Back to
Projects List
NCI Imaging Data Commons - user support and platform development
Key Investigators
- Andrey Fedorov (BWH, USA)
- Deepa Krishnaswamy (BWH, USA)
- Vamsi Thiriveedhi (BWH, USA)
- Cosmin Ciausu (BWH, USA)
- Leonard Nuerenberg (AIM Lab, USA)
- Suraj Pai (AIM Lab, USA)
- Steve Pieper (Isomics Inc, USA)
- Ron Kikinis (BWH, USA)
- Michael Onken (OpenConnections GmbH, Germany)
Presenter location: In-person
Project Description
NCI Imaging Data Commons is a cloud-based environment containing publicly available cancer imaging data co-located with analysis and exploration tools and resources.
IDC provides a growing amount of publicly available cancer imaging data (>65TB at the moment, radiology and digital pathology, including images, annotations, analysis results and clinical data) curated in the cloud to support highly efficient access and to simplify analysis.
Objective
- Interact with current and prospective users to answer questions and collect feedback.
- Support any project that has a need for public datasets available for testing, cloud-based notebook implementations of the analysis, scaling up analysis to large cohorts within IDC.
- Work on priority aspects of the project: maintenance and improvement of SlicerIDCBrowser and idc-index, improvements of the documentation and other learning materials
- Improve/simplify access to the NLST/TotalSegmentator analysis results.
- Work on maintenance of dcmqi priority issues: https://github.com/QIICR/dcmqi/issues/489, python wrapper API
- MRTotalsegmenator SCT codes - Andras
- DCMTK upgrade in Slicer - JC
Approach and Plan
- Describe specific steps of what you plan to do to achieve the above described objectives.
Progress and Next Steps
- Describe specific steps you have actually done.
Illustrations
Background and References
- Fedorov, A., Longabaugh, W. J. R., Pot, D., Clunie, D. A., Pieper, S. D., Gibbs, D. L., Bridge, C., Herrmann, M. D., Homeyer, A., Lewis, R., Aerts, H. J. W., Krishnaswamy, D., Thiriveedhi, V. K., Ciausu, C., Schacherer, D. P., Bontempi, D., Pihl, T., Wagner, U., Farahani, K., Kim, E. & Kikinis, R. National Cancer Institute Imaging Data Commons: Toward Transparency, Reproducibility, and Scalability in Imaging Artificial Intelligence. RadioGraphics (2023). https://doi.org/10.1148/rg.230180
- Thiriveedhi, V. K., Krishnaswamy, D., Clunie, D., Pieper, S., Kikinis, R. & Fedorov, A. Cloud-based large-scale curation of medical imaging data using AI segmentation. Research Square (2024). https://doi.org/10.21203/rs.3.rs-4351526/v1