Department of Electronics & Communication Engineering, National Institute of Technology Hamirpur, Hamirpur, India.
SBILab, Department of ECE, Indraprastha Institute of Information Technology Delhi, Delhi, India.
ISA Trans. 2022 May;124:31-40. doi: 10.1016/j.isatra.2021.02.016. Epub 2021 Feb 15.
Novel coronavirus respiratory disease COVID-19 has caused havoc in many countries across the globe. In order to contain infection of this highly contagious disease, most of the world population is constrained to live in a complete or partial lockdown for months together with a minimal human-to-human interaction having far reaching consequences on countries' economy and mental well-being of their citizens. Hence, there is a need for a good predictive model for the health advisory bodies and decision makers for taking calculated proactive measures to contain the pandemic and maintain a healthy economy. This paper extends the mathematical theory of the classical Susceptible-Infected-Removed (SIR) epidemic model and proposes a Generalized SIR (GSIR) model that is an integrative model encompassing multiple waves of daily reported cases. Existing growth function models of epidemic have been shown as the special cases of the GSIR model. Dynamic modeling of the parameters reflect the impact of policy decisions, social awareness, and the availability of medication during the pandemic. GSIR framework can be utilized to find a good fit or predictive model for any pandemic. The study is performed on the COVID-19 data for various countries with detailed results for India, Brazil, United States of America (USA), and World. The peak infection, total expected number of COVID-19 cases and thereof deaths, time-varying reproduction number, and various other parameters are estimated from the available data using the proposed methodology. The proposed GSIR model advances the existing theory and yields promising results for continuous predictive monitoring of COVID-19 pandemic.
新型冠状病毒呼吸道疾病 COVID-19 在全球许多国家造成了严重破坏。为了控制这种高度传染性疾病的感染,世界上大多数人口被限制在一起完全或部分封锁几个月,人类之间的互动最小,对各国经济和公民的心理健康产生了深远的影响。因此,卫生咨询机构和决策者需要一个良好的预测模型,以便采取有计划的主动措施来控制大流行并保持健康的经济。本文扩展了经典易感-感染-清除(SIR)传染病模型的数学理论,并提出了广义 SIR(GSIR)模型,这是一个包含多波每日报告病例的综合模型。现有的传染病增长函数模型已被证明是 GSIR 模型的特例。参数的动态建模反映了大流行期间政策决策、社会意识和药物供应的影响。GSIR 框架可用于为任何大流行找到合适的拟合或预测模型。该研究对各国的 COVID-19 数据进行了分析,并详细分析了印度、巴西、美国和世界的数据。使用提出的方法从可用数据中估计了峰值感染、总预期 COVID-19 病例数及其死亡人数、时变繁殖数和各种其他参数。所提出的 GSIR 模型推进了现有理论,并为 COVID-19 大流行的连续预测监测提供了有希望的结果。