Software Innovation Lab. (SOFTWARELAB), Applied Computing Graduate Program, Universidade do Vale do Rio dos Sinos (UNISINOS), São Leopoldo 93022-750, Brazil.
Collective Health Graduate Program, Universidade do Vale do Rio dos Sinos (UNISINOS), São Leopoldo 93022-750, Brazil.
Artif Intell Med. 2022 Jul;129:102312. doi: 10.1016/j.artmed.2022.102312. Epub 2022 Apr 30.
The COVID-19 pandemic has rapidly spread around the world. The rapid transmission of the virus is a threat that hinders the ability to contain the disease propagation. The pandemic forced widespread conversion of in-person to virtual care delivery through telemedicine. Given this gap, this article aims at providing a literature review of machine learning-based telemedicine applications to mitigate COVID-19. A rapid review of the literature was conducted in six electronic databases published from 2015 through 2020. The process of data extraction was documented using a PRISMA flowchart for inclusion and exclusion of studies. As a result, the literature search identified 1.733 articles, from which 16 articles were included in the review. We developed an updated taxonomy and identified challenges, open questions, and current data types. Our taxonomy and discussion contribute with a significant degree of coverage from subjects related to the use of machine learning to improve telemedicine in response to the COVID-19 pandemic. The evidence identified by this rapid review suggests that machine learning, in combination with telemedicine, can provide a strategy to control outbreaks by providing smart triage of patients and remote monitoring. Also, the use of telemedicine during future outbreaks could be further explored and refined.
新冠疫情在全球迅速蔓延。病毒的快速传播是一个阻碍疾病传播能力的威胁。这场大流行迫使人们广泛地将面对面的医疗服务转变为通过远程医疗进行的虚拟医疗服务。鉴于这一差距,本文旨在提供基于机器学习的远程医疗应用的文献综述,以减轻新冠疫情的影响。我们在六个电子数据库中进行了快速文献回顾,这些数据库的出版物时间为 2015 年至 2020 年。使用 PRISMA 流程图记录了数据提取过程,以纳入和排除研究。结果,文献搜索确定了 1733 篇文章,其中 16 篇文章被纳入综述。我们开发了一个更新的分类法,并确定了挑战、开放性问题和当前的数据类型。我们的分类法和讨论从与使用机器学习来改进远程医疗以应对新冠疫情相关的主题方面提供了相当程度的涵盖。这项快速综述确定的证据表明,机器学习与远程医疗相结合,可以通过对患者进行智能分诊和远程监测来提供控制疫情爆发的策略。此外,未来的疫情中可以进一步探索和完善远程医疗的使用。