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HIV-1 protease cleavage site prediction based on two-stage feature selection method

机译:基于两阶段特征选择方法的HIV-1蛋白酶切割位点预测

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摘要

Knowledge of the mechanism of HIV protease cleavage specificity is critical to the design of specific and effective HIV inhibitors. Searching for an accurate, robust, and rapid method to correctly predict the cleavage sites in proteins is crucial when searching for possible HIV inhibitors. In this article, HIV-1 protease specificity was studied using the correlation-based feature subset (CfsSubset) selection method combined with Genetic Algorithms method. Thirty important biochemical features were found based on a jackknife test from the original data set containing 4,248 features. By using the AdaBoost method with the thirty selected features the prediction model yields an accuracy of 96.7% for the jackknife test and 92.1% for an independent set test, with increased accuracy over the original dataset by 6.7% and 77.4%, respectively. Our feature selection scheme could be a useful technique for finding effective competitive inhibitors of HIV protease.
机译:了解HIV蛋白酶裂解特异性的机制对于设计特异性和有效的HIV抑制剂至关重要。在寻找可能的HIV抑制剂时,寻找一种准确,可靠且快速的方法来正确预测蛋白质中的切割位点至关重要。在本文中,使用基于相关特征的子集(CfsSubset)选择方法和遗传算法方法研究了HIV-1蛋白酶的特异性。根据包含4248个特征的原始数据集进行的折刀测试,发现了30个重要的生化特征。通过使用具有30个选定特征的AdaBoost方法,预测模型对折刀测试的准确性为96.7%,对于独立设置测试的准确性为92.1%,比原始数据集的准确性分别提高了6.7%和77.4%。我们的特征选择方案可能是寻找有效的HIV蛋白酶竞争性抑制剂的有用技术。

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