Medical Faculty of Islamic Azad University of Tabriz, Tabriz, Iran.
Department of Computer Engineering, Tabriz Branch, Islamic Azad University, Tabriz, Iran; Department of Software Engineering, Haliç University, Istanbul, Turkiye.
Comput Methods Programs Biomed. 2023 Nov;241:107745. doi: 10.1016/j.cmpb.2023.107745. Epub 2023 Aug 9.
Medical data processing has grown into a prominent topic in the latest decades with the primary goal of maintaining patient data via new information technologies, including the Internet of Things (IoT) and sensor technologies, which generate patient indexes in hospital data networks. Innovations like distributed computing, Machine Learning (ML), blockchain, chatbots, wearables, and pattern recognition can adequately enable the collection and processing of medical data for decision-making in the healthcare era. Particularly, to assist experts in the disease diagnostic process, distributed computing is beneficial by digesting huge volumes of data swiftly and producing personalized smart suggestions. On the other side, the current globe is confronting an outbreak of COVID-19, so an early diagnosis technique is crucial to lowering the fatality rate. ML systems are beneficial in aiding radiologists in examining the incredible amount of medical images. Nevertheless, they demand a huge quantity of training data that must be unified for processing. Hence, developing Deep Learning (DL) confronts multiple issues, such as conventional data collection, quality assurance, knowledge exchange, privacy preservation, administrative laws, and ethical considerations. In this research, we intend to convey an inclusive analysis of the most recent studies in distributed computing platform applications based on five categorized platforms, including cloud computing, edge, fog, IoT, and hybrid platforms. So, we evaluated 27 articles regarding the usage of the proposed framework, deployed methods, and applications, noting the advantages, drawbacks, and the applied dataset and screening the security mechanism and the presence of the Transfer Learning (TL) method. As a result, it was proved that most recent research (about 43%) used the IoT platform as the environment for the proposed architecture, and most of the studies (about 46%) were done in 2021. In addition, the most popular utilized DL algorithm was the Convolutional Neural Network (CNN), with a percentage of 19.4%. Hence, despite how technology changes, delivering appropriate therapy for patients is the primary aim of healthcare-associated departments. Therefore, further studies are recommended to develop more functional architectures based on DL and distributed environments and better evaluate the present healthcare data analysis models.
医疗数据处理在最近几十年已经成为一个重要的课题,其主要目标是通过新的信息技术(包括物联网(IoT)和传感器技术)来维护患者数据,这些技术在医院数据网络中生成患者索引。创新技术如分布式计算、机器学习(ML)、区块链、聊天机器人、可穿戴设备和模式识别可以充分实现医疗数据的收集和处理,以便在医疗保健时代做出决策。特别是,为了帮助专家进行疾病诊断过程,分布式计算通过快速消化大量数据并生成个性化的智能建议来提供帮助。另一方面,当前全球正面临 COVID-19 的爆发,因此早期诊断技术对于降低死亡率至关重要。ML 系统有助于放射科医生检查大量的医学图像。然而,它们需要大量的训练数据,这些数据必须进行统一处理。因此,开发深度学习(DL)面临着多个问题,例如传统的数据收集、质量保证、知识交流、隐私保护、行政法规和伦理考虑。在这项研究中,我们旨在对基于五个分类平台(包括云计算、边缘、雾、物联网和混合平台)的分布式计算平台应用的最新研究进行全面分析。因此,我们评估了 27 篇关于所提出框架的使用、部署方法和应用的文章,注意到优点、缺点以及应用的数据集,并筛选了安全机制和是否应用了迁移学习(TL)方法。结果表明,最近的研究(约 43%)使用物联网平台作为提出的架构的环境,大多数研究(约 46%)是在 2021 年进行的。此外,最受欢迎的使用的 DL 算法是卷积神经网络(CNN),占比为 19.4%。因此,尽管技术在不断变化,但为患者提供适当的治疗仍然是医疗保健相关部门的主要目标。因此,建议进行进一步的研究,以基于 DL 和分布式环境开发更功能化的架构,并更好地评估当前的医疗保健数据分析模型。