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C. C. Li and Quasi-Random Mating

Published online by Cambridge University Press:  14 September 2023

Alan E. Stark*
Affiliation:
School of Mathematics and Statistics FO7, The University of Sydney, Sydney, New South Wales, Australia
*
Corresponding author: Alan E. Stark; Email: alans@exemail.com.au

Abstract

A simple model by which Hardy-Weinberg proportions are attained in a single generation while maintaining gene frequencies is stated and illustrated. The title ‘Quasi-random mating’ is proposed. Confusion about the Hardy-Weinberg principle can be avoided only if there is clear separation between the basic deterministic model and factors influencing a population’s structure. Eighty years passed before C. C. Li coined the term ‘pseudo-random mating’. The lesson taught by Li has not been taken on board.

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Copyright
© The Author(s), 2023. Published by Cambridge University Press on behalf of International Society for Twin Studies

By a sleight of hand, G. H. Hardy (Reference Hardy1908) indicated how the proportions {q 2, p 2, 2pq} could be produced and maintained by ‘random mating’ while keeping the gene frequencies unchanged. Later, it was perceived that Wilhelm Weinberg (Reference Weinberg1908) had the same idea. Hardy (Reference Hardy1908) and Weinberg (Reference Weinberg1908) have been cited or honored countless times. Hardy has been portrayed in a feature film as the eccentric professor of mathematics. Weinberg is less well known in the English-speaking world. An account of his life and work is given by Sperlich and Früh (Reference Sperlich and Früh2015).

C. C. Li (Reference Li1988) proved that Hardy-Weinberg proportions can be maintained by what he called ‘pseudo-random’ mating. Kimura (Reference Kimura1988, pp. 87–91) has a section entitled ‘Gene Frequency and Mating System’. He is critical of the way the Hardy-Weinberg principle is treated in textbooks, pointing out that its most useful application is relating gene and genotypic frequencies rather than emphasizing how it explains stability. The preface to the book is dated February 1988, the same year in which Li (Reference Li1988) appeared. Kimura’s explanation of the Hardy-Weinberg principle is conventional and there is no way of knowing whether he would have changed it in the light of Li’s finding.

A search on the internet using the phrase ‘Hardy-Weinberg principle’ yields similar responses to that by Wikipedia (2023). After giving the array {q 2, 2pq, p 2}, Wikipedia states that the array is used primarily to test for population stratification and other forms of nonrandom mating. The inference is that if mating is not ‘random’, frequencies will not follow the above array. Evidently there is no impetus in the genetics community to incorporate the fact shown by Stark (Reference Stark2006) that the array can be produced in one round of nonrandom mating while keeping the gene frequencies constant. The point of this note is to restate the model in the simplest form with a numerical example. A suggested title for model (1) defined in the next section is ‘quasi-random mating’.

The final section comments briefly on the use of the Hardy-Weinberg principle in genetic association studies that exploit the notion called Mendelian randomization.

The Basic Model — ‘Quasi-Random Mating’

The usual entry to population genetics theory begins with the Hardy-Weinberg law. Consider an autosomal locus with two alleles A and B and genotypes AA, BB and AB numbered 1, 2 and 3. Mating pairs are formed in the current generation to produce offspring in the next. The proportions of the mating pairs are given symbolically in Table 1. The elements c ij are non-negative and symmetrical in value (c ij = c ji) and sum to 1.

Table 1. Symbolic mating proportions reproducing offspring

Malécot (Reference Malécot1969) is the English version of Les Mathématiques de l’Hérédité (published in 1948), which was one of the first systematic introductions to population genetics theory. In 1948, Malécot was still not aware of Weinberg (Reference Weinberg1908) and referred to Hardy’s (Reference Hardy1908) law.

Malécot’s account is faultless but, being expressed in probabilistic terms, it obscures the fact that Hardy’s model is deterministic. This would not create a problem except that it has led to the construction of an elaborate edifice in which the original model is embellished with the details of real populations.

There is a further problem in that Hardy’s model is incomplete. Li (Reference Li1988) shows that Hardy-Weinberg proportions can be maintained by nonrandom mating, which he calls ‘pseudo-random mating’. This property is implicit in a formula given by Stark (Reference Stark1980).

Stark (Reference Stark2006) shows that Hardy-Weinberg proportions can be reached in one generation from any genotypic distribution, assuming that males and females are equally distributed, as is now demonstrated. Suppose that the genotypic proportions are

$${G_1} = {q^2} + Fpq;\,{G_2} = {p^2} + Fpq;\,{G_3} = 2pq(1 - F),$$

F measures departure from Hardy-Weinberg form and the gene frequencies are $q = (2{G_1} + {G_3})/2;p = (2{G_2} + {G_3})/2 = 1 - q$ .

