Max Planck Institute for Evolutionary Biology, August-Thienemann-Str. 2, Plön 24306, Germany.
Genetics. 2024 Jun 5;227(2). doi: 10.1093/genetics/iyae051.
The rate at which recombination events occur in a population is an indicator of its effective population size and the organism's reproduction mode. It determines the extent of linkage disequilibrium along the genome and, thereby, the efficacy of both purifying and positive selection. The population recombination rate can be inferred using models of genome evolution in populations. Classic methods based on the patterns of linkage disequilibrium provide the most accurate estimates, providing large sample sizes are used and the demography of the population is properly accounted for. Here, the capacity of approaches based on the sequentially Markov coalescent (SMC) to infer the genome-average recombination rate from as little as a single diploid genome is examined. SMC approaches provide highly accurate estimates even in the presence of changing population sizes, providing that (1) within genome heterogeneity is accounted for and (2) classic maximum-likelihood optimization algorithms are employed to fit the model. SMC-based estimates proved sensitive to gene conversion, leading to an overestimation of the recombination rate if conversion events are frequent. Conversely, methods based on the correlation of heterozygosity succeed in disentangling the rate of crossing over from that of gene conversion events, but only when the population size is constant and the recombination landscape homogeneous. These results call for a convergence of these two methods to obtain accurate and comparable estimates of recombination rates between populations.
在群体中发生重组事件的速率是其有效种群大小和生物繁殖模式的指标。它决定了基因组中连锁不平衡的程度,从而影响了纯化选择和正选择的效率。可以使用群体基因组进化模型来推断群体的重组率。基于连锁不平衡模式的经典方法提供了最准确的估计,前提是使用了大量样本并且正确考虑了群体的人口统计学特征。本文研究了基于顺序马尔可夫凝聚(SMC)的方法从单个二倍体基因组中推断基因组平均重组率的能力。即使在种群大小发生变化的情况下,SMC 方法也能提供高度准确的估计,前提是(1)考虑了基因组内的异质性,以及(2)采用经典的最大似然优化算法来拟合模型。基于 SMC 的估计对基因转换很敏感,如果转换事件频繁,会导致重组率的高估。相反,基于杂合性相关性的方法成功地将交叉事件的重组率与基因转换事件的重组率区分开来,但前提是种群大小保持不变且重组景观均匀。这些结果需要这两种方法的融合,以获得群体间重组率的准确和可比估计。