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Accurate prediction of HIV-1 drug response from the reverse transcriptase and protease amino acid sequences using sparse models created by convex optimization

机译:使用凸优化创建的稀疏模型从逆转录酶和蛋白酶氨基酸序列准确预测HIV-1药物反应

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Motivation: Genotype-phenotype modeling problems are often overcomplete, or ill-posed, since the number of potential predictors-genes, proteins, mutations and their interactions-is large relative to the number of measured outcomes. Such datasets can still be used to train sparse parameter models that generalize accurately, by exerting a principle similar to Occam's Razor: When many possible theories can explain the observations, the most simple is most likely to be correct. We apply this philosophy to modeling the drug response of Type-1 Human Immunodeficiency Virus (HIV-1). Owing to the decreasing expense of genetic sequencing relative to in vitro phenotype testing, a statistical model that reliably predicts viral drug response from genetic data is an important tool in the selection of antiretroviral therapy (ART). The optimization techniques described will have application to many genotype-phenotype modeling problems for the purpose of enhancing clinical decisions.
机译:动机:由于潜在的预测因子(基因,蛋白质,突变及其相互作用)的数量相对于所测结果的数量而言很大,因此基因型-表型建模问题通常过于完整或不适当。通过运用类似于Occam的Razor的原理,此类数据集仍可用于训练可精确概括的稀疏参数模型:当许多可能的理论可以解释观察结果时,最简单的方法很可能是正确的。我们将这一理念应用于对1型人类免疫缺陷病毒(HIV-1)的药物反应进行建模。由于相对于体外表型测试,基因测序的费用不断减少,因此可以从遗传数据可靠地预测病毒药物反应的统计模型是选择抗逆转录病毒疗法(ART)的重要工具。所描述的优化技术将应用于许多基因型-表型建模问题,以增强临床决策的目的。

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