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用横断面血清学估计霍乱发病率。

Estimating cholera incidence with cross-sectional serology.

机构信息

Department of Epidemiology, Johns Hopkins Bloomberg School of Public Health, Baltimore, MD 21205, USA.

Epicentre, Paris 75012, France.

出版信息

Sci Transl Med. 2019 Feb 20;11(480). doi: 10.1126/scitranslmed.aau6242.

Abstract

The development of new approaches to cholera control relies on an accurate understanding of cholera epidemiology. However, most information on cholera incidence lacks laboratory confirmation and instead relies on surveillance systems reporting medically attended acute watery diarrhea. If recent infections could be identified using serological markers, cross-sectional serosurveys would offer an alternative approach to measuring incidence. Here, we used 1569 serologic samples from a cohort of cholera cases and their uninfected contacts in Bangladesh to train machine learning models to identify recent O1 infections. We found that an individual's antibody profile contains information on the timing of O1 infections in the previous year. Our models using six serological markers accurately identified individuals in the Bangladesh cohort infected within the last year [cross-validated area under the curve (AUC), 93.4%; 95% confidence interval (CI), 92.1 to 94.7%], with a marginal performance decrease using models based on two markers (cross-validated AUC, 91.0%; 95% CI, 89.2 to 92.7%). We validated the performance of the two-marker model on data from a cohort of North American volunteers challenged with O1 (AUC range, 88.4 to 98.4%). In simulated serosurveys, our models accurately estimated annual incidence in both endemic and epidemic settings, even with sample sizes as small as 500 and annual incidence as low as two infections per 1000 individuals. Cross-sectional serosurveys may be a viable approach to estimating cholera incidence.

摘要

新的霍乱控制方法的发展依赖于对霍乱流行病学的准确理解。然而,大多数关于霍乱发病率的信息缺乏实验室确认,而是依赖于报告有医疗就诊的急性水样腹泻的监测系统。如果能使用血清学标志物来识别近期感染,那么横断面血清学调查将提供一种衡量发病率的替代方法。在这里,我们使用了来自孟加拉国一个霍乱病例及其未感染接触者队列的 1569 份血清学样本,来训练机器学习模型以识别 O1 型的近期感染。我们发现,个体的抗体谱包含了其在过去一年中 O1 型感染时间的信息。我们使用六个血清学标志物的模型能够准确识别孟加拉国队列中在过去一年中感染的个体[交叉验证曲线下面积(AUC)为 93.4%;95%置信区间(CI)为 92.1%至 94.7%],而使用基于两个标志物的模型则略有性能下降(交叉验证 AUC 为 91.0%;95%CI 为 89.2%至 92.7%)。我们在接受 O1 挑战的北美志愿者队列的数据上验证了双标志物模型的性能(AUC 范围为 88.4%至 98.4%)。在模拟的血清学调查中,即使在样本量为 500 且每年每 1000 人中的感染率低至 2 例的情况下,我们的模型也能准确估计在地方性和流行地区的年度发病率。横断面血清学调查可能是一种可行的估计霍乱发病率的方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5920/6510295/5b4cd1bb1b3b/STM-11-eaau6242-g001.jpg

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