We propose a stochastic SIR model, specified as a system of stochastic differential equations, to analyse the data of the Italian COVID-19 epidemic, taking also into account the under-detection of infected and recovered individuals in the population. We find that a correct assessment of the amount of under-detection is important to obtain reliable estimates of the critical model parameters. Moreover, a single SIR model over the whole epidemic period is unable to correctly describe the behaviour of the pandemic. Then, the adaptation of the model in every time-interval between relevant government decrees that implement contagion mitigation measures, provides short-term predictions and a continuously updated assessment of the basic reproduction number.
翻译:我们建议采用随机SIR模型,作为随机差异方程式系统,分析意大利COVID-19流行病的数据,同时考虑到人口中受感染和已恢复的个人的检测不足,我们认为,正确评估检测不足的数量对于获得关键模型参数的可靠估计至关重要,此外,在整个流行病期间,单一SIR模型无法正确描述该流行病的行为,然后,在政府执行传染缓解措施的有关法令之间的每一次时间间隔中调整该模型,提供短期预测和不断更新的基本生殖号码评估。