Publication | Closed Access
Bayesian Variable Selection in Multinomial Probit Models to Identify Molecular Signatures of Disease Stage
137
Citations
27
References
2004
Year
Bayesian StatisticEngineeringFeature SelectionBayesian InferenceData ScienceBiostatisticsPublic HealthMolecular DiagnosticsStatisticsRheumatoid ArthritisBayesian Hierarchical ModelingMultinomial Probit ModelsStatistical GeneticsGene ExpressionFunctional Data AnalysisEpidemiologyBayesian StatisticsMixture PriorsComputational BiologyStatistical InferenceMolecular SignaturesBayesian Variable SelectionApproximate Bayesian Computation
Here we focus on discrimination problems where the number of predictors substantially exceeds the sample size and we propose a Bayesian variable selection approach to multinomial probit models. Our method makes use of mixture priors and Markov chain Monte Carlo techniques to select sets of variables that differ among the classes. We apply our methodology to a problem in functional genomics using gene expression profiling data. The aim of the analysis is to identify molecular signatures that characterize two different stages of rheumatoid arthritis.
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