A Flow-based Truncated Denoising Diffusion Model for super-resolution Magnetic Resonance Spectroscopic Imaging.

Journal: Medical image analysis
Published Date:

Abstract

Magnetic Resonance Spectroscopic Imaging (MRSI) is a non-invasive imaging technique for studying metabolism and has become a crucial tool for understanding neurological diseases, cancers and diabetes. High spatial resolution MRSI is needed to characterize lesions, but in practice MRSI is acquired at low resolution due to time and sensitivity restrictions caused by the low metabolite concentrations. Therefore, there is an imperative need for a post-processing approach to generate high-resolution MRSI from low-resolution data that can be acquired fast and with high sensitivity. Deep learning-based super-resolution methods provided promising results for improving the spatial resolution of MRSI, but they still have limited capability to generate accurate and high-quality images. Recently, diffusion models have demonstrated superior learning capability than other generative models in various tasks, but sampling from diffusion models requires iterating through a large number of diffusion steps, which is time-consuming. This work introduces a Flow-based Truncated Denoising Diffusion Model (FTDDM) for super-resolution MRSI, which shortens the diffusion process by truncating the diffusion chain, and the truncated steps are estimated using a normalizing flow-based network. The network is conditioned on upscaling factors to enable multi-scale super-resolution. To train and evaluate the deep learning models, we developed a H-MRSI dataset acquired from 25 high-grade glioma patients. We demonstrate that FTDDM outperforms existing generative models while speeding up the sampling process by over 9-fold compared to the baseline diffusion model. Neuroradiologists' evaluations confirmed the clinical advantages of our method, which also supports uncertainty estimation and sharpness adjustment, extending its potential clinical applications.

Authors

  • Siyuan Dong
    Department of Electrical Engineering, Yale University, New Haven, CT, USA. Electronic address: s.dong@yale.edu.
  • Zhuotong Cai
    Department of Biomedical Engineering, Yale University, New Haven, CT, USA; Institute of Artificial Intelligence and Robotics, Xi'an Jiaotong University, Xi'an, China. Electronic address: zhuotong.cai@yale.edu.
  • Gilbert Hangel
    Department of Neurosurgery & High-Field MR Centre, Department of Biomedical Imaging and Image-Guided Therapy, Medical University Vienna, Vienna, Austria.
  • Wolfgang Bogner
    High Field MR Center, Department of Biomedical Imaging and Image-guided Therapy, Medical University of Vienna, Vienna, Austria.
  • Georg Widhalm
    Department of Neurosurgery, Medical University Vienna, Vienna, Austria.
  • Yaqing Huang
    Department of Pathology, Yale University, New Haven, CT, USA.
  • Qinghao Liang
    Department of Biomedical Engineering, Yale University, New Haven, Connecticut.
  • Chenyu You
  • Chathura Kumaragamage
    Department of Radiology and Biomedical Imaging, Yale University, New Haven, CT, USA.
  • Robert K Fulbright
    Department of Radiology and Biomedical Imaging, MRRC, Yale School of Medicine, The Anlyan Center N137, PO Box 208043, New Haven, CT, 06520-8043, USA. robert.fulbright@yale.edu.
  • Amit Mahajan
    Department of Radiology, Yale School of Medicine, New Haven, CT.
  • Amin Karbasi
    Department of Electrical Engineering, Yale University, New Haven, CT, USA; Department of Computer Science, Yale University, New Haven, CT, USA; Department of Statistics and Data Science, Yale University, New Haven, CT, USA.
  • John A Onofrey
  • Robin A de Graaf
    Department of Biomedical Engineering, Yale University, New Haven, CT, USA; Department of Radiology and Biomedical Imaging, Yale University, New Haven, CT, USA.
  • James S Duncan
    Biomedical Engineering, Yale University, New Haven, CT 06511, USA.