Automated Exposure Notification for COVID-19.

Journal of young investigators Pub Date : 2022-12-01
Leo Samuels, Novak Boskov, Andreas Francisco Oliveira, Edwin Sun, David Starobinski, Ari Trachtenberg, Manan Monga, Mayank Varia, Ran Canetti, Anand Devaiah, Gerald V Denis
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Abstract

In the current COVID-19 pandemic, various Automated Exposure Notification (AEN) systems have been proposed to help quickly identify potential contacts of infected individuals. All these systems try to leverage the current understanding of the following factors: transmission risk, technology to address risk modeling, system policies and privacy considerations. While AEN holds promise for mitigating the spread of COVID-19, using short-range communication channels (Bluetooth) in smartphones to detect close individual contacts may be inaccurate for modeling and informing transmission risk. This work finds that the current close contact definitions may be inadequate to reduce viral spread using AEN technology. Consequently, relying on distance measurements from Bluetooth Low-Energy may not be optimal for determining risks of exposure and protecting privacy. This paper's literature analysis suggests that AEN may perform better by using broadly accessible technologies to sense the respiratory activity, mask status, or environment of participants. Moreover, the paper remains cognizant that smartphone sensors can leak private information and thus recommends additional objectives for maintaining user privacy without compromising utility for population health. This literature review and analysis will simultaneously interest (i) health professionals who desire a fundamental understanding of the design and utility of AEN systems and (ii) technologists interested in understanding their epidemiological basis in the light of recent research. Ultimately, the two disparate communities need to understand each other to assess the value of AEN systems in mitigating viral spread, whether for the COVID-19 pandemic or for future ones.

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针对COVID-19的自动暴露通知。
在当前的COVID-19大流行中,已经提出了各种自动暴露通知(AEN)系统,以帮助快速识别受感染个体的潜在接触者。所有这些系统都试图利用当前对以下因素的理解:传输风险、解决风险建模的技术、系统策略和隐私考虑。虽然AEN有望缓解COVID-19的传播,但在智能手机中使用短距离通信通道(蓝牙)来检测密切的个人接触者,对于建模和通报传播风险可能是不准确的。这项工作发现,目前的密切接触者定义可能不足以使用AEN技术减少病毒传播。因此,依靠低功耗蓝牙的距离测量可能不是确定暴露风险和保护隐私的最佳选择。本文的文献分析表明,通过使用广泛可用的技术来感知参与者的呼吸活动、面罩状态或环境,AEN可能会表现得更好。此外,该论文仍然认识到智能手机传感器可能泄露私人信息,因此建议在不损害人口健康效用的情况下维护用户隐私的其他目标。这篇文献综述和分析将同时引起(i)希望对AEN系统的设计和效用有基本了解的卫生专业人员和(ii)有兴趣根据最近的研究了解其流行病学基础的技术人员的兴趣。最终,这两个不同的社区需要相互了解,以评估AEN系统在减轻病毒传播方面的价值,无论是针对COVID-19大流行还是未来的大流行。
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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