FOD-Net: A deep learning method for fiber orientation distribution angular super resolution.

Journal: Medical image analysis
Published Date:

Abstract

Mapping the human connectome using fiber-tracking permits the study of brain connectivity and yields new insights into neuroscience. However, reliable connectome reconstruction using diffusion magnetic resonance imaging (dMRI) data acquired by widely available clinical protocols remains challenging, thus limiting the connectome/tractography clinical applications. Here we develop fiber orientation distribution (FOD) network (FOD-Net), a deep-learning-based framework for FOD angular super-resolution. Our method enhances the angular resolution of FOD images computed from common clinical-quality dMRI data, to obtain FODs with quality comparable to those produced from advanced research scanners. Super-resolved FOD images enable superior tractography and structural connectome reconstruction from clinical protocols. The method was trained and tested with high-quality data from the Human Connectome Project (HCP) and further validated with a local clinical 3.0T scanner as well as with another public available multicenter-multiscanner dataset. Using this method, we improve the angular resolution of FOD images acquired with typical single-shell low-angular-resolution dMRI data (e.g., 32 directions, b=1000s/mm) to approximate the quality of FODs derived from time-consuming, multi-shell high-angular-resolution dMRI research protocols. We also demonstrate tractography improvement, removing spurious connections and bridging missing connections. We further demonstrate that connectomes reconstructed by super-resolved FODs achieve comparable results to those obtained with more advanced dMRI acquisition protocols, on both HCP and clinical 3.0T data. Advances in deep-learning approaches used in FOD-Net facilitate the generation of high quality tractography/connectome analysis from existing clinical MRI environments. Our code is freely available at https://github.com/ruizengalways/FOD-Net.

Authors

  • Rui Zeng
    Institute of Future Technology Research, Beijing Aircraft Technology Research Institute, COMAC, Beijing, China.
  • Jinglei Lv
  • He Wang
    Department of Neurosurgery, Xuanwu Hospital, Capital Medical University, China International Neuroscience Institute, Beijing, China.
  • Luping Zhou
    School of Computer Science and Software Engineering, University of Wollongong, Wollongong, NSW, Australia.
  • Michael Barnett
    Brain and Mind Centre, The University of Sydney, Sydney 2050, Australia; Sydney Neuroimaging Analysis Centre, Sydney 2050, Australia.
  • Fernando Calamante
    School of Biomedical Engineering, The University of Sydney, Sydney, NSW 2006, Australia; Sydney Imaging - The University of Sydney, Sydney, Australia.
  • Chenyu Wang
    Brain and Mind Centre, The University of Sydney, Sydney 2050, Australia; Sydney Neuroimaging Analysis Centre, Sydney 2050, Australia. Electronic address: chenyu.wang@sydney.edu.au.