Miccai17 Mmwhs Hybrid Save

If the code is helpful for your work, please cite our paper "Hybrid Loss Guided Convolutional Networks for Whole Heart Parsing" in STACOM Workshop of MICCAI 2017.

Project README

miccai17-mmwhs-hybrid

Thanks the great effort from Prof. Zhuang Xiahai in organizing the MMWHS Whole Heart Segmentation Challenge 2017. Please cite this paper if the code contributes to your work: "Hybrid Loss Guided Convolutional Networks for Whole Heart Parsing"
https://www.researchgate.net/publication/319702011_Hybrid_Loss_Guided_Convolutional_Networks_for_Whole_Heart_Parsing

you can find the required model below:
C3D Model:
https://drive.google.com/open?id=1N4LVb03Ehot34Bxcm1KkO14csuThOXUv
If you don't need this model, you can just comment the initialization of this model in code.

Trained model for CT segmentation:
https://drive.google.com/open?id=1Nly8ghHvedVC3EZetFJRRtLq7Ll-U0Fx

A CT data from the training dataset for demo:
https://drive.google.com/open?id=1b2sFaKrBfTRx6i0lBD5L6IZXP01W9L5C

If our work is helpful to you, please kindly cite our paper as:

@inproceedings{yang2017hybrid,  
title={Hybrid Loss Guided Convolutional Networks for Whole Heart Parsing},  
author={Yang, Xin and Bian, Cheng and Yu, Lequan and Ni, Dong and Heng, Pheng-Ann},  
booktitle={International Workshop on Statistical Atlases and Computational Models of the Heart},  
pages={215--223},  
year={2017},  
organization={Springer}  
}  

Segmentation Framework image

Probability Maps Generated by Different Loss Functions (First row: weighted cross entropy. Second row: mDSC. Details in our paper)
image

Segmentation Results on CT and MR Volumes image image

Open Source Agenda is not affiliated with "Miccai17 Mmwhs Hybrid" Project. README Source: xy0806/miccai17-mmwhs-hybrid
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