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Are Survey-based Estimates of the Burden of Drug Resistant TB Too Low? Insight from a Simulation Study

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2008

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Public Library of Science
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Cohen, Ted, Caroline Colijn, Bryson Finklea, Abigail Wright, Matteo Zignol, Alexander Pym, and Megan Murray. 2008. Are survey-based estimates of the burden of drug resistant TB too low? Insight from a simulation study. PLoS ONE 3(6): e2363.

Abstract

Background: The emergence of tuberculosis resistant to multiple first- and second-line antibiotics poses challenges to a global control strategy that relies on standard drug treatment regimens. Highly drug-resistant strains of Mycobacterium tuberculosis have been implicated in outbreaks and have been found throughout the world; a comprehensive understanding the magnitude of this threat requires an accurate assessment of the worldwide burden of resistance. Unfortunately, in many settings where resistance is emerging, laboratory capacity is limited and estimates of the burden of resistance are obtained by performing drug sensitivity testing on a sample of incident cases rather than through the use of routine surveillance. Methodology/Principal Findings: Using an individual-based dynamic tuberculosis model to simulate surveillance strategies for drug resistance, we found that current surveys may underestimate the total burden of resistant tuberculosis because cases of acquired resistance are undercounted and resistance among prevalent cases is not assessed. We explored how this bias is affected by the maturity of the epidemic and by the introduction of interventions that target the emergence and spread of resistant tuberculosis. Conclusions: Estimates of drug resistant tuberculosis based on samples of incident cases should be viewed as a lower bound of the total burden of resistance.

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infectious disease, antimicrobials and drug resistance, bacterial infections, epidemiology and control of infectious diseases, HIV infection and AIDS, respiratory infections, public health and epidemiology, epidemiology, global health

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