variances.
Note that this allelesubstitution approach defined the components separately, and then totaled them to obtain the final Genotypic variance. Conversely, the genemodel approach derived the whole situation (components and total) as one exercise. Bonuses arising from this were (a) the revelations about the real structure of σ^{2}_{A}, and (b) the real meanings and relative sizes of σ^{2}_{d} and σ^{2}_{D} (see previous subsection). It is also apparent that a "Mather" analysis is more informative, and that a "Fisher" analysis can always be constructed from it. The opposite conversion is not possible, however, because information about cov_{ad} would be missing.
Dispersion and the genotypic variance
In the section on genetic drift, and in other sections that discuss inbreeding, a major outcome from allele frequency sampling has been the dispersion of progeny means. This collection of means has its own average, and also has a variance: the amongstline variance. (This is a variance of the attribute itself, not of allele frequencies.) As dispersion develops further over succeeding generations, this amongstline variance would be expected to increase. Conversely, as homozygosity rises, the withinlines variance would be expected to decrease. The question arises therefore as to whether the total variance is changing—and, if so, in what direction. To date, these issues have been presented in terms of the genic (σ ^{2}_{A} ) and quasidominance (σ ^{2}_{D} ) variances rather than the genemodel components. This will be done herein as well.
The crucial overview equation comes from Sewall Wright,[13] ^{:99,130} [37] and is the outline of the inbred genotypic variance based on a weighted average of its extremes, the weights being quadratic with respect to the inbreeding coefficient . This equation is:
where is the inbreeding coefficient, is the genotypic variance at f=0, is the genotypic variance at f=1, is the population mean at f=0, and is the population mean at f=1.
The component [in the equation above] outlines the reduction of variance within progeny lines. The component addresses the increase in variance amongst progeny lines. Lastly, the component is seen (in the next line) to address the quasidominance variance.[13] ^{:99 & 130} These components can be expanded further thereby revealing additional insight. Thus:
Firstly, σ^{2}_{G(0)} [in the equation above] has been expanded to show its two subcomponents [see section on "Genotypic variance"]. Next, the σ^{2}_{G(1)} has been converted to 4pqa^{2} , and is derived in a section following. The third component's substitution is the difference between the two "inbreeding extremes" of the population mean [see section on the "Population Mean"].[36]
Summarising: the withinline components are and ; and the amongstline components are and .[36]
Rearranging gives the following:
The version in the last line is discussed further in a subsequent section.
Similarly,
Graphs to the left show these three genic variances, together with the three quasidominance variances, across all values of f, for p = 0.5 (at which the quasidominance variance is at a maximum). Graphs to the right show the Genotypic variance partitions (being the sums of the respective genic and quasidominance partitions) changing over ten generations with an example f = 0.10.
Answering, firstly, the questions posed at the beginning about the total variances [the Σ in the graphs] : the genic variance rises linearly with the inbreeding coefficient, maximizing at twice its starting level. The quasidominance variance declines at the rate of (1 − f^{2} ) until it finishes at zero. At low levels of f, the decline is very gradual, but it accelerates with higher levels of f.
Secondly, notice the other trends. It is probably intuitive that the within line variances decline to zero with continued inbreeding, and this is seen to be the case (both at the same linear rate (1f) ). The amongst line variances both increase with inbreeding up to f = 0.5, the genic variance at the rate of 2f, and the quasidominance variance at the rate of (f − f^{2}). At f > 0.5, however, the trends change. The amongst line genic variance continues its linear increase until it equals the total genic variance. But, the amongst line quasidominance variance now declines towards zero, because (f − f^{2}) also declines with f > 0.5.[36]
Derivation of σ^{2}_{G(1)}
Recall that when f=1, heterozygosity is zero, withinline variance is zero, and all genotypic variance is thus amongstline variance and deplete of dominance variance. In other words, σ^{2}_{G(1)} is the variance amongst fully inbred line means. Recall further [from "The mean after selffertilization" section] that such means (G_{1}'s, in fact) are G = a(pq). Substituting (1q) for the p, gives G_{1} = a (1 − 2q) = a − 2aq.[14]^{:265} Therefore, the σ^{2}_{G(1)} is the σ^{2}_{(a2aq)} actually. Now, in general, the variance of a difference (xy) is [ σ^{2}_{x} + σ^{2}_{y} − 2 cov_{xy} ].[49]^{:100}[50] ^{:232} Therefore, σ^{2}_{G(1)} = [ σ^{2}_{a} + σ^{2}_{2aq} − 2 cov_{(a, 2aq)} ] . But a (an allele effect) and q (an allele frequency) are independent—so this covariance is zero. Furthermore, a is a constant from one line to the next, so σ^{2}_{a} is also zero. Further, 2a is another constant (k), so the σ^{2}_{2aq} is of the type σ^{2}_{k X}. In general, the variance σ^{2}_{k X} is equal to k^{2} σ^{2}_{X} .[50]^{:232} Putting all this together reveals that σ^{2}_{(a2aq)} = (2a)^{2} σ^{2}_{q} . Recall [from the section on "Continued genetic drift"] that σ^{2}_{q} = pq f . With f=1 here within this present derivation, this becomes pq 1 (that is pq), and this is substituted into the previous.
The final result is: σ^{2}_{G(1)} = σ^{2}_{(a2aq)} = 4a^{2} pq = 2(2pq a^{2}) = 2 σ^{2}_{a} .
It follows immediately that f σ^{2}_{G(1)} = f 2 σ^{2}_{a} . [This last f comes from the initial Sewall Wright equation : it is not the f just set to "1" in the derivation concluded two lines above.]
Total dispersed genic variance – σ^{2}_{A(f)} and β_{f}
Previous sections found that the within line genic variance is based upon the substitutionderived genic variance ( σ^{2}_{A} )—but the amongst line genic variance is based upon the gene model allelic variance ( σ^{2}_{a} ). These two cannot simply be added to get total genic variance. One approach in avoiding this problem was to revisit the derivation of the average allele substitution effect, and to construct a version, ( β_{ f } ), that incorporates the effects of the dispersion. Crow and Kimura achieved this[13] ^{:130–131} using the recentered allele effects (a•, d•, (a)• ) discussed previously ["Gene effects redefined"]. However, this was found subsequently to underestimate slightly the total Genic variance, and a new variancebased derivation led to a refined version.[36]
The refined version is: β_{ f } = { a^{2} + [(1−f ) / (1 + f )] 2(q − p ) ad + [(1f ) / (1 + f )] (q − p )^{2} d^{2} } ^{(1/2)}
Consequently, σ^{2}_{A(f)} = (1 + f ) 2pq β_{f} ^{2} does now agree with [ (1f) σ^{2}_{A(0)} + 2f σ^{2}_{a(0)} ] exactly.
Total and partitioned dispersed quasidominance variances
The total genic variance is of intrinsic interest in its own right. But, prior to the refinements by Gordon,[36] it had had another important use as well. There had been no extant estimators for the "dispersed" quasidominance. This had been estimated as the difference between Sewall Wright's inbred genotypic variance [37] and the total "dispersed" genic variance [see the previous subsection]. An anomaly appeared, however, because the total quasidominance variance appeared to increase early in inbreeding despite the decline in heterozygosity.[14] ^{:128} ^{:266}
The refinements in the previous subsection corrected this anomaly.[36] At the same time, a direct solution for the total quasidominance variance was obtained, thus avoiding the need for the "subtraction" method of previous times. Furthermore, direct solutions for the amongstline and withinline partitions of the quasidominance variance were obtained also, for the first time. [These have been presented in the section "Dispersion and the genotypic variance".]
Environmental variance
The environmental variance is phenotypic variability, which cannot be ascribed to genetics. This sounds simple, but the experimental design needed to separate the two needs very careful planning. Even the "external" environment can be divided into spatial and temporal components ("Sites" and "Years"); or into partitions such as "litter" or "family", and "culture" or "history". These components are very dependent upon the actual experimental model used to do the research. Such issues are very important when doing the research itself, but in this article on quantitative genetics this overview may suffice.
