Department of Epidemiology, Boston University School of Public Health, Boston, Massachusetts, USA.
Department of Medicine, Boston University School of Medicine, Boston, Massachusetts, USA.
Clin Infect Dis. 2023 Feb 8;76(3):e965-e972. doi: 10.1093/cid/ciac451.
Modeling studies have concluded that 60-80% of tuberculosis (TB) infections result from reinfection of previously infected persons. The annual rate of infection (ARI), a standard measure of the risk of TB infection in a community, may not accurately reflect the true risk of infection among previously infected persons. We constructed a model of infection and reinfection with Mycobacterium tuberculosis to explore the predictive accuracy of ARI and its effect on disease incidence.
We created a deterministic simulation of the progression from TB infection to disease and simulated the prevalence of TB infection at the beginning and end of a theoretical year of infection. We considered 10 disease prevalence scenarios ranging from 100/100 000 to 1000/100 000 in simulations where TB exposure probability was homogeneous across the whole simulated population or heterogeneously stratified into high-risk and low-risk groups. ARI values, rates of progression from infection to disease, and the effect of multiple reinfections were obtained from published studies.
With homogeneous exposure risk, observed ARI values produced expected numbers of infections. However, when heterogeneous risk was introduced, observed ARI was seen to underestimate true ARI by 25-58%. Of the cases of TB disease that occurred, 36% were among previously infected persons when prevalence was 100/100 000, increasing to 79% of cases when prevalence was 1000/100 000.
Measured ARI underestimates true ARI as a result of heterogeneous population mixing. The true force of infection in a community may be greater than previously appreciated. Hyperendemic communities likely contribute disproportionally to the global TB disease burden.
建模研究得出结论,60%-80%的结核病(TB)感染是由先前感染的人再次感染引起的。年度感染率(ARI)是衡量社区中 TB 感染风险的标准指标,但可能无法准确反映先前感染者的真实感染风险。我们构建了一个结核分枝杆菌感染和再感染的模型,以探讨 ARI 的预测准确性及其对疾病发病率的影响。
我们创建了一个从 TB 感染到发病的确定性模拟,并模拟了理论感染年开始和结束时 TB 感染的流行率。我们考虑了 10 种疾病流行率情景,范围从 100/100000 到 1000/100000,在整个模拟人群中 TB 暴露概率均匀或不均匀分层为高风险和低风险组的模拟中。ARI 值、从感染到发病的进展率以及多次再感染的影响,均来自已发表的研究。
在均匀暴露风险的情况下,观察到的 ARI 值产生了预期的感染数量。然而,当引入不均匀风险时,观察到的 ARI 被低估了 25%-58%。在发生的结核病病例中,当流行率为 100/100000 时,36%的病例发生在先前感染者中,当流行率为 1000/100000 时,79%的病例发生在先前感染者中。
由于人群混合不均匀,测量的 ARI 低估了真实的 ARI。社区中的真实感染率可能比以前认为的要高。高度流行的社区可能对全球结核病疾病负担的贡献不成比例。