Development of the second version of Global Prediction System for Epidemiological Pandemic

IF 6.2 3区 综合性期刊 Q1 Multidisciplinary Fundamental Research Pub Date : 2024-05-01 DOI:10.1016/j.fmre.2023.02.030
Jianping Huang , Li Zhang , Bin Chen , Xiaoyue Liu , Wei Yan , Yingjie Zhao , Siyu Chen , Xinbo Lian , Chuwei Liu , Rui Wang , Shuoyuan Gao , Danfeng Wang
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Abstract

Coronavirus disease 2019 (COVID-19) is a severe global public health emergency that has caused a major crisis in the safety of human life, health, global economy, and social order. Moreover, COVID-19 poses significant challenges to healthcare systems worldwide. The prediction and early warning of infectious diseases on a global scale are the premise and basis for countries to jointly fight epidemics. However, because of the complexity of epidemics, predicting infectious diseases on a global scale faces significant challenges. In this study, we developed the second version of Global Prediction System for Epidemiological Pandemic (GPEP-2), which combines statistical methods with a modified epidemiological model. The GPEP-2 introduces various parameterization schemes for both impacts of natural factors (seasonal variations in weather and environmental impacts) and human social behaviors (government control and isolation, personnel gathered, indoor propagation, virus mutation, and vaccination). The GPEP-2 successfully predicted the COVID-19 pandemic in over 180 countries with an average accuracy rate of 82.7%. It also provided prediction and decision-making bases for several regional-scale COVID-19 pandemic outbreaks in China, with an average accuracy rate of 89.3%. Results showed that both anthropogenic and natural factors can affect virus spread and control measures in the early stages of an epidemic can effectively control the spread. The predicted results could serve as a reference for public health planning and policymaking.

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开发第二版全球流行病预测系统
冠状病毒病 2019(COVID-19)是一种严重的全球性突发公共卫生事件,对人类生命安全、健康、全球经济和社会秩序造成了重大危机。此外,COVID-19 还对全球医疗保健系统提出了重大挑战。全球范围内传染病的预测和预警是各国共同抗击疫情的前提和基础。然而,由于流行病的复杂性,全球范围内的传染病预测面临着巨大的挑战。在这项研究中,我们开发了第二版全球流行病预测系统(GPEP-2),它将统计方法与改进的流行病学模型相结合。GPEP-2 针对自然因素(天气和环境影响的季节性变化)和人类社会行为(政府控制和隔离、人员聚集、室内传播、病毒变异和疫苗接种)的影响引入了各种参数化方案。GPEP-2 成功预测了 180 多个国家的 COVID-19 大流行,平均准确率为 82.7%。它还为中国多个区域范围的 COVID-19 大流行疫情提供了预测和决策依据,平均准确率达 89.3%。结果表明,人为因素和自然因素都会影响病毒传播,在疫情早期采取控制措施可以有效控制病毒传播。预测结果可为公共卫生规划和政策制定提供参考。
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来源期刊
Fundamental Research
Fundamental Research Multidisciplinary-Multidisciplinary
CiteScore
4.00
自引率
1.60%
发文量
294
审稿时长
79 days
期刊介绍:
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