mtoan65's picture
Update README.md
bbd8db9 verified
metadata
title: Pelvic Bone Fragments with Injuries Segmentation Challenge
description: Pelvic fracture segmentation challenge for CT scans and synthetic X-ray images
authors:
  - name: Minh Toan Dinh
    email: [email protected]
    github: mtoan65
    orcid: 0009-0000-3405-4638
version: 1.0.0
license: cc-by-4.0
dataset:
  - name: PENGWIN Task 1
    description: Pelvic Fracture Segmentation on CT
    doi: 10.5281/zenodo.10927452
  - name: PENGWIN Task 2
    description: Pelvic Fragment Segmentation on Synthetic X-ray Images
    doi: 10.5281/zenodo.10913196
tags:
  - medical-imaging
  - segmentation
  - pelvic-fracture
  - CT
  - X-ray

🦴 Pelvic Bone Fragments with Injuries Segmentation Challenge 🏥

PENGWIN Challenge Banner

🌟 Welcome to the PENGWIN segmentation challenge!

Pelvic fractures, typically resulting from high-energy traumas, are among the most severe injuries, characterized by a disability rate over 50% and a mortality rate over 13%, ranking them as the deadliest of all compound fractures. The complexity of pelvic anatomy, along with surrounding soft tissues, makes surgical interventions especially challenging. Recent years have seen a shift towards the use of robotic-assisted closed fracture reduction surgeries, which have shown improved surgical outcomes. Accurate segmentation of pelvic fractures is essential, serving as a critical step in trauma diagnosis and image-guided surgery. In 3D CT scans, fracture segmentation is crucial for fracture typing, pre-operative planning for fracture reduction, and screw fixation planning. For 2D X-ray images, segmentation plays a vital role in transferring the surgical plan to the operating room via registration, a key step for precise surgical navigation.

📊 Challenge Overview

As a MICCAI 2024 challenge, the PENGWIN segmentation challenge is designed to advance the development of automated pelvic fracture segmentation techniques in both 3D CT scans (Task 1) and 2D X-ray images (Task 2), aiming to enhance their accuarcy and robustness. Our dataset comprises CT scans from 150 patients scheduled for pelvic reduction surgery, collected from multiple institutions using a variety of scanning equipment. This dataset represents a diverse range of patient cohorts and fracture types. Ground-truth segmentations for sacrum and hipbone fragments have been semi-automatically annotated and subsequently validated by medical experts. Furthermore, we have generated high-quality, realistic X-ray images and corresponding 2D labels from the CT data using the DeepDRR method, incorporating a range of virtual C-arm camera positions and surgical tools.

The PENGWIN segmentation challenge consists of two main tasks:

  1. Task 1: Pelvic fragment segmentation on 3D CT

    • Segment pelvic fractures in 3D CT scans
    • Dataset: 150 CT scans from diverse patient cohorts
  2. Task 2: Pelvic fragment segmentation on 2D X-ray

    • Segment pelvic fragments in 2D synthetic X-ray images
    • Dataset: 50,000 synthetic X-ray images derived from 100 CT scans

🗂️ Repository Structure

This repository is organized as follows:

./
├── assets/
│   ├── PENGWIN_banner_vp9y9n3.x10.jpeg
│   ├── task_1.1.jpg
│   ├── task_1.2.jpg
│   ├── task_2.1.png
│   └── task_2.2.png
├── Raw/
│   ├── Task_01/                    # Task 1 dataset and utilities                    
│   │   ├── PENGWIN_CT_train_images_part1.zip
│   │   ├── PENGWIN_CT_train_images_part2.zip
│   │   ├── PENGWIN_CT_train_labels.zip
│   │   └── README.MD               # Detailed information about Task 1
│   └── Task_02/                    # Task 2 dataset and utilities
│       ├── archive_subfolders.sh
│       ├── pengwin_utils.py
│       ├── README.MD               # Detailed information about Task 2
│       ├── requirements.txt
│       └── train/
│           ├── input/
│           │   └── images/
│           │       └── x-ray/
│           │           ├── 001-010.tar.gz
│           │           ├── 011-020.tar.gz
│           │           └── ...
│           └── output/
│               └── images/
│                   └── x-ray/
│                       ├── 001-010.tar.gz
│                       ├── 011-020.tar.gz
│                       └── ...
└── README.md                       # This file

🚀 Getting Started

To participate in the PENGWIN challenge 🏆:

  1. 📥 Download the dataset from the provided Zenodo links or follow the steps below:

    1. 🔧 Setup Git LFS:

      curl -s https://packagecloud.io/install/repositories/github/git-lfs/script.deb.sh | sudo bash
      sudo apt-get install git-lfs
      
    2. 📂 Create and navigate to the Dataset directory:

      mkdir Pelvic_Bone_Fragments_with_Injuries_Segmentation_Challenge
      cd ./Pelvic_Bone_Fragments_with_Injuries_Segmentation_Challenge
      
    3. 🔗 Initialize Git and add the repository:

      git init
      git remote add origin https://mtoan65:<HF_token>@huggingface.co/datasets/mtoan65/Pelvic_Bone_Fragments_with_Injuries_Segmentation_Challenge
      
    4. ⚙️ Install Git LFS hook for the repository:

      git lfs install
      
    5. ⬇️ Pull the repository:

      git checkout -b main
      git pull origin main
      
  2. 🔍 Choose the task you want to work on (Task 1, Task 2, or both).

  3. 📖 Follow the instructions in the respective README files:

  4. 📦 Install the required dependencies for each task.

  5. 🚀 Start developing your segmentation algorithms!

📚 Citation

If you use the PENGWIN datasets or challenge in your research, please cite the following:

For Task 1:

@dataset{sang_yudi_2024_10927452,
  author       = {Sang, Yudi and
                  Liu, Yanzhen and
                  Yibulayimu, Sutuke and
                  Zhu, Gang and
                  Wang, Yu and
                  Killeen, Benjamin and
                  Liu, Mingxu and
                  Ku, Ping-Cheng and
                  Armand, Mehran and
                  Unberath, Mathias and
                  Wu, Xinbao and
                  Zhao, Chunpeng},
  title        = {{PENGWIN Task 1: Pelvic Fracture Segmentation on 
                   CT}},
  month        = apr,
  year         = 2024,
  publisher    = {Zenodo},
  version      = {v1},
  doi          = {10.5281/zenodo.10927452},
  url          = {https://doi.org/10.5281/zenodo.10927452}
}

For Task 2:

@dataset{killeen_benjamin_2024_10913196,
  author       = {Killeen, Benjamin and
                  Liu, Mingxu and
                  Ku, Ping-Cheng and
                  Yudi, Sang and
                  Liu, Yanzhen and
                  Yibulayimu, Sutuke and
                  Zhu, Gang and
                  Wu, Xinbao and
                  Zhao, Chunpeng and
                  Wang, Yu and
                  Armand, Mehran and
                  Unberath, Mathias},
  title        = {{PENGWIN Task 2: Pelvic Fragment Segmentation on 
                   Synthetic X-ray Images}},
  month        = apr,
  year         = 2024,
  publisher    = {Zenodo},
  version      = {1.0.0},
  doi          = {10.5281/zenodo.10913196},
  url          = {https://doi.org/10.5281/zenodo.10913196}
}

🔗 Additional Information

For more details about the PENGWIN challenge, please visit the official challenge webpage.

📄 License

The PENGWIN datasets are distributed under the Creative Commons Attribution 4.0 International License.


👤 About me

Owner Email LinkedIn Twitter HuggingFace GitHub Discord ORCID