Suppr超能文献

基于优化移动平均预测限的新兴传染病实时风险排名——以 COVID-19 大流行为例。

Real-time risk ranking of emerging epidemics based on optimized moving average prediction limit-taking the COVID-19 pandemic as an example.

机构信息

Naval Medical Center, Naval Medical University, Shanghai, China.

Department of Mathematics and Physics, Faculty of Military Medical Services, Naval Medical University, Shanghai, 200433, China.

出版信息

BMC Public Health. 2023 Jun 1;23(1):1039. doi: 10.1186/s12889-023-15835-0.

Abstract

BACKGROUND

Mathematical models to forecast the risk trend of the COVID-19 pandemic timely are of great significance to control the pandemic, but the requirement of manual operation and many parameters hinders their efficiency and value for application. This study aimed to establish a convenient and prompt one for monitoring emerging infectious diseases online and achieving risk assessment in real time.

METHODS

The Optimized Moving Average Prediction Limit (Op-MAPL) algorithm model analysed real-time COVID-19 data online and was validated using the data of the Delta variant in India and the Omicron in the United States. Then, the model was utilized to determine the infection risk level of the Omicron in Shanghai and Beijing.

RESULTS

The Op-MAPL model can predict the epidemic peak accurately. The daily risk ranking was stable and predictive, with an average accuracy of 87.85% within next 7 days. Early warning signals were issued for Shanghai and Beijing on February 28 and April 23, 2022, respectively. The two cities were rated as medium-high risk or above from March 27 to April 20 and from April 24 to May 5, indicating that the pandemic had entered a period of rapid increase. After April 21 and May 26, the risk level was downgraded to medium and became stable by the algorithm, indicating that the pandemic had been controlled well and mitigated gradually.

CONCLUSIONS

The Op-MAPL relies on nothing but an indicator to assess the risk level of the COVID-19 pandemic with different data sources and granularities. This forward-looking method realizes real-time monitoring and early warning effectively to provide a valuable reference to prevent and control infectious diseases.

摘要

背景

及时建立预测 COVID-19 疫情风险趋势的数学模型对于控制疫情具有重要意义,但模型需要人工操作和许多参数,这阻碍了其效率和应用价值。本研究旨在建立一个方便快捷的在线监测新发传染病的模型,实现实时风险评估。

方法

优化移动平均预测限(Op-MAPL)算法模型在线分析实时 COVID-19 数据,并使用印度 Delta 变异株和美国 Omicron 变异株的数据进行验证。然后,该模型用于确定上海和北京的 Omicron 感染风险水平。

结果

Op-MAPL 模型可以准确预测疫情高峰。每日风险排名稳定且具有预测性,未来 7 天的平均准确率为 87.85%。2022 年 2 月 28 日和 4 月 23 日,上海和北京分别发出早期预警信号。3 月 27 日至 4 月 20 日和 4 月 24 日至 5 月 5 日,这两个城市被评为中高风险或以上,表明疫情已进入快速上升期。4 月 21 日和 5 月 26 日之后,风险级别通过算法降级为中等,并且保持稳定,表明疫情得到了较好的控制并逐渐缓解。

结论

Op-MAPL 仅依赖于一个指标,即可利用不同的数据来源和粒度评估 COVID-19 大流行的风险水平。这种前瞻性方法可以有效地实现实时监测和预警,为预防和控制传染病提供有价值的参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d84e/10234043/bf0cdb7243e2/12889_2023_15835_Fig1_HTML.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验