Standard 2-class segmentation model for ADS trained on rabbit samples (Virginia Commonwealth University)
To segment an image using this model, use the following command in an axondeepseg
virtual environment:
axondeepseg -t BF -i <IMG_PATH> -m <path/to/model_seg_rabbit_axon-myelin_bf> -s <PIXEL_SIZE>
This model was trained and tested with ivadomed. We recommend you install ivadomed in a virtual environment to reproduce the original training steps. The specific revision hash of the version used for training is documented in the version_info.log file.
You will need the model's JSON configuration file named model_seg_rabbit_axon-myelin_bf.json located in this repo.
git clone https://github.com/axondeepseg/model_seg_rabbit_axon-myelin_bf
The dataset used to train this model is hosted on git-annex at data.neuro.polymtl.ca:datasets/data_axondeepseg_vcu
.
To train the model, please first update the following fields in the training config file:
gpu_ids
: specific to your hardwarepath_output
: where the model will be savedloader_parameters:path_data
: path to training dataloader_parameters:fname_split
: None (NOTE this training configuration did not use a joblib split file. The specific training image hashes can be found at the bottom of the config file)bids_config
: path to the custom bids config usually located in ivadomed/config/config_bids.json
Then, you can train the model with
ivadomed --train -c path_to_config_file.json
The trained model file will be saved under the path_output
directory. For more information about training models in ivadomed
, please refer to the following tutorial.
To test the performance of this model, use
ivadomed --test -c path_to_config_file.json
The evaluation results will be saved in "path_output"/results_eval/evaluation_3Dmetrics.csv