Drug-Resistant Tuberculosis Among Hiv-Infected Patients Starting Antiretroviral Therapy In Durban, South Africa

PLOS ONE(2012)

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摘要
Objective: To estimate the prevalence of drug-resistant tuberculosis (TB) and describe the resistance patterns in patients commencing antiretroviral therapy (ART) in an HIV clinic in Durban, South Africa.Design: Cross-sectional cohort study.Methods: Consecutive HIV-infected adults (>= 18y/o) initiating HIV care were enrolled from May 2007-May 2008, regardless of signs or symptoms of active TB. Prior TB history and current TB treatment status were self-reported. Subjects expectorated sputum for culture (MGIT liquid and 7H11 solid medium). Positive cultures were tested for susceptibility to first-and second-line anti-tuberculous drugs. The prevalence of drug-resistant TB, stratified by prior TB history and current TB treatment status, was assessed.Results: 1,035 subjects had complete culture results. Median CD4 count was 92/mu l (IQR 42-150/mu l). 267 subjects (26%) reported a prior history of TB and 210 (20%) were receiving TB treatment at enrollment; 191 (18%) subjects had positive sputum cultures, among whom the estimated prevalence of resistance to any antituberculous drug was 7.4% (95% CI 4.0-12.4). Among those with prior TB, the prevalence of resistance was 15.4% (95% CI 5.9-30.5) compared to 5.2% (95% CI 2.1-8.9) among those with no prior TB. 5.1% (95% CI 2.4-9.5) had rifampin or rifampin plus INH resistance.Conclusions: The prevalence of TB resistance to at least one drug was 7.4% among adults with positive TB cultures initiating ART in Durban, South Africa, with 5.1% having rifampin or rifampin plus INH resistance. Improved tools for diagnosing TB and drug resistance are urgently needed in areas of high HIV/TB prevalence.
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developing countries,chemistry,prevalence,physics,engineering,treatment,clients,drug resistance,health,measurement,medicine,cohort studies,cross sectional studies,cross sectional analysis,public health,research methodology,antibiotics,global health,biology
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