Journal article

A novel Bayesian geospatial method for estimating tuberculosis incidence reveals many missed TB cases in Ethiopia

D Shaweno, JM Trauer, JT Denholm, ES McBryde

BMC Infectious Diseases | BIOMED CENTRAL LTD | Published : 2017

Abstract

Background: Reported tuberculosis (TB) incidence globally continues to be heavily influenced by expert opinion of case detection rates and ecological estimates of disease duration. Both approaches are recognised as having substantial variability and inaccuracy, leading to uncertainty in true TB incidence and other such derived statistics. Methods: We developed Bayesian binomial mixture geospatial models to estimate TB incidence and case detection rate (CDR) in Ethiopia. In these models the underlying true incidence was formulated as a partially observed Markovian process following a mixed Poisson distribution and the detected (observed) TB cases as a binomial distribution, conditional on CDR..

View full abstract

University of Melbourne Researchers