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人工智能与2019冠状病毒病:系统综合评价及未来展望

Artificial Intelligence and COVID-19: A Systematic umbrella review and roads ahead.

作者信息

Adadi Amina, Lahmer Mohammed, Nasiri Samia

机构信息

ISIC Research Team of High School of Technology, LMMI Laboratory, Moulay Ismail University, Meknes, Morocco.

出版信息

J King Saud Univ Comput Inf Sci. 2022 Sep;34(8):5898-5920. doi: 10.1016/j.jksuci.2021.07.010. Epub 2021 Jul 15.

Abstract

Artificial Intelligence (AI) has played a substantial role in the response to the challenges posed by the current pandemic. The growing interest in using AI to handle Covid-19 issues has accelerated the pace of AI research and resulted in an exponential increase in articles and review studies within a very short period of time. Hence, it is becoming challenging to explore the large corpus of academic publications dedicated to the global health crisis. Even with the presence of systematic review studies, given their number and diversity, identifying trends and research avenues beyond the pandemic should be an arduous task. We conclude therefore that after the one-year mark of the declaration of Covid-19 as a pandemic, the accumulated scientific contribution lacks two fundamental aspects: Knowledge synthesis and Future projections. In contribution to fill this void, this paper is a (i) synthesis study and (ii) foresight exercise. The synthesis study aims to provide the scholars a consolidation of findings and a knowledge synthesis through a systematic review of the reviews (umbrella review) studying AI applications against Covid-19. Following the PRISMA guidelines, we systematically searched PubMed, Scopus, and other preprint sources from 1st December 2019 to 1st June 2021 for eligible reviews. The literature search and screening process resulted in 45 included reviews. Our findings reveal patterns, relationships, and trends in the AI research community response to the pandemic. We found that in the space of few months, the research objectives of the literature have developed rapidly from identifying potential AI applications to evaluating current uses of intelligent systems. Only few reviews have adopted the -analysis as a study design. Moreover, a clear dominance of the medical theme and the DNN methods has been observed in the reported AI applications. Based on its constructive systematic umbrella review, this work conducts a foresight exercise that tries to envision the post-Covid-19 research landscape of the AI field. We see seven key themes of research that may be an outcome of the present crisis and which advocate a more sustainable and responsible form of intelligent systems. We set accordingly a post-pandemic research agenda articulated around these seven drivers. The results of this study can be useful for the AI research community to obtain a holistic view of the current literature and to help prioritize research needs as we are heading toward the new normal.

摘要

人工智能(AI)在应对当前疫情带来的挑战中发挥了重要作用。人们对利用人工智能处理新冠疫情问题的兴趣日益浓厚,这加快了人工智能研究的步伐,并在很短的时间内使相关文章和综述研究呈指数级增长。因此,探索大量致力于全球健康危机的学术出版物变得具有挑战性。即使有系统综述研究,鉴于其数量和多样性,识别疫情之外的趋势和研究途径仍是一项艰巨的任务。因此,我们得出结论,在新冠疫情宣布一年之后,积累的科学贡献缺乏两个基本方面:知识综合和未来预测。为填补这一空白,本文进行了(i)一项综合研究和(ii)一次前瞻性分析。综合研究旨在通过对研究人工智能在新冠疫情中应用的综述(系统性综述)进行系统回顾,为学者们提供研究结果的整合和知识综合。遵循PRISMA指南,我们从2019年12月1日至2021年6月1日在PubMed、Scopus和其他预印本来源中系统搜索符合条件的综述。文献检索和筛选过程最终纳入了45篇综述。我们的研究结果揭示了人工智能研究界应对疫情的模式、关系和趋势。我们发现,在短短几个月内,文献的研究目标已从识别潜在的人工智能应用迅速发展到评估智能系统的当前用途。只有少数综述采用了分析作为研究设计。此外,在所报道的人工智能应用中,医学主题和深度神经网络(DNN)方法占据明显主导地位。基于其建设性的系统性综述,本文进行了一次前瞻性分析,试图展望新冠疫情后人工智能领域的研究前景。我们看到七个关键研究主题可能是当前危机的结果,它们倡导一种更可持续、更负责任的智能系统形式。我们据此围绕这七个驱动因素制定了一份疫情后研究议程。这项研究的结果有助于人工智能研究界全面了解当前文献,并在我们迈向新常态的过程中帮助确定研究需求的优先级。

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COVID-19 Control by Computer Vision Approaches: A Survey.基于计算机视觉方法的COVID-19防控:一项综述。
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Artificial Intelligence and technology in COVID Era: A narrative review.新冠疫情时代的人工智能与技术:一篇叙述性综述
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