Department of Computer Science, Hong Kong Baptist University, Kowloon, Hong Kong Special Administrative Region, People's Republic of China.
Infect Dis Poverty. 2022 Mar 25;11(1):34. doi: 10.1186/s40249-022-00957-1.
The new waves of COVID-19 outbreaks caused by the SARS-CoV-2 Omicron variant are developing rapidly and getting out of control around the world, especially in highly populated regions. The healthcare capacity (especially the testing resources, vaccination coverage, and hospital capacity) is becoming extremely insufficient as the demand will far exceed the supply. To address this time-critical issue, we need to answer a key question: How can we effectively infer the daily transmission risks in different districts using machine learning methods and thus lay out the corresponding resource prioritization strategies, so as to alleviate the impact of the Omicron outbreaks?
We propose a computational method for future risk mapping and optimal resource allocation based on the quantitative characterization of spatiotemporal transmission patterns of the Omicron variant. We collect the publicly available data from the official website of the Hong Kong Special Administrative Region (HKSAR) Government and the study period in this paper is from December 27, 2021 to July 17, 2022 (including a period for future prediction). First, we construct the spatiotemporal transmission intensity matrices across different districts based on infection case records. With the constructed cross-district transmission matrices, we forecast the future risks of various locations daily by means of the Gaussian process. Finally, we develop a transmission-guided resource prioritization strategy that enables effective control of Omicron outbreaks under limited capacity.
We conduct a comprehensive investigation of risk mapping and resource allocation in Hong Kong, China. The maps of the district-level transmission risks clearly demonstrate the irregular and spatiotemporal varying patterns of the risks, making it difficult for the public health authority to foresee the outbreaks and plan the responses accordingly. With the guidance of the inferred transmission risks, the developed prioritization strategy enables the optimal testing resource allocation for integrative case management (including case detection, quarantine, and further treatment), i.e., with the 300,000 testing capacity per day; it could reduce the infection peak by 87.1% compared with the population-based allocation strategy (case number reduces from 20,860 to 2689) and by 24.2% compared with the case-based strategy (case number reduces from 3547 to 2689), significantly alleviating the burden of the healthcare system.
Computationally characterizing spatiotemporal transmission patterns allows for the effective risk mapping and resource prioritization; such adaptive strategies are of critical importance in achieving timely outbreak control under insufficient capacity. The proposed method can help guide public-health responses not only to the Omicron outbreaks but also to the potential future outbreaks caused by other new variants. Moreover, the investigation conducted in Hong Kong, China provides useful suggestions on how to achieve effective disease control with insufficient capacity in other highly populated countries and regions.
由 SARS-CoV-2 奥密克戎变异株引起的新一轮 COVID-19 疫情在全球迅速发展并失控,尤其是在人口密集地区。随着需求远远超过供应,医疗保健能力(尤其是检测资源、疫苗接种覆盖率和医院容量)变得极其不足。为了解决这个时间紧迫的问题,我们需要回答一个关键问题:我们如何使用机器学习方法有效地推断不同地区的日常传播风险,从而制定相应的资源优先化策略,以减轻奥密克戎疫情的影响?
我们提出了一种基于奥密克戎变异株时空传播模式定量特征的未来风险映射和优化资源分配的计算方法。我们从香港特别行政区(HKSAR)政府官方网站收集了公开数据,本文的研究期为 2021 年 12 月 27 日至 2022 年 7 月 17 日(包括未来预测期)。首先,我们基于感染病例记录构建了跨地区时空传播强度矩阵。利用构建的跨地区传播矩阵,我们通过高斯过程对未来各地的风险进行每日预测。最后,我们开发了一种传播引导的资源优先化策略,可在有限能力下有效控制奥密克戎疫情。
我们对中国香港的风险映射和资源分配进行了全面调查。区级传播风险图清楚地表明了风险的不规则和时空变化模式,使公共卫生当局难以预测疫情并相应地规划应对措施。通过推断的传播风险指导,开发的优先级策略为综合病例管理(包括病例检测、检疫和进一步治疗)提供了最佳的检测资源分配,即每天 30 万次检测能力;与基于人口的分配策略(病例数从 20860 例减少到 2689 例)相比,可将感染高峰减少 87.1%;与基于病例的策略(病例数从 3547 例减少到 2689 例)相比,可减少 24.2%,从而显著减轻医疗系统的负担。
计算特征化时空传播模式可实现有效风险映射和资源优先化;在能力不足的情况下,这种自适应策略对于及时控制疫情至关重要。该方法不仅可帮助指导对奥密克戎疫情的公共卫生应对,还可帮助指导对其他新变异株可能引起的未来疫情的应对。此外,在中国香港进行的调查为在其他人口密集的国家和地区如何在能力不足的情况下实现有效疾病控制提供了有用建议。