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Obtaining adjusted prevalence ratios from logistic regression models in cross-sectional studies

Obtendo razões de chance prevalentes de modelos de regressão logística em estudos transversais

La obtención de las prevalencias ajustadas a partir de los modelos de regresión logística en los estudios transversales

In the last decades, the use of the epidemiological prevalence ratio (PR) instead of the odds ratio has been debated as a measure of association in cross-sectional studies. This article addresses the main difficulties in the use of statistical models for the calculation of PR: convergence problems, availability of tools and inappropriate assumptions. We implement the direct approach to estimate the PR from binary regression models based on two methods proposed by Wilcosky & Chambless and compare with different methods. We used three examples and compared the crude and adjusted estimate of PR, with the estimates obtained by use of log-binomial, Poisson regression and the prevalence odds ratio (POR). PRs obtained from the direct approach resulted in values close enough to those obtained by log-binomial and Poisson, while the POR overestimated the PR. The model implemented here showed the following advantages: no numerical instability; assumes adequate probability distribution and, is available through the R statistical package.

Prevalence Ratio; Logistic Models; Cross-Sectional Studies


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