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A Survey on Applications of Artificial Intelligence in Fighting Against COVID-19

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Published:04 October 2021Publication History
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Abstract

The COVID-19 pandemic caused by the SARS-CoV-2 virus has spread rapidly worldwide, leading to a global outbreak. Most governments, enterprises, and scientific research institutions are participating in the COVID-19 struggle to curb the spread of the pandemic. As a powerful tool against COVID-19, artificial intelligence (AI) technologies are widely used in combating this pandemic. In this survey, we investigate the main scope and contributions of AI in combating COVID-19 from the aspects of disease detection and diagnosis, virology and pathogenesis, drug and vaccine development, and epidemic and transmission prediction. In addition, we summarize the available data and resources that can be used for AI-based COVID-19 research. Finally, the main challenges and potential directions of AI in fighting against COVID-19 are discussed. Currently, AI mainly focuses on medical image inspection, genomics, drug development, and transmission prediction, and thus AI still has great potential in this field. This survey presents medical and AI researchers with a comprehensive view of the existing and potential applications of AI technology in combating COVID-19 with the goal of inspiring researchers to continue to maximize the advantages of AI and big data to fight COVID-19.

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        ACM Computing Surveys  Volume 54, Issue 8
        November 2022
        754 pages
        ISSN:0360-0300
        EISSN:1557-7341
        DOI:10.1145/3481697
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        • Published: 4 October 2021
        • Accepted: 1 May 2021
        • Revised: 1 March 2021
        • Received: 1 May 2020
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