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Optimized between-group classification: a new jackknife-based gene selection procedure for genome-wide expression data
Authors:Email author" target="_blank">Florent?BatyEmail author  Michel?P?Bihl  Guy?Perrière  Aedín?C?Culhane  Martin?H?Brutsche
Institution:1.Pulmonary Gene Research,University Hospital Basel,Basel,Switzerland;2.Laboratoire de Biométrie et de Biologie évolutive, UMR CNRS 5558,Université Claude Bernard Lyon 1,Villeurbanne Cedex,France;3.Bioinformatics Conway Institute,University College Dublin,Ireland
Abstract:

Background  

A recent publication described a supervised classification method for microarray data: Between Group Analysis (BGA). This method which is based on performing multivariate ordination of groups proved to be very efficient for both classification of samples into pre-defined groups and disease class prediction of new unknown samples. Classification and prediction with BGA are classically performed using the whole set of genes and no variable selection is required. We hypothesize that an optimized selection of highly discriminating genes might improve the prediction power of BGA.
Keywords:
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