3 research outputs found
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, 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.Comment: 4pages, 5figures, letter