Quarantine in Motion: A Graph Learning Framework to Reduce Disease Transmission Without Lockdown

Sofia Hurtado, R. Marculescu, Justin Drake
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Abstract

Exposure notification applications are developed to increase the scale and speed of disease contact tracing. Indeed, by taking advantage of Bluetooth technology, they track the infected population's mobility and then inform close contacts to get tested. In this paper, we ask whether these applications can extend from reactive to preemptive risk management tools? To this end, we propose a new framework that utilizes graph neural networks (GNN) and real-world Foursquare mobility data to predict high risk locations on an hourly basis. As a proof of concept, we then simulate a risk-informed Foursquare population of over 36,000 people in Austin TX after the peak of an outbreak. We find that even after 50% of the population has been infected with COVID-19, they can still maintain their mobility, while reducing the new infections by 13%. Consequently, these results are a first step towards achieving what we call Quarantine in Motion.
运动中的隔离:在没有封锁的情况下减少疾病传播的图学习框架
开发了暴露通知应用程序,以增加疾病接触者追踪的规模和速度。事实上,通过利用蓝牙技术,它们可以追踪受感染人群的流动,然后通知密切接触者进行检测。在本文中,我们提出这些应用是否可以从被动的风险管理工具扩展到先发制人的风险管理工具?为此,我们提出了一个利用图形神经网络(GNN)和现实世界Foursquare移动数据的新框架,以每小时为基础预测高风险地点。作为概念验证,我们在疫情爆发高峰期后,模拟了德克萨斯州奥斯汀超过3.6万人的风险知情Foursquare人口。我们发现,即使在50%的人口感染了COVID-19之后,他们仍然可以保持流动性,同时将新感染减少了13%。因此,这些结果是实现我们所说的动态隔离的第一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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