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An Investigation of Classification Algorithms for Predicting HIV Drug Resistance without Genotype Resistance Testing

机译:不进行基因型耐药性测试即可预测HIV耐药性的分类算法研究

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The development of drug resistance is a major factor impeding the efficacy of antiretroviral treatment of South Africa's HIV infected population. While genotype resistance testing is the standard method to determine resistance, access to these tests is limited in low-resource settings. In this paper we investigate machine learning techniques for drug resistance prediction from routine treatment and laboratory data to help clinicians select patients for confirmatory genotype testing. The techniques, including binary relevance, HOMER, MLkNN, predictive clustering trees (PCT), RAkEL and ensemble of classifier chains were tested on a dataset of 252 medical records of patients enrolled in an HIV treatment failure clinic in rural KwaZulu-Natal in South Africa. The PCT method performed best with a discriminant power of 1.56 for two drugs, above 1.0 for three others and a mean true positive rate of 0.68. These methods show potential for application where access to genotyping is limited.
机译:耐药性的发展是阻碍南非艾滋病毒感染人群抗逆转录病毒治疗疗效的主要因素。虽然基因型抗性测试是确定抗性的标准方法,但在资源匮乏的情况下,进行这些测试的方法受到限制。在本文中,我们研究了从常规治疗和实验室数据中预测耐药性的机器学习技术,以帮助临床医生选择要进行确证基因型检测的患者。在南非夸祖鲁-纳塔尔省农村的一个HIV治疗失败诊所登记的252名患者的医疗记录中对包括二进制相关性,HOMER,MLkNN,预测聚类树(PCT),RAkEL和分类器链集成在内的技术进行了测试。 PCT方法表现最佳,对两种药物的判别力为1.56,对其他三种药物的判别力为1.0,平均真实阳性率为0.68。这些方法显示了在基因分型受到限制的应用中的潜力。

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