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Identification of informative genes and pathways using an improved penalized support vector machine with a weighting scheme

机译:使用带有加权方案的改进的惩罚支持向量机识别信息基因和途径

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Incorporation of pathway knowledge into microarray analysis has brought better biological interpretation of the analysis outcome. However, most pathway data are manually curated without specific biological context. Non-informative genes could be included when the pathway data is used for analysis of context specific data like cancer microarray data. Therefore, efficient identification of informative genes is inevitable. Embedded methods like penalized classifiers have been used for microarray analysis due to their embedded gene selection. This paper proposes an improved penalized support vector machine with absolute t-test weighting scheme to identify informative genes and pathways. Experiments are done on four microarray data sets. The results are compared with previous methods using 10-fold cross validation in terms of accuracy, sensitivity, specificity and F-score. Our method shows consistent improvement over the previous methods and biological validation has been done to elucidate the relation of the selected genes and pathway with the phenotype under study. (C) 2016 Elsevier Ltd. All rights reserved.
机译:将途径知识纳入微阵列分析已为分析结果带来了更好的生物学解释。但是,大多数途径数据都是手动整理的,没有特定的生物学背景。当通路数据用于分析特定背景数据(例如癌症微阵列数据)时,可以包含非信息基因。因此,有效鉴定信息基因是不可避免的。由于其嵌入的基因选择,已将诸如惩罚分类器之类的嵌入方法用于微阵列分析。本文提出了一种改进的带有绝对t检验加权方案的惩罚性支持向量机,以识别信息基因和途径。对四个微阵列数据集进行了实验。在准确性,灵敏度,特异性和F评分方面,将结果与使用10倍交叉验证的先前方法进行了比较。我们的方法显示出对先前方法的持续改进,并且已经进行了生物学验证来阐明所选基因和途径与正在研究的表型之间的关系。 (C)2016 Elsevier Ltd.保留所有权利。

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