Selecting Genes by Test Statistics
Author(s) -
Dechang Chen,
Zhenqiu Liu,
Xiaobin Ma,
Dong Hua
Publication year - 2005
Publication title -
biomed research international
Language(s) - English
Resource type - Journals
eISSN - 2314-6141
pISSN - 2314-6133
DOI - 10.1155/jbb.2005.132
Subject(s) - statistic , statistics , test statistic , gene selection , selection (genetic algorithm) , statistical hypothesis testing , f test , summary statistics , microarray analysis techniques , computer science , data mining , mathematics , artificial intelligence , biology , gene , genetics , gene expression
Gene selection is an important issue in analyzing multiclass microarray data. Among many proposed selection methods, the traditional ANOVA F test statistic has been employed to identify informative genes for both class prediction (classification) and discovery problems. However, the F test statistic assumes an equal variance. This assumption may not be realistic for gene expression data. This paper explores other alternative test statistics which can handle heterogeneity of the variances. We study five such test statistics, which include Brown-Forsythe test statistic and Welch test statistic. Their performance is evaluated and compared with that of F statistic over different classification methods applied to publicly available microarray datasets.
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