Tarasova Olga, Filimonov Dmitry, Poroikov Vladimir
1 Department for Bioinformatics, Institute of Biomedical Chemistry, 10 building 8, Pogodinskaya street, 119121, Moscow, Russia.
J Bioinform Comput Biol. 2017 Apr;15(2):1650040. doi: 10.1142/S0219720016500402. Epub 2016 Nov 22.
HIV reverse transcriptase (RT) inhibitors targeting the early stages of virus-host interactions are of great interest to scientists. Acquired HIV RT resistance happens due to mutations in a particular region of the pol gene encoding the HIV RT amino acid sequence. We propose an application of the previously developed PASS algorithm for prediction of amino acid substitutions potentially involved in the resistance of HIV-1 based on open data. In our work, we used more than 3200 HIV-1 RT variants from the publicly available Stanford HIV RT and protease sequence database already tested for 10 anti-HIV drugs including both nucleoside and non-nucleoside RT inhibitors. We used a particular amino acid residue and its position to describe primary structure-resistance relationships. The average balanced accuracy of the prediction obtained in 20-fold cross-validation for the Phenosense dataset was about 88% and for the Antivirogram dataset was about 79%. Thus, the PASS-based algorithm may be used for prediction of the amino acid substitutions associated with the resistance of HIV-1 based on open data. The computational approach for the prediction of HIV-1 associated resistance can be useful for the selection of RT inhibitors for the treatment of HIV infected patients in the clinical practice. Prediction of the HIV-1 RT associated resistance can be useful for the development of new anti-HIV drugs active against the resistant variants of RT. Therefore, we propose that this study can be potentially useful for anti-HIV drug development.
针对病毒与宿主相互作用早期阶段的HIV逆转录酶(RT)抑制剂引起了科学家们的极大兴趣。获得性HIV RT耐药性是由于编码HIV RT氨基酸序列的pol基因特定区域发生突变所致。我们提出应用先前开发的PASS算法,基于公开数据预测可能与HIV-1耐药性有关的氨基酸替代。在我们的研究中,我们使用了来自公开可用的斯坦福HIV RT和蛋白酶序列数据库的3200多个HIV-1 RT变体,这些变体已经针对10种抗HIV药物进行了测试,包括核苷类和非核苷类RT抑制剂。我们使用特定的氨基酸残基及其位置来描述一级结构与耐药性的关系。在对Phenosense数据集进行20倍交叉验证时获得的预测平均平衡准确率约为88%,对Antivirogram数据集的预测平均平衡准确率约为79%。因此,基于PASS的算法可用于基于公开数据预测与HIV-1耐药性相关的氨基酸替代。预测HIV-1相关耐药性的计算方法可用于临床实践中为HIV感染患者选择RT抑制剂。预测HIV-1 RT相关耐药性可用于开发对RT耐药变体有效的新型抗HIV药物。因此,我们认为这项研究可能对抗HIV药物开发具有潜在的用途。