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- Title
Predicting survival from microarray data--a comparative study.
- Authors
Bøvelstad, H M; Nygård, S; Størvold, H L; Aldrin, M; Borgan, Ø; Frigessi, A; Lingjaerde, O C
- Abstract
Survival prediction from gene expression data and other high-dimensional genomic data has been subject to much research during the last years. These kinds of data are associated with the methodological problem of having many more gene expression values than individuals. In addition, the responses are censored survival times. Most of the proposed methods handle this by using Cox's proportional hazards model and obtain parameter estimates by some dimension reduction or parameter shrinkage estimation technique. Using three well-known microarray gene expression data sets, we compare the prediction performance of seven such methods: univariate selection, forward stepwise selection, principal components regression (PCR), supervised principal components regression, partial least squares regression (PLS), ridge regression and the lasso.
- Publication
Bioinformatics (Oxford, England), 2007, Vol 23, Issue 16, p2080
- ISSN
1367-4811
- Publication type
Journal Article
- DOI
10.1093/bioinformatics/btm305