Using log-binomial model for estimating the prevalence ratio
10.3760/cma.j.issn.0254-6450.2010.05.024
- VernacularTitle:log-binomial模型估计的患病比及其应用
- Author:
Rong YE
1
;
Yan-Hui GAO
;
Yi YANG
;
Yue CHEN
Author Information
1. 广东药学院
- Keywords:
Prevalence ratio;
Log-binomial model;
COPY algorithm
- From:
Chinese Journal of Epidemiology
2010;31(5):576-578
- CountryChina
- Language:Chinese
-
Abstract:
[Introduction] To estimate the prevalence ratios, using a log-binomial model with or without continuous covariates. Prevalence ratios for individuals' attitude towards smoking-ban legislation associated with smoking status, estimated by using a log-binomial model were compared with odds ratios estimated by logistic regression model. In the log-binomial modeling, maximum likelihood method was used when there were no continuous covariates and COPY approach was used if the model did not converge, for example due to the existence of continuous covariates. We examined the association between individuals' attitude towards smoking-ban legislation and smoking status in men and women. Prevalence ratio and odds ratio estimation provided similar results for the association in women since smoking was not common. In men however, the odds ratio estimates were markedly larger than the prevalence ratios due to a higher prevalence of outcome. The log-binomial model did not converge when age was included as a continuous covariate and COPY method was used to deal with the situation. All analysis was performed by SAS. Prevalence ratio seemed to better measure the association than odds ratio when prevalence is high. SAS programs were provided to calculate the prevalence ratios with or without continuous covariates in the log-binomial regression analysis.