Department of Global Health, Euclid University, Bangui, Central African Republic.
Center for Evaluation, London School of Hygiene & Tropical Medicine, London, United Kingdom.
J Med Life. 2022 Dec;15(12):1464-1475. doi: 10.25122/jml-2022-0164.
Prison inmates are a high-risk group for tuberculosis (TB) infection and disease due to the increasing number of vulnerable fringe groups, risk factors (., 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.
囚犯由于弱势群体不断增加、存在感染因素(例如,酗酒和吸毒)、传染性疾病(HIV、肝炎)以及高危行为,是结核病(TB)感染和发病的高危人群。与普通人群相比,囚犯中的结核病发病率和患病率显著更高。在监狱系统中有效控制结核病,需要早期识别可能具有传染性的肺结核(PTB),并对患病囚犯进行有针对性的护理。世界卫生组织(WHO)建议在监狱中同时采用主动和被动病例发现方法。目前尚未发表使用诊断准确性网络荟萃分析(NMA)比较广谱筛查工具的研究。我们旨在确定在资源有限的高负担结核病国家的监狱中进入监狱时最准确、可行的结核病发现算法,并确保在这些环境中持续提供全面的结核病检测服务。该 NMA 生成的证据可以为选择短期、中期和长期资源有限环境中筛查方法的最有效(成本)算法提供重要决策支持。