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Plug-and-Play Magnetic Resonance Fingerprinting based Quantitative MRI Reconstruction using Deep Denoisers (Proof of Concept) (IEEE ISBI 2022)

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Plug-and-Play Magnetic Resonance Fingerprinting based Quantitative MRI Reconstruction using Deep Denoisers (Proof of Concept) (IEEE ISBI 2022)

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Ketan Fatania, Carolin M. Pirkl, Marion I. Menzel, Peter Hall and Mohammad Golbabaee

Paper: IEEE ISBI 2022, arXiv


Abstract

Current deep learning approaches to Quantitative MRI - Magnetic Resonance Fingerprinting (QMRI-MRF) build artefact-removal models customised to particular k-space subsampling patterns. This research proposes an iterative deep learning Plug-and-Play Alternating Direction Method of Multipliers (PnP-ADMM) reconstruction approach to QMRI-MRF which is adaptive to the forward acquisition process. Initially, a Convolutional Neural Network (CNN) is trained to remove generic white gaussian noise (not a particular subsampling artefact) from Time-Series Magnetisation Images (TSMIs). The denoiser is then plugged into the PnP-ADMM algorithm and tested with two subsampling patterns. The results show consistent reconstruction performance of TSMIs against both subsampling patterns and accurate inference of T1, T2 and Proton Density tissue maps.


Spiral Subsampling

A gridded spiral subsampling pattern was used to subsample 771 k-space locations from a total of 224 x 224 = 50,176 k-space locations per timeframe (channel). This resulted in an acceleration factor of 501,760 / 7710 = 65.


Spiral Subsampling: TSMI Reconstruction

test

Fig.1 - A visual comparison of the reconstructed TSMIs obtained using the Spiral Subsampling pattern for channels 1, 5 and 10, for slice 10 of 15.


Spiral Subsampling: Tissue Map Inference

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Fig.2 - A visual comparison of the T1, T2 and Proton Density tissue maps obtained after mapping of reconstructed Spiral Subsampled TSMIs for slice 10 of 15.


EPI Subsampling

A gridded EPI subsampling pattern was used to subsample approximately 771 k-space locations from a total of 224 x 224 = 50,176 k-space locations per timeframe (channel). This resulted in an acceleration factor of 501,760 / 7710 = 65.


EPI Subsampling: TSMI Reconstruction

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Fig.3 - A visual comparison of the reconstructed TSMIs obtained using the EPI Subsampling pattern for channels 1, 5 and 10, for slice 10 of 15.


EPI Subsampling: Tissue Map Inference

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Fig.4 - A visual comparison of the T1, T2 and Proton Density tissue maps obtained after mapping of reconstructed EPI Subsampled TSMIs for slice 10 of 15.


Proof of Concept

This work is a proof of concept for Magnetic Resonance Fingerprinting based Quantitative MRI with certain caveats: the TSMIs reconstructed were real-valued, uniform FFT was used, and the acquisition processes were single-coiled simulations with gridded subsampling patterns. We plan to address these issues in future research.


Requirements and Dependencies

Matlab

  • Tested with Matlab 2021a.
  • Requires the Deep Learning Toolbox Converter for ONNX Model Format add-on / app to use importONNXNetwork(). Tested with version 21.1.2.

Python

  • An environment can be created using python_dependencies.txt in ./PyTorch_Denoiser/dependencies/.
  • The order of packages, and the package's dependencies, that were installed in a newly created Anaconda environment with Python 3.8.10: PyTorch 1.7.1, OpenCV 4.4.0, Matplotlib 3.2.2, SciPy 1.4.1, scikit-image 0.17.2, TensorBoard 2.5.0, Torchvision 0.8.2.

Datasets

A dataset of quantitative T1, T2 and PD tissue maps (QMaps) of 2D axial brain scans of 8 healthy volunteers across 15 slices each were used. The "ground-truth" tissue maps were computed from long FISP aqcuisitions with T=1000 timepoints using the LRTV reconstruction algorithm.

The dataset used was provided by GE Healthcare and is not available to be shared.

For demo purposes, we hope to provide a dataset from the BrainWeb Project soon!


