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David Causeur

9
Documents
Identifiants chercheurs
  • IdHAL david-causeur
  • ORCID 0000-0001-6910-9440
  • Google Scholar : https://scholar.google.com/citations?user=kCws61IAAAAJ&hl=fr

Présentation

Research topics =============== My research interests are in statistical methodology for various issues motivated by biological applications. More particularly, the focus of my recent papers is on the handling of dependence in high-dimensional statistical inference. **Statistical genomics** Dependence within high-dimensional gene expression profiles generates a strong instability of gene selection in large scale significance analysis. A proper handling of this dependence by latent factor models or more general whitening techniques improves stability of multiple testing procedures and power (see for example Friguet *et al*, 2009 \[JASA\], Friguet and Causeur, 2010 \[CSDA\], Causeur *et al*, 2011 \[JSS\], Hornung *et al*, 2016 \[BMC Bioinf.\], Hornung *et al*, 2017 \[Bioinf.\], Hébert *et al*, 2021 \[CSDA\]). **Functional data analysis** Functional data are discretized observations of curves. Such data are generated by various technologies such as spectroscopy or electroencephalography (EEG). More and more study designs, such as Event-Related Potentials studies in neuroscience, aim at assessing the relationship between functional data and experimental covariates. Both for signal detection (global testing) and signal identification (search for significant intervals), dependence handling strategies can be designed to be efficient for a given pattern of association signal (see for example Causeur *et al*, 2012 \[BRM\], Sheu *et al*, 2016 \[AoAS\], Causeur *et al*, 2020 \[Biometrics\]). **High-dimensional regression and classification modeling** Both in genomic and functional data analysis, estimation of regression and classification models has to deal with a possibly strong dependence within high-dimensional profiles of explanatory variables. Whitening procedures can help stabilizing model selection methods and improve prediction performance (see for example Perthame *et al*, 2015 \[StatCo\], Hébert *et al*, 2021 \[Under revision\]). **Biostatistics** I am involved in various research projects with a diversity of partners in biology, recently for multi-omic data integration issues (see Gondret *et al*., 2017 \[BMC Gen.\], Désert *et al*., 2018 \[BMC Gen.\]), peptidomics (see Suwareh *et al*., 2021 \[Food Ch.\]), electromyographic data analysis (see Comfort *et al*., 2021 \[PACA\]), etc.

Publications

emeline-perthame
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Variable selection for correlated data in high dimension using decorrelation methods

Emeline Perthame , David Causeur , Ching-Fan Sheu , Chloé Friguet
Statlearn: Challenging problems in statistical learning, Apr 2016, Vannes, France
Communication dans un congrès hal-01310571v1

Dealing with long-time range dependence in large-scale multiple testing of Event-Related Potentials data

Emeline Perthame , Ching-Fan Sheu , David Causeur , Yuh-Shiow Lee
46e Journées de Statistique, Société Française de Statistique, Jun 2014, Rennes, France
Communication dans un congrès hal-01167092v1

FADA: an R package for variable selection in supervised classification of strongly dependent data

Emeline Perthame , Chloé Friguet , David Causeur
useR!2014, UCLA Statistics Department; Foundation for Open Access Statistics; Los Angels R user group, Jun 2014, Los Angeles, United States
Communication dans un congrès hal-01167304v1

ERP: an R package for Event-Related Potentials data analysis

Emeline Perthame , David Causeur , Ching-Fan Sheu
useR!2014, UCLA Statistics Department; Foundation for Open Access Statistics; Los Angels R user group, Jun 2014, Los Angeles, United States
Communication dans un congrès hal-01167321v1
Image document

Stabilité de la sélection de variables pour la classification de données en grande dimension

Emeline Perthame , Chloé Friguet , David Causeur
45 èmes Journées de Statistique, May 2013, Toulouse, France
Communication dans un congrès hal-00913047v1