Dogan Onur, Tiwari Sanju, Jabbar M A, Guggari Shankru
Department of Industrial Engineering, Izmir Bakircay University, 35665 Izmir, Turkey.
Research Center for Data Analytics and Spatial Data Modeling (RC-DAS), Izmir Bakircay University, 35665 Izmir, Turkey.
Complex Intell Systems. 2021;7(5):2655-2678. doi: 10.1007/s40747-021-00424-8. Epub 2021 Jul 5.
A pandemic disease, COVID-19, has caused trouble worldwide by infecting millions of people. The studies that apply artificial intelligence (AI) and machine learning (ML) methods for various purposes against the COVID-19 outbreak have increased because of their significant advantages. Although AI/ML applications provide satisfactory solutions to COVID-19 disease, these solutions can have a wide diversity. This increase in the number of AI/ML studies and diversity in solutions can confuse deciding which AI/ML technique is suitable for which COVID-19 purposes. Because there is no comprehensive review study, this study systematically analyzes and summarizes related studies. A research methodology has been proposed to conduct the systematic literature review for framing the research questions, searching criteria and relevant data extraction. Finally, 264 studies were taken into account after following inclusion and exclusion criteria. This research can be regarded as a key element for epidemic and transmission prediction, diagnosis and detection, and drug/vaccine development. Six research questions are explored with 50 AI/ML approaches in COVID-19, 8 AI/ML methods for patient outcome prediction, 14 AI/ML techniques in disease predictions, along with five AI/ML methods for risk assessment of COVID-19. It also covers AI/ML method in drug development, vaccines for COVID-19, models in COVID-19, datasets and their usage and dataset applications with AI/ML.
一种大流行性疾病——新冠肺炎,通过感染数百万人给全球带来了麻烦。由于人工智能(AI)和机器学习(ML)方法具有显著优势,针对新冠肺炎疫情将其用于各种目的的研究有所增加。尽管人工智能/机器学习应用为新冠肺炎疾病提供了令人满意的解决方案,但这些解决方案可能具有广泛的多样性。人工智能/机器学习研究数量的增加以及解决方案的多样性可能会让人难以决定哪种人工智能/机器学习技术适用于哪种新冠肺炎相关目的。由于缺乏全面的综述研究,本研究对相关研究进行了系统的分析和总结。提出了一种研究方法,用于进行系统的文献综述,以确定研究问题、搜索标准和相关数据提取。最后,在遵循纳入和排除标准后,共考虑了264项研究。本研究可被视为疫情和传播预测、诊断与检测以及药物/疫苗开发的关键要素。探讨了六个研究问题,涉及新冠肺炎中的50种人工智能/机器学习方法、患者预后预测的8种人工智能/机器学习方法、疾病预测中的14种人工智能/机器学习技术,以及新冠肺炎风险评估的五种人工智能/机器学习方法。它还涵盖了药物开发中的人工智能/机器学习方法、新冠肺炎疫苗、新冠肺炎模型、数据集及其使用以及人工智能/机器学习的数据集应用。