Title of article
Bayesian non-parametric models for regional prevalence estimation
Author/Authors
Adam J. Branscum، نويسنده , , Timothy E. Hanson & Ian A. Gardner، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2008
Pages
16
From page
567
To page
582
Abstract
We developed a flexible non-parametric Bayesian model for regional disease-prevalence estimation based
on cross-sectional data that are obtained from several subpopulations or clusters such as villages, cities,
or herds. The subpopulation prevalences are modeled with a mixture distribution that allows for zero
prevalence. The distribution of prevalences among diseased subpopulations is modeled as a mixture of
finite Polya trees. Inferences can be obtained for (1) the proportion of diseased subpopulations in a region,
(2) the distribution of regional prevalences, (3) the mean and median prevalence in the region, (4) the
prevalence of any sampled subpopulation, and (5) predictive distributions of prevalences for regional
subpopulations not included in the study, including the predictive probability of zero prevalence.We focus
on prevalence estimation using data from a single diagnostic test, but we also briefly discuss the scenario
where two conditionally dependent (or independent) diagnostic tests are used. Simulated data demonstrate
the utility of our non-parametric model over parametric analysis.An example involving brucellosis in cattle
is presented.
Keywords
disease-prevalence estimation , prediction , Polya trees
Journal title
JOURNAL OF APPLIED STATISTICS
Serial Year
2008
Journal title
JOURNAL OF APPLIED STATISTICS
Record number
712215
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