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OMAS CT: Open Model for Anatomy Segmentation in Computer Tomography
Key Investigators
- Tamaz Amiranashvili (University of Zurich, Switzerland)
- Murong Xu (University of Zurich, Switzerland)
- Bjoern Menze (University of Zurich, Switzerland)
Presenter location: In-person
Project Description
We have developed a state-of-the-art automated segmentation model capable of identifying ~170 anatomical structures in volumetric CT scans. This model has been trained on a combined dataset of more than 22,000 diverse, partially-annotated CT scans, setting a new benchmark in medical imaging. Our goal is to integrate this model into a 3D Slicer extension, making it widely available to the community.
Objective
- Model development: Train models on partially-annotated datasets for whole-body CT segmentation covering approximately 170 structures.
- Open source the trained models: Open-source the trained models and the associated codebase on 3D Slicer and other platforms, making them easily accessible and utilizable for clinical and research purposes, among others.
- Release the data: Release the expansive dataset and corresponding annotations on the Imaging Data Commons (IDC), facilitating further research on medical image analysis.
Approach and Plan
- Data Management: Collection and curation of CT scans.
- Model Training and Evaluation: Systematic training and assessment of models.
- Data Release: Consolidation and release of the dataset and corresponding annotations in appropriate formats (e.g., DICOM) on IDC.
- Model Release: Publication of final model weights.
- Software Integration: Development and integration of a module for 3D Slicer, optimized for both CPU and GPU usage to accommodate varying user hardware.
- Documentation: Creation of detailed user guidelines to facilitate the easy application of the models.
Progress and Next Steps
Current Achievements:
- Prototypes of the trained models and an operational inference pipeline have already been developed.
In progress / next steps:
- Benchmarking on public medical image segmentation challenges, followed by evaluation and analysis of results.
- Preparing the dataset and labels for public release.
- Developing the 3D Slicer plugin for integration.
Illustrations
Background and References
TBD