Nature Communications (Dec 2023)

A deep unrolled neural network for real-time MRI-guided brain intervention

  • Zhao He,
  • Ya-Nan Zhu,
  • Yu Chen,
  • Yi Chen,
  • Yuchen He,
  • Yuhao Sun,
  • Tao Wang,
  • Chengcheng Zhang,
  • Bomin Sun,
  • Fuhua Yan,
  • Xiaoqun Zhang,
  • Qing-Fang Sun,
  • Guang-Zhong Yang,
  • Yuan Feng

DOI
https://doi.org/10.1038/s41467-023-43966-w
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 12

Abstract

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Abstract Accurate navigation and targeting are critical for neurological interventions including biopsy and deep brain stimulation. Real-time image guidance further improves surgical planning and MRI is ideally suited for both pre- and intra-operative imaging. However, balancing spatial and temporal resolution is a major challenge for real-time interventional MRI (i-MRI). Here, we proposed a deep unrolled neural network, dubbed as LSFP-Net, for real-time i-MRI reconstruction. By integrating LSFP-Net and a custom-designed, MR-compatible interventional device into a 3 T MRI scanner, a real-time MRI-guided brain intervention system is proposed. The performance of the system was evaluated using phantom and cadaver studies. 2D/3D real-time i-MRI was achieved with temporal resolutions of 80/732.8 ms, latencies of 0.4/3.66 s including data communication, processing and reconstruction time, and in-plane spatial resolution of 1 × 1 mm2. The results demonstrated that the proposed method enables real-time monitoring of the remote-controlled brain intervention, and showed the potential to be readily integrated into diagnostic scanners for image-guided neurosurgery.