Testing the additional predictive value of high-dimensionalmolecular data


While high-dimensional molecular data such as microarray gene expression data have been used for disease outcome prediction or diagnosis purposes for about ten years in biomedical research, the question of the additional predictive value of such data given that classical predictors are already available has long been under-considered in the bioinformatics literature.

Results: We suggest an intuitive permutation-based testing procedure for assessing the additional predictive value of high-dimensional molecular data. Our method combines two well-known statistical tools: logistic regression and boosting regression.

We give clear advice for the choice of the only method parameter (the number of boosting iterations). In simulations, our novel approach is found to have very good power in different settings, e.g.

few strong predictors or many weak predictors. For illustrative purpose, it is applied to the two publicly available cancer data sets.

Conclusions: Our simple and computationally efficient approach can be used to globally assess the additional predictive power of a large number of candidate predictors given that a few clinical covariates or a known prognostic index are already available.

It is implemented in the R package ''globalboosttest''which is publicly available from R-forge and will be sent to the CRAN as soon as possible.

Author: Anne-Laure BoulesteixTorsten Hothorn
Credits/Source: BMC Bioinformatics 2010, 11:78



Published on: 2010-02-08

Copyright by the authors listed above - made available via BioMedCentral (Open Access). Please make sure to read our disclaimer prior to contacting 7thSpace Interactive. To contact our editors, visit our online helpdesk. If you wish submit your own press release, click here.

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