Rahman Mohammad Marufur, Islam Md Milon, Manik Md Motaleb Hossen, Islam Md Rabiul, Al-Rakhami Mabrook S
Department of Computer Science and Engineering, Khulna University of Engineering and Technology, Khulna, 9203 Bangladesh.
Department of Electrical and Electronic Engineering, Bangladesh Army University of Engineering and Technology, Natore, 6431 Bangladesh.
SN Comput Sci. 2021;2(5):384. doi: 10.1007/s42979-021-00774-7. Epub 2021 Jul 19.
Novel coronavirus (COVID-19) has become a global problem in recent times due to the rapid spread of this disease. Almost all the countries of the world have been affected by this pandemic that made a major consequence on the medical system and healthcare facilities. The healthcare system is going through a critical time because of the COVID-19 pandemic. Modern technologies such as deep learning, machine learning, and data science are contributing to fight COVID-19. The paper aims to highlight the role of machine learning approaches in this pandemic situation. We searched for the latest literature regarding machine learning approaches for COVID-19 from various sources like IEEE Xplore, PubMed, Google Scholar, Research Gate, and Scopus. Then, we analyzed this literature and described them throughout the study. In this study, we noticed four different applications of machine learning methods to combat COVID-19. These applications are trying to contribute in various aspects like helping physicians to make confident decisions, policymakers to take fruitful decisions, and identifying potentially infected people. The major challenges of existing systems with possible future trends are outlined in this paper. The researchers are coming with various technologies using machine learning techniques to face the COVID-19 pandemic. These techniques are serving the healthcare system in a great deal. We recommend that machine learning can be a useful tool for proper analyzing, screening, tracking, forecasting, and predicting the characteristics and trends of COVID-19.
近期,新型冠状病毒(COVID-19)因其迅速传播已成为一个全球性问题。世界上几乎所有国家都受到了这场大流行的影响,这对医疗系统和医疗保健设施造成了重大影响。由于COVID-19大流行,医疗系统正处于关键时刻。深度学习、机器学习和数据科学等现代技术正在为抗击COVID-19做出贡献。本文旨在突出机器学习方法在这种大流行情况下的作用。我们从IEEE Xplore、PubMed、谷歌学术、Research Gate和Scopus等各种来源搜索了有关COVID-19机器学习方法的最新文献。然后,我们对这些文献进行了分析,并在整个研究过程中进行了描述。在本研究中,我们注意到机器学习方法在抗击COVID-19方面有四种不同的应用。这些应用试图在各个方面做出贡献,比如帮助医生做出自信的决策、帮助政策制定者做出富有成效的决策以及识别潜在感染者。本文概述了现有系统面临的主要挑战以及可能的未来趋势。研究人员正在采用各种机器学习技术来应对COVID-19大流行。这些技术为医疗系统提供了很大帮助。我们建议机器学习可以成为正确分析、筛查、跟踪、预测和预测COVID-19特征及趋势的有用工具。