Previous works(IDC Prostate segmentation) (NLST-Body Part Regression) demonstrated through several use cases inference and analysis of AI algorithms on IDC data.
Downloading IDC data, conversion between file imaging standards, cloud environment setup and imaging pre-processing steps were studied through these inference and analysis use cases.
During this project week, our goal is to develop use cases of training AI algorithms on IDC data. We welcome any Project Week participants that are interested in leveraging IDC data for training AI algorithms(or evaluation) to collaborate with us!
Objective
Leverage IDC data for SOTA segmentation algorithm(nnUNet, MONAI)
Collaborate with other members to study the feasibility of using IDC data for training AI algorithms.
Approach and Plan
Using nnUNet segmentation framework for prostate segmentation on IDC data(Prostatex/QIN collection) for training purposes.
Expand AI training use cases beyond SOTA algorithms.
Progress and Next Steps
Leverage information gained by applying inference using nnUNet prostate segmentation on several prostate imaging collections, for training pipelines.
Category
Segmentation / Classification / Landmarking
Key Investigators
Project Description
Imaging Data Commons provides publicly available cancer imaging data.
Previous works(IDC Prostate segmentation) (NLST-Body Part Regression) demonstrated through several use cases inference and analysis of AI algorithms on IDC data. Downloading IDC data, conversion between file imaging standards, cloud environment setup and imaging pre-processing steps were studied through these inference and analysis use cases.
During this project week, our goal is to develop use cases of training AI algorithms on IDC data. We welcome any Project Week participants that are interested in leveraging IDC data for training AI algorithms(or evaluation) to collaborate with us!
Objective
Approach and Plan
Progress and Next Steps
Illustrations
No response
Background and References