基于回归传播模型的印度4个邦COVID-19实时预测

L. Choudhury, B. R. Kumar
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引用次数: 1

摘要

引言:据报道,自新冠疫情开始以来,印度已有100多万人感染了新冠肺炎。然而,全国各地的疫情并不相同。尽管存在州级差异,但疾病动态迅速变化,应对措施也给未来适当使用模型进行预测带来了不确定性。方法:本文旨在使用一个经过验证的半机械随机模型来生成短期预测。这项分析使用了四个州的州政府公告中的可用数据。分析使用了一个简化的传输模型,该模型使用了Markov链蒙特卡罗模拟和Metropolis Hastings更新。结果:用两周的时间将结果与实际数据进行比较。预测结果在各州报告的实际病例的第25和第75百分位内。研究结果表明,新冠肺炎病例的实时短期预测是一种可靠的方法。第一周预测的四分位间距和实际值;喀拉拉邦、泰米尔纳德邦、安得拉邦和奥里萨邦的报告病例分别为(1064-2532)2234例、(17503-50125)27214例、(5225-11003)9563例和(2559-4461)3925例。同样,第2周预测的四分位间距和实际值;报告病例分别为(1055-7803)4221例、(18298-73952)31488例、(4705-23224)13357例和(2701-9037)4175例。结论:该实时预测可作为预警工具,用于预测疫情在不久的将来的变化,从而触发积极的管理措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time COVID-19 Forecasting for Four States of India Using a Regression Transmission Model
Introduction: More than a million people are reported to have been infected with COVID in India, since the beginning of the pandemic. However, the epidemic is not the same across the country. Though there are state-level variations rapidly changing disease dynamics and the response has created uncertainty towards appropriate use of models to project for the future. Method: This paper aims at using a validated semi-mechanistic stochastic model to generate short term forecasts. This analysis used data available at the respective state government bulletins for four states. The analysis used a simplified transmission model using Markov Chain Monte Carlo simulation with Metropolis-Hastings updating. Results: Two weeks were used to compare the results with the actual data. The forecasted results are well within the 25th and 75th percentile of the actual cases reported by the respective states. The results indicate a reliable method for a real-time short term forecasting of COVID-19 cases. The 1st week projected interquartile range and actual; reported cases for the state of Kerala, Tamil Nadu, Andhra Pradesh and Odisha were (1064 - 2532) 2234, (17,503 - 50,125) 27,214, (5225 - 11,003) 9563, (2559 - 4461) 3925, respectively. Similarly, the 2nd week projected interquartile range and actual; reported cases were (1055 - 7803) 4221, (18,298 - 73,952) 31,488, (4705 - 23,224) 13,357, (2701 - 9037) 4175 respectively. Conclusion: This real-time forecast can be used as an early warning tool for projecting the changes in the epidemic in the near future triggering proactive management steps.
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