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Pharmacogenomics of drug efficacy in the interferon treatment of chronic hepatitis C using classification algorithms

机译:用分类算法在慢性丙型肝炎的干扰素治疗中药效的药物基因组学

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Abstract: Chronic hepatitis C (CHC) patients often stop pursuing interferon-alfa and ribavirin (IFN-alfa/RBV) treatment because of the high cost and associated adverse effects. It is highly desirable, both clinically and economically, to establish tools to distinguish responders from nonresponders and to predict possible outcomes of the IFN-alfa/RBV treatments. Single nucleotide polymorphisms (SNPs) can be used to understand the relationship between genetic inheritance and IFN-alfa/RBV therapeutic response. The aim in this study was to establish a predictive model based on a pharmacogenomic approach. Our study population comprised Taiwanese patients with CHC who were recruited from multiple sites in Taiwan. The genotyping data was generated in the high-throughput genomics lab of Vita Genomics, Inc. With the wrapper-based feature selection approach, we employed multilayer feedforward neural network (MFNN) and logistic regression as a basis for comparisons. Our data revealed that the MFNN models were superior to the logistic regression model. The MFNN approach provides an efficient way to develop a tool for distinguishing responders from nonresponders prior to treatments. Our preliminary results demonstrated that the MFNN algorithm is effective for deriving models for pharmacogenomics studies and for providing the link from clinical factors such as SNPs to the responsiveness of IFN-alfa/RBV in clinical association studies in pharmacogenomics.
机译:摘要:慢性丙型肝炎(CHC)患者由于成本高和相关的副作用而经常停止采用干扰素-α和利巴韦林(IFN-alfa / RBV)治疗。在临床和经济上,非常需要建立区分反应者和非反应者并预测IFN-α/ RBV治疗可能结果的工具。单核苷酸多态性(SNP)可用于了解遗传与IFN-α/ RBV治疗反应之间的关系。本研究的目的是建立基于药物基因组学方法的预测模型。我们的研究对象包括从台湾多个地点招募的台湾CHC患者。基因分型数据是在Vita Genomics,Inc.的高通量基因组实验室中生成的。通过基于包装的特征选择方法,我们采用了多层前馈神经网络(MFNN)和逻辑回归作为比较的基础。我们的数据表明,MFNN模型优于逻辑回归模型。 MFNN方法提供了一种有效的方法来开发一种工具,以便在治疗之前将反应者与非反应者区分开。我们的初步结果表明,MFNN算法可有效地推导药物基因组学研究模型,并为临床基因组研究中的SNP等临床因素与IFN-alfa / RBV的反应性提供联系。

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