论文标题

预测主动接触跟踪的传染性

Predicting Infectiousness for Proactive Contact Tracing

论文作者

Bengio, Yoshua, Gupta, Prateek, Maharaj, Tegan, Rahaman, Nasim, Weiss, Martin, Deleu, Tristan, Muller, Eilif, Qu, Meng, Schmidt, Victor, St-Charles, Pierre-Luc, Alsdurf, Hannah, Bilanuik, Olexa, Buckeridge, David, Caron, Gáetan Marceau, Carrier, Pierre-Luc, Ghosn, Joumana, Ortiz-Gagne, Satya, Pal, Chris, Rish, Irina, Schölkopf, Bernhard, Sharma, Abhinav, Tang, Jian, Williams, Andrew

论文摘要

COVID-19的大流行已经在全球范围内迅速传播,在许多国家进行了压倒性的手动接触,并导致了紧急遏制的广泛封锁。大规模的数字接触跟踪(DCT)已成为恢复经济和社会活动的潜在解决方案,同时最大程度地减少病毒的传播。已经提出了各种DCT方法,每种方法都在隐私,流动限制和公共卫生之间进行权衡。最常见的方法是二进制接触跟踪(BCT),将感染模型为二进制事件,仅由个人的测试结果告知,并提出相应的二进制建议,即个人的接触隔离。 BCT忽略了接触和感染过程中固有的不确定性,这些不确定性可用于将消息传递给高危个人,并提示主动测试或更早的警告。它也不利用诸如症状或预先存在的医疗状况之类的观察结果,这些疾病可用于做出更准确的传染性预测。在本文中,我们使用最近提供的COVID-19流行病学模拟器来开发和测试可以将其部署到智能手机的方法,以根据其接触历史记录和其他信息进行本地和主动预测个人的感染性(有感染他人的风险),同时尊重强烈的隐私约束。预测用于通过应用程序向个人提供个性化的建议,并向个人的联系人发送匿名消息,他们使用此信息来更好地预测自己的传染性,这是我们称为主动联系人跟踪(PCT)的一种方法。我们发现一种基于深度学习的PCT方法,可改善与BCT相同的平均迁移率,这表明PCT可以帮助安全重新开放和第二波预防。

The COVID-19 pandemic has spread rapidly worldwide, overwhelming manual contact tracing in many countries and resulting in widespread lockdowns for emergency containment. Large-scale digital contact tracing (DCT) has emerged as a potential solution to resume economic and social activity while minimizing spread of the virus. Various DCT methods have been proposed, each making trade-offs between privacy, mobility restrictions, and public health. The most common approach, binary contact tracing (BCT), models infection as a binary event, informed only by an individual's test results, with corresponding binary recommendations that either all or none of the individual's contacts quarantine. BCT ignores the inherent uncertainty in contacts and the infection process, which could be used to tailor messaging to high-risk individuals, and prompt proactive testing or earlier warnings. It also does not make use of observations such as symptoms or pre-existing medical conditions, which could be used to make more accurate infectiousness predictions. In this paper, we use a recently-proposed COVID-19 epidemiological simulator to develop and test methods that can be deployed to a smartphone to locally and proactively predict an individual's infectiousness (risk of infecting others) based on their contact history and other information, while respecting strong privacy constraints. Predictions are used to provide personalized recommendations to the individual via an app, as well as to send anonymized messages to the individual's contacts, who use this information to better predict their own infectiousness, an approach we call proactive contact tracing (PCT). We find a deep-learning based PCT method which improves over BCT for equivalent average mobility, suggesting PCT could help in safe re-opening and second-wave prevention.

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