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Identifying disease genes from gene expression data based on singular value decomposition

机译:基于奇异值分解的基因表达数据识别疾病基因

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Identification of disease genes that might anticipate the clinical behavior of human cancers is very important for understanding cancer pathogenesis. Computational analysis of disease gene from microarray data involves a search for gene subset that is able to discriminate cancer samples from normal samples, which is a challenging task due to a small number of samples compared to huge number of genes. In this paper, an algorithm (LRSVD) based on singular value decomposition and logistic regression is proposed to find genes that are associated with disease. LRSVD makes use of a threshold value to control the number of singular vectors; evaluates the contribution of each eigengene to the classifying accuracy by regression coefficients of logistic regression; and then ranks each gene by its discriminative power for two kinds of samples. The results on colon gene expression data indicate that LRSVD method with support vector machine (SVM) as a classifier is an encouraging method to identify disease genes.
机译:鉴定可能预示人类癌症临床行为的疾病基因对于理解癌症发病机理非常重要。从微阵列数据对疾病基因进行计算分析涉及寻找能够将癌症样品与正常样品区分开的基因子集,这是一项具有挑战性的任务,因为与大量基因相比,样品数量少。本文提出了一种基于奇异值分解和逻辑回归的算法(LRSVD)来寻找与疾病相关的基因。 LRSVD利用阈值来控制奇异矢量的数量。通过逻辑回归的回归系数评估每个特征基因对分类准确性的贡献;然后根据其对两种样本的判别力对每个基因进行排序。结肠基因表达数据的结果表明,以支持向量机(SVM)为分类器的LRSVD方法是鉴定疾病基因的一种令人鼓舞的方法。

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