The mating frequencies are

(1) $${c_{ij}} = {G_i}{G_j}(1 + h{e_i}{e_j}/v)$$

where ${e_1} = p(F - 1)/(q + Fp); {e_2} = q(F - 1)/(p + Fq);{e_3} = 1;$

and $v = pq(1 - {F^2})/((q + Fp)(p + Fq)).$

The gene frequencies are not changed through the action of (1). Subject to constraints, h can be chosen over a wide range, allowing uncountable possibilities for varying the mating regime but still producing, in one generation, offspring distributed according to the Hardy-Weinberg formulae:

(2) $${H_1} = {q^2};{H_2} = {p^2};{H_3} = 2pq.$$

This can be verified by calculating the offspring frequencies by applying Mendel’s rule to (1):

$${{\rm{AA}}{c_{11}} + {c_{13}} + {c_{33}}/4;{\rm{BB}}\; {c_{22}} + {c_{23}} + {c_{33}}/4;{\rm{AB}} \;2{c_{12}} + {c_{13}} + {c_{23}} + {c_{33}}/2}$$

Table 2 illustrates the model for q = ¼, F = ⅓, h = 1/20. The offspring distribution is {1/16, 9/16, 6/16}.

Table 2. Mating proportions for parameters q = 1/4, F = 1/3, h = 1/20, elements to be divided by 512. Hardy-Weinberg proportions in offspring are {1, 9, 6}/16.

The Hardy-Weinberg model, as explained by Hardy (Reference Hardy1908), produced the equilibrium distribution characterized in the notation used here by

(3) $$4{H_1} \cdot {H_2} = {({H_3})^2}$$

Hardy used expression (3) simply as a shorthand for (2), which does not convey information about {c ij}. Malécot (Reference Malécot1969, p. 14) identifies (3) as ‘Hardy’s Law’. The set {G 1, G 2, G 3} conforms to (3) if and only if F = 0.

Mendelian Randomization

In many studies, counts of genotypes have produced proportions approximately in Hardy-Weinberg form. As a result it is used as a convenient benchmark for assessing the validity of data. Often the inference has been drawn that the mating regime of the population is ‘random’. The object of this paper is to stress that there is an uncountable number of ways, other than ‘random mating’, but close to random mating, which can produce the Hardy-Weinberg distribution. Taking the value h = 0 in (1) specifies what is given the label ‘random mating’. Taking negative and positive values of h near to zero provides mating regimes close to ‘random mating’ with Hardy-Weinberg frequencies in offspring for any starting structure.

Rodriguez et al. (Reference Rodriguez, Gaunt and Day2009) give an example of the epidemiological concept known as Mendelian randomization (MR). They state: ‘A particular genetic feature of randomly breeding populations is that of Hardy-Weinberg equilibrium (HWE)’ (p. 506). ‘In a very large (outbred) population there should be exact HWE at the point of conception’ (p. 512). They claim that MR permits causal inference between exposures and a disease. They suggest that property (3) could be used to construct a test for agreement with the Hardy-Weinberg distribution (p. 506).

In studies such as Gu et al. (Reference Gu, Hinks, Morton and Day2000), the expectation is that a locus will have approximate Hardy-Weinberg proportions so that a nonsignificant test result in the control group assures a valid comparison with affected subjects.

Gu et al. (Reference Gu, Hinks, Morton and Day2000) classified 1032 subjects with respect to the CYP2A6 locus, noting those who possessed, or did not possess, the 160H allele. Possessing the 160H allele was associated with later age to begin smoking and greater likelihood to quit smoking. From the point of view of this paper the authors validated their findings by comparing counts of the 160H allele with predictions based on the Hardy-Weinberg formulae (distribution [2]).

Bosco et al. (Reference Bosco, Castro and Briones2012) is an example of taking a simple test of concordance of a set of counts with hypothetical distribution (2) and building an elaborate theory with no obvious advantage to applied population genetics. The authors pursue a will-o’-the-wisp: ‘In order to identify the properties of the equilibrium state revealed by the system’s time series one should apply dynamical criteria and not statistical ones’ (p .9). Although Bosco et al. cite Li (Reference Li1988) and Stark (Reference Stark2006), the messages of Li and Stark are not reflected in their analysis.

It is ironic that much of the lip service paid to Hardy’s law is poorly directed, as Salanti et al. (Reference Salanti, Amountza, Ntzani and Ioannidis2005) show in detail. The authors evaluated dozens of genetic association studies published in high-prestige journals. They conclude that ‘testing and reporting for HWE is often neglected and deviations are rarely admitted in the published reports. Moreover, power is limited for HWE testing in most current genetic association studies’ (p. 840).

