Du Zhanwei, Bai Yuan, Wang Lin, Herrera-Diestra Jose L, Yuan Zhilu, Guo Renzhong, Cowling Benjamin J, Meyers Lauren A, Holme Petter
Shenzhen Institute of Research and Innovation, The University of Hong Kong, Shenzhen 518057, China.
World Health Organization Collaborating Centre for Infectious Disease Epidemiology and Control, School of Public Health, University of Hong Kong, Hong Kong SAR 999077, China.
PNAS Nexus. 2022 Apr 14;1(2):pgac038. doi: 10.1093/pnasnexus/pgac038. eCollection 2022 May.
Targeting surveillance resources toward individuals at high risk of early infection can accelerate the detection of emerging outbreaks. However, it is unclear which individuals are at high risk without detailed data on interpersonal and physical contacts. We propose a data-driven COVID-19 surveillance strategy using Electronic Health Record (EHR) data that identifies the most vulnerable individuals who acquired the earliest infections during historical influenza seasons. Our simulations for all three networks demonstrate that the EHR-based strategy performs as well as the most-connected strategy. Compared to the random acquaintance surveillance, our EHR-based strategy detects the early warning signal and peak timing much earlier. On average, the EHR-based strategy has 9.8 days of early warning and 13.5 days of peak timings, respectively, before the whole population. For the urban network, the expected values of our method are better than the random acquaintance strategy (24% for early warning and 14% in-advance for peak time). For a scale-free network, the average performance of the EHR-based method is 75% of the early warning and 109% in-advance when compared with the random acquaintance strategy. If the contact structure is persistent enough, it will be reflected by their history of infection. Our proposed approach suggests that seasonal influenza infection records could be used to monitor new outbreaks of emerging epidemics, including COVID-19. This is a method that exploits the effect of contact structure without considering it explicitly.
将监测资源针对早期感染高风险个体可以加速新发疫情的检测。然而,在没有人际和身体接触详细数据的情况下,不清楚哪些个体处于高风险。我们提出一种利用电子健康记录(EHR)数据的数据驱动型新冠病毒监测策略,该策略可识别在历史流感季节期间最早感染的最脆弱个体。我们对所有三个网络的模拟表明,基于EHR的策略与连接最紧密的策略表现相当。与随机熟人监测相比,我们基于EHR的策略能更早检测到预警信号和峰值时间。平均而言,基于EHR的策略在整个人口之前分别有9.8天的预警和13.5天的峰值时间。对于城市网络,我们方法的期望值优于随机熟人策略(预警提前24%,峰值时间提前14%)。对于无标度网络,与随机熟人策略相比,基于EHR的方法的平均性能在预警方面为75%,在提前时间方面为109%。如果接触结构足够持久,它将通过他们的感染史反映出来。我们提出的方法表明,季节性流感感染记录可用于监测包括新冠病毒在内的新发疫情的新爆发。这是一种利用接触结构的影响而无需明确考虑它的方法。