A feature-based convolutional neural network for reconstruction of interventional MRI

NMR Biomed. 2022 Apr;35(4):e4231. doi: 10.1002/nbm.4231. Epub 2019 Dec 19.

Abstract

Real-time interventional MRI (I-MRI) could help to visualize the position of the interventional feature, thus improving patient outcomes in MR-guided neurosurgery. In particular, in deep brain stimulation, real-time visualization of the intervention procedure using I-MRI could improve the accuracy of the electrode placement. However, the requirements of a high undersampling rate and fast reconstruction speed for real-time imaging pose a great challenge for reconstruction of the interventional images. Based on recent advances in deep learning (DL), we proposed a feature-based convolutional neural network (FbCNN) for reconstructing interventional images from golden-angle radially sampled data. The method was composed of two stages: (a) reconstruction of the interventional feature and (b) feature refinement and postprocessing. With only five radially sampled spokes, the interventional feature was reconstructed with a cascade CNN. The final interventional image was constructed with a refined feature and a fully sampled reference image. With a comparison of traditional reconstruction techniques and recent DL-based methods, it was shown that only FbCNN could reconstruct the interventional feature and the final interventional image. With a reconstruction time of ~ 500 ms per frame and an acceleration factor of ~ 80, it was demonstrated that FbCNN had the potential for application in real-time I-MRI.

Keywords: deep learning; image reconstruction; magnetic resonance imaging; neuro-intervention; real-time imaging.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Humans
  • Magnetic Resonance Imaging / methods
  • Magnetic Resonance Imaging, Interventional*
  • Neural Networks, Computer