Paul Showmick Guha, Saha Arpa, Biswas Al Amin, Zulfiker Md Sabab, Arefin Mohammad Shamsul, Rahman Md Mahfujur, Reza Ahmed Wasif
Department of Computer Science and Engineering, Daffodil International University, Dhaka, Bangladesh.
Department of Computer Science and Engineering, Chittagong University of Engineering and Technology, Chittagong, Bangladesh.
Array (N Y). 2023 Mar;17:100271. doi: 10.1016/j.array.2022.100271. Epub 2022 Dec 10.
COVID-19, a worldwide pandemic that has affected many people and thousands of individuals have died due to COVID-19, during the last two years. Due to the benefits of Artificial Intelligence (AI) in X-ray image interpretation, sound analysis, diagnosis, patient monitoring, and CT image identification, it has been further researched in the area of medical science during the period of COVID-19. This study has assessed the performance and investigated different machine learning (ML), deep learning (DL), and combinations of various ML, DL, and AI approaches that have been employed in recent studies with diverse data formats to combat the problems that have arisen due to the COVID-19 pandemic. Finally, this study shows the comparison among the stand-alone ML and DL-based research works regarding the COVID-19 issues with the combinations of ML, DL, and AI-based research works. After in-depth analysis and comparison, this study responds to the proposed research questions and presents the future research directions in this context. This review work will guide different research groups to develop viable applications based on ML, DL, and AI models, and will also guide healthcare institutes, researchers, and governments by showing them how these techniques can ease the process of tackling the COVID-19.
在过去两年中,新冠疫情成为一场全球大流行,许多人受到影响,成千上万的人死于新冠病毒。由于人工智能(AI)在X射线图像解读、声音分析、诊断、患者监测和CT图像识别方面具有优势,在新冠疫情期间,它在医学领域得到了进一步研究。本研究评估了性能,并调查了不同的机器学习(ML)、深度学习(DL)以及各种ML、DL和AI方法的组合,这些方法在最近的研究中被用于处理因新冠疫情而出现的问题,数据格式多样。最后,本研究展示了基于独立ML和DL的研究工作与基于ML、DL和AI组合的研究工作在新冠问题上的比较。经过深入分析和比较,本研究回答了提出的研究问题,并在此背景下提出了未来的研究方向。这项综述工作将指导不同的研究团队开发基于ML、DL和AI模型的可行应用,还将通过向医疗保健机构、研究人员和政府展示这些技术如何简化应对新冠疫情的过程来为他们提供指导。