首页> 美国卫生研究院文献>International Journal of Molecular Sciences >Targeting HIV/HCV Coinfection Using a Machine Learning-Based Multiple Quantitative Structure-Activity Relationships (Multiple QSAR) Method
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Targeting HIV/HCV Coinfection Using a Machine Learning-Based Multiple Quantitative Structure-Activity Relationships (Multiple QSAR) Method

机译:使用基于机器学习的多重定量构效关系(多重QSAR)方法靶向HIV / HCV合并感染

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摘要

Human immunodeficiency virus type-1 and hepatitis C virus (HIV/HCV) coinfection occurs when a patient is simultaneously infected with both human immunodeficiency virus type-1 (HIV-1) and hepatitis C virus (HCV), which is common today in certain populations. However, the treatment of coinfection is a challenge because of the special considerations needed to ensure hepatic safety and avoid drug–drug interactions. Multitarget inhibitors with less toxicity may provide a promising therapeutic strategy for HIV/HCV coinfection. However, the identification of one molecule that acts on multiple targets simultaneously by experimental evaluation is costly and time-consuming. In silico target prediction tools provide more opportunities for the development of multitarget inhibitors. In this study, by combining Naïve Bayes (NB) and support vector machine (SVM) algorithms with two types of molecular fingerprints, MACCS and extended connectivity fingerprints 6 (ECFP6), 60 classification models were constructed to predict compounds that were active against 11 HIV-1 targets and four HCV targets based on a multiple quantitative structure–activity relationships (multiple QSAR) method. Five-fold cross-validation and test set validation were performed to measure the performance of the 60 classification models. Our results show that the 60 multiple QSAR models appeared to have high classification accuracy in terms of the area under the ROC curve (AUC) values, which ranged from 0.83 to 1 with a mean value of 0.97 for the HIV-1 models and from 0.84 to 1 with a mean value of 0.96 for the HCV models. Furthermore, the 60 models were used to comprehensively predict the potential targets of an additional 46 compounds, including 27 approved HIV-1 drugs, 10 approved HCV drugs and nine selected compounds known to be active against one or more targets of HIV-1 or HCV. Finally, 20 hits, including seven approved HIV-1 drugs, four approved HCV drugs, and nine other compounds, were predicted to be HIV/HCV coinfection multitarget inhibitors. The reported bioactivity data confirmed that seven out of nine compounds actually interacted with HIV-1 and HCV targets simultaneously with diverse binding affinities. The remaining predicted hits and chemical-protein interaction pairs with the potential ability to suppress HIV/HCV coinfection are worthy of further experimental investigation. This investigation shows that the multiple QSAR method is useful in predicting chemical-protein interactions for the discovery of multitarget inhibitors and provides a unique strategy for the treatment of HIV/HCV coinfection.
机译:当患者同时感染1型人类免疫缺陷病毒(HIV-1)和C型肝炎病毒(HCV)时,就会发生1型人类免疫缺陷病毒和丙型肝炎病毒(HIV / HCV)合并感染。人口。但是,由于需要确保肝安全并避免药物相互作用的特殊考虑因素,因此对合并感染的治疗是一个挑战。毒性较小的多靶点抑制剂可能为HIV / HCV合并感染提供有希望的治疗策略。然而,通过实验评估鉴定同时作用于多个靶标的一种分子既昂贵又费时。计算机靶标预测工具为开发多靶标抑制剂提供了更多机会。在这项研究中,通过将朴素贝叶斯(NB)和支持向量机(SVM)算法与两种类型的分子指纹,MACCS和扩展连接指纹6(ECFP6)相结合,构建了60个分类模型来预测对11种HIV具有活性的化合物-1个目标和四个HCV目标基于多重定量结构-活性关系(多重QSAR)方法。进行了五次交叉验证和测试集验证,以衡量60个分类模型的性能。我们的结果表明,就ROC曲线(AUC)值下的面积而言,这60个多个QSAR模型似乎具有较高的分类准确性,其范围从0.83到1,HIV-1模型的平均值为0.97,而平均值为0.84 HCV模型的平均值为0.96时为1。此外,使用60种模型来全面预测另外46种化合物的潜在目标,包括27种已批准的HIV-1药物,10种已批准的HCV药物和9种选定的已知对一种或多种HIV-1或HCV目标具有活性的化合物。最后,预计包括20种药物(包括7种批准的HIV-1药物,4种批准的HCV药物和9种其他化合物)是HIV / HCV合并感染多靶点抑制剂。报告的生物活性数据证实,九种化合物中有七种实际上与HIV-1和HCV靶标同时相互作用,并具有多种结合亲和力。剩余的预测命中和化学-蛋白质相互作用对以及潜在的抑制HIV / HCV合并感染的能力值得进一步的实验研究。这项研究表明,多重QSAR方法可用于预测化学蛋白质相互作用,以发现多靶点抑制剂,并为治疗HIV / HCV合并感染提供了独特的策略。

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