Division of Vector-Borne Diseases, Centers for Disease Control and Prevention, San Juan, Puerto Rico, United States of America.
Centers for Disease Control and Prevention, Atlanta, Georgia, United States of America.
PLoS Comput Biol. 2021 Mar 30;17(3):e1008812. doi: 10.1371/journal.pcbi.1008812. eCollection 2021 Mar.
Emerging epidemics are challenging to track. Only a subset of cases is recognized and reported, as seen with the Zika virus (ZIKV) epidemic where large proportions of infection were asymptomatic. However, multiple imperfect indicators of infection provide an opportunity to estimate the underlying incidence of infection. We developed a modeling approach that integrates a generic Time-series Susceptible-Infected-Recovered epidemic model with assumptions about reporting biases in a Bayesian framework and applied it to the 2016 Zika epidemic in Puerto Rico using three indicators: suspected arboviral cases, suspected Zika-associated Guillain-Barré Syndrome cases, and blood bank data. Using this combination of surveillance data, we estimated the peak of the epidemic occurred during the week of August 15, 2016 (the 33rd week of year), and 120 to 140 (50% credible interval [CrI], 95% CrI: 97 to 170) weekly infections per 10,000 population occurred at the peak. By the end of 2016, we estimated that approximately 890,000 (95% CrI: 660,000 to 1,100,000) individuals were infected in 2016 (26%, 95% CrI: 19% to 33%, of the population infected). Utilizing multiple indicators offers the opportunity for real-time and retrospective situational awareness to support epidemic preparedness and response.
新发传染病难以追踪。只有一部分病例被识别和报告,寨卡病毒(ZIKV)疫情就是如此,其中很大一部分感染是无症状的。然而,多种不完善的感染指标为估计潜在感染率提供了机会。我们开发了一种建模方法,该方法将通用的时间序列易感-感染-恢复传染病模型与贝叶斯框架中的报告偏倚假设相结合,并将其应用于 2016 年波多黎各的寨卡疫情,使用了三个指标:疑似虫媒病毒病例、疑似寨卡相关格林-巴利综合征病例和血库数据。利用这种监测数据的组合,我们估计疫情高峰发生在 2016 年 8 月 15 日(当年第 33 周),高峰期每 10000 人口每周发生 120 至 140 例(50%置信区间[CrI],95% CrI:97 至 170)感染。到 2016 年底,我们估计约有 890000(95% CrI:660000 至 1100000)人在 2016 年感染(感染人口的 26%,95% CrI:19%至 33%)。利用多种指标有机会进行实时和回顾性态势感知,以支持疫情准备和应对。