论文标题

将重症监护占用的随机模型拟合到Covid-19大流行期间嘈杂的住院时间序列

Fitting a stochastic model of intensive care occupancy to noisy hospitalization time series during the COVID-19 pandemic

论文作者

Awasthi, Achal, Minin, Volodymyr M., Huang, Jenny, Chow, Daniel, Xu, Jason

论文摘要

重症监护率是医疗保健压力的重要指标,该指标曾被用来指导COVID-19-19-19大流行期间的政策决策。随着大流行的进展,迈向可靠的决策,估计患者被送往医院和重症监护病房(ICU)的比率至关重要。由于在每个感兴趣的地理区域中,建模者很少获得个人级别的医院数据,因此开发从公开可用的日常医院和ICU床的公共供应率来推断这些速度的工具很重要。我们基于对ICU占用率波动的移民死亡过程的估计方法开发了这种估计方法。我们的灵活框架允许移民和死亡率取决于协变量,例如医院床入住和每日SARS-COV-2测试阳性率,这可能会导致医院ICU操作的变化。我们通过模拟研究证明,该提出的方法在嘈杂的时间序列数据上表现良好,并将我们的统计框架应用于加利福尼亚大学欧文分校(UCI)Health和加利福尼亚州奥兰治县的住院数据。通过引入一个基于似然的框架,移民和死亡率可能随协变量而变化,我们通过严格的模型选择发现,住院和阳性率是对ICU停留动态建模的重要协变量,并使用匿名的患者级别的UCI医院数据来验证我们的人均ICU估算。

Intensive care occupancy is an important indicator of health care stress that has been used to guide policy decisions during the COVID-19 pandemic. Toward reliable decision-making as a pandemic progresses, estimating the rates at which patients are admitted to and discharged from hospitals and intensive care units (ICUs) is crucial. Since individual-level hospital data are rarely available to modelers in each geographic locality of interest, it is important to develop tools for inferring these rates from publicly available daily numbers of hospital and ICU beds occupied. We develop such an estimation approach based on an immigration-death process that models fluctuations of ICU occupancy. Our flexible framework allows for immigration and death rates to depend on covariates, such as hospital bed occupancy and daily SARS-CoV-2 test positivity rate, which may drive changes in hospital ICU operations. We demonstrate via simulation studies that the proposed method performs well on noisy time series data and apply our statistical framework to hospitalization data from the University of California, Irvine (UCI) Health and Orange County, California. By introducing a likelihood-based framework where immigration and death rates can vary with covariates, we find, through rigorous model selection, that hospitalization and positivity rates are crucial covariates for modeling ICU stay dynamics and validate our per-patient ICU stay estimates using anonymized patient-level UCI hospital data.

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