Literature DB >> 29453930

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

Jean-Eudes Dazard1, Hemant Ishwaran2, Rajeev Mehlotra3, Aaron Weinberg4, Peter Zimmerman3.   

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.

Entities:  

Keywords:  epistasis; genetic variations interactions; interaction detection and modeling; random survival forest; time-to-event analysis

Mesh:

Substances:

Year:  2018        PMID: 29453930      PMCID: PMC5844232          DOI: 10.1515/sagmb-2017-0038

Source DB:  PubMed          Journal:  Stat Appl Genet Mol Biol        ISSN: 1544-6115


  22 in total

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Authors:  Xiang Zhang; Feng Pan; Yuying Xie; Fei Zou; Wei Wang
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Review 2.  Prioritizing GWAS results: A review of statistical methods and recommendations for their application.

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3.  On Bayesian methods of exploring qualitative interactions for targeted treatment.

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4.  Random survival forests for competing risks.

Authors:  Hemant Ishwaran; Thomas A Gerds; Udaya B Kogalur; Richard D Moore; Stephen J Gange; Bryan M Lau
Journal:  Biostatistics       Date:  2014-04-11       Impact factor: 5.899

5.  Evaluating the yield of medical tests.

Authors:  F E Harrell; R M Califf; D B Pryor; K L Lee; R A Rosati
Journal:  JAMA       Date:  1982-05-14       Impact factor: 56.272

6.  Copy Number Variation within Human β-Defensin Gene Cluster Influences Progression to AIDS in the Multicenter AIDS Cohort Study.

Authors:  Rajeev K Mehlotra; Jean-Eudes Dazard; Bangan John; Peter A Zimmerman; Aaron Weinberg; Richard J Jurevic
Journal:  J AIDS Clin Res       Date:  2012

Review 7.  Detecting gene-gene interactions that underlie human diseases.

Authors:  Heather J Cordell
Journal:  Nat Rev Genet       Date:  2009-06       Impact factor: 53.242

8.  Detecting epistatic effects in association studies at a genomic level based on an ensemble approach.

Authors:  Jing Li; Benjamin Horstman; Yixuan Chen
Journal:  Bioinformatics       Date:  2011-07-01       Impact factor: 6.937

9.  Improved statistics for genome-wide interaction analysis.

Authors:  Masao Ueki; Heather J Cordell
Journal:  PLoS Genet       Date:  2012-04-05       Impact factor: 5.917

10.  Screening large-scale association study data: exploiting interactions using random forests.

Authors:  Kathryn L Lunetta; L Brooke Hayward; Jonathan Segal; Paul Van Eerdewegh
Journal:  BMC Genet       Date:  2004-12-10       Impact factor: 2.797

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