--- language: - en license: apache-2.0 library_name: atommic datasets: - CC359 thumbnail: null tags: - image-reconstruction - XPDNet - ATOMMIC - pytorch model-index: - name: REC_XPDNet_CC359_12_channel_poisson2d_5x_10x_NNEstimationCSM results: [] --- ## Model Overview XPDNet for 5x & 10x accelerated MRI Reconstruction on the CC359 dataset. ## ATOMMIC: Training To train, fine-tune, or test the model you will need to install [ATOMMIC](https://github.com/wdika/atommic). We recommend you install it after you've installed latest Pytorch version. ``` pip install atommic['all'] ``` ## How to Use this Model The model is available for use in ATOMMIC, and can be used as a pre-trained checkpoint for inference or for fine-tuning on another dataset. Corresponding configuration YAML files can be found [here](https://github.com/wdika/atommic/tree/main/projects/REC/CC359/conf). ### Automatically instantiate the model ```base pretrained: true checkpoint: https://huggingface.co/wdika/REC_XPDNet_CC359_12_channel_poisson2d_5x_10x_NNEstimationCSM/blob/main/REC_XPDNet_CC359_12_channel_poisson2d_5x_10x_NNEstimationCSM.atommic mode: test ``` ### Usage You need to download the CC359 dataset to effectively use this model. Check the [CC359](https://github.com/wdika/atommic/blob/main/projects/REC/CC359/README.md) page for more information. ## Model Architecture ```base model: model_name: XPDNet num_primal: 5 num_dual: 1 num_iter: 10 use_primal_only: true kspace_model_architecture: CONV kspace_in_channels: 2 kspace_out_channels: 2 dual_conv_hidden_channels: 16 dual_conv_num_dubs: 2 dual_conv_batchnorm: false image_model_architecture: MWCNN imspace_in_channels: 2 imspace_out_channels: 2 mwcnn_hidden_channels: 16 mwcnn_num_scales: 0 mwcnn_bias: true mwcnn_batchnorm: false normalize_image: true dimensionality: 2 reconstruction_loss: l1: 0.1 ssim: 0.9 estimate_coil_sensitivity_maps_with_nn: true ``` ## Training ```base optim: name: adamw lr: 1e-4 betas: - 0.9 - 0.999 weight_decay: 0.0 sched: name: CosineAnnealing min_lr: 0.0 last_epoch: -1 warmup_ratio: 0.1 trainer: strategy: ddp_find_unused_parameters_false accelerator: gpu devices: 1 num_nodes: 1 max_epochs: 20 precision: 16-mixed enable_checkpointing: false logger: false log_every_n_steps: 50 check_val_every_n_epoch: -1 max_steps: -1 ``` ## Performance To compute the targets using the raw k-space and the chosen coil combination method, accompanied with the chosen coil sensitivity maps estimation method, you can use [targets](https://github.com/wdika/atommic/tree/main/projects/REC/CC359/conf/targets) configuration files. Evaluation can be performed using the [evaluation](https://github.com/wdika/atommic/blob/main/tools/evaluation/reconstruction.py) script for the reconstruction task, with --evaluation_type per_slice. Results ------- Evaluation against RSS targets ------------------------------ 5x: MSE = 0.004192 +/- 0.004255 NMSE = 0.06401 +/- 0.06475 PSNR = 24.27 +/- 4.135 SSIM = 0.7609 +/- 0.09962 10x: MSE = 0.00581 +/- 0.00445 NMSE = 0.08987 +/- 0.07376 PSNR = 22.65 +/- 3.225 SSIM = 0.6997 +/- 0.1119 ## Limitations This model was trained on the CC359 using a UNet coil sensitivity maps estimation and might differ from the results reported on the challenge leaderboard. ## References [1] [ATOMMIC](https://github.com/wdika/atommic) [2] Beauferris, Y., Teuwen, J., Karkalousos, D., Moriakov, N., Caan, M., Yiasemis, G., Rodrigues, L., Lopes, A., Pedrini, H., Rittner, L., Dannecker, M., Studenyak, V., Gröger, F., Vyas, D., Faghih-Roohi, S., Kumar Jethi, A., Chandra Raju, J., Sivaprakasam, M., Lasby, M., … Souza, R. (2022). Multi-Coil MRI Reconstruction Challenge—Assessing Brain MRI Reconstruction Models and Their Generalizability to Varying Coil Configurations. Frontiers in Neuroscience, 16. https://doi.org/10.3389/fnins.2022.919186