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Performance of computational tools in evaluating the functional impact of laboratory-induced amino acid mutations

机译:计算工具在评估实验室诱导的氨基酸突变的功能影响中的性能

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摘要

Summary: Site-directed mutagenesis is frequently used by scientists to investigate the functional impact of amino acid mutations in the laboratory. Over 10 000 such laboratory-induced mutations have been reported in the UniProt database along with the outcomes of functional assays. Here, we explore the performance of state-of-the-art computational tools (Condel, PolyPhen-2 and SIFT) in correctly annotating the function-altering potential of 10 913 laboratory-induced mutations from 2372 proteins. We find that computational tools are very successful in diagnosing laboratory-induced mutations that elicit significant functional change in the laboratory (up to 92% accuracy). But, these tools consistently fail in correctly annotating laboratory-induced mutations that show no functional impact in the laboratory assays. Therefore, the overall accuracy of computational tools for laboratory-induced mutations is much lower than that observed for the naturally occurring human variants. We tested and rejected the possibilities that the preponderance of changes to alanine and the presence of multiple base-pair mutations in the laboratory were the reasons for the observed discordance between the performance of computational tools for natural and laboratory mutations. Instead, we discover that the laboratory-induced mutations occur predominately at the highly conserved positions in proteins, where the computational tools have the lowest accuracy of correct prediction for variants that do not impact function (neutral). Therefore, the comparisons of experimental-profiling results with those from computational predictions need to be sensitive to the evolutionary conservation of the positions harboring the amino acid change.
机译:简介:科学家经常使用定点诱变来研究氨基酸突变在实验室中的功能影响。 UniProt数据库中已报告了超过10,000种此类实验室诱导的突变以及功能测定的结果。在这里,我们探讨了最新计算工具(Condel,PolyPhen-2和SIFT)在正确注释10913个实验室诱导的2372个蛋白突变的功能改变中的性能。我们发现计算工具在诊断由实验室引起的突变中非常成功,这些突变引起了实验室的重大功能变化(准确度高达92%)。但是,这些工具始终无法正确注释由实验室引起的突变,而这些突变在实验室测定中未显示任何功能性影响。因此,用于实验室诱导的突变的计算工具的整体精度远低于自然发生的人类变异所观察到的精度。我们测试并拒绝了以下可能性:丙氨酸的变化占优势,实验室中存在多个碱基对突变,这是观察到的自然和实验室突变计算工具性能之间不一致的原因。相反,我们发现实验室诱导的突变主要发生在蛋白质中高度保守的位置,在这些位置,计算工具对不影响功能的变异的正确预测的准确性最低(中性)。因此,将实验分析结果与计算预测结果进行比较时,必须对具有氨基酸变化的位置的进化保守性敏感。

著录项

  • 来源
    《Bioinformatics》 |2012年第16期|p.2093-2096|共4页
  • 作者单位

    1Center for Evolutionary Medicine and Informatics, Biodesign Institute, Arizona State University, Tempe, AZ 85287, USA, 2Genetics Program, Stanford University, Palo Alto, CA, USA and 3School of Life Sciences, ASU, Tempe, AZ 85287, USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
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