Powerful Tests for Multi-Marker Association Analysis Using Ensemble Learning.

Journal: PloS one
Published Date:

Abstract

Multi-marker approaches have received a lot of attention recently in genome wide association studies and can enhance power to detect new associations under certain conditions. Gene-, gene-set- and pathway-based association tests are increasingly being viewed as useful supplements to the more widely used single marker association analysis which have successfully uncovered numerous disease variants. A major drawback of single-marker based methods is that they do not look at the joint effects of multiple genetic variants which individually may have weak or moderate signals. Here, we describe novel tests for multi-marker association analyses that are based on phenotype predictions obtained from machine learning algorithms. Instead of assuming a linear or logistic regression model, we propose the use of ensembles of diverse machine learning algorithms for prediction. We show that phenotype predictions obtained from ensemble learning algorithms provide a new framework for multi-marker association analysis. They can be used for constructing tests for the joint association of multiple variants, adjusting for covariates and testing for the presence of interactions. To demonstrate the power and utility of this new approach, we first apply our method to simulated SNP datasets. We show that the proposed method has the correct Type-1 error rates and can be considerably more powerful than alternative approaches in some situations. Then, we apply our method to previously studied asthma-related genes in 2 independent asthma cohorts to conduct association tests.

Authors

  • Badri Padhukasahasram
    Center for Health Policy and Health Services Research, Henry Ford Health System, Detroit, Michigan, United States of America.
  • Chandan K Reddy
    Department of Computer Science, Wayne State University, Detroit, Michigan, United States of America.
  • Albert M Levin
    Department of Public Health Sciences, Henry Ford Health System, Detroit, Michigan, United States of America.
  • Esteban G Burchard
    Department of Medicine, University of California San Francisco, San Francisco, California, United States of America.
  • L Keoki Williams
    Center for Health Policy and Health Services Research, Henry Ford Health System, Detroit, Michigan, United States of America.