It is an appropriate place, however, for a summary:
Phenotypic variance = genotypic variances + environmental variances + genotypeenvironment interaction + experimental "error" variance
i.e., σ²_{P} = σ²_{G} + σ²_{E} + σ²_{GE} + σ²
or σ²_{P} = σ²_{A} + σ²_{D} + σ²_{I} + σ²_{E} + σ²_{GE} + σ²
after partitioning the genotypic variance (G) into component variances "genic" (A), "quasidominance" (D), and "epistatic" (I).[51]
The Environmental variance will appear in other sections, such as "Heritability" and "Correlated attributes".
Heritability and repeatability
The heritability of a trait is the proportion of the total (phenotypic) variance (σ^{2} _{P}) that is attributable to genetic variance, whether it be the full genotypic variance, or some component of it. It quantifies the degree to which phenotypic variability is due to genetics: but the precise meaning depends upon which genetical variance partition is used in the numerator of the proportion.[52] Research estimates of heritability have standard errors, just as have all estimated statistics.[53]
Where the numerator variance is the whole Genotypic variance ( σ^{2}_{G} ), the heritability is known as the "broadsense" heritability (H^{2}). It quantifies the degree to which variability in an attribute is determined by genetics as a whole.
[See section on the Genotypic variance.] If only Genic variance (σ^{2}_{A}) is used in the numerator, the heritability may be called "narrow sense" (h^{2}). It quantifies the extent to which phenotypic variance is determined by Fisher's substitution expectations variance.
Fisher proposed that this narrowsense heritability might be appropriate in considering the results of natural selection, focusing as it does on changeability, that is upon "adaptation".[29] He proposed it with regard to quantifying Darwinian evolution.
Recalling that the allelic variance (σ ^{2}_{a}) and the dominance variance (σ ^{2}_{d}) are eugenetic components of the genemodel [see section on the Genotypic variance], and that σ ^{2}_{D} (the substitution deviations or "quasidominance" variance) and cov_{ad} are due to changing from the homozygote midpoint (mp) to the population mean (G), it can be seen that the real meanings of these heritabilities are obscure. The heritabilities and have unambiguous meaning.
Narrowsense heritability has been used also for predicting generally the results of artificial selection. In the latter case, however, the broadsense heritability may be more appropriate, as the whole attribute is being altered: not just adaptive capacity. Generally, advance from selection is more rapid the higher the heritability. [See section on "Selection".] In animals, heritability of reproductive traits is typically low, while heritability of disease resistance and production are moderately low to moderate, and heritability of body conformation is high.
Repeatability (r^{2}) is the proportion of phenotypic variance attributable to differences in repeated measures of the same subject, arising from later records. It is used particularly for longlived species. This value can only be determined for traits that manifest multiple times in the organism's lifetime, such as adult body mass, metabolic rate or litter size. Individual birth mass, for example, would not have a repeatability value: but it would have a heritability value. Generally, but not always, repeatability indicates the upper level of the heritability.[54]
r^{2} = (s²_{G} + s²_{PE})/s²_{P}
where s²_{PE} = phenotypeenvironment interaction = repeatability.
The above concept of repeatability is, however, problematic for traits that necessarily change greatly between measurements. For example, body mass increases greatly in many organisms between birth and adulthood. Nonetheless, within a given age range (or lifecycle stage), repeated measures could be done, and repeatability would be meaningful within that stage.
Relationship
From the heredity perspective, relations are individuals that inherited genes from one or more common ancestors. Therefore, their "relationship" can be quantified on the basis of the probability that they each have inherited a copy of an allele from the common ancestor. In earlier sections, the Inbreeding coefficient has been defined as, "the probability that two same alleles ( A and A, or a and a ) have a common origin"—or, more formally, "The probability that two homologous alleles are autozygous." Previously, the emphasis was on an individual's likelihood of having two such alleles, and the coefficient was framed accordingly. It is obvious, however, that this probability of autozygosity for an individual must also be the probability that each of its two parents had this autozygous allele. In this refocused form, the probability is called the coancestry coefficient for the two individuals i and j ( f _{ij} ). In this form, it can be used to quantify the relationship between two individuals, and may also be known as the coefficient of kinship or the consanguinity coefficient.[13]^{:132–143} [14]^{:82–92}
Pedigree analysis
Pedigrees are diagrams of familial connections between individuals and their ancestors, and possibly between other members of the group that share genetical inheritance with them. They are relationship maps. A pedigree can be analyzed, therefore, to reveal coefficients of inbreeding and coancestry. Such pedigrees actually are informal depictions of path diagrams as used in path analysis, which was invented by Sewall Wright when he formulated his studies on inbreeding.[55]^{:266–298} Using the adjacent diagram, the probability that individuals "B" and "C" have received autozygous alleles from ancestor "A" is 1/2 (one out of the two diploid alleles). This is the "de novo" inbreeding (Δf_{Ped}) at this step. However, the other allele may have had "carryover" autozygosity from previous generations, so the probability of this occurring is (de novo complement multiplied by the inbreeding of ancestor A ), that is (1 − Δf_{Ped} ) f_{A} = (1/2) f_{A} . Therefore, the total probability of autozygosity in B and C, following the bifurcation of the pedigree, is the sum of these two components, namely (1/2) + (1/2)f_{A} = (1/2) (1+f _{A} ) . This can be viewed as the probability that two random gametes from ancestor A carry autozygous alleles, and in that context is called the coefficient of parentage ( f_{AA} ).[13]^{:132–143}[14]^{:82–92} It appears often in the following paragraphs.
Following the "B" path, the probability that any autozygous allele is "passed on" to each successive parent is again (1/2) at each step (including the last one to the "target" X ). The overall probability of transfer down the "B path" is therefore (1/2)^{3} . The power that (1/2) is raised to can be viewed as "the number of intermediates in the path between A and X ", n_{B} = 3 . Similarly, for the "C path", n_{C} = 2 , and the "transfer probability" is (1/2)^{2} . The combined probability of autozygous transfer from A to X is therefore [ f_{AA} (1/2)^{(nB)} (1/2)^{(nC)} ] . Recalling that f_{AA} = (1/2) (1+f _{A} ) , f_{X} = f_{PQ} = (1/2)^{(nB + nC + 1)} (1 + f_{A} ) . In this example, assuming that f_{A} = 0, f_{X} = 0.0156 (rounded) = f_{PQ} , one measure of the "relatedness" between P and Q.
In this section, powers of (1/2) were used to represent the "probability of autozygosity". Later, this same method will be used to represent the proportions of ancestral genepools which are inherited down a pedigree [the section on "Relatedness between relatives"].
Crossmultiplication rules
In the following sections on sibcrossing and similar topics, a number of "averaging rules" are useful. These derive from path analysis.[55] The rules show that any coancestry coefficient can be obtained as the average of crossover coancestries between appropriate grandparental and parental combinations. Thus, referring to the adjacent diagram, Crossmultiplier 1 is that f_{PQ} = average of ( f_{AC} , f_{AD} , f_{BC} , f_{BD} ) = (1/4) [f_{AC} + f_{AD} + f_{BC} + f_{BD} ] = f_{Y} . In a similar fashion, crossmultiplier 2 states that f_{PC} = (1/2) [ f_{AC} + f_{BC} ]—while crossmultiplier 3 states that f_{PD} = (1/2) [ f_{AD} + f_{BD} ] . Returning to the first multiplier, it can now be seen also to be f_{PQ} = (1/2) [ f_{PC} + f_{PD} ], which, after substituting multipliers 2 and 3, resumes its original form.
In much of the following, the grandparental generation is referred to as (t2) , the parent generation as (t1) , and the "target" generation as t.
Fullsib crossing (FS)
The diagram to the right shows that full sib crossing is a direct application of crossMultiplier 1, with the slight modification that parents A and B repeat (in lieu of C and D) to indicate that individuals P1 and P2 have both of their parents in common—that is they are full siblings. Individual Y is the result of the crossing of two full siblings. Therefore, f_{Y} = f_{P1,P2} = (1/4) [ f_{AA} + 2 f_{AB} + f_{BB} ] . Recall that f_{AA} and f_{BB} were defined earlier (in Pedigree analysis) as coefficients of parentage, equal to (1/2)[1+f_{A} ] and (1/2)[1+f_{B} ] respectively, in the present context. Recognize that, in this guise, the grandparents A and B represent generation (t2) . Thus, assuming that in any one generation all levels of inbreeding are the same, these two coefficients of parentage each represent (1/2) [1 + f_{(t2)} ] .
