Skip to content

TX-Yeager/LiTS---Liver-Tumor-Segmentation-Challenge

 
 

Repository files navigation

ImageSegmentation With Vnet3D

This is an example of the CT images Segment from LiTS---Liver-Tumor-Segmentation-Challenge

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、Preprocess

  • LiTS data of image and mask are all type of .nii files,in order to train and visulise,convert .nii file to .bmp file.
  • Liver data preparing,i have tried many patch size,and finally using the patch(256,256,16),if you have better GPU,you can change 16 to 24 or 32:run the getPatchImageAndMask.py
  • Tumor data preparing,using the patch(256,256,16):run the getPatchImageAndMask.py,disable the line gen_image_mask(srcimg, seg_liverimage, i, shape=(16, 256, 256), numberxy=5, numberz=10) and enable the line gen_image_mask(srcimg, seg_tumorimage, i, shape=(16, 256, 256), numberxy=5, numberz=10),and change the trainLiverMask to trainTumorMask
  • last save all the data folder path into csv file: run the utils.py

the file like this:

G:\Data\segmentation\Image/0_161

G:\Data\segmentation\Image/0_162

G:\Data\segmentation\Image/0_163

2、Liver and Tumor Segmentation

  • the VNet model

  • train and predict in the script of vnet3d_train.py and vnet3d_predict.py

3、download resource

Result

Trained Loss

Liver Segment Result

Liver leaderboard

test case segmentation result can see in the file of 35.mp4,38.mp4 and 51.mp4

first col is srcimage,second col is GroundTruth Mask image,third col is VNet segmentation image

Lesion leaderboard

Contact

About

LiTS - Liver Tumor Segmentation Challenge

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%