High-dimensional genomic feature selection with the ordered stereotype logit model

Author:

Seffernick Anna Eames1,Mrózek Krzysztof23,Nicolet Deedra234,Stone Richard M5,Eisfeld Ann-Kathrin23,Byrd John C6,Archer Kellie J1

Affiliation:

1. Division of Biostatistics, College of Public Health, The Ohio State University , Columbus, OH, USA

2. Clara D. Bloomfield Center for Leukemia Outcomes Research, The Ohio State University , Columbus, OH, USA

3. The Ohio State Comprehensive Cancer Center , Columbus, OH, USA

4. Alliance Statistics and Data Management Center, The Ohio State University Comprehensive Cancer Center , Columbus, OH, USA

5. Dana Farber/Partners Cancer Care, Harvard University , Boston, MA, USA

6. Department of Internal Medicine, University of Cincinnati , Cincinnati, OH, USA

Abstract

Abstract For many high-dimensional genomic and epigenomic datasets, the outcome of interest is ordinal. While these ordinal outcomes are often thought of as the observed cutpoints of some latent continuous variable, some ordinal outcomes are truly discrete and are comprised of the subjective combination of several factors. The nonlinear stereotype logistic model, which does not assume proportional odds, was developed for these ‘assessed’ ordinal variables. It has previously been extended to the frequentist high-dimensional feature selection setting, but the Bayesian framework provides some distinct advantages in terms of simultaneous uncertainty quantification and variable selection. Here, we review the stereotype model and Bayesian variable selection methods and demonstrate how to combine them to select genomic features associated with discrete ordinal outcomes. We compared the Bayesian and frequentist methods in terms of variable selection performance. We additionally applied the Bayesian stereotype method to an acute myeloid leukemia RNA-sequencing dataset to further demonstrate its variable selection abilities by identifying features associated with the European LeukemiaNet prognostic risk score.

Funder

National Institutes of Health

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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