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AtlasNet

This repository is the official implementation of Deep Atlas Network for Efficient 3D Left Ventricle Segmentation on Echocardiography which is presented at Medical Image Analysis 2020.

[paper][code]

Set up the the environment

conda env create -n atlasnet -f atlasnet.yaml
conda activate atlasnet

Data

In our experiments, we used the following dataset:

We use the CETUS dataset in our code, and the image size was changed to 128x128x128.

In the folder ./CETUS, we use some examples to show the format of the data.

Config

To change the default config, modify this file: config

Training

To train our model, run this command:

python train.py

Test

To test the trained our model, run:

python test.py

Citation

@inproceedings{DONG2020101638,
  title={Deep Atlas Network for Efficient 3D Left Ventricle Segmentation on Echocardiography},
  author={Suyu Dong and Gongning Luo and Clara Tam and Wei Wang and Kuanquan Wang and Shaodong Cao and Bo Chen and Henggui Zhang and Shuo Li},
  journal = {Medical Image Analysis},
  volume = {61},
  pages = {101638},
  year = {2020},
  issn = {1361-8415},
}