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Ensemble Classifiers for Predicting HIV-1 Resistance from Three Rule-Based Genotypic Resistance Interpretation Systems

机译:用于预测三种规则的基因型电阻解释系统预测HIV-1电阻的集合分类剂

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摘要

Resistance to antiretrovirals (ARVs) is a major problem faced by HIV-infected individuals. Different rule-based algorithms were developed to infer HIV-1 susceptibility to antiretrovirals from genotypic data. However, there is discordance between them, resulting in difficulties for clinical decisions about which treatment to use. Here, we developed ensemble classifiers integrating three interpretation algorithms: Agence Nationale de Recherche sur le SIDA (ANRS), Rega, and the genotypic resistance interpretation system from Stanford HIV Drug Resistance Database (HIVdb). Three approaches were applied to develop a classifier with a single resistance profile: stacked generalization, a simple plurality vote scheme and the selection of the interpretation system with the best performance. The strategies were compared with the Friedman's test and the performance of the classifiers was evaluated using the F-measure, sensitivity and specificity values. We found that the three strategies had similar performances for the selected antiretrovirals. For some cases, the stacking technique with naive Bayes as the learning algorithm showed a statistically superior F-measure. This study demonstrates that ensemble classifiers can be an alternative tool for clinical decision-making since they provide a single resistance profile from the most commonly used resistance interpretation systems.
机译:抗逆转录病毒(ARV)的抗性是艾滋病毒感染的个体面临的主要问题。开发了不同的基于规则的算法,以从基因型数据中推断对抗逆转录病毒的HIV-1易感性。但是,它们之间存在着名,导致临床决定难以使用的临床决策。在这里,我们开发了集成了三个解释算法的集成分类器:Agence Nationale de Recherche Sur Le Sida(ANR),Rega和来自斯坦福艾滋病毒毒性抗药性数据库(HIVDB)的基因型阻力解释系统。应用三种方法以开发具有单阻曲线的分类器:堆叠概括,简单的多种投票方案以及具有最佳性能的解释系统的选择。将策略与Friedman的测试进行比较,使用F测量,灵敏度和特异性值评估分类器的性能。我们发现三种策略对所选抗逆转录病毒具有相似的性能。对于某些情况,作为学习算法作为幼稚贝叶斯的堆叠技术显示出统计上优越的F测量。本研究表明,集合分类器可以是临床决策的替代工具,因为它们提供了来自最常用的电阻解释系统的单阻曲线。

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