Fisher (Reference Fisher1922, p. 324) uses criterion (3) of the previous section in deriving the equilibrium of a locus under selection, showing clearly how he perceived that Hardy’s (Reference Hardy1908) paper had removed any doubts about how a population’s genetic composition could be maintained. Charlesworth (Reference Charlesworth2022) acknowledges the huge contribution of Fisher (Reference Fisher1922) but points out two errors, subsequently resolved, which do not diminish the achievement of that paper.

In that paper, Fisher refers to quantitative genetics theory developed by himself in 1918 that gives insight to the correlation between relatives for traits such as human stature. The variance and the correlation between parents, the tendency referred to as homogamy by Fisher, are central to the dissection of such traits.

Sella and Barton (Reference Sella and Barton2019) describe the use of genomewide association studies (GWASs) in humans to analyze the genetic basis of complex (quantitative) traits. Their article is wide ranging, taking in many facets, as would be expected after a century of intensive research on wild and commercial species. The following quotation illustrates the debt owed to Fisher (Reference Fisher1918):

With numerous loci affecting a trait, how should we think about the relationship between an individual’s genotypes at these loci and the person’s trait value? In principle, quantitative genetics can describe any relationship between genotype, environment, and phenotype. The variance of a trait due to genetics (V G) can be partitioned into additive (V A), dominance (V D), and a combined epistatic component (V I), which itself can be partitioned into two-locus (V AA, V AD and V DD) and multilocus components (V DDD, etc.); higher-order terms in this expansion are defined through the residuals of lower-order ones. Fisher introduced this expansion in his seminal 1918 paper, showing how in principle the components can be estimated from the phenotypic correlations among relatives. (p. 464)

Clark (Reference Clark2023) uses the theory in a study of social status in English pedigrees over a long period. He found three notable results: strong persistence of social status across family trees; decline in correlation with genetic distance in the lineage is unchanged over the period 1600–2022; the correlations follow those of a simple genetic model of additive genetic determination of status.

Genealogies, including 422,215 individuals born in the period 1600–2022, were assembled. Six measures of social status, one of which is literacy, were scored. Correlations for the measures were calculated for relatives up to fourth cousins.

For the birth period 1725–1869, the correlation between relatives for literacy decreased from .407 for full sibs to .146 for fourth cousins. Measures such as these are explained by Clark (Reference Clark2023) in terms of m, the correlation between parents, and h 2 , a measure of heritability for the trait.

Clark (Reference Clark2023) gives a table (Table A6, p. 32) of implied underlying phenotype correlation in marriage scores for the period 1837–2022. In five adjoining intervals over this period Clark gives the correlation between marriage partners as .480, .464, .384, .346, and .275. These were based on the score of the groom and an imputed measure of the bride using her father’s score. The relevance of Clark’s study for this paper is that choice of mates in humans is far from ‘random mating’.

A book review by Coop and Przeworski (Reference Coop and Przeworski2022) includes the following:

The author, Dr. Kathryn Paige Harden, is a Professor of Psychology at the University of Texas, Austin, who specializes in behavioral genetics. Her book starts from the premise that human behaviors, and in particular educational attainment, are ‘heritable,’ i.e., that within a study sample, some fraction of the phenotypic variance is explained by differences in genotypes. (p. 846)

In brief, Coop and Przeworski (Reference Coop and Przeworski2022) conclude that this view is not justified by current understanding. One suspects that they may have a similar view of Clark’s (Reference Clark2023) findings with respect to social status. Coop and Przewoski part company from Harden when Harden claims that a (Mendelian) lottery is a perfect metaphor for genetic inheritance. This gets into the difficult area of group comparisons such as comparing IQ scores in different racial groups.

Stark (Reference Stark2023) presents a different approach to maintaining a population’s genetic structure and Hardy-Weinberg equilibrium, which is the main focus of this paper.

Acknowledgments

To Eugene Seneta and Paulo Otto, standard bearers of Science, and to a reviewer who identified an error and some omissions of relevant literature in the original, which have been corrected accordingly.

Financial support

None.

Competing interests

None.

Ethical standards

No experimental subjects were involved.

Publication ethics

Sources acknowledged.

References

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Figure 0

Table 1. Symbolic mating proportions reproducing offspring

Figure 1

Table 2. Mating proportions for parameters q = 1/4, F = 1/3, h = 1/20, elements to be divided by 512. Hardy-Weinberg proportions in offspring are {1, 9, 6}/16.