Environmental Health Sciences Department, University of California Berkeley, United States.
Department of Fish and Wildlife Conservation, Virginia Tech, United States; Chobe Research Institute, CARACAL, Botswana.
Epidemics. 2020 Mar;30:100372. doi: 10.1016/j.epidem.2019.100372. Epub 2019 Sep 16.
Diarrheal disease is the second largest cause of mortality in children younger than 5, yet our ability to anticipate and prepare for outbreaks remains limited. Here, we develop and test an epidemiological forecast model for childhood diarrheal disease in Chobe District, Botswana. Our prediction system uses a compartmental susceptible-infected-recovered-susceptible (SIRS) model coupled with Bayesian data assimilation to infer relevant epidemiological parameter values and generate retrospective forecasts. Our model inferred two system parameters and accurately simulated weekly observed diarrhea cases from 2007-2017. Accurate retrospective forecasts for diarrhea outbreaks were generated up to six weeks before the predicted peak of the outbreak, and accuracy increased over the progression of the outbreak. Many forecasts generated by our model system were more accurate than predictions made using only historical data trends. Accurate real-time forecasts have the potential to increase local preparedness for coming outbreaks through improved resource allocation and healthcare worker distribution.
腹泻病是 5 岁以下儿童死亡的第二大原因,但我们预测和准备疫情爆发的能力仍然有限。在这里,我们开发并测试了博茨瓦纳乔贝区儿童腹泻病的流行病学预测模型。我们的预测系统使用带贝叶斯数据同化的房室 SIRS 模型来推断相关的流行病学参数值并生成回溯预测。我们的模型推断出了两个系统参数,并准确地模拟了 2007-2017 年每周的观察性腹泻病例。在爆发的预测高峰前六周,就能生成准确的腹泻爆发回溯预测,并且随着疫情的发展,预测的准确性也在提高。我们模型系统生成的许多预测比仅使用历史数据趋势的预测更准确。准确的实时预测有可能通过改善资源分配和医护人员分布来提高当地对即将到来的疫情爆发的准备。