评价错义突变的多特性耐受性分析

Tai-Sung Lee, S. Potts, M. Mcginniss, C. Strom
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引用次数: 1

摘要

如果没有额外的人类专家分析,对突变对蛋白质功能影响的计算预测仍然不够准确,无法用于临床诊断。基于序列比对的方法已被广泛使用,但其结果在很大程度上取决于输入比对的质量和序列的选择。将结构信息与对准相结合可以提高预测精度。在这里,我们提出了一种用于突变预测的氨基酸性质守恒方法,多性质耐受性分析(MuTA),以及一种将溶剂可及表面(SAS)性质纳入MuTA的新策略MuTA/S。它不是通过机器学习或数学方法组合多个特征,而是使用一种直观的策略将蛋白质的残基分成不同的组,并在每组中调整使用的属性。对LacI、溶菌酶和HIV蛋白酶的预测结果表明,MuTA算法的预测精度与广泛使用的SIFT算法相当,而MuTA/S算法的预测精度比SIFT和MuTA算法高出2%-25%。通过单独合并SAS项,总体预测精度的对齐依赖性显著降低。MuTA/S还定义了一种结合任何结构特征和知识的新方法,并可能导致更准确的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple Property Tolerance Analysis for the Evaluation of Missense Mutations
Computational prediction of the impact of a mutation on protein function is still not accurate enough for clinical diagnostics without additional human expert analysis. Sequence alignment-based methods have been extensively used but their results highly depend on the quality of the input alignments and the choice of sequences. Incorporating the structural information with alignments improves prediction accuracy. Here, we present a conservation of amino acid properties method for mutation prediction, Multiple Properties Tolerance Analysis (MuTA), and a new strategy, MuTA/S, to incorporate the solvent accessible surface (SAS) property into MuTA. Instead of combining multiple features by machine learning or mathematical methods, an intuitive strategy is used to divide the residues of a protein into different groups, and in each group the properties used is adjusted. The results for LacI, lysozyme, and HIV protease show that MuTA performs as well as the widely used SIFT algorithm while MuTA/S outperforms SIFT and MuTA by 2%–25% in terms of prediction accuracy. By incorporating the SAS term alone, the alignment dependency of overall prediction accuracy is significantly reduced. MuTA/S also defines a new way to incorporate any structural features and knowledge and may lead to more accurate predictions.
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