Back to 
Projects List
Investigate MONAI generative modeling for Imaging Data Commons
Key Investigators
  
  - Steve Pieper (Isomics, Inc. USA)
 
  
  - Mikael Brudfors (NVIDIA, UK)
 
  
  - Andres Diaz-Pinto (NVIDIA, UK)
 
  
  - Andrey Fedorov (BWH, US)
 
  
  - Birgitt Peeters (BIDMC, US)
 
  
  - Umang Pandey (UC3M, Spain)
 
  
Presenter location: In-person
Project Description
Generative learning refers to a class of techniques that process large amounts of training data into models that can be used for a variety of tasks such as synthetic data generation, image compression, enhancing resolution, classifying images, and content based retrieval.  Recently a generative package has been added to the open source MONAI software.
This project will explore the application of MONAI generative tools to data on the NCI Imaging Data Commons.
Objective
  - Study the existing material and collect information from other interested parties
 
  - Make plans about what experiments would be interesting
 
  - If possible do some small experiments to better understand what’s possible and what effort and resources would be required to scale up
 
Approach and Plan
  - Explore creating an 
IDCDataset compatible with MONAI Datasets using idc-index to fetch data 
  - Investigate adapting tutorial code to work with IDC data
 
  - Try running some small tests, such as running the superresolution tutorials on IDC data
 
  - Document how IDC can be used with MONAI for research
 
Progress and Next Steps
  - Discussed the project with people at project week for feedback
 
  - Contacted Mark Graham of KCL, a MONAI generative researcher/developer for advice
 
  - Implemented a first pass combination of IDC data with MONAI generative notebook
 
  - Ran tests on colab and workstations
 
  - Adapted example data (8-bit) to dicom (16-bit) data to accomodate dynamic range differences
 
  - Explored parallel and federated approaches
 
Illustrations
No response
Background and References