Yan Zhi, Ogilvie Huw A, Nakhleh Luay
Department of Computer Science, Rice University, 6100 Main Street, Houston 77005, TX, USA.
Mol Phylogenet Evol. 2023 Apr;181:107724. doi: 10.1016/j.ympev.2023.107724. Epub 2023 Jan 28.
Accurate inference of population parameters plays a pivotal role in unravelling evolutionary histories. While recombination has been universally accepted as a fundamental process in the evolution of sexually reproducing organisms, it remains challenging to model it exactly. Thus, existing coalescent-based approaches make different assumptions or approximations to facilitate phylogenetic inference, which can potentially bring about biases in estimates of evolutionary parameters when recombination is present. In this article, we evaluate the performance of population parameter estimation using three methods-StarBEAST2, SNAPP, and diCal2-that represent three different types of inference. We performed whole-genome simulations in which recombination rates, mutation rates, and levels of incomplete lineage sorting were varied. We show that StarBEAST2 using short or medium-sized loci is robust to realistic rates of recombination, which is in agreement with previous studies. SNAPP, as expected, is generally unaffected by recombination events. Most surprisingly, diCal2, a method that is designed to explicitly account for recombination, performs considerably worse than other methods under comparison.
准确推断群体参数在揭示进化历史中起着关键作用。虽然重组已被普遍认为是有性繁殖生物进化中的一个基本过程,但对其进行精确建模仍然具有挑战性。因此,现有的基于溯祖理论的方法会做出不同的假设或近似处理,以促进系统发育推断,而当存在重组时,这可能会在进化参数估计中引入偏差。在本文中,我们使用代表三种不同类型推断的三种方法——StarBEAST2、SNAPP和diCal2——来评估群体参数估计的性能。我们进行了全基因组模拟,其中重组率、突变率和不完全谱系分选水平各不相同。我们表明,使用短或中等长度基因座的StarBEAST2对实际重组率具有稳健性,这与先前的研究一致。正如预期的那样,SNAPP通常不受重组事件的影响。最令人惊讶的是,diCal2是一种旨在明确考虑重组的方法,在比较中其表现比其他方法差得多。