Authors
Hege M Bøvelstad, Ståle Nygård, Ørnulf Borgan
Publication date
2009/12
Journal
BMC bioinformatics
Volume
10
Pages
1-9
Publisher
BioMed Central
Description
Background
Survival prediction from high-dimensional genomic data is an active field in today's medical research. Most of the proposed prediction methods make use of genomic data alone without considering established clinical covariates that often are available and known to have predictive value. Recent studies suggest that combining clinical and genomic information may improve predictions, but there is a lack of systematic studies on the topic. Also, for the widely used Cox regression model, it is not obvious how to handle such combined models.
Results
We propose a way to combine classical clinical covariates with genomic data in a clinico-genomic prediction model based on the Cox regression model. The prediction model is obtained by a simultaneous use of both types of covariates, but applying dimension reduction only to the high …
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