Ensemble survival tree models to reveal pairwise interactions of variables with time-to-events outcomes in low-dimensional setting

Author:

Dazard Jean-Eudes1ORCID,Ishwaran Hemant2,Mehlotra Rajeev3,Weinberg Aaron4,Zimmerman Peter3

Affiliation:

1. Case Western Reserve University , School of Medicine, Center for Proteomics and Bioinformatics , Cleveland, OH 44106 , USA

2. The University of Miami , Department of Epidemiology and Public Health, Division of Biostatistics , Miami, FL 33136 , USA

3. Case Western Reserve University , School of Medicine, Center for Global Health and Diseases , Cleveland, OH 44106 , USA

4. Case Western Reserve University , School of Dental Medicine, Department of Biological Sciences , Cleveland, OH 44106 , USA

Abstract

Abstract Unraveling interactions among variables such as genetic, clinical, demographic and environmental factors is essential to understand the development of common and complex diseases. To increase the power to detect such variables interactions associated with clinical time-to-events outcomes, we borrowed established concepts from random survival forest (RSF) models. We introduce a novel RSF-based pairwise interaction estimator and derive a randomization method with bootstrap confidence intervals for inferring interaction significance. Using various linear and nonlinear time-to-events survival models in simulation studies, we first show the efficiency of our approach: true pairwise interaction-effects between variables are uncovered, while they may not be accompanied with their corresponding main-effects, and may not be detected by standard semi-parametric regression modeling and test statistics used in survival analysis. Moreover, using a RSF-based cross-validation scheme for generating prediction estimators, we show that informative predictors may be inferred. We applied our approach to an HIV cohort study recording key host gene polymorphisms and their association with HIV change of tropism or AIDS progression. Altogether, this shows how linear or nonlinear pairwise statistical interactions of variables may be efficiently detected with a predictive value in observational studies with time-to-event outcomes.

Publisher

Walter de Gruyter GmbH

Subject

Computational Mathematics,Genetics,Molecular Biology,Statistics and Probability

Reference45 articles.

1. Bien, J., J. Taylor and R. Tibshirani (2013): “A lasso for hierarchical interactions,” Ann. Stat., 41, 1111–1141.

2. Breiman, L. (2001): “Random forests,” Mach. Learn., 45, 5–32.

3. Cantor, R. M., K. Lange and J. S. Sinsheimer (2010): “Prioritizing GWAS results: a review of statistical methods and recommendations for their application,” Am. J. Hum. Genet., 86, 6–22.

4. Chen, W., D. Ghosh, T. E. Raghunathan, M. Norkin, D. J. Sargent and G. Bepler (2012): “On Bayesian methods of exploring qualitative interactions for targeted treatment,” Stat. Med., 31, 3693–3707.

5. Chen, X. and H. Ishwaran (2012): “Random forests for genomic data analysis,” Genomics, 99, 323–329.

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