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Biological Features for Sequence-Based Prediction of Protein Stability Changes upon Amino Acid Substitutions

机译:基于序列的蛋白质稳定性预测对氨基酸取代的生物学特征

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Protein destabilization is a common mechanism by which amino acid substitutions cause human diseases. In this study, a new machine learning method has been developed for sequence-based prediction of protein stability changes upon single amino acid substitutions. Support vector machines were trained with data from experimental studies on the free energy change of protein stability upon mutations. To construct accurate classifiers, twenty biological features were examined for input vector encoding. It was shown that classifier performance varied significantly by the use of different features. The most accurate classifier was constructed using a combination of several biological features. This classifier achieved an overall accuracy of 82.24% with 75.24% sensitivity and 85.36% specificity. Predictive results at this level of accuracy may be used in human genetic studies to distinguish between deleterious and tolerant alterations in disease candidate genes.
机译:蛋白质不稳定是一种常见的机制,氨基酸取代导致人类疾病。在该研究中,已经开发了一种新的机器学习方法,用于术基术语稳定性对单氨基酸取代时的序列预测。支持向量机接受从实验研究的数据培训关于蛋白质稳定性的自由能变化的数据。为了构建精确的分类器,检查了20个生物学特征以进行输入向量编码。结果表明,分类器性能通过使用不同的特征而显着变化。最准确的分类器是使用多种生物学特征的组合构建的。该分类器的总精度为82.24%,灵敏度为75.24%和85.36%的特异性。在这种精度水平的预测结果可用于人类遗传研究,以区分疾病候选基因的有害和耐受性。

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