用于流行病预测和分析的可持续智能时间序列模型

Anureet Chhabra , Sunil K. Singh , Akash Sharma , Sudhakar Kumar , Brij B. Gupta , Varsha Arya , Kwok Tai Chui
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引用次数: 0

摘要

尽管医学科学取得了巨大进步,但疾病爆发升级为流行病的风险却在不断增加。COVID-19 、猴痘、流感和艾滋病毒等流行病以惊人的速度影响着世界各地的人们和公共卫生基础设施。仅 COVID-19 就感染了 5 亿多人,其中 600 万人在 100 多个国家死亡。艾滋病毒也是一个重大的全球公共卫生问题,到 2023 年已夺走了 8560 万人的生命。预测这些流行病的趋势对于通过改进预警系统来有效管理国家和全球健康风险非常重要。因此,我们提出了一个预测流行病的智能框架,并使用不同的时间序列模型进行了详细的比较分析。本研究通过使用 ARIMA、多项式回归、SARIMA、Holt's、Fb-Prophet 时间序列模型精确预测流行病趋势,从而减轻医疗系统的负担,为实现(可持续发展目标)SDG-3 做出贡献。使用最合适的模型,猴痘、艾滋病毒、COVID-19 和流感预测的平均绝对百分比误差(MAPE)值分别为 0.0129、0.0035、0.0011 和 0.024。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sustainable and intelligent time-series models for epidemic disease forecasting and analysis

There is an increasing risk of outbreaks escalating into epidemics, despite huge advances in medical science. Epidemics like COVID-19, Monkeypox, Influenza and HIV have been affecting people and public health infrastructure at an alarming rate around the world. COVID-19 alone has infected more than 500 million people out of which 6 million have died over 100 countries. HIV is also a major global public health issue and has claimed 85.6 million lives till 2023. Forecasting the trends of these epidemics is important in order to efficiently manage national and global health risks by improving early warning systems. Therefore an intelligent framework to forecast epidemic diseases is proposed and a detailed comparative analysis is conducted using different time-series models. This study contributes to (Sustainable Development Goal) SDG-3 by predicting epidemics disease trends precisely using ARIMA, Polynomial Regression, SARIMA, Holt’s, Fb-Prophet time-series models, which can decrease the burden on healthcare systems. Using the best-suited models, the Mean Absolute Percentage Error (MAPE) values for Monkeypox, HIV, COVID-19 and Influenza forecasting were 0.0129, 0.0035, 0.0011, and 0.024 respectively.

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