Now, examine f_{AB} . Recall that this also is f_{P1} or f_{P2} , and so represents their generation  f_{(t1)} . Putting it all together, f_{t} = (1/4) [ 2 f_{AA} + 2 f_{AB} ] = (1/4) [ 1 + f_{(t2)} + 2 f_{(t1)} ] . That is the inbreeding coefficient for FullSib crossing .[13]^{:132–143}[14]^{:82–92} The graph to the left shows the rate of this inbreeding over twenty repetitive generations. The "repetition" means that the progeny after cycle t become the crossing parents that generate cycle (t+1 ), and so on successively. The graphs also show the inbreeding for random fertilization 2N=20 for comparison. Recall that this inbreeding coefficient for progeny Y is also the coancestry coefficient for its parents, and so is a measure of the relatedness of the two Fill siblings.
Halfsib crossing (HS)
Derivation of the half sib crossing takes a slightly different path to that for Full sibs. In the adjacent diagram, the two halfsibs at generation (t1) have only one parent in common—parent "A" at generation (t2). The crossmultiplier 1 is used again, giving f_{Y} = f_{(P1,P2)} = (1/4) [ f_{AA} + f_{AC} + f_{BA} + f_{BC} ] . There is just one coefficient of parentage this time, but three coancestry coefficients at the (t2) level (one of them—f_{BC}—being a "dummy" and not representing an actual individual in the (t1) generation). As before, the coefficient of parentage is (1/2)[1+f_{A} ] , and the three coancestries each represent f_{(t1)} . Recalling that f_{A} represents f_{(t2)} , the final gathering and simplifying of terms gives f_{Y} = f_{t} = (1/8) [ 1 + f_{(t2)} + 6 f_{(t1)} ] .[13]^{:132–143}[14]^{:82–92} The graphs at left include this halfsib (HS) inbreeding over twenty successive generations.
As before, this also quantifies the relatedness of the two halfsibs at generation (t1) in its alternative form of f_{(P1, P2)} .
Self fertilization (SF)
A pedigree diagram for selfing is on the right. It is so straightforward it doesn't require any crossmultiplication rules. It employs just the basic juxtaposition of the inbreeding coefficient and its alternative the coancestry coefficient; followed by recognizing that, in this case, the latter is also a coefficient of parentage. Thus, f_{Y} = f_{(P1, P1)} = f_{t} = (1/2) [ 1 + f_{(t1)} ] .[13]^{:132–143}[14]^{:82–92} This is the fastest rate of inbreeding of all types, as can be seen in the graphs above. The selfing curve is, in fact, a graph of the coefficient of parentage.
Cousins crossings
These are derived with methods similar to those for siblings.[13]^{:132–143}[14]^{:82–92} As before, the coancestry viewpoint of the inbreeding coefficient provides a measure of "relatedness" between the parents P1 and P2 in these cousin expressions.
The pedigree for First Cousins (FC) is given to the right. The prime equation is f_{Y} = f_{t} = f_{P1,P2} = (1/4) [ f_{1D} + f_{12} + f_{CD} + f_{C2} ]. After substitution with corresponding inbreeding coefficients, gathering of terms and simplifying, this becomes f_{t} = (1/4) [ 3 f_{(t1)} + (1/4) [2 f_{(t2)} + f_{(t3)} + 1 ]] , which is a version for iteration—useful for observing the general pattern, and for computer programming. A "final" version is f_{t} = (1/16) [ 12 f_{(t1)} + 2 f_{(t2)} + f_{(t3)} + 1 ] .
The Second Cousins (SC) pedigree is on the left. Parents in the pedigree not related to the common Ancestor are indicated by numerals instead of letters. Here, the prime equation is f_{Y} = f_{t} = f_{P1,P2} = (1/4) [ f_{3F} + f_{34} + f_{EF} + f_{E4} ]. After working through the appropriate algebra, this becomes f_{t} = (1/4) [ 3 f_{(t1)} + (1/4) [3 f_{(t2)} + (1/4) [2 f_{(t3)} + f_{(t4)} + 1 ]]] , which is the iteration version. A "final" version is f_{t} = (1/64) [ 48 f_{(t1)} + 12 f_{(t2)} + 2 f_{(t3)} + f_{(t4)} + 1 ] .
To visualize the pattern in full cousin equations, start the series with the full sib equation rewritten in iteration form: f_{t} = (1/4)[2 f_{(t1)} + f_{(t2)} + 1 ]. Notice that this is the "essential plan" of the last term in each of the cousin iterative forms: with the small difference that the generation indices increment by "1" at each cousin "level". Now, define the cousin level as k = 1 (for First cousins), = 2 (for Second cousins), = 3 (for Third cousins), etc., etc.; and = 0 (for Full Sibs, which are "zero level cousins"). The last term can be written now as: (1/4) [ 2 f_{(t(1+k))} + f_{(t(2+k))} + 1] . Stacked in front of this last term are one or more iteration increments in the form (1/4) [ 3 f_{(tj)} + ... , where j is the iteration index and takes values from 1 ... k over the successive iterations as needed. Putting all this together provides a general formula for all levels of full cousin possible, including Full Sibs. For kth level full cousins, f{k}_{t} = Ιter_{j = 1}^{k} { (1/4) [ 3 f_{(tj)} + }_{j} + (1/4) [ 2 f_{(t(1+k))} + f_{(t(2+k))} + 1] . At the commencement of iteration, all f_{(tx)} are set at "0", and each has its value substituted as it is calculated through the generations. The graphs to the right show the successive inbreeding for several levels of Full Cousins.
For first halfcousins (FHC), the pedigree is to the left. Notice there is just one common ancestor (individual A). Also, as for second cousins, parents not related to the common ancestor are indicated by numerals. Here, the prime equation is f_{Y} = f_{t} = f_{P1,P2} = (1/4) [ f_{3D} + f_{34} + f_{CD} + f_{C4} ]. After working through the appropriate algebra, this becomes f_{t} = (1/4) [ 3 f_{(t1)} + (1/8) [6 f_{(t2)} + f_{(t3)} + 1 ]] , which is the iteration version. A "final" version is f_{t} = (1/32) [ 24 f_{(t1)} + 6 f_{(t2)} + f_{(t3)} + 1 ] . The iteration algorithm is similar to that for full cousins, except that the last term is (1/8) [ 6 f_{(t(1+k))} + f_{(t(2+k))} + 1 ] . Notice that this last term is basically similar to the half sib equation, in parallel to the pattern for full cousins and full sibs. In other words, half sibs are "zero level" half cousins.
There is a tendency to regard cousin crossing with a humanoriented point of view, possibly because of a wide interest in Genealogy. The use of pedigrees to derive the inbreeding perhaps reinforces this "Family History" view. However, such kinds of intercrossing occur also in natural populations—especially those that are sedentary, or have a "breeding area" that they revisit from season to season. The progenygroup of a harem with a dominant male, for example, may contain elements of sibcrossing, cousin crossing, and backcrossing, as well as genetic drift, especially of the "island" type. In addition to that, the occasional "outcross" adds an element of hybridization to the mix. It is not panmixia.
Backcrossing (BC)
Following the hybridizing between A and R, the F1 (individual B) is crossed back (BC1) to an original parent (R) to produce the BC1 generation (individual C). [It is usual to use the same label for the act of making the backcross and for the generation produced by it. The act of backcrossing is here in italics. ] Parent R is the recurrent parent. Two successive backcrosses are depicted, with individual D being the BC2 generation. These generations have been given t indices also, as indicated. As before, f_{D} = f_{t} = f_{CR} = (1/2) [ f_{RB} + f_{RR} ] , using crossmultiplier 2 previously given. The f_{RB} just defined is the one that involves generation (t1) with (t2). However, there is another such f_{RB} contained wholly within generation (t2) as well, and it is this one that is used now: as the coancestry of the parents of individual C in generation (t1). As such, it is also the inbreeding coefficient of C, and hence is f_{(t1)}. The remaining f_{RR} is the coefficient of parentage of the recurrent parent, and so is (1/2) [1 + f_{R} ] . Putting all this together : f<sub>t = (1/2) [ (1/2) [ 1 + f_{R} ] + f_{(t1)} ] = (1/4) [ 1 + f_{R} + 2 f_{(t1)} ] . The graphs at right illustrate Backcross inbreeding over twenty backcrosses for three different levels of (fixed) inbreeding in the Recurrent parent.
