云磁共振成像系统:在6G和人工智能时代

Yirong Zhou , Yanhuang Wu , Yuhan Su , Jing Li , Jianyu Cai , Yongfu You , Jianjun Zhou , Di Guo , Xiaobo Qu
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引用次数: 0

摘要

磁共振成像(MRI)在医学诊断中发挥着重要作用,在大型医院中每年产生数pb的图像数据。这种庞大的数据流需要大量的网络带宽和广泛的存储基础设施。此外,本地数据处理需要大量的人力和硬件投资。不同医疗保健机构之间的数据隔离阻碍了诊所和研究中的跨机构协作。在这项工作中,我们预计一个创新的MRI系统及其四代将集成新兴的分布式云计算、6G带宽、边缘计算、联邦学习和区块链技术。该系统被称为Cloud-MRI,旨在解决MRI数据存储安全、传输速度、人工智能(AI)算法维护、硬件升级、协同工作等问题。工作流程从将k空间原始数据转换为标准化的医学磁共振成像协会原始数据(ISMRMRD)格式开始。然后,将数据上传到云端或边缘节点,进行快速图像重建、神经网络训练和自动分析。然后,结果被无缝传输到诊所或研究机构进行诊断和其他服务。Cloud-MRI系统将保存原始成像数据,降低数据丢失的风险,促进机构间医疗协作,最终提高诊断准确性和工作效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Cloud-magnetic resonance imaging system: In the era of 6G and artificial intelligence

Cloud-magnetic resonance imaging system: In the era of 6G and artificial intelligence
Magnetic resonance imaging (MRI) plays an important role in medical diagnosis, generating petabytes of image data annually in large hospitals. This voluminous data stream requires a significant amount of network bandwidth and extensive storage infrastructure. Additionally, local data processing demands substantial manpower and hardware investments. Data isolation across different healthcare institutions hinders cross-institutional collaboration in clinics and research. In this work, we anticipate an innovative MRI system and its four generations that integrate emerging distributed cloud computing, 6G bandwidth, edge computing, federated learning, and blockchain technology. This system is called Cloud-MRI, aiming at solving the problems of MRI data storage security, transmission speed, artificial intelligence (AI) algorithm maintenance, hardware upgrading, and collaborative work. The workflow commences with the transformation of k-space raw data into the standardized Imaging Society for Magnetic Resonance in Medicine Raw Data (ISMRMRD) format. Then, the data are uploaded to the cloud or edge nodes for fast image reconstruction, neural network training, and automatic analysis. Then, the outcomes are seamlessly transmitted to clinics or research institutes for diagnosis and other services. The Cloud-MRI system will save the raw imaging data, reduce the risk of data loss, facilitate inter-institutional medical collaboration, and finally improve diagnostic accuracy and work efficiency.
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来源期刊
Magnetic Resonance Letters
Magnetic Resonance Letters Analytical Chemistry, Spectroscopy, Radiology and Imaging, Biochemistry, Genetics and Molecular Biology (General)
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