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Identifying Significant Features in HIV Sequence to Predict Patients' Response to Therapies

机译:识别HIV序列中的重要特征以预测患者对疗法的反应

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The Human Immunodeficiency Virus (HIV) is a retrovirus that attacks the human immune system reducing its effectiveness. Combinations of antiretroviral drugs are used to treat the infection by HIV. However, the high mutation rate in the HIV virus makes it resistant to some antiretroviral drugs and leads to treatment failure. Nowadays, there are computational methods based on machine learning that try to predict the patients' response to therapies. In this bioinformatics study we deal with data preprocessing techniques to find significant features in HIV sequences that can be interesting for the prediction of patients' short-term progression. Experiments were conducted trough four classification methods using datasets composed by different sets of attributes. Classifiers trained with a dataset including solely viral load, CD4+ cell counts and information about mutations in the viral genome achieved accuracies ranging from 50.29% to 63.87%. Nevertheless, the addition of attributes (antiretroviral drug resistance levels, HIV subtype, epitope occurrence and others) in the dataset has improved the accuracy of the classifiers in almost all tests executed in this work, indicating its relevance to the prediction task discussed here.
机译:人类免疫缺陷病毒(HIV)是一种逆转录病毒,会攻击人类免疫系统,从而降低其有效性。抗逆转录病毒药物的组合用于治疗HIV感染。但是,HIV病毒的高突变率使其对某些抗逆转录病毒药物具有抗药性,并导致治疗失败。如今,有一些基于机器学习的计算方法试图预测患者对疗法的反应。在这项生物信息学研究中,我们使用数据预处理技术来发现HIV序列中的重要特征,这些特征对于预测患者的短期病情可能很有趣。通过四种分类方法,使用由不同属性集组成的数据集进行实验。使用仅包含病毒载量,CD4 +细胞计数以及有关病毒基因组突变信息的数据集进行训练的分类器,其准确度范围为50.29%至63.87%。但是,在数据集中添加属性(抗逆转录病毒药物耐药性水平,HIV亚型,抗原决定簇的出现等)可提高这项工作几乎执行的所有测试中分类器的准确性,表明其与此处讨论的预测任务相关。

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