This routine is commonly used in Animal and Plant Breeding programmes. Often after making the hybrid (especially if individuals are shortlived), the recurrent parent needs separate "line breeding" for its maintenance as a future recurrent parent in the backcrossing. This maintenance may be through selfing, or through fullsib or halfsib crossing, or through restricted randomly fertilized populations, depending on the species' reproductive possibilities. Of course, this incremental rise in f_{R} carriesover into the f_{t} of the backcrossing. The result is a more gradual curve rising to the asymptotes than shown in the present graphs, because the f_{R} is not at a fixed level from the outset.
Contributions from ancestral genepools
In the section on "Pedigree analysis", was used to represent probabilities of autozygous allele descent over n generations down branches of the pedigree. This formula arose because of the rules imposed by sexual reproduction: (i) two parents contributing virtually equal shares of autosomal genes, and (ii) successive dilution for each generation between the zygote and the "focus" level of parentage.[56] These same rules apply also to any other viewpoint of descent in a twosex reproductive system. One such is the proportion of any ancestral genepool (also known as ‘germplasm’) which is contained within any zygote’s genotype.
Therefore, the proportion of an ancestral genepool in a genotype is:
where n = number of sexual generations between the zygote and the focus ancestor.
For example, each parent defines a genepool contributing to its offspring; while each greatgrandparent contributes to its greatgrandoffspring.
The zygote's total genepool (Γ) is, of course, the sum of the sexual contributions to its descent.
Relationship through ancestral genepools
Individuals descended from a common ancestral genepool obviously are related. This is not to say they are identical in their genes (alleles), because, at each level of ancestor, segregation and assortment will have occurred in producing gametes. But they will have originated from the same pool of alleles available for these meioses and subsequent fertilizations. [This idea was encountered firstly in the sections on pedigree analysis and relationships.] The genepool contributions [see section above] of their nearest common ancestral genepool(an ancestral node) can therefore be used to define their relationship. This leads to an intuitive definition of relationship which conforms well with familiar notions of "relatedness" found in familyhistory; and permits comparisons of the "degree of relatedness" for complex patterns of relations arising from such genealogy.
The only modifications necessary (for each individual in turn) are in Γ and are due to the shift to "shared common ancestry" rather than "individual total ancestry". For this, define Ρ (in lieu of Γ) ; m = number of ancestorsincommon at the node (i.e. m = 1 or 2 only) ; and an "individual index" k. Thus:
where, as before, n = number of sexual generations between the individual and the ancestral node.
An example is provided by two first fullcousins. Their nearest common ancestral node is their grandparents which gave rise to their two sibling parents, and they have both of these grandparents in common. [See earlier pedigree.] For this case, m=2 and n=2, so for each of them
In this simple case, each cousin has numerically the same Ρ .
A second example might be between two full cousins, but one (k=1) has three generations back to the ancestral node (n=3), and the other (k=2) only two (n=2) [i.e. a second and first cousin relationship]. For both, m=2 (they are full cousins).
and
Notice each cousin has a different Ρ _{k}.
GRC – genepool relationship coefficient
In any pairwise relationship estimation, there is one Ρ_{k} for each individual: it remains to average them in order to combine them into a single "Relationship coefficient". Because each Ρ is a fraction of a total genepool, the appropriate average for them is the geometric mean [57][58]^{:34–55} This average is their Genepool Relationship Coefficient—the "GRC".
For the first example (two full firstcousins), their GRC = 0.5; for the second case (a full first and second cousin), their GRC = 0.3536.
All of these relationships (GRC) are applications of pathanalysis.[55]^{:214–298} A summary of some levels of relationship (GRC) follow.
GRC  Relationship examples 

1.00  full Sibs 
0.7071  Parent ↔ Offspring ; Uncle/Aunt ↔ Nephew/Niece 
0.5  full First Cousins ; half Sibs ; grand Parent ↔ grand Offspring 
0.3536  full Cousins First ↔ Second ; full First Cousins {1 remove} 
0.25  full Second Cousins; half First Cousins; full First Cousins {2 removes} 
0.1768  full First Cousin {3 removes}; full Second Cousins {1 remove} 
0.125  full Third Cousins; half Second Cousins; full 1st Cousins {4 removes} 
0.0884  full First Cousins {5 removes}; half Second Cousins {1 remove} 
0.0625  full Fourth Cousins ; half Third Cousins 
Resemblances between relatives
These, in like manner to the Genotypic variances, can be derived through either the genemodel ("Mather") approach or the allelesubstitution ("Fisher") approach. Here, each method is demonstrated for alternate cases.
Parentoffspring covariance
These can be viewed either as the covariance between any offspring and any one of its parents (PO), or as the covariance between any offspring and the "midparent" value of both its parents (MPO).
Oneparent and offspring (PO)
This can be derived as the sum of crossproducts between parent geneeffects and onehalf of the progeny expectations using the allelesubstitution approach. The onehalf of the progeny expectation accounts for the fact that only one of the two parents is being considered. The appropriate parental geneeffects are therefore the secondstage redefined gene effects used to define the genotypic variances earlier, that is: a″ = 2q(a − qd) and d″ = (qp)a + 2pqd and also (a)″ = 2p(a + pd) [see section "Gene effects redefined"]. Similarly, the appropriate progeny effects, for allelesubstitution expectations are onehalf of the earlier breeding values, the latter being: a_{AA} = 2qa, and a_{Aa} = (qp)a and also a_{aa} = 2pa [see section on "Genotype substitution – Expectations and Deviations"].
Because all of these effects are defined already as deviates from the genotypic mean, the crossproduct sum using {genotypefrequency * parental geneeffect * halfbreedingvalue} immediately provides the allelesubstitutionexpectation covariance between any one parent and its offspring. After careful gathering of terms and simplification, this becomes cov(PO)_{A} = pqa^{2} = ½ s^{2}_{A} .[13] ^{:132–141}[14] ^{:134–147}
Unfortunately, the allelesubstitutiondeviations are usually overlooked, but they have not "ceased to exist" nonetheless! Recall that these deviations are: d_{AA} = 2q^{2} d, and d_{Aa} = 2pq d and also d_{aa} = 2p^{2} d [see section on "Genotype substitution – Expectations and Deviations"]. Consequently, the crossproduct sum using {genotypefrequency * parental geneeffect * halfsubstitutiondeviations} also immediately provides the allelesubstitutiondeviations covariance between any one parent and its offspring. Once more, after careful gathering of terms and simplification, this becomes cov(PO)_{D} = 2p^{2}q^{2}d^{2} = ½ s^{2}_{D} .
It follows therefore that: cov(PO) = cov(PO)_{A} + cov(PO)_{D} = ½ s^{2}_{A} + ½ s^{2}_{D} , when dominance is not overlooked !
Midparent and offspring (MPO)
Because there are many combinations of parental genotypes, there are many different midparents and offspring means to consider, together with the varying frequencies of obtaining each parental pairing. The genemodel approach is the most expedient in this case. Therefore, an unadjusted sum of crossproducts (USCP)—using all products { parentpairfrequency * midparentgeneeffect * offspringgenotypemean }—is adjusted by subtracting the {overall genotypic mean}^{2} as correction factor (CF). After multiplying out all the various combinations, carefully gathering terms, simplifying, factoring and cancellingout where applicable, this becomes:
cov(MPO) = pq [a + (qp)d ]^{2} = pq a^{2} = ½ s^{2}_{A} , with no dominance having been overlooked in this case, as it had been usedup in defining the a.[13] ^{:132–141}[14] ^{:134–147}
Applications (parentoffspring)
The most obvious application is an experiment that contains all parents and their offspring, with or without reciprocal crosses, preferably replicated without bias, enabling estimation of all appropriate means, variances and covariances, together with their standard errors. These estimated statistics can then be used to estimate the genetic variances. Twice the difference between the estimates of the two forms of (corrected) parentoffspring covariance provides an estimate of s^{2}_{D}; and twice the cov(MPO) estimates s^{2}_{A}. With appropriate experimental design and analysis,[9][49][50] standard errors can be obtained for these genetical statistics as well. This is the basic core of an experiment known as Diallel analysis, the Mather, Jinks and Hayman version of which is discussed in another section.
