Literature DB >> 17495999

WilcoxCV: an R package for fast variable selection in cross-validation.

Anne-Laure Boulesteix1.   

Abstract

UNLABELLED: In the last few years, numerous methods have been proposed for microarray-based class prediction. Although many of them have been designed especially for the case n << p (much more variables than observations), preliminary variable selection is almost always necessary when the number of genes reaches several tens of thousands, as usual in recent data sets. In the two-class setting, the Wilcoxon rank sum test statistic is, with the t-statistic, one of the standard approaches for variable selection. It is well known that the variable selection step must be seen as a part of classifier construction and, as such, be performed based on training data only. When classifier accuracy is evaluated via cross-validation or Monte-Carlo cross-validation, it means that we have to perform p Wilcoxon or t-tests for each iteration, which becomes a daunting task for increasing p. As a consequence, many authors often perform variable selection only once using all the available data, which can induce a dramatic underestimation of error rate and thus lead to misleadingly reporting predictive power. We propose a very fast implementation of variable selection based on the Wilcoxon test for use in cross-validation and Monte Carlo cross-validation (also known as random splitting into learning and test sets). This implementation is based on a simple mathematical formula using only the ranks calculated from the original data set. AVAILABILITY: Our method is implemented in the freely available R package WilcoxCV which can be downloaded from the Comprehensive R Archive Network at http://cran.r-project.org/src/contrib/Descriptions/WilcoxCV.html.

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Year:  2007        PMID: 17495999     DOI: 10.1093/bioinformatics/btm162

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


  7 in total

1.  Optimal classifier selection and negative bias in error rate estimation: an empirical study on high-dimensional prediction.

Authors:  Anne-Laure Boulesteix; Carolin Strobl
Journal:  BMC Med Res Methodol       Date:  2009-12-21       Impact factor: 4.615

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Authors:  Sandra L Taylor; Sheila Ganti; Nikolay O Bukanov; Arlene Chapman; Oliver Fiehn; Michael Osier; Kyoungmi Kim; Robert H Weiss
Journal:  Am J Physiol Renal Physiol       Date:  2010-02-03

3.  Evaluating microarray-based classifiers: an overview.

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Journal:  Cancer Inform       Date:  2008-02-29

4.  Evaluating the Effect of Right-Censored End Point Transformation for Radiomic Feature Selection of Data From Patients With Oropharyngeal Cancer.

Authors:  Luka Zdilar; David M Vock; G Elisabeta Marai; Clifton D Fuller; Abdallah S R Mohamed; Hesham Elhalawani; Baher Ahmed Elgohari; Carly Tiras; Austin Miller; Guadalupe Canahuate
Journal:  JCO Clin Cancer Inform       Date:  2018-12

5.  Finding minimum gene subsets with heuristic breadth-first search algorithm for robust tumor classification.

Authors:  Shu-Lin Wang; Xue-Ling Li; Jianwen Fang
Journal:  BMC Bioinformatics       Date:  2012-07-25       Impact factor: 3.169

6.  CMA: a comprehensive Bioconductor package for supervised classification with high dimensional data.

Authors:  M Slawski; M Daumer; A-L Boulesteix
Journal:  BMC Bioinformatics       Date:  2008-10-16       Impact factor: 3.169

7.  Variable selection and validation in multivariate modelling.

Authors:  Lin Shi; Johan A Westerhuis; Johan Rosén; Rikard Landberg; Carl Brunius
Journal:  Bioinformatics       Date:  2019-03-15       Impact factor: 6.937

  7 in total

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