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Host-specific HCV evolution and response to the combined interferon and ribavirin therapy

机译:宿主特异性HCV进化以及对干扰素和病毒唑联合治疗的反应

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Machine-learning methods in the form of Bayesian networks (BN), linear projection (LP) and self-organizing tree (SOT) models were used to explore association among polymorphic sites within the HVR1 and NS5a regions of the HCV genome, host demographic factors (ethnicity, gender and age) and response to the combined interferon (IFN) and ribavirin (RBV) therapy. The BN models predicted therapy outcomes, gender and ethnicity with accuracy of 90%, 90% and 88.9%, respectively. The LP and SOT models strongly confirmed associations of the HVR1 and NS5A structures with response to therapy and demographic host factors identified by BN. The data indicate host specificity of HCV evolution and suggest the application of these models to predict outcomes of IFN/RBV therapy.
机译:使用贝叶斯网络(BN),线性投影(LP)和自组织树(SOT)模型形式的机器学习方法来探索HCV基因组的HVR1和NS5a区域内的多态性位点与宿主人口统计学因素之间的关联(种族,性别和年龄)以及对干扰素(IFN)和病毒唑(RBV)联合治疗的反应。 BN模型可预测治疗效果,性别和种族,准确率分别为90%,90%和88.9%。 LP和SOT模型强烈证实了HVR1和NS5A结构与对BN鉴定的治疗反应和人口统计学宿主因素的关联。数据表明了HCV进化的宿主特异性,并暗示了这些模型在预测IFN / RBV治疗结果中的应用。

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