Treffer: Bayesian semiparametric regression models for evaluating pathway effects on continuous and binary clinical outcomes.

Title:
Bayesian semiparametric regression models for evaluating pathway effects on continuous and binary clinical outcomes.
Authors:
Kim I; Department of Statistics, Virginia Polytechnic Institute and State University, Blacksburg, VA, U.S.A. inyoungk@vt.edu, Pang H, Zhao H
Source:
Statistics in medicine [Stat Med] 2012 Jul 10; Vol. 31 (15), pp. 1633-51. Date of Electronic Publication: 2012 Mar 22.
Publication Type:
Journal Article; Research Support, N.I.H., Extramural; Research Support, Non-U.S. Gov't; Research Support, U.S. Gov't, Non-P.H.S.
Language:
English
Journal Info:
Publisher: Wiley Country of Publication: England NLM ID: 8215016 Publication Model: Print-Electronic Cited Medium: Internet ISSN: 1097-0258 (Electronic) Linking ISSN: 02776715 NLM ISO Abbreviation: Stat Med Subsets: MEDLINE
Imprint Name(s):
Original Publication: Chichester ; New York : Wiley, c1982-
References:
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Grant Information:
P30-DA-18343 United States DA NIDA NIH HHS; N01 HV028186 United States HV NHLBI NIH HHS; N01-HV-28186 United States HV NHLBI NIH HHS; P30 DA018343 United States DA NIDA NIH HHS; GM-59507 United States GM NIGMS NIH HHS; P30 AG021342 United States AG NIA NIH HHS; P30 CA016359 United States CA NCI NIH HHS; R01 GM059507 United States GM NIGMS NIH HHS
Entry Date(s):
Date Created: 20120323 Date Completed: 20121023 Latest Revision: 20250529
Update Code:
20250530
PubMed Central ID:
PMC3763871
DOI:
10.1002/sim.4493
PMID:
22438129
Database:
MEDLINE

Weitere Informationen

Many statistical methods for microarray data analysis consider one gene at a time, and they may miss subtle changes at the single gene level. This limitation may be overcome by considering a set of genes simultaneously where the gene sets are derived from prior biological knowledge. Limited work has been carried out in the regression setting to study the effects of clinical covariates and expression levels of genes in a pathway either on a continuous or on a binary clinical outcome. Hence, we propose a Bayesian approach for identifying pathways related to both types of outcomes. We compare our Bayesian approaches with a likelihood-based approach that was developed by relating a least squares kernel machine for nonparametric pathway effect with a restricted maximum likelihood for variance components. Unlike the likelihood-based approach, the Bayesian approach allows us to directly estimate all parameters and pathway effects. It can incorporate prior knowledge into Bayesian hierarchical model formulation and makes inference by using the posterior samples without asymptotic theory. We consider several kernels (Gaussian, polynomial, and neural network kernels) to characterize gene expression effects in a pathway on clinical outcomes. Our simulation results suggest that the Bayesian approach has more accurate coverage probability than the likelihood-based approach, and this is especially so when the sample size is small compared with the number of genes being studied in a pathway. We demonstrate the usefulness of our approaches through its applications to a type II diabetes mellitus data set. Our approaches can also be applied to other settings where a large number of strongly correlated predictors are present.
(Copyright © 2012 John Wiley & Sons, Ltd.)