English

A fully open-source framework for streaming and cloud-processing of low-field MRI data

Computational Physics 2026-03-23 v1 Instrumentation and Detectors Medical Physics

Abstract

Purpose: To present a fully open-source framework for quasi-real-time streaming and cloud-based processing of low-field (LF) MRI data, addressing the growing computational demands of advanced reconstruction and post-processing pipelines in portable and affordable MRI systems. Methods: The proposed framework integrates open-source scanner control software with a network-enabled streaming architecture, allowing for raw data to be transmitted directly from the MRI console to remote compute resources. Cloud-based processing modules support image reconstruction and advanced post-processing, including computationally intensive physics- and learning-based methods, while maintaining compatibility with low-cost on-device control hardware. Results: The system enables continuous acquisition-to-reconstruction workflows in LF-MRI without requiring specialized high-performance console architectures. Selected example applications include deep-learning-based denoising, field-induced distortion correction, and non-Cartesian image reconstruction. Experimental demonstrations show reliable streaming performance. Conclusions: Open-source streaming and cloud-processing provide an effective pathway to overcome the computational limitations of embedded LF-MRI consoles. By decoupling acquisition hardware from intensive reconstruction workloads, the proposed framework supports scalable deployment of advanced algorithms while preserving the affordability and portability that motivate LF-MRI.

Keywords

Cite

@article{arxiv.2603.19287,
  title  = {A fully open-source framework for streaming and cloud-processing of low-field MRI data},
  author = {T. Guallart-Naval and J. Stairs and J. M. Algarín and H. Xue and J. Benlloch and P. Benlloch and J. Borreguero and J. Conejero and F. Galve and P. García-Cristóbal and M. Lacalle and B. Lena and L. Porcar and S. J. Schiff and A. Webb and M. Hansen and J. Alonso},
  journal= {arXiv preprint arXiv:2603.19287},
  year   = {2026}
}

Comments

10 pages, 7 figures

R2 v1 2026-07-01T11:28:45.739Z