PnP-ADMM (Matlab) (Demo)

  • Download the dataset to ./datasets/gt_qmaps/ using the link provided in ./datasets/README.md.
  • Download the denoiser models to ./onnx_models/real_fisp_cut3_onnx_models/ using the link provided in ./onnx_models/README.md.
  • Create the TSMIs from the QMaps by running main_synthesize_tsmis.m. The TSMIs will be saved to ./datasets/synth_tsmis/real_fisp_cut3_tsmis/.
  • Set options at the beginning of main_recon_syth_FFT.m. In particular, cut, subsampling_pattern, recon_method, denoiser_type and noise_map_std (for multi-level denoiser).
  • Run main_recon_syth_FFT.m.

Training and Testing a Denoiser (PyTorch)

Creating Python TSMIs from Matlab TSMIs

  • Open main_save_python_tsmis.py.
  • Set options. In particular, args.cut and args.python_train_test_split.
  • Run main_save_python_tsmis.py.
  • By default, Matlab training and testing TSMIs will be read from ./datasets/synth_tsmis/real_fisp_cut[cut_number]_tsmis/ and Python training and testing TSMIs will be saved in ./PyTorch_Denoiser/datasets/real_fisp_cut[cut_number]_float64_pkl/.

Training a Denoiser

Training a Model

  • Open main_train.py.
  • Set options in train_init_settings(). In particular, args.cut, args.network_architecture, args.gauss_std (for single-level denoiser) and args.gauss_blind_std (for multi-level denoiser).
  • Run main_train.py.
  • The checkpoints will be saved to ./PyTorch_Denoiser/checkpoints/ and the final model will be saved to ./PyTorch_Denoiser/final_pt_models/real_fisp_cut[cut_number]_pt_models/.

Resuming Training

  • Open main_train.py.
  • In train_init_settings(), set args.resume_training = 'on', set args.resume_training_path to the relevant checkpoint and set args.resume_training_sumwri_dir to the relevant summary writer folder.
  • Run main_train.py.

Testing a Denoiser

  • Open main_test.py.
  • Set options in test_init_settings(). In particular, args.cut, args.network_architecture, args.load_test_model... and args.gauss_std (for single-level and multi-level denoisers).
  • Run main_test.py.
  • A comparison figure and metrics will be displayed for each channel of the test slice. To display the figure and metrics of the next channel, close the open figure. To finish testing before iterating through all channels, stop the program.

Exporting PyTorch Model to ONNX and Importing ONNX Model to Matlab

To export the PyTorch model to ONNX

Note: For more information on how the PyTorch model is exported to ONNX, see export_to_onnx() in utils.py.

  • Open main_test.py.
  • Set args.load_test_model... to where the trained model is located and set args.save_onnx_model... to where the ONNX model should be saved. By default, the ONNX file will be saved to ../onnx_models/real_fisp_cut[cut_number]_models/.
  • Set args.export_onnx_model to 'on'.
  • Run main_test.py.

To import the ONNX model to Matlab

Note: For more information on how the ONNX model is imported to Matlab, see the section %% Load PyTorch TSMI Denoiser ... in main_recon_tsmis_FFT.m.

  • Open main_recon_tsmis_FFT.m.
  • Set single_level_denoiser_filename or multi_level_denoiser_filename to the filename of the ONNX model to be imported.
  • Set other options. In particular cut, denoiser_type and noise_map_std (if using a multi-level denoiser).
  • Run main_recon_tsmis_FFT.m.

Citation

If you found this research and / or repository useful, please cite this paper:

@inproceedings{ref:fatania2022,
    author = {Fatania, Ketan and Pirkl, Carolin M. and Menzel, Marion I. and Hall, Peter and Golbabaee, Mohammad},
    booktitle = {2022 IEEE 19th International Symposium on Biomedical Imaging (ISBI)},
    title = {A Plug-and-Play Approach To Multiparametric Quantitative MRI: Image Reconstruction Using Pre-Trained Deep Denoisers},
    year = {2022},
    pages= {1-4},
    doi = {10.1109/ISBI52829.2022.9761603},
    code = {https://github.com/ketanfatania/QMRI-PnP-Recon-POC}
    }

Contact

If you have any questions, please feel free to email me:

Ketan Fatania
University of Bath
kf432@bath.ac.uk

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Plug-and-Play Magnetic Resonance Fingerprinting based Quantitative MRI Reconstruction using Deep Denoisers (Proof of Concept) (IEEE ISBI 2022)

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