In?uenza-specific Amino Acid Substitution Model

Dang Cao Cuong, Le Si Quang, L. Vinh
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引用次数: 2

Abstract

Amino acid substitution model is a crucial component in protein sequence comparative systems such as protein sequence similarity searching, protein sequence alignment, and protein phylogenetic analysis. Although several general amino acid substitution models have been estimated from large protein databases, they might not be appropriate for analyzing specific species. In this paper, we apply the maximum likelihood approach to all influenza protein sequences to estimate an amino acid substitution model of so-called I09 for influenza viruses. Comparing I09 with fourteen other widely used models, we achieve remarkable results: (1) a likelihood improvement of phylogenetic trees based on I09 compared with other models. Precisely, I09 results in the best likelihood in 436 out of 489 cases tested; (2) tree topologies constructed with I09 and other models are frequently different indicating that the impact of I09 is not only on the likelihood improvement but also in tree topologies; (3) marked differences between I09 and other models revealing that existing models are not be able to capture the amino acid substitution process of influenza viruses.
在吗?流感特异性氨基酸取代模型
氨基酸取代模型是蛋白质序列相似性搜索、蛋白质序列比对和蛋白质系统发育分析等蛋白质序列比较系统的重要组成部分。虽然从大型蛋白质数据库中估计了几种通用的氨基酸替代模型,但它们可能不适合分析特定物种。在本文中,我们应用最大似然方法对所有流感蛋白序列估计一个氨基酸取代模型的所谓的I09流感病毒。将I09模型与其他14个被广泛使用的模型进行比较,我们获得了显著的结果:(1)与其他模型相比,基于I09模型的系统发育树的似然提高。准确地说,在测试的489例病例中,I09的结果是436例的最佳可能性;(2)用I09模型构建的树状拓扑与其他模型构建的树状拓扑经常不同,这表明I09不仅对似然改进有影响,而且对树状拓扑也有影响;(3) I09与其他模型之间存在显著差异,表明现有模型无法捕捉流感病毒的氨基酸取代过程。
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