A second application involves using regression analysis, which estimates from statistics the ordinate (Yestimate), derivative (regression coefficient) and constant (Yintercept) of calculus.[9][49][59][60] The regression coefficient estimates the rate of change of the function predicting Y from X, based on minimizing the residuals between the fitted curve and the observed data (MINRES). No alternative method of estimating such a function satisfies this basic requirement of MINRES. In general, the regression coefficient is estimated as the ratio of the covariance(XY) to the variance of the determinator (X). In practice, the sample size is usually the same for both X and Y, so this can be written as SCP(XY) / SS(X), where all terms have been defined previously.[9][59][60] In the present context, the parents are viewed as the "determinative variable" (X), and the offspring as the "determined variable" (Y), and the regression coefficient as the "functional relationship" (ß_{PO}) between the two. Taking cov(MPO) = ½ s^{2}_{A} as cov(XY), and s^{2}_{P} / 2 (the variance of the mean of two parents—the midparent) as s^{2}_{X}, it can be seen that ß_{MPO} = [½ s^{2}_{A}] / [½ s^{2}_{P}] = h^{2} .[61] Next, utilizing cov(PO) = [ ½ s^{2}_{A} + ½ s^{2}_{D} ] as cov(XY), and s^{2}_{P} as s^{2}_{X}, it is seen that 2 ß_{PO} = [ 2 (½ s^{2}_{A} + ½ s^{2}_{D} )] / s^{2}_{P} = H^{2} .
Analysis of epistasis has previously been attempted via an interaction variance approach of the type s^{2}_{AA} , and s^{2}_{AD} and also s^{2}_{DD}. This has been integrated with these present covariances in an effort to provide estimators for the epistasis variances. However, the findings of epigenetics suggest that this may not be an appropriate way to define epistasis.
Siblings covariances
Covariance between halfsibs (HS) is defined easily using allelesubstitution methods; but, once again, the dominance contribution has historically been omitted. However, as with the midparent/offspring covariance, the covariance between fullsibs (FS) requires a "parentcombination" approach, thereby necessitating the use of the genemodel correctedcrossproduct method; and the dominance contribution has not historically been overlooked. The superiority of the genemodel derivations is as evident here as it was for the Genotypic variances.
Halfsibs of the same commonparent (HS)
The sum of the crossproducts { commonparent frequency * halfbreedingvalue of one halfsib * halfbreedingvalue of any other halfsib in that same commonparentgroup } immediately provides one of the required covariances, because the effects used [breeding values—representing the allelesubstitution expectations] are already defined as deviates from the genotypic mean [see section on "Allele substitution – Expectations and deviations"]. After simplification. this becomes: cov(HS)_{A} = ½ pq a^{2} = ¼ s^{2}_{A} .[13] ^{:132–141}[14] ^{:134–147} However, the substitution deviations also exist, defining the sum of the crossproducts { commonparent frequency * halfsubstitutiondeviation of one halfsib * halfsubstitutiondeviation of any other halfsib in that same commonparentgroup }, which ultimately leads to: cov(HS)_{D} = p^{2} q^{2} d^{2} = ¼ s^{2}_{D} . Adding the two components gives:
cov(HS) = cov(HS)_{A} + cov(HS)_{D} = ¼ s^{2}_{A} + ¼ s^{2}_{D} .
Fullsibs (FS)
As explained in the introduction, a method similar to that used for midparent/progeny covariance is used. Therefore, an unadjusted sum of crossproducts (USCP) using all products—{ parentpairfrequency * the square of the offspringgenotypemean }—is adjusted by subtracting the {overall genotypic mean}^{2} as correction factor (CF). In this case, multiplying out all combinations, carefully gathering terms, simplifying, factoring, and cancellingout is very protracted. It eventually becomes:
cov(FS) = pq a^{2} + p^{2} q^{2} d^{2} = ½ s^{2}_{A} + ¼ s^{2}_{D} , with no dominance having been overlooked.[13] ^{:132–141}[14] ^{:134–147}
Applications (siblings)
The most useful application here for genetical statistics is the correlation between halfsibs. Recall that the correlation coefficient (r) is the ratio of the covariance to the variance [see section on "Associated attributes" for example]. Therefore, r_{HS} = cov(HS) / s^{2}_{all HS together} = [¼ s^{2}_{A} + ¼ s^{2}_{D} ] / s^{2}_{P} = ¼ H^{2} .[62] The correlation between fullsibs is of little utility, being r_{FS} = cov(FS) / s^{2}_{all FS together} = [½ s^{2}_{A} + ¼ s^{2}_{D} ] / s^{2}_{P} . The suggestion that it "approximates" (½ h^{2}) is poor advice.
Of course, the correlations between siblings are of intrinsic interest in their own right, quite apart from any utility they may have for estimating heritabilities or genotypic variances.
It may be worth noting that [ cov(FS) − cov(HS)] = ¼ s^{2}_{A} . Experiments consisting of FS and HS families could utilize this by using intraclass correlation to equate experiment variance components to these covariances [see section on "Coefficient of relationship as an intraclass correlation" for the rationale behind this].
The earlier comments regarding epistasis apply again here [see section on "Applications (Parentoffspring"].
Selection
Basic principles
Selection operates on the attribute (phenotype), such that individuals that equal or exceed a selection threshold (z_{P}) become effective parents for the next generation. The proportion they represent of the base population is the selection pressure. The smaller the proportion, the stronger the pressure. The mean of the selected group (P_{s}) is superior to the basepopulation mean (P_{0}) by the difference called the selection differential (S). All these quantities are phenotypic. To "link" to the underlying genes, a heritability (h^{2}) is used, fulfilling the role of a coefficient of determination in the biometrical sense. The expected genetical change—still expressed in phenotypic units of measurement—is called the genetic advance (ΔG), and is obtained by the product of the selection differential (S) and its coefficient of determination (h^{2}). The expected mean of the progeny (P_{1}) is found by adding the genetic advance (ΔG) to the base mean (P_{0}). The graphs to the right show how the (initial) genetic advance is greater with stronger selection pressure (smaller probability). They also show how progress from successive cycles of selection (even at the same selection pressure) steadily declines, because the Phenotypic variance and the Heritability are being diminished by the selection itself. This is discussed further shortly.
Thus .[14] ^{:1710181} and .[14] ^{:1710181}
The narrowsense heritability (h^{2}) is usually used, thereby linking to the genic variance (σ^{2}_{A}) . However, if appropriate, use of the broadsense heritability (H^{2}) would connect to the genotypic variance (σ^{2}_{G}) ; and even possibly an allelic heritability [ h^{2}_{eu} = (σ^{2}_{a}) / (σ^{2}_{P}) ] might be contemplated, connecting to (σ^{2}_{a} ). [See section on Heritability.]
To apply these concepts before selection actually takes place, and so predict the outcome of alternatives (such as choice of selection threshold, for example), these phenotypic statistics are reconsidered against the properties of the Normal Distribution, especially those concerning truncation of the superior tail of the Distribution. In such consideration, the standardized selection differential (i)″ and the standardized selection threshold (z)″ are used instead of the previous "phenotypic" versions. The phenotypic standard deviate (σ_{P(0)}) is also needed. This is described in a subsequent section.
