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Risk of a second wave of Covid-19 infections: using artificial intelligence to investigate stringency of physical distancing policies in North America

机译:第二波Covid-19感染的风险:使用人工智能调查北美身体疏散政策的严格性

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Purpose Accurately forecasting the occurrence of future covid-19-related cases across relaxed (Sweden) and stringent (USA and Canada) policy contexts has a renewed sense of urgency. Moreover, there is a need for a multidimensional county-level approach to monitor the second wave of covid-19 in the USA. Method We use an artificial intelligence framework based on timeline of policy interventions that triangulated results based on the three approaches-Bayesian susceptible-infected-recovered (SIR), Kalman filter, and machine learning. Results Our findings suggest three important insights. First, the effective growth rate of covid-19 infections dropped in response to the approximate dates of key policy interventions. We find that the change points for spreading rates approximately coincide with the timelines of policy interventions across respective countries. Second, forecasted trend until mid-June in the USA was downward trending, stable, and linear. Sweden is likely to be heading in the other direction. That is, Sweden's forecasted trend until mid-June appears to be non-linear and upward trending. Canada appears to fall somewhere in the middle-the trend for the same period is flat. Third, a Kalman filter based robustness check indicates that by mid-June the USA will likely have close to two million virus cases, while Sweden will likely have over 44,000 covid-19 cases. Conclusion We show that drop in effective growth rate of covid-19 infections was sharper in the case of stringent policies (USA and Canada) but was more gradual in the case of relaxed policy (Sweden). Our study exhorts policy makers to take these results into account as they consider the implications of relaxing lockdown measures.
机译:目的,准确地预测未来Covid-19相关案件的发生(瑞典)和严格(美国和加拿大)政策背景具有重新的紧迫感。此外,需要一种多维县级方法来监控美国的第二波Covid-19。方法我们使用基于政策干预时间表的人工智能框架,这是基于三种方法 - 贝叶斯敏感感染的(先生),卡尔曼滤波器和机器学习的三角化结果。结果我们的研究结果表明了三个重要的见解。首先,响应关键政策干预的大致日期,Covid-19感染的有效生长速率下降。我们发现,传播率的变化点大致恰逢各国政策干预的时间表。其次,预测趋势至6月中旬,在美国是向下趋势,稳定和线性的。瑞典可能会沿另一个方向前进。也就是说,瑞典的预测趋势至6月中旬似乎是非线性和向上的趋势。加拿大似乎落在中间的某个地方 - 同一时期的趋势是平的。第三,基于卡尔曼过滤器的鲁棒性检查表明,在6月中旬,美国可能已经接近了200万病毒案件,而瑞典可能有超过44,000个Covid-19案件。结论我们表明,在严格的政策(美国和加拿大)的情况下,Covid-19感染的有效增长率下降更加清晰,但在轻松的政策(瑞典)的情况下更加渐进。我们的研究劝告政策制定者认为这些结果考虑到锁定锁定措施的影响。

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