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控制社区规模下的 COVID-19 传播以恢复正常状态的时空解决方案:COVID-19 症状发作风险时空分析。

A Spatiotemporal Solution to Control COVID-19 Transmission at the Community Scale for Returning to Normalcy: COVID-19 Symptom Onset Risk Spatiotemporal Analysis.

机构信息

Otto Poon Charitable Foundation Smart Cities Research Institute and Department of Land Surveying and Geo-Informatics, The Hong Kong Polytechnic University, Hong Kong, China (Hong Kong).

Research Institute for Smart Cities, School of Architecture and Urban Planning, Shenzhen University, Shenzhen, China.

出版信息

JMIR Public Health Surveill. 2023 Jan 6;9:e36538. doi: 10.2196/36538.

Abstract

BACKGROUND

Following the recent COVID-19 pandemic, returning to normalcy has become the primary goal of global cities. The key for returning to normalcy is to avoid affecting social and economic activities while supporting precise epidemic control. Estimation models for the spatiotemporal spread of the epidemic at the refined scale of cities that support precise epidemic control are limited. For most of 2021, Hong Kong has remained at the top of the "global normalcy index" because of its effective responses. The urban-community-scale spatiotemporal onset risk prediction model of COVID-19 symptom has been used to assist in the precise epidemic control of Hong Kong.

OBJECTIVE

Based on the spatiotemporal prediction models of COVID-19 symptom onset risk, the aim of this study was to develop a spatiotemporal solution to assist in precise prevention and control for returning to normalcy.

METHODS

Over the years 2020 and 2021, a spatiotemporal solution was proposed and applied to support the epidemic control in Hong Kong. An enhanced urban-community-scale geographic model was proposed to predict the risk of COVID-19 symptom onset by quantifying the impact of the transmission of SARS-CoV-2 variants, vaccination, and the imported case risk. The generated prediction results could be then applied to establish the onset risk predictions over the following days, the identification of high-onset-risk communities, the effectiveness analysis of response measures implemented, and the effectiveness simulation of upcoming response measures. The applications could be integrated into a web-based platform to assist the antiepidemic work.

RESULTS

Daily predicted onset risk in 291 tertiary planning units (TPUs) of Hong Kong from January 18, 2020, to April 22, 2021, was obtained from the enhanced prediction model. The prediction accuracy in the following 7 days was over 80%. The prediction results were used to effectively assist the epidemic control of Hong Kong in the following application examples: identified communities within high-onset-risk always only accounted for 2%-25% in multiple epidemiological scenarios; effective COVID-19 response measures, such as prohibiting public gatherings of more than 4 people were found to reduce the onset risk by 16%-46%; through the effect simulation of the new compulsory testing measure, the onset risk was found to be reduced by more than 80% in 42 (14.43%) TPUs and by more than 60% in 96 (32.99%) TPUs.

CONCLUSIONS

In summary, this solution can support sustainable and targeted pandemic responses for returning to normalcy. Faced with the situation that may coexist with SARS-CoV-2, this study can not only assist global cities in responding to the future epidemics effectively but also help to restore social and economic activities and people's normal lives.

摘要

背景

在最近的 COVID-19 大流行之后,恢复正常状态已成为全球城市的首要目标。恢复正常的关键是在支持精准疫情防控的同时,避免影响社会和经济活动。支持精准疫情防控的城市精细化尺度上的疫情时空传播估计模型仍然有限。由于采取了有效的应对措施,香港在 2021 年大部分时间里一直位居“全球正常化指数”榜首。香港已使用城市社区尺度的 COVID-19 症状发病风险时空预测模型来协助精准疫情防控。

目的

本研究基于 COVID-19 症状发病风险的时空预测模型,旨在开发一种时空解决方案,以协助恢复正常状态下的精准预防和控制。

方法

在 2020 年和 2021 年期间,提出并应用了一种时空解决方案,以支持香港的疫情防控。提出了一种增强型城市社区尺度地理模型,通过量化 SARS-CoV-2 变体传播、疫苗接种和输入病例风险的影响,来预测 COVID-19 症状发病的风险。生成的预测结果可用于建立以下几天的发病风险预测、识别高发病风险社区、分析实施的应对措施的有效性以及模拟即将实施的应对措施的有效性。这些应用可以整合到一个基于网络的平台中,以协助抗疫工作。

结果

从 2020 年 1 月 18 日至 2021 年 4 月 22 日,从香港 291 个三级规划单元(TPU)获得了每日预测发病风险。在未来 7 天的预测准确率超过 80%。预测结果被用于有效地协助香港的疫情防控,在以下应用实例中得到了应用:在多个流行病学场景中,高发病风险社区始终只占 2%-25%;有效的 COVID-19 应对措施,如禁止超过 4 人的公众集会,被发现可降低发病风险 16%-46%;通过对新的强制检测措施的效果模拟,在 42 个(14.43%)TPU 和 96 个(32.99%)TPU 中,发病风险降低了 80%以上。

结论

总之,该解决方案可支持恢复正常状态下的可持续和有针对性的大流行应对。面对可能与 SARS-CoV-2 共存的情况,本研究不仅可以协助全球城市有效应对未来的疫情,还可以帮助恢复社会和经济活动及人们的正常生活。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b903/9829029/bddc062ae45f/publichealth_v9i1e36538_fig1.jpg

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