Therefore, ΔG = (i σ_{P}) h^{2}, where (i σ_{P(0)}) = S previously.[14] ^{:1710181}
The text above noted that successive ΔG declines because the "input" [the phenotypic variance ( σ^{2}_{P} )] is reduced by the previous selection.[14]^{:1710181} The heritability also is reduced. The graphs to the left show these declines over ten cycles of repeated selection during which the same selection pressure is asserted. The accumulated genetic advance (ΣΔG) has virtually reached its asymptote by generation 6 in this example. This reduction depends partly upon truncation properties of the Normal Distribution, and partly upon the heritability together with meiosis determination ( b^{2} ). The last two items quantify the extent to which the truncation is "offset" by new variation arising from segregation and assortment during meiosis.[14] ^{:1710181}[27] This is discussed soon, but here note the simplified result for undispersed random fertilization (f = 0).
Thus : σ^{2}_{P(1)} = σ^{2}_{P(0)} [1 − i ( iz) ½ h^{2}], where i ( iz) = K = truncation coefficient and ½ h^{2} = R = reproduction coefficient[14]^{:1710181}[27] This can be written also as σ^{2}_{P(1)} = σ^{2}_{P(0)} [1 − K R ], which facilitates more detailed analysis of selection problems.
Here, i and z have already been defined, ½ is the meiosis determination (b^{2}) for f=0, and the remaining symbol is the heritability. These are discussed further in following sections. Also notice that, more generally, R = b^{2} h^{2}. If the general meiosis determination ( b^{2} ) is used, the results of prior inbreeding can be incorporated into the selection. The phenotypic variance equation then becomes:
σ^{2}_{P(1)} = σ^{2}_{P(0)} [1 − i ( iz) b^{2} h^{2}].
The Phenotypic variance truncated by the selected group ( σ^{2}_{P(S)} ) is simply σ^{2}_{P(0)} [1 − K], and its contained genic variance is (h^{2}_{0} σ^{2}_{P(S)} ). Assuming that selection has not altered the environmental variance, the genic variance for the progeny can be approximated by σ^{2}_{A(1)} = ( σ^{2}_{P(1)} − σ^{2}_{E}) . From this, h^{2}_{1} = ( σ^{2}_{A(1)} / σ^{2}_{P(1)} ). Similar estimates could be made for σ^{2}_{G(1)} and H^{2}_{1} , or for σ^{2}_{a(1)} and h^{2}_{eu(1)} if required.
Alternative ΔG
The following rearrangement is useful for considering selection on multiple attributes (characters). It starts by expanding the heritability into its variance components. ΔG = i σ_{P} ( σ^{2}_{A} / σ^{2}_{P} ) . The σ_{P} and σ^{2}_{P} partially cancel, leaving a solo σ_{P}. Next, the σ^{2}_{A} inside the heritability can be expanded as (σ_{A} × σ_{A}), which leads to :
ΔG = i σ_{A} ( σ_{A} / σ_{P} ) = i σ_{A} h .
Corresponding rearrangements could be made using the alternative heritabilities, giving ΔG = i σ_{G} H or ΔG = i σ_{a} h_{eu}.
Polygenic Adaptation Models in Population Genetics
This traditional view of adaptation in quantitative genetics provides a model for how the selected phenotype changes over time, as a function of the selection differential and heritability. However it does not provide insight into (nor does it depend upon) any of the genetic details  in particular, the number of loci involved, their allele frequencies and effect sizes, and the frequency changes driven by selection. This, in contrast, is the focus of work on polygenic adaptation[63] within the field of population genetics. Recent studies have shown that traits such as height have evolved in humans during the past few thousands of years as a result of small allele frequency shifts at thousands of variants that affect height.[64][65][66]
Background
Standardized selection – the normal distribution
The entire base population is outlined by the normal curve[60]^{:78–89} to the right. Along the Z axis is every value of the attribute from least to greatest, and the height from this axis to the curve itself is the frequency of the value at the axis below. The equation for finding these frequencies for the "normal" curve (the curve of "common experience") is given in the ellipse. Notice it includes the mean (µ) and the variance (σ^{2}). Moving infinitesimally along the zaxis, the frequencies of neighbouring values can be "stacked" beside the previous, thereby accumulating an area that represents the probability of obtaining all values within the stack. [That's integration from calculus.] Selection focuses on such a probability area, being the shadedin one from the selection threshold (z) to the end of the superior tail of the curve. This is the selection pressure. The selected group (the effective parents of the next generation) include all phenotype values from z to the "end" of the tail.[67] The mean of the selected group is µ_{s}, and the difference between it and the base mean (µ) represents the selection differential (S). By taking partial integrations over curvesections of interest, and some rearranging of the algebra, it can be shown that the "selection differential" is S = [ y (σ / Prob.)] , where y is the frequency of the value at the "selection threshold" z (the ordinate of z).[13]^{:226–230} Rearranging this relationship gives S / σ = y / Prob., the lefthand side of which is, in fact, selection differential divided by standard deviation—that is the standardized selection differential (i). The rightside of the relationship provides an "estimator" for i—the ordinate of the selection threshold divided by the selection pressure. Tables of the Normal Distribution[49] ^{:547–548} can be used, but tabulations of i itself are available also.[68]^{:123–124} The latter reference also gives values of i adjusted for small populations (400 and less),[68]^{:111–122} where "quasiinfinity" cannot be assumed (but was presumed in the "Normal Distribution" outline above). The standardized selection differential (i) is known also as the intensity of selection.[14]^{:174 ; 186}
Finally, a crosslink with the differing terminology in the previous subsection may be useful: µ (here) = "P_{0}" (there), µ_{S} = "P_{S}" and σ^{2} = "σ^{2}_{P}".
Meiosis determination – reproductive path analysis
The meiosis determination (b^{2}) is the coefficient of determination of meiosis, which is the celldivision whereby parents generate gametes. Following the principles of standardized partial regression, of which path analysis is a pictorially oriented version, Sewall Wright analyzed the paths of geneflow during sexual reproduction, and established the "strengths of contribution" (coefficients of determination) of various components to the overall result.[27][37] Path analysis includes partial correlations as well as partial regression coefficients (the latter are the path coefficients). Lines with a single arrowhead are directional determinative paths, and lines with double arrowheads are correlation connections. Tracing various routes according to path analysis rules emulates the algebra of standardized partial regression.[55]
The path diagram to the left represents this analysis of sexual reproduction. Of its interesting elements, the important one in the selection context is meiosis. That's where segregation and assortment occur—the processes that partially ameliorate the truncation of the phenotypic variance that arises from selection. The path coefficients b are the meiosis paths. Those labeled a are the fertilization paths. The correlation between gametes from the same parent (g) is the meiotic correlation. That between parents within the same generation is r_{A}. That between gametes from different parents (f) became known subsequently as the inbreeding coefficient.[13]^{:64} The primes ( ' ) indicate generation (t1), and the unprimed indicate generation t. Here, some important results of the present analysis are given. Sewall Wright interpreted many in terms of inbreeding coefficients.[27][37]
The meiosis determination (b^{2}) is ½ (1+g) and equals ½ (1 + f_{(t1)}) , implying that g = f_{(t1)}.[69] With nondispersed random fertilization, f_{(t1)}) = 0, giving b^{2} = ½, as used in the selection section above. However, being aware of its background, other fertilization patterns can be used as required. Another determination also involves inbreeding—the fertilization determination (a^{2}) equals 1 / [ 2 ( 1 + f_{t} ) ] . Also another correlation is an inbreeding indicator—r_{A} = 2 f_{t} / ( 1 + f_{(t1)} ), also known as the coefficient of relationship. [Do not confuse this with the coefficient of kinship—an alternative name for the coancestry coefficient. See introduction to "Relationship" section.] This r_{A} reoccurs in the subsection on dispersion and selection.
These links with inbreeding reveal interesting facets about sexual reproduction that are not immediately apparent. The graphs to the right plot the meiosis and syngamy (fertilization) coefficients of determination against the inbreeding coefficient. There it is revealed that as inbreeding increases, meiosis becomes more important (the coefficient increases), while syngamy becomes less important. The overall role of reproduction [the product of the previous two coefficients—r^{2}] remains the same.[70] This increase in b^{2} is particularly relevant for selection because it means that the selection truncation of the Phenotypic variance is offset to a lesser extent during a sequence of selections when accompanied by inbreeding (which is frequently the case).
