1. Genomic characterization of multiple clinical phenotypes of cancer using multivariate linear regression models.
- Author
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Shigeyuki Matsui, Masaaki Ito, Hiroyuki Nishiyama, Hajime Uno, Hirokazu Kotani, Jun Watanabe, Parry Guilford, Anthony Reeve, Masanori Fukushima, and Osamu Ogawa
- Subjects
GENES ,HEREDITY ,PHENOTYPES ,GENETICS - Abstract
Motivation: The development of gene expression microarray technology has allowed the identification of differentially expressed genes between different clinical phenotypic classes of cancer from a large pool of candidate genes. Although many class comparisons concerned only a single phenotype, simultaneous assessment of the relationship between gene expression and multiple phenotypes would be warranted to better understand the underlying biological structure.Results: We develop a method to select genes related to multiple clinical phenotypes based on a set of multivariate linear regression models. For each gene, we perform model selection based on the doubly-adjusted R-square statistic and use the maximum of this statistic for gene selection. The method can substantially improve the power in gene selection, compared with a conventional method that uses a single model exclusively for gene selection. Application to a bladder cancer study to correlate pre-treatment gene expressions with pathological stage and grade is given. The methods would be useful for screening for genes related to multiple clinical phenotypes.Availability: SAS and MATLAB codes are available from author upon request.Contact:matsui@pbh.med.kyoto-u.ac.jp [ABSTRACT FROM AUTHOR]
- Published
- 2007
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