Application of big data and artificial intelligence in epidemic surveillance and containment

IF 4.4 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Intelligent medicine Pub Date : 2023-02-01 DOI:10.1016/j.imed.2022.10.003
Zengtao Jiao , Hanran Ji , Jun Yan , Xiaopeng Qi
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引用次数: 4

Abstract

Faced with the current time-sensitive COVID-19 pandemic, the overburdened healthcare systems have resulted in a strong demand to develop newer methods to control the spread of the pandemic. Big data and artificial intelligence (AI) have been leveraged amid the COVID-19 pandemic; however, little is known about their use for supporting public health efforts. In epidemic surveillance and containment, efforts are needed to treat critical patients, track and manage the health status of residents, isolate suspected cases, and develop vaccines and antiviral drugs. The applications of emerging practices of artificial intelligence and big data have become powerful “weapons” to fight against the pandemic and provide strong support in pandemic prevention and control, such as early warning, analysis and judgment, interruption and intervention of epidemic, to achieve goals of early detection, early report, early diagnosis, early isolation and early treatment. These are the decisive factors to control the spread of the epidemic and reduce the mortality. This paper systematically summarized the application of big data and AI in epidemic, and describes practical cases and challenges with emphasis on epidemic prevention and control. The included studies showed that big data and AI have the potential strength to fight against COVID-19. However, many of the proposed methods are not yet widely accepted. Thus, the most rewarding research would be on methods that promise value beyond COVID-19. More efforts are needed for developing standardized reporting protocols or guidelines for practice.

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大数据和人工智能在疫情监测和防控中的应用
面对当前具有时效性的COVID-19大流行,负担过重的卫生保健系统强烈要求开发新的方法来控制大流行的传播。大数据和人工智能(AI)在新冠肺炎大流行中发挥了作用;然而,人们对它们在支持公共卫生工作方面的作用知之甚少。在疫情监测和控制方面,需要努力治疗危重患者,跟踪和管理居民健康状况,隔离疑似病例,开发疫苗和抗病毒药物。人工智能、大数据等新兴实践的应用,成为疫情预警、分析判断、中断干预等抗击疫情的有力“武器”,为疫情防控提供有力支撑,实现早发现、早报告、早诊断、早隔离、早治疗的目标。这些是控制疫情蔓延、降低死亡率的决定性因素。本文系统总结了大数据和人工智能在疫情中的应用,并以疫情防控为重点,描述了实际案例和挑战。纳入的研究表明,大数据和人工智能具有抗击新冠肺炎的潜在力量。然而,许多提出的方法尚未被广泛接受。因此,最有价值的研究将是那些有望超越COVID-19的价值的方法。需要更多的努力来制定标准化的报告协议或实践指南。
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来源期刊
Intelligent medicine
Intelligent medicine Surgery, Radiology and Imaging, Artificial Intelligence, Biomedical Engineering
CiteScore
5.20
自引率
0.00%
发文量
19
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