首页> 外文会议>2012 IEEE International Conference on Bioinformatics and Biomedicine. >Prediction of human immunodeficiency virus type 1 drug resistance: Representation of target sequence mutational patterns via an n-grams approach
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Prediction of human immunodeficiency virus type 1 drug resistance: Representation of target sequence mutational patterns via an n-grams approach

机译:预测人类1型免疫缺陷病毒耐药性:通过n-grams方法表示靶序列突变模式

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Antiretroviral medications for treating human immunodeficiency virus type 1 (HTV-1) infection, in particular inhibitors of the HTV-1 protease (PR) and reverse transcriptase (RT) enzymes, are vulnerable to the emergence of target mutations leading to drug resistance. Here we explore the relationship between PR and RT mutational patterns and corresponding changes in susceptibility to each of their eight and 11 inhibitors, respectively, by developing drug-specific predictive models of resistance trained using previously assayed and publicly available in vitro mutant data. For each inhibitor, we present tenfold cross-validation performance measures of both classification as well as regression statistical learning algorithms. Two approaches are analyzed in each case, based on the use of either relative frequencies or counts of n-grams to represent mutant protein sequences as feature vectors. To the best of our knowledge, this is the first reported study on predictive models of HTV-1 PR and RT drug resistance developed by implementing n-grams to generate sequence attributes. Our technique is complementary to other sequence-based approaches and is competitive in performance. In a novel application, we classify every pair of RT inhibitors as either potentially effective as part of a larger drug cocktail or a combination that should not be concomitantly administered, with results that closely mirror available clinical and experimental data.
机译:用于治疗人类1型免疫缺陷病毒(HTV-1)感染的抗逆转录病毒药物,特别是HTV-1蛋白酶(PR)和逆转录酶(RT)酶的抑制剂,很容易出现靶点突变,从而导致耐药性。在这里,我们通过开发使用先前分析过的和可公开获得的体外突变体数据训练的耐药性的药物特异性预测模型,分别探索了PR和RT突变模式与相应的8种和11种抑制剂敏感性变化之间的关系。对于每种抑制剂,我们提供了分类和回归统计学习算法的十倍交叉验证性能度量。在每种情况下,都基于使用相对频率或n克计数来表示突变蛋白序列作为特征向量,分析了两种方法。据我们所知,这是首次报道的有关通过实施n-gram生成序列属性而开发的HTV-1 PR和RT耐药性预测模型的研究。我们的技术是对其他基于序列的方法的补充,并且在性能上具有竞争力。在一种新颖的应用中,我们将每对RT抑制剂归类为较大药物混合物的一部分可能有效,或者不应该同时给药的组合,其结果与现有的临床和实验数据密切相关。

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