利用集合数据同化预测SARS-CoV-2大流行的国际倡议

IF 1.7 Q2 MATHEMATICS, APPLIED
G. Evensen, Javier Amezcua, M. Bocquet, A. Carrassi, A. Farchi, A. Fowler, P. Houtekamer, C. Jones, R. Moraes, M. Pulido, C. Sampson, F. Vossepoel
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引用次数: 15

摘要

这项工作证明了使用迭代集成平滑器来估计SEIR模型参数的效率。我们扩展了一个标准的SEIR模型,该模型包含了患病、住院和死亡的年龄等级和隔间。以每日累计死亡人数和住院人数为条件的数据。此外,可以根据从测试中获得的病例数量来调整模型。我们从模型参数的广泛先验分布开始;然后,集合条件导致估计参数的后验集合,从而产生与观测结果非常一致的模型预测。更新后的模型模拟集合具有预测能力,并包括不确定性估计。特别是,我们将有效繁殖数量估计为时间的函数,我们可以评估不同干预措施的影响。通过从更新后的一组模型参数开始,假设知道未来的有效繁殖数,我们可以对疫情发展做出准确的短期预测。此外,该模型系统允许在不同假设下计算疫情的长期情景。我们已经将模型系统应用于几个国家的数据集,即四个欧洲国家挪威、英国、荷兰和法国;加拿大魁北克省;南美洲国家阿根廷和巴西;以及美国四个州阿拉巴马州、北卡罗来纳州、加利福尼亚州和纽约州。这些国家和州的疫情发展都大不相同,我们可以准确地模拟所有国家的严重急性呼吸系统综合征冠状病毒2型疫情。我们意识到,可能需要更复杂的模型,例如具有区域分区的模型,我们建议此处使用的方法也应适用于这些模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An international initiative of predicting the SARS-CoV-2 pandemic using ensemble data assimilation
This work demonstrates the efficiency of using iterative ensemble smoothers to estimate the parameters of an SEIR model. We have extended a standard SEIR model with age-classes and compartments of sick, hospitalized, and dead. The data conditioned on are the daily numbers of accumulated deaths and the number of hospitalized. Also, it is possible to condition the model on the number of cases obtained from testing. We start from a wide prior distribution for the model parameters; then, the ensemble conditioning leads to a posterior ensemble of estimated parameters yielding model predictions in close agreement with the observations. The updated ensemble of model simulations has predictive capabilities and include uncertainty estimates. In particular, we estimate the effective reproductive number as a function of time, and we can assess the impact of different intervention measures. By starting from the updated set of model parameters, we can make accurate short-term predictions of the epidemic development assuming knowledge of the future effective reproductive number. Also, the model system allows for the computation of long-term scenarios of the epidemic under different assumptions. We have applied the model system on data sets from several countries, i.e., the four European countries Norway, England, The Netherlands, and France; the province of Quebec in Canada; the South American countries Argentina and Brazil; and the four US states Alabama, North Carolina, California, and New York. These countries and states all have vastly different developments of the epidemic, and we could accurately model the SARS-CoV-2 outbreak in all of them. We realize that more complex models, e.g., with regional compartments, may be desirable, and we suggest that the approach used here should be applicable also for these models.
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CiteScore
3.30
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