Genetic drift and selection
The previous sections treated dispersion as an "assistant" to selection, and it became apparent that the two work well together. In quantitative genetics, selection is usually examined in this "biometrical" fashion, but the changes in the means (as monitored by ΔG) reflect the changes in allele and genotype frequencies beneath this surface. Referral to the section on "Genetic drift" brings to mind that it also effects changes in allele and genotype frequencies, and associated means; and that this is the companion aspect to the dispersion considered here ("the other side of the same coin"). However, these two forces of frequency change are seldom in concert, and may often act contrary to each other. One (selection) is "directional" being driven by selection pressure acting on the phenotype: the other (genetic drift) is driven by "chance" at fertilization (binomial probabilities of gamete samples). If the two tend towards the same allele frequency, their "coincidence" is the probability of obtaining that frequencies sample in the genetic drift: the likelihood of their being "in conflict", however, is the sum of probabilities of all the alternative frequency samples. In extreme cases, a single syngamy sampling can undo what selection has achieved, and the probabilities of it happening are available. It is important to keep this in mind. However, genetic drift resulting in sample frequencies similar to those of the selection target does not lead to so drastic an outcome—instead slowing progress towards selection goals.
Correlated attributes
Upon jointly observing two (or more) attributes (eg height and mass), it may be noticed that they vary together as genes or environments alter. This covariation is measured by the covariance, which can be represented by " cov " or by θ.[43] It will be positive if they vary together in the same direction; or negative if they vary together but in opposite direction. If the two attributes vary independently of each other, the covariance will be zero. The degree of association between the attributes is quantified by the correlation coefficient (symbol r or ρ ). In general, the correlation coefficient is the ratio of the covariance to the geometric mean [71] of the two variances of the attributes.[60] ^{:196–198} Observations usually occur at the phenotype, but in research they may also occur at the "effective haplotype" (effective gene product) [see Figure to the right]. Covariance and correlation could therefore be "phenotypic" or "molecular", or any other designation which an analysis model permits. The phenotypic covariance is the "outermost" layer, and corresponds to the "usual" covariance in Biometrics/Statistics. However, it can be partitioned by any appropriate research model in the same way as was the phenotypic variance. For every partition of the covariance, there is a corresponding partition of the correlation. Some of these partitions are given below. The first subscript (G, A, etc.) indicates the partition. The secondlevel subscripts (X, Y) are "placekeepers" for any two attributes.
The first example is the unpartitioned phenotype.
The genetical partitions (a) "genotypic" (overall genotype),(b) "genic" (substitution expectations) and (c) "allelic" (homozygote) follow.
(a)
(b)
(c)
With an appropriately designed experiment, a nongenetical (environment) partition could be obtained also.
Underlying causes of correlation
The metabolic pathways from gene to phenotype are complex and varied, but the causes of correlation amongst attributes lie within them. An outline is shown in the Figure to the right.
See also
Footnotes and references
 Anderberg, Michael R. (1973). Cluster analysis for applications. New York: Academic Press.
 Mendel, Gregor (1866). "Versuche über Pflanzen Hybriden". Verhandlungen Naturforschender Verein in Brünn. iv.
 Mendel, Gregor; Bateson, William [translator] (1891). "Experiments in plant hybridisation". J. Roy. Hort. Soc. (London). xxv: 54–78.
 The Mendel G.; Bateson W. (1891) paper, with additional comments by Bateson, is reprinted in: Sinnott E.W.; Dunn L.C.; Dobzhansky T. (1958). "Principles of genetics"; New York, McGrawHill: 419443. Footnote 3, page 422 identifies Bateson as the original translator, and provides the reference for that translation.
 A QTL is a region in the DNA genome that effects, or is associated with, quantitative phenotypic traits.
 Watson, James D.; Gilman, Michael; Witkowski, Jan; Zoller, Mark (1998). Recombinant DNA (Second (7th printing) ed.). New York: W.H. Freeman (Scientific American Books). ISBN 9780716719946.
 Jain, H. K. [editor]; Kharkwal, M. C. [editor] (2004). Plant Breeding  Mendelian to molecular approaches. Boston Dordecht London: Kluwer Academic Publishers. ISBN 9781402019814.CS1 maint: extra text: authors list (link)
 Fisher, R. A. (1918). "The Correlation between Relatives on the Supposition of Mendelian Inheritance". Transactions of the Royal Society of Edinburgh. 52 (2): 399–433. doi:10.1017/s0080456800012163.
 Steel, R. G. D.; Torrie, J. H. (1980). Principles and procedures of statistics (2 ed.). New York: McGrawHill. ISBN 0070609268.
 Other symbols are sometimes used, but these are common.
 The allele effect is the average phenotypic deviation of the homozygote from the midpoint of the two contrasting homozygote phenotypes at one locus, when observed over the infinity of all background genotypes and environments. In practice, estimates from large unbiased samples substitute for the parameter.
 The dominance effect is the average phenotypic deviation of the heterozygote from the midpoint of the two homozygotes at one locus, when observed over the infinity of all background genotypes and environments. In practice, estimates from large unbiased samples substitute for the parameter.
 Crow, J. F.; Kimura, M. (1970). An introduction to population genetics theory. New York: Harper & Row.
 Falconer, D. S.; Mackay, Trudy F. C. (1996). Introduction to quantitative genetics (Fourth ed.). Harlow: Longman. ISBN 9780582243026. Lay summary – Genetics (journal) (24 August 2014).
 Mendel commented on this particular tendency for F1 > P1, i.e., evidence of hybrid vigour in stem length. However, the difference may not be significant. (The relationship between the range and the standard deviation is known [Steel and Torrie (1980): 576], permitting an approximate significance test to be made for this present difference.)
 Richards, A. J. (1986). Plant breeding systems. Boston: George Allen & Unwin. ISBN 0045810206.
 Jane Goodall Institute. "Social structure of chimpanzees". Chimp Central. Archived from the original on 3 July 2008. Retrieved 20 August 2014.
 Gordon, Ian L. (2000). "Quantitative genetics of allogamous F2: an origin of randomly fertiliized populations". Heredity. 85: 43–52. doi:10.1046/j.13652540.2000.00716.x. PMID 10971690.
 An F2 derived by self fertilizing F1 individuals (an autogamous F2), however, is not an origin of a randomly fertilized population structure. See Gordon (2001).
 Castle, W. E. (1903). "The law of heredity of Galton and Mendel and some laws governing race improvement by selection". Proceedings of the American Academy of Arts and Sciences. 39 (8): 233–242. doi:10.2307/20021870. hdl:2027/hvd.32044106445109. JSTOR 20021870.
 Hardy, G. H. (1908). "Mendelian proportions in a mixed population". Science. 28 (706): 49–50. Bibcode:1908Sci....28...49H. doi:10.1126/science.28.706.49. PMC 2582692. PMID 17779291.
 Weinberg, W. (1908). "Über den Nachweis der Verebung beim Menschen". Jahresh. Verein F. Vaterl. Naturk, Württem. 64: 368–382.
 Usually in science ethics, a discovery is named after the earliest person to propose it. Castle, however, seems to have been overlooked: and later when refound, the title "Hardy Weinberg" was so ubiquitous it seemed too late to update it. Perhaps the "Castle Hardy Weinberg" equilibrium would be a good compromise?
 Gordon, Ian L. (1999). "Quantitative genetics of intraspecies hybrids". Heredity. 83 (6): 757–764. doi:10.1046/j.13652540.1999.00634.x. PMID 10651921.
 Gordon, Ian L. (2001). "Quantitative genetics of autogamous F2". Hereditas. 134 (3): 255–262. doi:10.1111/j.16015223.2001.00255.x. PMID 11833289.
 Wright, S. (1917). "The average correlation within subgroups of a population". J. Wash. Acad. Sci. 7: 532–535.
 Wright, S. (1921). "Systems of mating. I. The biometric relations between parent and offspring". Genetics. 6 (2): 111–123. PMC 1200501. PMID 17245958.
