PsiPartition: Improved Site Partitioning for Genomic Data by Parameterized Sorting Indices and Bayesian Optimization.

IF 2.1 3区 生物学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY Journal of Molecular Evolution Pub Date : 2024-12-01 Epub Date: 2024-12-05 DOI:10.1007/s00239-024-10215-7
Shijie Xu, Akira Onoda
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引用次数: 0

Abstract

Phylogenetics has been widely used in molecular biology to infer the evolutionary relationships among species. With the rapid development of sequencing technology, genomic data with thousands of sites become increasingly common in phylogenetic analysis, while heterogeneity among sites arises as one of the major challenges. A single homogeneous model is not sufficient to describe the evolution of all sites and partitioned models are often employed to model the evolution of heterogeneous sites by partitioning them into distinct groups and utilizing distinct evolutionary models for each group. It is crucial to determine the best partitioning, which greatly affects the reconstruction correctness of phylogeny. However, the best partitioning is usually intractable to obtain in practice. Traditional partitioning methods rely on heuristic algorithms or greedy search to determine the best ones in their solution space, are usually time consuming, and with no guarantee of optimality. In this study, we propose a novel partitioning approach, termed PsiPartition, based on the parameterized sorting indices of sites and Bayesian optimization. We apply our method to empirical datasets, and it performs significantly better compared to existing methods, in terms of Bayesian information criterion (BIC) and the corrected Akaike information criterion (AICc). We test PsiPartition on the simulated datasets with different site heterogeneity, alignment lengths, and number of loci. It is demonstrated that PsiPartition evidently and stably outperforms other methods in terms of the Robinson-Foulds (RF) distance between the true simulated trees and the reconstructed trees, especially on the data with more site heterogeneity. More importantly, our proposed Bayesian optimization-based method, for the first time, provides a new general framework to efficiently determine the optimal number of partitions. The corresponding reproducible source code and data are available at http://github.com/xu-shi-jie/PsiPartition .

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PsiPartition:基于参数化排序指标和贝叶斯优化的基因组数据改进位点划分。
系统发育学在分子生物学中被广泛用于推断物种之间的进化关系。随着测序技术的快速发展,具有数千个位点的基因组数据在系统发育分析中越来越普遍,而位点间的异质性成为主要挑战之一。单一的同质模型不足以描述所有位点的演化,而划分模型通常被用来模拟异质位点的演化,方法是将它们划分为不同的组,并对每个组使用不同的演化模型。最佳划分的确定对系统发育重建的正确性有重要影响。然而,在实践中,最佳划分通常难以获得。传统的分区方法依赖于启发式算法或贪婪搜索来确定其解空间中的最佳分区,通常耗时且不能保证最优性。在这项研究中,我们提出了一种新的划分方法,称为PsiPartition,基于站点的参数化排序指标和贝叶斯优化。我们将我们的方法应用于经验数据集,在贝叶斯信息准则(BIC)和修正的赤池信息准则(AICc)方面,与现有方法相比,它的表现明显更好。我们在具有不同位点异质性、排列长度和位点数量的模拟数据集上测试了PsiPartition。结果表明,PsiPartition在真实模拟树与重建树之间的Robinson-Foulds (RF)距离方面明显且稳定地优于其他方法,特别是在站点异质性较大的数据上。更重要的是,我们提出的基于贝叶斯优化的方法首次提供了一个新的通用框架来有效地确定最优分区数量。相应的可复制源代码和数据可在http://github.com/xu-shi-jie/PsiPartition上获得。
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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来源期刊
Journal of Molecular Evolution
Journal of Molecular Evolution 生物-进化生物学
CiteScore
5.50
自引率
2.60%
发文量
36
审稿时长
3 months
期刊介绍: Journal of Molecular Evolution covers experimental, computational, and theoretical work aimed at deciphering features of molecular evolution and the processes bearing on these features, from the initial formation of macromolecular systems through their evolution at the molecular level, the co-evolution of their functions in cellular and organismal systems, and their influence on organismal adaptation, speciation, and ecology. Topics addressed include the evolution of informational macromolecules and their relation to more complex levels of biological organization, including populations and taxa, as well as the molecular basis for the evolution of ecological interactions of species and the use of molecular data to infer fundamental processes in evolutionary ecology. This coverage accommodates such subfields as new genome sequences, comparative structural and functional genomics, population genetics, the molecular evolution of development, the evolution of gene regulation and gene interaction networks, and in vitro evolution of DNA and RNA, molecular evolutionary ecology, and the development of methods and theory that enable molecular evolutionary inference, including but not limited to, phylogenetic methods.
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