Information (Oct 2024)

MRI Super-Resolution Analysis via MRISR: Deep Learning for Low-Field Imaging

  • Yunhe Li,
  • Mei Yang,
  • Tao Bian,
  • Haitao Wu

DOI
https://doi.org/10.3390/info15100655
Journal volume & issue
Vol. 15, no. 10
p. 655

Abstract

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This paper presents a novel MRI super-resolution analysis model, MRISR. Through the utilization of generative adversarial networks for the estimation of degradation kernels and the injection of noise, we have constructed a comprehensive dataset of high-quality paired high- and low-resolution MRI images. The MRISR model seamlessly integrates VMamba and Transformer technologies, demonstrating superior performance across various no-reference image quality assessment metrics compared with existing methodologies. It effectively reconstructs high-resolution MRI images while meticulously preserving intricate texture details, achieving a fourfold enhancement in resolution. This research endeavor represents a significant advancement in the field of MRI super-resolution analysis, contributing a cost-effective solution for rapid MRI technology that holds immense promise for widespread adoption in clinical diagnostic applications.

Keywords