| Literature DB >> 18618428 |
Bhramar Mukherjee1, Jaeil Ahn, Ivy Liu, Paul J Rathouz, Brisa N Sánchez.
Abstract
Classical methods for fitting a varying intercept logistic regression model to stratified data are based on the conditional likelihood principle to eliminate the stratum-specific nuisance parameters. When the outcome variable has multiple ordered categories, a natural choice for the outcome model is a stratified proportional odds or cumulative logit model. However, classical conditioning techniques do not apply to the general K-category cumulative logit model (K>2) with varying stratum-specific intercepts as there is no reduction due to sufficiency; the nuisance parameters remain in the conditional likelihood. We propose a methodology to fit stratified proportional odds model by amalgamating conditional likelihoods obtained from all possible binary collapsings of the ordinal scale. The method allows for categorical and continuous covariates in a general regression framework. We provide a robust sandwich estimate of the variance of the proposed estimator. For binary exposures, we show equivalence of our approach to the estimators already proposed in the literature. The proposed recipe can be implemented very easily in standard software. We illustrate the methods via three real data examples related to biomedical research. Simulation results comparing the proposed method with a random effects model on the stratification parameters are also furnished. Copyright 2008 John Wiley & Sons, Ltd.Entities:
Mesh:
Year: 2008 PMID: 18618428 PMCID: PMC3085191 DOI: 10.1002/sim.3325
Source DB: PubMed Journal: Stat Med ISSN: 0277-6715 Impact factor: 2.373