Towards more realistic models of genomes in populations: The Markov-modulated sequentially Markov coalescent

J. Dutheil
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引用次数: 7

Abstract

The development of coalescent theory paved the way to statistical inference from population genetic data. In the genomic era, however, coalescent models are limited due to the complexity of the underlying ancestral recombination graph. The sequentially Markov coalescent (SMC) is a heuristic that enables the modelling of complete genomes under the coalescent framework. While it empowers the inference of detailed demographic history of a population from as few as one diploid genome, current implementations of the SMC make unrealistic assumptions about the homogeneity of the coalescent process along the genome, ignoring the intrinsic spatial variability of parameters such as the recombination rate. Here, I review the historical developments of SMC models and discuss the evidence for parameter heterogeneity. I then survey approaches to handle this heterogeneity, focusing on a recently developed extension of the SMC.
迈向更现实的群体基因组模型:马尔可夫调制的顺序马尔可夫凝聚
凝聚理论的发展为从种群遗传数据进行统计推断铺平了道路。然而,在基因组时代,由于潜在祖先重组图的复杂性,聚合模型受到限制。序列马尔可夫聚结(SMC)是一种启发式方法,可以在聚结框架下对全基因组进行建模。虽然它可以从一个二倍体基因组中推断出一个群体的详细人口统计学历史,但目前的SMC实现对基因组中凝聚过程的同质性做出了不切实际的假设,忽略了诸如重组率等参数的内在空间变异性。在这里,我回顾了SMC模型的历史发展,并讨论了参数异质性的证据。然后,我调查了处理这种异质性的方法,重点是最近开发的SMC扩展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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