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Brain Mask Prediction Based on MRI Skin Data
Key Investigators
- Raymond Yang (University of Massachusetts Boston)
- Jax Luo (BWH & Harvard Medical School)
- Cathy Yang (Wellesley College)
- Lipeng Ning (BWH & Harvard Medical School)
- Steve Pieper (Isomics, Inc.)
- Daniel Haehn (University of Massachusetts Boston)
Project Description
We postulate that there is a relationship between the shape of ones head and the shape of ones brain. This project aims test that by developing an AI solution for predicting a brain mask given surface data for a head. The eventual goal and application is to map the predicted brain mask to a scanned patient. This project is part of the TMS module project.
Objective
- Objective A. Build and test a CNN model
- Objective B. Migrate TMS model and implement on Slicer
- Objective C. Build and test a geometric CNN model*
Approach and Plan
- We have some MRI from the HCP Human Connectome Project
- Skin masks and Brain Masks were obtained from these MRIs using HDBET and FieldTrip toolbox
- Using these as ground truths, train a CNN model to see the feasibility
- Implement TMS model on Slicer as a module
- Convert ground truth data into surface meshes
- Using the new mesh data, train a geometric CNN model and compare results
Progress and Next Steps
Not a lot of progress was made.
- Some issues with the MRI Masks, data misaligned.
- Has been resolved, will start training next week
- Started a TMS Prediction Module, Source below
- Prediction is working
- Need to create post-processing script to return niftii
Illustrations
Background and References