Bayesian latent variable models for median regression on multiple outcomes

被引:0
|
作者
Dunson, DB
Watson, M
Taylor, JA
机构
[1] NIEHS, Biostat Branch, Res Triangle Pk, NC 27709 USA
[2] NIEHS, Epidemiol Branch, Res Triangle Pk, NC 27709 USA
关键词
comet assay; factor analysis; measurement error; multivariate response; repeated measures; semiparametric; single-cell electrophoresis; substitution likelihood;
D O I
暂无
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Often a response of interest cannot be measured directly and it is necessary to rely on multiple surrogates, which can be assumed to be conditionally independent given the latent response and observed covariates. Latent response models typically assume that residual densities are Gaussian. This article proposes a Bayesian median regression modeling approach, which avoids parametric assumptions about residual densities by relying on an approximation based on quantiles. To accommodate within-subject dependency, the quantile response categories of the surrogate outcomes are related to underlying normal variables, which depend on a latent normal response. This underlying Gaussian covariance structure simplifies interpretation and model fitting, without restricting the marginal densities of the surrogate outcomes. A Markov chain Monte Carlo algorithm is proposed for posterior computation, and the methods are applied to single-cell electrophoresis (comet assay) data from a genetic toxicology study.
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页码:296 / 304
页数:9
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