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Feasibility of very short-term forecast models for COVID-19 hospital-based surveillance

机译:基于Covid-19医院监测的非常短期预测模型的可行性

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Introduction: We evaluated the performance of Bayesian vector autoregressive (BVAR) and Holt’s models to forecast the weekly COVID-19 reported cases in six units of a large hospital. Methods: Cases reported from epidemiologic weeks (EW) 12-37 were selected as the training period, and from EW 38-41 as the test period. Results: The models performed well in forecasting cases within one or two weeks following the end of the time-series, but forecasts for a more distant period were inaccurate. Conclusions: Both models offered reasonable performance in very short-term forecasts for confirmed cases of COVID-19.
机译:介绍:我们评估了贝叶斯矢量自动增加(BVAR)和Holt模型的表现,预测每周Covid-19报告的六个大型医院单位。 方法:从流行病学周(EW)12-37报告的病例被选为培训期,并从EW 38-41作为测试期间。 结果:在时间序列结束后一到两个星期内的预测情况下,该模型在预测情况下表现良好,但预测更远的时间是不准确的。 结论:两种型号在非常短期预测中为Covid-19确诊病例提供了合理的性能。

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