Modeling and prediction of the third wave of COVID-19 spread in India

Q2 Mathematics
Shraddha Ramdas Bandekar, Tanuja Das, Akhil Kumar Srivastav, Anuradha Yadav, Anuj Kumar, P. Srivastava, M. Ghosh
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引用次数: 0

Abstract

Abstract In this work, we proposed a simple SEIHR compartmental model to study and analyse the third wave of COVID-19 in India. In addition to the other features of the disease, we also consider the reinfection of recovered individuals in the model. For the purpose of parameter estimation we separate the infective and deaths classes and plot them against the cumulative counts of infective and deaths from data, respectively. The estimated parameters from these two are used for prediction and further numerical simulations.We note that the infective will keep on growing and only slow down after around three months. We have studied impact of various parameters on our model and observe that the parameters associated with mask usage, screening and the care giving toCOVID-19 patients have significant impact on the prevalence and time taken to slow down the infection.We conclude that better use of mask, effective screening and timely care to infective will reduce infective and can help in disease control. Our numerical simulations can explicitly provide a short term prediction for such time line. Also we note that providing better care facilities will help reducing peak as well as the disease burden of predicted infected cases.
新冠肺炎在印度第三波传播的建模和预测
摘要在这项工作中,我们提出了一个简单的SEIHR划分模型来研究和分析印度的第三波新冠肺炎。除了疾病的其他特征外,我们还考虑了模型中康复个体的再次感染。出于参数估计的目的,我们将感染和死亡类别分开,并将其分别与数据中感染和死亡的累计计数进行比较。这两个参数的估计值用于预测和进一步的数值模拟。我们注意到,感染将继续增长,大约三个月后才会减缓。我们研究了各种参数对我们模型的影响,并观察到与口罩使用、筛查和对新冠肺炎患者的护理相关的参数对发病率和减缓感染所需的时间有显著影响。我们的结论是,更好地使用口罩,有效地筛查和及时护理感染者,将减少感染,有助于疾病控制。我们的数值模拟可以明确地为这种时间线提供短期预测。我们还注意到,提供更好的护理设施将有助于减少高峰以及预测感染病例的疾病负担。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Computational and Mathematical Biophysics
Computational and Mathematical Biophysics Mathematics-Mathematical Physics
CiteScore
2.50
自引率
0.00%
发文量
8
审稿时长
30 weeks
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