Improve survival prediction using principal components of gene expression data |
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Authors: | Shen Yi Jing Huang Shu Guang |
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Affiliation: | Department of Statistics, University of California, Los Angeles, CA 90095-1554, USA. |
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Abstract: | ![]() The purpose of many microarray studies is to find the association between gene expression and sample characteristics such as treatment type or sample phenotype. There has been a surge of efforts developing different methods for delineating the association. Aside from the high dimensionality of microarray data, one well rec- ognized challenge is the fact that genes could be complicatedly inter-related, thus making many statistical methods inappropriate to use directly on the expression data. Multivariate methods such as principal component analysis (PCA) and clus- tering are often used as a part of the effort to capture the gene correlation, and the derived components or clusters are used to describe the association between gene expression and sample phenotype. We propose a method for patient population dichotomization using maximally selected test statistics in combination with the PCA method, which shows favorable results. The proposed method is compared with a currently well-recognized method. |
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Keywords: | microarray principal component analysis survival |
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