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Role of Machine Learning Techniques to Tackle the COVID-19 Crisis: Systematic Review

机译:机器学习技巧解决Covid-19危机的作用:系统评论

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Background SARS-CoV-2, the novel coronavirus responsible for COVID-19, has caused havoc worldwide, with patients presenting a spectrum of complications that have pushed health care experts to explore new technological solutions and treatment plans. Artificial Intelligence (AI)–based technologies have played a substantial role in solving complex problems, and several organizations have been swift to adopt and customize these technologies in response to the challenges posed by the COVID-19 pandemic. Objective The objective of this study was to conduct a systematic review of the literature on the role of AI as a comprehensive and decisive technology to fight the COVID-19 crisis in the fields of epidemiology, diagnosis, and disease progression. Methods A systematic search of PubMed, Web of Science, and CINAHL databases was performed according to PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analysis) guidelines to identify all potentially relevant studies published and made available online between December 1, 2019, and June 27, 2020. The search syntax was built using keywords specific to COVID-19 and AI. Results The search strategy resulted in 419 articles published and made available online during the aforementioned period. Of these, 130 publications were selected for further analyses. These publications were classified into 3 themes based on AI applications employed to combat the COVID-19 crisis: Computational Epidemiology, Early Detection and Diagnosis, and Disease Progression. Of the 130 studies, 71 (54.6%) focused on predicting the COVID-19 outbreak, the impact of containment policies, and potential drug discoveries, which were classified under the Computational Epidemiology theme. Next, 40 of 130 (30.8%) studies that applied AI techniques to detect COVID-19 by using patients’ radiological images or laboratory test results were classified under the Early Detection and Diagnosis theme. Finally, 19 of the 130 studies (14.6%) that focused on predicting disease progression, outcomes (ie, recovery and mortality), length of hospital stay, and number of days spent in the intensive care unit for patients with COVID-19 were classified under the Disease Progression theme. Conclusions In this systematic review, we assembled studies in the current COVID-19 literature that utilized AI-based methods to provide insights into different COVID-19 themes. Our findings highlight important variables, data types, and available COVID-19 resources that can assist in facilitating clinical and translational research.
机译:背景技术SARS-COV-2,对Covid-19负责的新型冠状病毒,在全世界造成伤害,患者患者展示了一系列并发症,这些并发症已经推动了医疗保健专家来探索新的技术解决方案和治疗计划。基于人工智能(AI)的技术在解决复杂问题方面发挥了重要作用,并且若干组织已经迅速采用和定制了这些技术,以应对Covid-19大流行所带来的挑战。目的本研究的目的是对AI作为一种全面和决定性技术来对抗Covid-19危机在流行病学,诊断和疾病进展领域的综合技术的作用进行系统审查。方法根据PRISMA(用于系统评论和META分析的首选报告项目)指导,进行系统搜索PUBMED,SCIENCE和CINAHL数据库,以确定2019年12月1日之间发布和在线提供的所有相关相关研究和在线提供的所有相关研究。 2020年6月27日。搜索语法是使用特定于Covid-19和AI的关键字构建的。结果搜索策略导致419篇文章在上述期间发表并在线提供。其中,选择了130个出版物以进一步分析。这些出版物根据用于打击Covid-19危机的AI应用程序分为3个主题:计算流行病学,早期检测和诊断和疾病进展。在130项研究中,71(54.6%)重点是预测Covid-19爆发,遏制政策的影响以及潜在的药物发现,这些潜在药物发现是在计算流行病学主题下进行分类的。接下来,通过使用患者放射图像或实验室测试结果在早期检测和诊断主题下归类为检测Covid-19的130个(30.8%)的研究。最后,190项研究中的19名(14.6%)重点是预测疾病进展,结果(即恢复和死亡率),住院时间长度以及Covid-19患者的重症监护病房的重症监护病房数量分类根据疾病进展主题。结论在这一系统审查中,我们在目前的Covid-19文献​​中组装了利用基于AI的方法的研究,为不同的CoVID-19主题提供见解。我们的调查结果突出了可以帮助促进临床和翻译研究的重要变量,数据类型和可用的Covid-19资源。

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