Skip to content

411149453/VNet3D

 
 

Repository files navigation

ImageSegmentation With Vnet3D

This is an example of the prostate in transversal T2-weighted MR images Segment from MICCAI Grand Challenge:Prostate MR Image Segmentation 2012

Prerequisities

The following dependencies are needed:

  • numpy >= 1.11.1
  • SimpleITK >=1.0.1
  • opencv-python >=3.3.0
  • tensorflow-gpu ==1.8.0
  • pandas >=0.20.1
  • scikit-learn >= 0.17.1

How to Use

(re)implemented the model with tensorflow in the paper of "Milletari, F., Navab, N., & Ahmadi, S. A. (2016) V-net: Fully convolutional neural networks for volumetric medical image segmentation.3DV 2016"

1、download trained data,download dataset:https://promise12.grand-challenge.org/download/ ,if you can't download it,i have shared it:https://pan.baidu.com/s/1y9YAAQKdD3OMOMyamx9MdA, password:whbf

2、the file of promise12Vnet3dImage.csv,is like this format: D:\Data\PROMISE2012\Vnet3d_data\Vnet3d_patch_train\image/0_10 D:\Data\PROMISE2012\Vnet3d_data\Vnet3d_patch_train\image/0_11 D:\Data\PROMISE2012\Vnet3d_data\Vnet3d_patch_train\image/0_12 ...... if you trained data path is not D:\Data\PROMISE2012,you should change the csv file path just like this:using C:\Data\ replace D:\Data\PROMISE2012.

3、when data is prepared,just run the vnet3d_train_predict.py

4、training the model on the GTX1080,it take 40 hours,and i also attach the trained model in the project,you also just use the vnet3d_train_predict.py file to predict,and get the segmentation result.

5、download trained model:https://pan.baidu.com/s/1B869czIPfIL8wxDKgIednQ, password:0nb6

6、download test data: https://pan.baidu.com/s/1pDCQzTxUmyYdwDinBJKTuA, password:s0jt

Result

MICCAI Grand Challenge Result

the trained loss result the Vnet3D model the trained process:0 epoch——GTMask and PredictMask 1000 epoch——GTMask and PredictMask 10000 epoch——GTMask and PredictMask the predict result

Contact

About

Prostate MR Image Segmentation 2012

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%