LASSO model selection with post-processing for a genome-wide association study data set
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Motyer, Allan J.
McKendry, Chris
Galbraith, Sally
Wilson, Susan R.
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BioMed Central
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Model selection procedures for simultaneous analysis of all single-nucleotide polymorphisms in genome-wide association studies are most suitable for making full use of the data for a complex disease study. In this paper we consider a penalized regression using the LASSO procedure and show that post-processing of the penalized-regression results with subsequent stepwise selection may lead to improved identification of causal single-nucleotide polymorphisms.
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BMC Proceedings
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