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Long time frames to detect the impact of changing COVID-19 measures, Canada, March to July 2020

机译:长时间框架检测改变Covid-19措施,加拿大的影响,3月至7月20日

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Background Many countries have implemented population-wide interventions to control COVID-19, with varying extent and success. Many jurisdictions have moved to relax measures, while others have intensified efforts to reduce transmission. Aim We aimed to determine the time frame between a population-level change in COVID-19 measures and its impact on the number of cases. Methods We examined how long it takes for there to be a substantial difference between the number of cases that occur following a change in COVID-19 physical distancing measures and those that would have occurred at baseline. We then examined how long it takes to observe this difference, given delays and noise in reported cases. We used a susceptible-exposed-infectious-removed (SEIR)-type model and publicly available data from British Columbia, Canada, collected between March and July 2020. Results It takes 10 days or more before we expect a substantial difference in the number of cases following a change in COVID-19 control measures, but 20–26 days to detect the impact of the change in reported data. The time frames are longer for smaller changes in control measures and are impacted by testing and reporting processes, with delays reaching ≥?30?days. Conclusion The time until a change in control measures has an observed impact is longer than the mean incubation period of COVID-19 and the commonly used 14-day time period. Policymakers and practitioners should consider this when assessing the impact of policy changes. Rapid, consistent and real-time COVID-19 surveillance is important to minimise these time frames.
机译:背景技术许多国家实施了人口广泛的干预措施,以控制Covid-19,不同程度和成功。许多司法管辖区已经搬到放松措施,而其他司法管辖区则加剧了减少传输的努力。目的我们旨在确定Covid-19措施中人口水平变化与其对案件数量的影响之间的时间框架。方法我们检查了在Covid-19物理疏散措施变化和基线发生的情况下发生的案件数量之间存在显着差异。然后,我们检查了观察这种差异需要多长时间,给予报告病例中的延迟和噪声。我们使用了3月和7月2020年3月之间收集的不列颠哥伦比亚省的敏感暴露的删除(Seir)-Type模型和公共可用数据。在3月和7月20日期间,在我们预计我们预期的数量大幅差异之前需要10天或更长时间Covid-19控制措施变化后的案件,但20-26天检测报告数据变化的影响。时间框架更长,用于控制措施的较小变化,并受测试和报告过程的影响,延迟达到≥30?天。结论对照措施变化具有观察到的影响,比Covid-19的平均孵化期和常用的14天时间段。在评估政策变化的影响时,政策制定者和从业者应该考虑这一点。快速,一致和实时Covid-19监视对于最小化这些时间框架非常重要。

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