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Exploiting HIV-1 protease and reverse transcriptase cross-resistance information for improved drug resistance prediction by means of multi-label classification

机译:利用HIV-1蛋白酶和逆转录酶交叉抗性信息通过多标签分类提高耐药性预测

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Background Antiretroviral therapy is essential for human immunodeficiency virus (HIV) infected patients to inhibit viral replication and therewith to slow progression of disease and prolong a patient’s life. However, the high mutation rate of HIV can lead to a fast adaptation of the virus under drug pressure and thereby to the evolution of resistant variants. In turn, these variants will lead to the failure of antiretroviral treatment. Moreover, these mutations cannot only lead to resistance against single drugs, but also to cross-resistance, i.e., resistance against drugs that have not yet been applied. Methods 662 protease sequences and 715 reverse transcriptase sequences with complete resistance profiles were analyzed using machine learning techniques, namely binary relevance classifiers, classifier chains, and ensembles of classifier chains. Results In our study, we applied multi-label classification models incorporating cross-resistance information to predict drug resistance for two of the major drug classes used in antiretroviral therapy for HIV-1, namely protease inhibitors (PIs) and non-nucleoside reverse transcriptase inhibitors (NNRTIs). By means of multi-label learning, namely classifier chains (CCs) and ensembles of classifier chains (ECCs), we were able to improve overall prediction accuracy for all drugs compared to hitherto applied binary classification models. Conclusions The development of fast and precise models to predict drug resistance in HIV-1 is highly important to enable a highly effective personalized therapy. Cross-resistance information can be exploited to improve prediction accuracy of computational drug resistance models.
机译:背景技术抗逆转录病毒疗法对于感染人类免疫缺陷病毒(HIV)的患者抑制病毒复制,从而减缓疾病进程并延长患者寿命至关重要。但是,HIV的高突变率可能导致病毒在药物压力下快速适应,从而导致耐药变体的进化。反过来,这些变体将导致抗逆转录病毒治疗失败。而且,这些突变不仅导致对单一药物的抗性,而且导致交叉抗性,即对尚未应用的药物的抗性。方法使用机器学习技术,即二元相关分类器,分类器链和分类器链的集合,分析了具有完整抗性的662个蛋白酶序列和715个逆转录酶序列。结果在我们的研究中,我们应用了包含交叉耐药性信息的多标签分类模型来预测HIV-1抗逆转录病毒疗法中使用的两种主要药物的耐药性,即蛋白酶抑制剂(PIs)和非核苷逆转录酶抑制剂(NNRTIs)。通过多标签学习,即分类器链(CCs)和分类器链集成(ECCs),与迄今为止应用的二元分类模型相比,我们能够提高所有药物的总体预测准确性。结论建立快速,精确的预测HIV-1耐药性的模型对于实现高效的个性化治疗至关重要。可以利用交叉耐药性信息来提高计算耐药性模型的预测准确性。

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