Diagnostic accuracy of screening algorithms to identify persons with active pulmonary tuberculosis at prison entry: protocol of a systematic review and network meta-analysis

Prison inmates are a high-risk group for tuberculosis (TB) infection and disease due to the increasing number of vulnerable fringe groups, risk factors ( e.g ., alcohol and drug addictions), contagious diseases (HIV, hepatitis), and their high-risk behavior. Compared to the general population, TB in...

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Vydáno v:Journal of medicine and life Ročník 15; číslo 12; s. 1464 - 1475
Hlavní autoři: Pape, Stephanie, Gulma, Kabiru, Shivalli, Siddharudha, Kiev, Laurent Cleenewerck de
Médium: Journal Article
Jazyk:angličtina
Vydáno: Romania Carol Daila University Foundation 01.12.2022
Carol Davila University Press
Témata:
HIV
STD
ISSN:1844-122X, 1844-3117, 1844-3117
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Shrnutí:Prison inmates are a high-risk group for tuberculosis (TB) infection and disease due to the increasing number of vulnerable fringe groups, risk factors ( e.g ., alcohol and drug addictions), contagious diseases (HIV, hepatitis), and their high-risk behavior. Compared to the general population, TB incidence and prevalence rates are significantly higher among prison inmates. Early identification of potentially infectious pulmonary TB (PTB) and targeted care of sick inmates are essential to effectively control TB within the prison system. The WHO recommends combining active and passive case-finding in prisons. No study has been published comparing the broad spectrum of screening tools using a diagnostic accuracy network meta-analysis (NMA). We aim to identify the most accurate TB case-finding algorithm at prison entry that is feasible in resource-limited prisons of high-burden TB countries and ensures continuous comprehensive TB detection services in such settings. Evidence generated by this NMA can provide important decision support in selecting the most (cost-) effective algorithms for screening methods for resource-limited settings in the short, medium, and long terms.
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ISSN:1844-122X
1844-3117
1844-3117
DOI:10.25122/jml-2022-0164