首页> 外文会议>Pacific Symposium on Biocomputing 2002, Jan 3-7, 2002, Kauai, Hawaii >DETECTING POSITIVELY SELECTED AMINO ACID SITES USING POSTERIOR PREDICTIVE P-VALUES
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DETECTING POSITIVELY SELECTED AMINO ACID SITES USING POSTERIOR PREDICTIVE P-VALUES

机译:使用后预测P值检测正酸位

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Identifying positively selected amino acid sites is an important approach for making inference about the function of proteins; an amino acid site that is undergoing positive selection is likely to play a key role in the function of the protein. We present a new Bayesian method for identifying positively selected amino acid sites and apply the method to a data set of hemagglutinin sequences from the Influenza virus. We show that the results of the new methods are in accordance with results obtained using previous methods. More importantly, we also demonstrate how the method can be used for making further inferences about the evolutionary history of the sequences. For example, we demonstrate that sites that are positively selected tend to have a preponderance of conservative amino acid substitutions.
机译:鉴定阳性选择的氨基酸位点是推断蛋白质功能的重要方法。进行正选择的氨基酸位点可能在蛋白质功能中起关键作用。我们提出了一种新的贝叶斯方法,用于识别阳性选择的氨基酸位点,并将该方法应用于来自流感病毒的血凝素序列数据集。我们表明新方法的结果与使用以前方法获得的结果一致。更重要的是,我们还演示了如何将该方法用于进一步推断序列的进化历史。例如,我们证明了被积极选择的位点倾向于具有保守氨基酸取代的优势。

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