Beyond SIRD models: a novel dynamic model for epidemics, relating infected with entries to health care units and application for identification and restraining policy.

Christos Tsiliyannis
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Abstract

Epidemic models of susceptibles, exposed, infected, recovered and deceased (SΕIRD) presume homogeneity, constant rates and fixed, bilinear structure. They produce short-range, single-peak responses, hardly attained under restrictive measures. Tuned via uncertain I,R,D data, they cannot faithfully represent long-range evolution. A robust epidemic model is presented that relates infected with the entry rate to health care units (HCUs) via population averages. Model uncertainty is circumvented by not presuming any specific model structure, or constant rates. The model is tuned via data of low uncertainty, by direct monitoring: (a) of entries to HCUs (accurately known, in contrast to delayed and non-reliable I,R,D data) and (b) of scaled model parameters, representing population averages. The model encompasses random propagation of infections, delayed, randomly distributed entries to HCUs and varying exodus of non-hospitalized, as disease severity subdues. It closely follows multi-pattern growth of epidemics with possible recurrency, viral strains and mutations, varying environmental conditions, immunity levels, control measures and efficacy thereof, including vaccination. The results enable real-time identification of infected and infection rate. They allow design of resilient, cost-effective policy in real time, targeting directly the key variable to be controlled (entries to HCUs) below current HCU capacity. As demonstrated in ex post case studies, the policy can lead to lower overall cost of epidemics, by balancing the trade-off between the social cost of infected and the economic contraction associated with social distancing and mobility restriction measures.

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超越 SIRD 模型:一种新型的流行病动态模型,将感染者与进入医疗单位的人员联系起来,并应用于识别和限制政策。
易感者、暴露者、感染者、康复者和死亡者(SΕIRD)的流行病模型假定具有同质性、恒定的速率和固定的双线性结构。它们产生短程、单峰响应,在限制性措施下很难实现。通过不确定的 I、R、D 数据进行调整,它们不能忠实地反映长程演化。本文提出了一种稳健的流行病模型,该模型通过人口平均值将感染率与医疗单位(HCU)的进入率联系起来。模型的不确定性是通过不假定任何特定的模型结构或恒定率来规避的。该模型通过低不确定性数据进行调整,直接监测:(a) 进入 HCU 的人数(准确已知,与延迟和不可靠的 I、R、D 数据相反)和 (b) 代表人口平均值的比例模型参数。该模型包括感染的随机传播、延迟的、随机分布的进入高危病房的人数,以及随着疾病严重程度的降低,非住院病人的不同流出量。它密切关注流行病的多模式增长,并可能出现反复、病毒株和变异、不同的环境条件、免疫水平、控制措施及其效果,包括疫苗接种。研究结果可以实时识别感染者和感染率。通过这些结果,可以实时设计具有弹性和成本效益的政策,直接针对需要控制的关键变量(进入重症监护病房),使其低于重症监护病房的现有容量。事后案例研究表明,通过平衡感染者的社会成本和与社会疏远和流动限制措施相关的经济收缩之间的权衡,该政策可以降低流行病的总体成本。
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