COVID-19 pandemic prediction model based on machine learning in selected regions of the Russian Federation

Q3 Medicine
D. V. Gavrilov, R. Abramov, А. V. Kirilkina, А. Ivshin, R. Novitskiy
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引用次数: 1

Abstract

Background. Prediction of the new coronavirus infection (COVID-19) spread is important to take timely measures and initiate systemic preventive and anti-epidemic actions both at the regional and state levels to reduce morbidity and mortality.Objective: to develop a model for short-term forecasting of COVID-19 cases and deaths in the Russian Federation.Material and methods. The data for the model training were collected from the Stopcoronavirus.rf and Johns Hopkins University portals. It included 13 features to assess the infection dynamics and mortality, as well as the rate of morbidity and mortality in different countries and certain regions of the Russian Federation. The model was trained by the CatBoost gradient boosting method and retrained daily with updated data.Results. The forecast model of COVID-19 cases and deaths for the period of up to 14 days was created. The mean absolute percentage error (MAPE) estimate of the model’s accuracy ranged from 2.3% to 24% for 85 regions of the Russian Federation. The advantage of the CatBoost machine learning method over linear regression was shown using the example of the root mean square error (RMSE) value. The model showed less error for regions with a large population than for less populated ones.Conclusion. The model can be used not only to predict the pandemic of the novel coronavirus infection but also to control and assess the spread of diseases from the group of new infections at their emergence, peak incidence, and stabilization period.
俄罗斯联邦选定地区基于机器学习的COVID-19大流行预测模型
背景。预测新型冠状病毒感染(COVID-19)的传播,对于在地区和国家层面及时采取措施,开展系统的预防和抗疫行动,降低发病率和死亡率具有重要意义。目的:开发俄罗斯联邦COVID-19病例和死亡短期预测模型。材料和方法。模型训练的数据来自Stopcoronavirus。rf和约翰霍普金斯大学的门户网站。它包括13个特征,以评估俄罗斯联邦不同国家和某些地区的感染动态和死亡率以及发病率和死亡率。该模型采用CatBoost梯度增强方法进行训练,并每日更新数据进行再训练。建立了长达14天的新冠肺炎病例和死亡预测模型。在俄罗斯联邦的85个地区,该模型精度的平均绝对百分比误差(MAPE)估计范围为2.3%至24%。CatBoost机器学习方法相对于线性回归的优势用均方根误差(RMSE)值的例子来说明。该模型在人口多的地区比在人口少的地区误差更小。该模型不仅可用于预测新型冠状病毒感染的大流行,还可用于控制和评估新发感染者群体在出现期、发病高峰期和稳定期的疾病传播。
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
Farmakoekonomika
Farmakoekonomika Medicine-Health Policy
CiteScore
1.70
自引率
0.00%
发文量
43
审稿时长
8 weeks
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