A variant-informed decision support system for tackling COVID-19: a transfer learning and multi-attribute decision-making approach

IF 3.5 4区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE PeerJ Computer Science Pub Date : 2024-09-19 DOI:10.7717/peerj-cs.2321
Amirreza Salehi Amiri, Ardavan Babaei, Vladimir Simic, Erfan Babaee Tirkolaee
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Abstract

The global impact of the COVID-19 pandemic, characterized by its extensive societal, economic, and environmental challenges, escalated with the emergence of variants of concern (VOCs) in 2020. Governments, grappling with the unpredictable evolution of VOCs, faced the need for agile decision support systems to safeguard nations effectively. This article introduces the Variant-Informed Decision Support System (VIDSS), designed to dynamically adapt to each variant of concern’s unique characteristics. Utilizing multi-attribute decision-making (MADM) techniques, VIDSS assesses a country’s performance by considering improvements relative to its past state and comparing it with others. The study incorporates transfer learning, leveraging insights from forecast models of previous VOCs to enhance predictions for future variants. This proactive approach harnesses historical data, contributing to more accurate forecasting amid evolving COVID-19 challenges. Results reveal that the VIDSS framework, through rigorous K-fold cross-validation, achieves robust predictive accuracy, with neural network models significantly benefiting from transfer learning. The proposed hybrid MADM approach integrated approaches yield insightful scores for each country, highlighting positive and negative criteria influencing COVID-19 spread. Additionally, feature importance, illustrated through SHAP plots, varies across variants, underscoring the evolving nature of the pandemic. Notably, vaccination rates, intensive care unit (ICU) patient numbers, and weekly hospital admissions consistently emerge as critical features, guiding effective pandemic responses. These findings demonstrate that leveraging past VOC data significantly improves future variant predictions, offering valuable insights for policymakers to optimize strategies and allocate resources effectively. VIDSS thus stands as a pivotal tool in navigating the complexities of COVID-19, providing dynamic, data-driven decision support in a continually evolving landscape.
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应对 COVID-19 的变异知情决策支持系统:迁移学习和多属性决策方法
COVID-19 大流行病对全球的影响随着 2020 年关注变种(VOCs)的出现而升级,其特点是对社会、经济和环境造成广泛的挑战。各国政府在应对不可预测的 VOCs 演变时,需要灵活的决策支持系统来有效保护国家安全。本文介绍了变体知情决策支持系统(VIDSS),该系统旨在动态适应每个关注变体的独特特征。VIDSS 利用多属性决策(MADM)技术,通过考虑相对于过去状态的改进并与其他国家进行比较,来评估一个国家的表现。该研究结合了迁移学习,利用从以往挥发性有机化合物预测模型中获得的洞察力,加强对未来变体的预测。这种积极主动的方法利用了历史数据,有助于在不断变化的 COVID-19 挑战中进行更准确的预测。结果表明,VIDSS 框架通过严格的 K 倍交叉验证实现了稳健的预测准确性,神经网络模型从迁移学习中获益匪浅。所提出的混合 MADM 方法综合了各种方法,为每个国家提供了具有洞察力的分数,突出了影响 COVID-19 传播的积极和消极标准。此外,通过 SHAP 图显示的特征重要性在不同变体中各不相同,突显了该流行病不断演变的性质。值得注意的是,疫苗接种率、重症监护室 (ICU) 病人数量和每周入院人数始终是关键特征,可指导有效的大流行应对措施。这些研究结果表明,利用过去的 VOC 数据可以显著改善对未来变异的预测,为政策制定者优化战略和有效分配资源提供有价值的见解。因此,VIDSS 是驾驭 COVID-19 复杂性的关键工具,可在不断变化的环境中提供动态、数据驱动的决策支持。
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
PeerJ Computer Science
PeerJ Computer Science Computer Science-General Computer Science
CiteScore
6.10
自引率
5.30%
发文量
332
审稿时长
10 weeks
期刊介绍: PeerJ Computer Science is the new open access journal covering all subject areas in computer science, with the backing of a prestigious advisory board and more than 300 academic editors.
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