𝔖 Bobbio Scriptorium
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Bayesian analysis of prevalence with covariates using simulation-based techniques: applications to HIV screening

✍ Scribed by Xin M. Tu; Jeanne Kowalski; Gang Jia


Publisher
John Wiley and Sons
Year
1999
Tongue
English
Weight
118 KB
Volume
18
Category
Article
ISSN
0277-6715

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✦ Synopsis


Ignoring the limited precision of medical diagnostic tests can incur serious bias in prevalence estimation. Conversely, treating the values of sensitivity and specificity as constants, as in most studies, inevitably underestimates the variability of prevalence estimates. Bayesian inference provides a natural framework with which to integrate the variability in the estimates of sensitivity and specificity with estimation of prevalence. However, the resulting model becomes quite complicated and presents a computational challenge. Recently, Mendoza-Blanco et al. proposed a missing-data approach with simulation-based techniques to deal with the computational difficulties. Although their approach is quite effective in reducing the computational complexity into manageable tasks, their developed methodology is not general enough for modelling the effects of covariates in prevalence estimation. In this paper, we extend their work in this direction by combining their missing-data approach with a latent variable technique for modelling discrete data. The present work also generalizes the methods of Albert and Chib for Bayesian analysis of binary response data with errors in the response. We illustrate the methodology with several real data examples extracted from the literature.