Artigo Acesso aberto Revisado por pares

Unsupervised feature selection under perturbations: meeting the challenges of biological data

2007; Oxford University Press; Volume: 23; Issue: 24 Linguagem: Inglês

10.1093/bioinformatics/btm528

ISSN

1367-4811

Autores

Roy Varshavsky, Assaf Gottlieb, D. Horn, Michal Linial,

Tópico(s)

Statistical Methods and Inference

Resumo

Abstract Motivation: Feature selection methods aim to reduce the complexity of data and to uncover the most relevant biological variables. In reality, information in biological datasets is often incomplete as a result of untrustworthy samples and missing values. The reliability of selection methods may therefore be questioned. Method: Information loss is incorporated into a perturbation scheme, testing which features are stable under it. This method is applied to data analysis by unsupervised feature filtering (UFF). The latter has been shown to be a very successful method in analysis of gene-expression data. Results: We find that the UFF quality degrades smoothly with information loss. It remains successful even under substantial damage. Our method allows for selection of a best imputation method on a dataset treated by UFF. More importantly, scoring features according to their stability under information loss is shown to be correlated with biological importance in cancer studies. This scoring may lead to novel biological insights. Contact: royke@cs.huji.ac.il Supplementary information and code availability: Supplementary data are available at Bioinformatics online.

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