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A semiparametric approach for marker gene selection based on gene expression data

机译:基于基因表达数据的标记基因选择的半参数方法

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MOTIVATION: Identification of differentially expressed genes is a major issue in gene expression data analysis and selection of marker genes is critical in tumor classification using gene expression data. In this paper, we propose a semiparametric two-sample test to identify both differentially expressed genes and select marker genes for sample classification. RESULTS: A simulation study shows that the proposed method is more robust and powerful than the methods, generally used such as t-tests and non-parametric rank-sum tests, when the sample size is small. Cross-validation shows that the sample classification based on genes selected using this semiparametric method has lower misclassification rates. CONTACT: hongyu.zhao@yale.edu.
机译:动机:差异表达基因的鉴定是基因表达数据分析中的主要问题,而标记基因的选择对于使用基因表达数据进行肿瘤分类至关重要。在本文中,我们提出了一种半参数的两样本检验,以鉴定差异表达的基因并选择标记基因进行样本分类。结果:仿真研究表明,当样本量较小时,该方法比通常使用的方法(如t检验和非参数秩和检验)更健壮和强大。交叉验证显示,基于使用此半参数方法选择的基因的样本分类具有较低的错误分类率。联系人:hongyu.zhao@yale.edu。

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