Large effects and the infinitesimal model

IF 1.2 4区 生物学 Q4 ECOLOGY Theoretical Population Biology Pub Date : 2024-02-27 DOI:10.1016/j.tpb.2024.02.009
Todd L. Parsons , Peter L. Ralph
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Abstract

The infinitesimal model of quantitative genetics relies on the Central Limit Theorem to stipulate that under additive models of quantitative traits determined by many loci having similar effect size, the difference between an offspring’s genetic trait component and the average of their two parents’ genetic trait components is Normally distributed and independent of the parents’ values. Here, we investigate how the assumption of similar effect sizes affects the model: if, alternatively, the tail of the effect size distribution is polynomial with exponent α<2, then a different Central Limit Theorem implies that sums of effects should be well-approximated by a “stable distribution”, for which single large effects are often still important. Empirically, we first find tail exponents between 1 and 2 in effect sizes estimated by genome-wide association studies of many human disease-related traits. We then show that the independence of offspring trait deviations from parental averages in many cases implies the Gaussian aspect of the infinitesimal model, suggesting that non-Gaussian models of trait evolution must explicitly track the underlying genetics, at least for loci of large effect. We also characterize possible limiting trait distributions of the infinitesimal model with infinitely divisible noise distributions, and compare our results to simulations.

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大效应和无穷小模型
数量遗传学的无穷小模型依赖于中心极限定理(Central Limit Theorem),该定理规定,在由具有相似效应大小的多个基因位点决定的数量性状的加性模型中,子代的遗传性状分量与其父母双方的遗传性状分量的平均值之间的差异是正常分布的,且与父母的数值无关。在此,我们研究了效应大小相似的假设对模型的影响:如果效应大小分布的尾部是指数为α<2的多项式,那么不同的中心极限定理意味着效应总和应能很好地近似于 "稳定分布",而单个大效应往往仍然很重要。根据经验,我们首先发现许多人类疾病相关性状的全基因组关联研究估计的效应大小的尾部指数介于 1 和 2 之间。然后我们证明,在许多情况下,子代性状偏离亲代平均值的独立性意味着无穷小模型的高斯性,这表明性状进化的非高斯模型必须明确跟踪潜在的遗传学,至少对于大效应位点是如此。我们还描述了具有无限可分噪声分布的无限小模型的可能极限性状分布,并将我们的结果与模拟结果进行了比较。
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来源期刊
Theoretical Population Biology
Theoretical Population Biology 生物-进化生物学
CiteScore
2.50
自引率
14.30%
发文量
43
审稿时长
6-12 weeks
期刊介绍: An interdisciplinary journal, Theoretical Population Biology presents articles on theoretical aspects of the biology of populations, particularly in the areas of demography, ecology, epidemiology, evolution, and genetics. Emphasis is on the development of mathematical theory and models that enhance the understanding of biological phenomena. Articles highlight the motivation and significance of the work for advancing progress in biology, relying on a substantial mathematical effort to obtain biological insight. The journal also presents empirical results and computational and statistical methods directly impinging on theoretical problems in population biology.
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