 Sinnott, Edmund W.; Dunn, L. C.; Dobzhansky, Theodosius (1958). Principles of genetics. New York: McGrawHill.
 Fisher, R. A. (1999). The genetical theory of natural selection (variorum ed.). Oxford: Oxford University Press. ISBN 0198504403.
 Cochran, William G. (1977). Sampling techniques (Third ed.). New York: John Wiley & Sons.
 This is outlined subsequently in the genotypic variances section.
 Both are used commonly.
 See the earlier citations.
 Allard, R. W. (1960). Principles of plant breeding. New York: John Wiley & Sons.
 This is read as "σ ^{2}_{p} and/or σ ^{2}_{q}". As p and q are complementary, σ ^{2}_{p} ≡ σ ^{2}_{q} and σ ^{2}_{p} = σ ^{2}_{q}.
 Gordon, I.L. (2003). "Refinements to the partitioning of the inbred genotypic variance". Heredity. 91 (1): 85–89. doi:10.1038/sj.hdy.6800284. PMID 12815457.
 Wright, Sewall (1951). "The genetical structure of populations". Annals of Eugenics. 15 (4): 323–354. doi:10.1111/j.14691809.1949.tb02451.x. PMID 24540312.
 Remember that the issue of auto/allo zygosity can arise only for homologous alleles (that is A and A, or a and a), and not for nonhomologous alleles (A and a), which cannot possibly have the same allelic origin.
 It is common to use "α" rather than "β" for this quantity (eg in the references already cited). The latter is used herein in order to minimize any confusion with "a", which frequently occurs also within these same equations.
 Mather, Kenneth; Jinks, John L. (1971). Biometrical genetics (2 ed.). London: Chapman & Hall. ISBN 041210220X.
 In Mather's terminology, the fraction in front of the letter is a part of the label for the component.
 In each line of these equations, the components are presented in the same order. Therefore vertical comparison by component gives the definition of each in various forms. The Mather components have been translated thereby into Fisherian symbols: thus facilitating their comparison. The translation has been derived formally as well. See Gordon 2003.
 Covariance is the covariability between two sets of data. Similarly to the variance, it is based on a sum of crossproducts (SCP) instead of a SS. From this, it is clear therefore that the variance is but a special form of the covariance.
 Hayman, B. I. (1960). "The theory and analysis of the diallel cross. III". Genetics. 45: 155–172.
 It has been observed that when p = q, or when d = 0, β [= a+(qp)d] "reduces" to a. In such circumstances, σ^{2}_{A} = σ^{2}_{a}—but only numerically. They still have not become the one and the same identity. This would be a similar non sequitur to that noted earlier for the "substitution deviations" being regarded as the "dominance" for the genemodel.
 Supporting citations have been given already in the previous sections.
 Fisher did note that these residuals arose through the effects of dominance: but he refrained from defining them as the "dominance variance". (See the foregoing citations.) Refer again to the earlier discussions herein.
 While considering origins of terms: Fisher also proposed the word "variance" for this measure of variability. See Fisher (1999),p.311 and Fisher (1918).
 Snedecor, George W.; Cochran, William G. (1967). Statistical methods (Sixth ed.). Ames: Iowa State University Press. ISBN 0813815606.
 Kendall, M. G.; Stuart, A. (1958). The advanced theory of statistics. Volume 1 (2nd ed.). London: Charles Griffin.
 It is common practice not to have a subscript on the experimental "error" variance.
 In Biometry, it is a varianceratio in which a part is expressed as a fraction of the whole: that is, a coefficient of determination. Such coefficients are used particularly in regression analysis. A standardized version of regression analysis is path analysis. Here, standardizing means that the data were first divided by their own experimental standard errors to unify the scales for all attributes. This genetical usage is another major appearance of coefficients of determination.
 Gordon, I. L.; Byth, D. E.; Balaam, L. N. (1972). "Variance of heritability ratios estimated from phenotypic variance components". Biometrics. 28 (2): 401–415. doi:10.2307/2556156. JSTOR 2556156.
 Dohm, M. R. (2002). "Repeatability estimates do not always set an upper limit to heritibility". Functional Ecology. 16 (2): 273–280. doi:10.1046/j.13652435.2002.00621.x.
 Li, Ching Chun (1977). Path analysis  a Primer (Second printing with Corrections ed.). Pacific Grove: Boxwood Press. ISBN 091028640X.
 ie. parent, grandparent, greatgrandparent, etc.
 the squareroot of their product
 Moroney, M.J. (1956). Facts from figures (third ed.). Harmondsworth: Penguin Books.
 Draper, Norman R.; Smith, Harry (1981). Applied regression analysis (Second ed.). New York: John Wiley & Sons. ISBN 0471029955.
 Balaam, L. N. (1972). Fundamentals of biometry. London: George Allen & Unwin. ISBN 0045190089.
 In the past, both forms of parentoffspring covariance have been applied to this task of estimating h^{2}, but, as noted in the subsection above, only one of them (cov(MPO)) is actually appropriate. The cov(PO) is useful, however, for estimating H^{2} as seen in the main text following.
 Note that texts that ignore the dominance component of cov(HS) erroneously suggest that r_{HS} "approximates" ( ¼ h^{2} ).
 Pritchard, Jonathan K.; Pickrell, Joseph K.; Coop, Graham (23 February 2010). "The genetics of human adaptation: hard sweeps, soft sweeps, and polygenic adaptation". Current Biology. 20 (4): R208–215. doi:10.1016/j.cub.2009.11.055. ISSN 18790445. PMC 2994553. PMID 20178769.
 Turchin, Michael C.; Chiang, Charleston W. K.; Palmer, Cameron D.; Sankararaman, Sriram; Reich, David; Genetic Investigation of ANthropometric Traits (GIANT) Consortium; Hirschhorn, Joel N. (September 2012). "Evidence of widespread selection on standing variation in Europe at heightassociated SNPs". Nature Genetics. 44 (9): 1015–1019. doi:10.1038/ng.2368. ISSN 15461718. PMC 3480734. PMID 22902787.
 Berg, Jeremy J.; Coop, Graham (August 2014). "A population genetic signal of polygenic adaptation". PLoS Genetics. 10 (8): e1004412. doi:10.1371/journal.pgen.1004412. ISSN 15537404. PMC 4125079. PMID 25102153.
 Field, Yair; Boyle, Evan A.; Telis, Natalie; Gao, Ziyue; Gaulton, Kyle J.; Golan, David; Yengo, Loic; Rocheleau, Ghislain; Froguel, Philippe (11 November 2016). "Detection of human adaptation during the past 2000 years". Science. 354 (6313): 760–764. Bibcode:2016Sci...354..760F. doi:10.1126/science.aag0776. ISSN 00368075. PMC 5182071. PMID 27738015.
 Theoretically, the tail is infinite, but in practice there is a quasiend.
 Becker, Walter A. (1967). Manual of procedures in quantitative genetics (Second ed.). Pullman: Washington State University.
 Notice that this b^{2} is the coefficient of parentage (f_{AA}) of Pedigree analysis rewritten with a "generation level" instead of an "A" inside the parentheses.
 There is a small "wobble" arising from the fact that b^{2} alters one generation behind a^{2}—examine their inbreeding equations.
 Estimated as the squareroot of their product.
Further reading
 Falconer DS & Mackay TFC (1996). Introduction to Quantitative Genetics, 4th Edition. Longman, Essex, England.
 Lynch M & Walsh B (1998). Genetics and Analysis of Quantitative Traits. Sinauer, Sunderland, MA.
 Roff DA (1997). Evolutionary Quantitative Genetics. Chapman & Hall, New York.
 Seykora, Tony. Animal Science 3221 Animal Breeding. Tech. Minneapolis: University of Minnesota, 2011. Print.
External links
Wikimedia Commons has media related to Quantitative genetics. 
 The Breeder's Equation
 Quantitative Genetics Resources by Michael Lynch and Bruce Walsh, including the two volumes of their textbook, Genetics and Analysis of Quantitative Traits and Evolution and Selection of Quantitative Traits.
 Resources by Nick Barton et al. from the textbook, Evolution.
 The GMatrix Online