On combining wavelets expansion and sparse linear models for Regression on metabolomic data and biomarker selection

  • Vialaneix, Nathalie
  • Hernández, Noslen
  • Paris, Alain
  • Domange, Céline
  • Priymenko, Nathalie
  • Besse, Philippe
Publication date
January 2016
Publisher
Informa UK Limited

Abstract

International audienceWavelet thresholding of spectra has to be handled with care when the spectra are the predictors of a regression problem. Indeed, a blind thresholding of the signal followed by a regression method often leads to deteriorated predictions. The scope of this article is to show that sparse regression methods, applied in the wavelet domain, perform an automatic thresholding: the most relevant wavelet coefficients are selected to optimize the prediction of a given target of interest. This approach can be seen as a joint thresholding designed for a predictive purpose. The method is illustrated on a real world problem where metabolomic data are linked to poison ingestion. This example proves the usefulness of wavelet expansion ...

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