The novel coronavirus disease 2019 (COVID-19) presents unique and unknown problem complexities and modeling challenges, where an imperative task is to model both its process and data uncertainties, represented in implicit and high-proportional undocumented infections, asymptomatic contagion, social reinforcement of infections, and various quality issues in the reported data. These uncertainties become even more phenomenal in the overwhelming mutation-dominated resurgences with vaccinated but still susceptible populations. Here we introduce a novel hybrid approach to (1) characterizing and distinguishing Undocumented (U) and Documented (D) infections commonly seen during COVID-19 incubation periods and asymptomatic infections by expanding the foundational compartmental epidemic Susceptible-Infected-Recovered (SIR) model with two compartments, resulting in a new Susceptible-Undocumented infected-Documented infected-Recovered (SUDR) model; (2) characterizing the probabilistic density of infections by empowering SUDR to capture exogenous processes like clustering contagion interactions, superspreading and social reinforcement; and (3) approximating the density likelihood of COVID-19 prevalence over time by incorporating Bayesian inference into SUDR. Different from existing COVID-19 models, SUDR characterizes the undocumented infections during unknown transmission processes. To capture the uncertainties of temporal transmission and social reinforcement during the COVID-19 contagion, the transmission rate is modeled by a time-varying density function of undocumented infectious cases. We solve the modeling by sampling from the mean-field posterior distribution with reasonable priors, making SUDR suitable to handle the randomness, noise and sparsity of COVID-19 observations widely seen in the public COVID-19 case data.
翻译:2019年新的冠状病毒疾病(COVID-19)提出了独特和未知的问题复杂性和模型化挑战,其中一项紧迫的任务是模拟其过程和数据不确定性,其表现为隐蔽和高比例的无证感染,无症状传染,感染的社会强化,以及报告数据中的各种质量问题。这些不确定性在以接种疫苗但仍易受感染的人口压倒性突变为主的死灰复燃中变得更加惊人。在这里,我们采用了一种新型混合方法:(1) 特征化和区分无证(U)和有文件证明(D)的(在COVI-19孵化期常见的无证(D)感染和无症状感染期间常见的。 通过扩大基础区际传染病的区际传染,以隐蔽和高超超常的感染(SIR)模式来模拟其过程和数据不确定性。