路径分析的两阶段机器学习方法

Wei Zhang, S. Emrich, Erliang Zeng
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引用次数: 8

摘要

基因表达数据分析已成为发现与生物表型相关的活性途径的重要方法。以前的途径分析方法使用途径中的所有基因将其与特定表型联系起来。然而,仅使用信息基因的子集可以更好地对样本进行分类。在这里,我们提出了一种两阶段的机器学习方法来进行路径分析。在第一阶段,使用特征选择方法选择可以代表途径的信息基因。这些“代表性基因”大多与感兴趣的表型相关。第二阶段,采用分类方法,根据“代表性基因”对路径进行排序。我们对三个基因表达数据集应用了我们的两阶段方法。结果表明,我们的方法确实优于考虑途径中每个基因的方法。
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A two-stage machine learning approach for pathway analysis
Analysis of gene expression data has emerged as an important approach to discover active pathways related to biological phenotypes. Previous pathway analysis methods use all genes in a pathway for linking it to a particular phenotype. Using only a subset of informative genes, however, could better classify samples. Here, we propose a two-stage machine learning approach for pathway analysis. During the first stage, informative genes that can represent a pathway are selected using feature selection methods. These “representative genes” are mostly associated with the phenotype of interest. In the second stage, pathways are ranked based on their “representative genes” using classification methods. We applied our two-stage approach on three gene expression datasets. The results indicate our method does outperform methods that consider every gene in a pathway.
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