School of Data Science, City University of Hong Kong, Hong Kong, China.
State Key Laboratory of Management and Control for Complex Systems, Institute of Automation, Chinese Academy of Sciences, Beijing, China.
Chaos. 2021 Oct;31(10):101104. doi: 10.1063/5.0066086.
Nonpharmaceutical interventions (NPIs) for contact suppression have been widely used worldwide, which impose harmful burdens on the well-being of populations and the local economy. The evaluation of alternative NPIs is needed to confront the pandemic with less disruption. By harnessing human mobility data, we develop an agent-based model that can evaluate the efficacies of NPIs with individualized mobility simulations. Based on the model, we propose data-driven targeted interventions to mitigate the COVID-19 pandemic in Hong Kong without city-wide NPIs. We develop a data-driven agent-based model for 7.55×10 Hong Kong residents to evaluate the efficacies of various NPIs in the first 80 days of the initial outbreak. The entire territory of Hong Kong has been split into 4905 500×500m grids. The model can simulate detailed agent interactions based on the demographics data, public facilities and functional buildings, transportation systems, and travel patterns. The general daily human mobility patterns are adopted from Google's Community Mobility Report. The scenario without any NPIs is set as the baseline. By simulating the epidemic progression and human movement at the individual level, we propose model-driven targeted interventions which focus on the surgical testing and quarantine of only a small portion of regions instead of enforcing NPIs in the whole city. The effectiveness of common NPIs and the proposed targeted interventions are evaluated by 100 extensive simulations. The proposed model can inform targeted interventions, which are able to effectively contain the COVID-19 outbreak with much lower disruption of the city. It represents a promising approach to sustainable NPIs to help us revive the economy of the city and the world.
非药物干预(NPIs)已被广泛应用于接触抑制,这对人群的福祉和当地经济造成了严重负担。需要评估替代 NPIs,以在不造成太大干扰的情况下应对大流行。我们利用人类流动数据,开发了一个基于代理的模型,可以通过个性化的流动模拟来评估 NPIs 的效果。基于该模型,我们提出了数据驱动的靶向干预措施,以减轻香港的 COVID-19 疫情,而无需实施全市范围的 NPIs。我们为 755 万香港居民开发了一个数据驱动的基于代理的模型,以评估最初爆发的前 80 天内各种 NPIs 的效果。香港全境被划分为 4905 个 500×500m 的网格。该模型可以根据人口统计数据、公共设施和功能建筑、交通系统和出行模式,模拟详细的代理交互。一般的日常人类流动模式来自谷歌的社区流动报告。没有任何 NPIs 的情景被设定为基线。通过在个体层面模拟疫情进展和人类活动,我们提出了模型驱动的靶向干预措施,重点是对一小部分地区进行手术检测和隔离,而不是在整个城市实施 NPIs。通过 100 次广泛的模拟,评估了常见 NPIs 和建议的靶向干预措施的效果。所提出的模型可以为靶向干预提供信息,这些干预措施能够以较低的城市干扰有效地控制 COVID-19 的爆发。它代表了一种可持续 NPIs 的有前途的方法,有助于我们恢复城市和世界的经济。