Artificial intelligence at the time of COVID-19: who does the lion’s share?

D. Negrini, E. Danese, B. Henry, G. Lippi, M. Montagnana
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引用次数: 2

Abstract

Abstract Objectives The development and use of artificial intelligence (AI) methodologies, especially machine learning (ML) and deep learning (DL), have been considerably fostered during the ongoing coronavirus disease 2019 (COVID-19) pandemic. Several models and algorithms have been developed and applied for both identifying COVID-19 cases and for assessing and predicting the risk of developing unfavourable outcomes. Our aim was to summarize how AI is being currently applied to COVID-19. Methods We conducted a PubMed search using as query MeSH major terms “Artificial Intelligence” AND “COVID-19”, searching for articles published until December 31, 2021, which explored the possible role of AI in COVID-19. The dataset origin (internal dataset or public datasets available online) and data used for training and testing the proposed ML/DL model(s) were retrieved. Results Our analysis finally identified 292 articles in PubMed. These studies displayed large heterogeneity in terms of imaging test, laboratory parameters and clinical-demographic data included. Most models were based on imaging data, in particular CT scans or chest X-rays images. C-Reactive protein, leukocyte count, creatinine, lactate dehydrogenase, lymphocytes and platelets counts were found to be the laboratory biomarkers most frequently included in COVID-19 related AI models. Conclusions The lion’s share of AI applied to COVID-19 seems to be played by diagnostic imaging. However, AI in laboratory medicine is also gaining momentum, especially with digital tools characterized by low cost and widespread applicability.
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COVID-19时代的人工智能:谁是最大的份额?
人工智能(AI)方法的开发和使用,特别是机器学习(ML)和深度学习(DL),在持续的2019冠状病毒病(COVID-19)大流行期间得到了极大的促进。已经开发并应用了若干模型和算法,以确定COVID-19病例,并评估和预测出现不利结果的风险。我们的目的是总结人工智能目前如何应用于COVID-19。方法使用MeSH主题词“Artificial Intelligence”和“COVID-19”进行PubMed检索,检索截至2021年12月31日发表的探讨AI在COVID-19中可能发挥作用的文章。检索数据集来源(内部数据集或在线可用的公共数据集)和用于训练和测试所提出的ML/DL模型的数据。结果我们的分析最终确定了PubMed中的292篇文章。这些研究在影像学检查、实验室参数和临床人口学数据方面显示出很大的异质性。大多数模型都是基于成像数据,特别是CT扫描或胸部x光图像。c反应蛋白、白细胞计数、肌酐、乳酸脱氢酶、淋巴细胞和血小板计数是COVID-19相关人工智能模型中最常包含的实验室生物标志物。结论人工智能应用于COVID-19的最大份额似乎是诊断成像。然而,人工智能在检验医学领域的发展势头也在加快,特别是随着低成本和广泛适用性的数字工具的出现。
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