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一种用于估计同义替换选择的新比较框架。

A New Comparative Framework for Estimating Selection on Synonymous Substitutions.

作者信息

Verdonk Hannah, Pivirotto Alyssa, Pavinato Vitor, Hey Jody, Pond Sergei L K

机构信息

Department of Biology, Institute for Genomics and Evolutionary Medicine, Temple University, Philadelphia, PA, USA.

Department of Biology, Center for Computational Genetics and Genomics, Temple University, Philadelphia, PA, USA.

出版信息

Mol Biol Evol. 2025 Apr 1;42(4). doi: 10.1093/molbev/msaf068.

Abstract

Selection on synonymous codon usage is a well-known and widespread phenomenon, yet existing models often do not account for it or its effect on synonymous substitution rates. In this article, we develop and expand the capabilities of multiclass synonymous substitution (MSS) models, which account for such selection by partitioning synonymous substitutions into 2 or more classes and estimating a relative substitution rate for each class, while accounting for important confounders like mutation bias. We identify extensive heterogeneity among relative synonymous substitution rates in an empirical dataset of ∼12,000 gene alignments from 12 Drosophila species. We validate model performance using data simulated under a forward population genetic simulation, demonstrating that MSS models are robust to model misspecification. MSS rates are significantly correlated with other covariates of selection on codon usage (population-level polymorphism data and tRNA abundance data), suggesting that models can detect weak signatures of selection on codon usage. With the MSS model, we can now study selection on synonymous substitutions in diverse taxa, independent of any a priori assumptions about the forces driving that selection.

摘要

对同义密码子使用的选择是一个广为人知且普遍存在的现象,然而现有的模型往往没有考虑到这一点,也没有考虑到它对同义替换率的影响。在本文中,我们开发并扩展了多类同义替换(MSS)模型的功能,该模型通过将同义替换划分为两个或更多类别,并估计每个类别的相对替换率来考虑这种选择,同时考虑到诸如突变偏差等重要的混杂因素。我们在一个由12种果蝇的约12,000个基因比对组成的实证数据集中,识别出相对同义替换率之间存在广泛的异质性。我们使用在前向群体遗传模拟下模拟的数据验证了模型性能,证明MSS模型对模型设定错误具有鲁棒性。MSS率与密码子使用选择的其他协变量(群体水平的多态性数据和tRNA丰度数据)显著相关,这表明该模型能够检测到密码子使用选择的微弱信号。有了MSS模型,我们现在可以研究不同分类群中同义替换的选择,而无需依赖于关于驱动该选择的力量的任何先验假设。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ab26/11979333/f20a306b5be9/msaf068f1.jpg

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