The Geometric Deep Learning for Diffusion MRI Signal Reconstruction with Continuous Samplings (DISCUS) method facilitates the flexible signal reconstruction for arbitrary q-vectors (query vectors) given an acquisition with an arbitrary number of measurements (observation set).
This repository includes scripts to generate a dataset for training (dataset.py
), to train the DISCUS method (train.py
), and to predict diffusion MRI signals given a trained DISCUS model (prediction.py
).
A few parameters and paths have to be set in the config.yaml
file. This file needs to be referenced with the respective function call, e.g.
python train.py -f config.yaml
If you use DISCUS for your research publication, please cite:
Christian Ewert*, David Kügler*, Rüdiger Stirnberg, Alexandra Koch, Anastasia Yendiki, Martin Reuter (*co-first); Geometric Deep Learning for Diffusion MRI Signal Reconstruction with Continuous Samplings (DISCUS). Imaging Neuroscience 2024; 2 1–18. doi: https://doi.org/10.1162/imag_a_00121