使用变分数据同化,确定估计新冠肺炎传播、感染和检测率所需的测量

IF 3 Q2 INFECTIOUS DISEASES 传染病建模(英文) Pub Date : 2020-05-25 DOI:10.1101/2020.05.27.20112987
Eve Armstrong, Manuela Runge, J. Gerardin
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引用次数: 14

摘要

我们展示了统计数据同化(SDA)在新型冠状病毒疾病COVID-19的流行病学模型中识别准确状态和参数估计所需的测量值的能力。我们的背景是努力告知有关社会行为的政策,以减轻医院能力的压力。模型未知数为:时变传播率、暴露病例需要住院治疗的比例、新出现无症状病例和有症状病例的时变检测概率。在模拟中,我们通过测量检测到的病例以及康复病例和死亡病例,获得了未检测到(即未测量到)的感染人群的估计值,并且没有假设知道检出率。在对恢复的人群进行无噪音测量的情况下,使用101天的时间基线获得了所有数量的良好估计,但在实施社会距离之前的时间变化的传播率除外。随着低噪声加入到恢复的种群中,准确的状态估计需要延长测量的时间基线。所有参数的估计都对污染很敏感,强调需要准确和统一的报告方法。本文的目的是举例说明SDA的力量,以确定在具有捕获COVID-19大流行重要特征所需的复杂性的模型中,测量的哪些属性将产生对未知参数的估计达到所需的精度。
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Identifying the measurements required to estimate rates of COVID-19 transmission, infection, and detection, using variational data assimilation
We demonstrate the ability of statistical data assimilation (SDA) to identify the measurements required for accurate state and parameter estimation in an epidemiological model for the novel coronavirus disease COVID-19. Our context is an effort to inform policy regarding social behavior, to mitigate strain on hospital capacity. The model unknowns are taken to be: the time-varying transmission rate, the fraction of exposed cases that require hospitalization, and the time-varying detection probabilities of new asymptomatic and symptomatic cases. In simulations, we obtain estimates of undetected (that is, unmeasured) infectious populations, by measuring the detected cases together with the recovered and dead - and without assumed knowledge of the detection rates. Given a noiseless measurement of the recovered population, excellent estimates of all quantities are obtained using a temporal baseline of 101 days, with the exception of the time-varying transmission rate at times prior to the implementation of social distancing. With low noise added to the recovered population, accurate state estimates require a lengthening of the temporal baseline of measurements. Estimates of all parameters are sensitive to the contamination, highlighting the need for accurate and uniform methods of reporting. The aim of this paper is to exemplify the power of SDA to determine what properties of measurements will yield estimates of unknown parameters to a desired precision, in a model with the complexity required to capture important features of the COVID-19 pandemic.
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