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Risk Prediction Deep Learning Models into MHub.ai
Key Investigators
- Ahmed Adly (Harvard Medical School, USA)
- Leonard Nuernberg (Harvard Medical School, USA)
- Hugo Aerts (Harvard Medical School, USA)
Presenter location: In-person
Project Description
Mhub.ai is a framework to enhance reproducible research by standardizing models into Mhub containers that could be flexible and effortless to use.
Therefore I aim to add two often used risk prediction models (Sybil and CVD-risk-estimator), to make it easy for the community to run such models through Mhub using a standardized way (by one simple command).
Objective
- Getting more familiar with Mhub.ai framework, to keep pushing high quality models there for reproducible science.
- Publishing risk prediction Models on Mhub.ai .
Approach and Plan
- Attending MHub workshop held at PW, so that I grasp best practices.
- Start with a basic hands on -> Mhub.ai converter from DICOM to NRRD.
- Wrap the risk prediction models (Sybil / CVD-risk-estimator) for Mhub.ai Framework.
- Run the models on data using Mhub.ai and Github, to compare the simplicity of the approach, efficiency (time and effort) and output.
Progress and Next Steps
Before PW
- Getting more familiar with Mhub.ai infrastructure and documentation.
- Going through Mhub.ai tutorials.
After PW
- Sybil - Cancer risk prediction Model - is wrapped in MHUB.ai Framerwork and pushed to Mhub.ai.
- CVD-Risk-Estimator - CVD risk model - is still ongoing, however at last stage.
- Got More comfortable with Mhub.ai framework, and looking forward to add more models.
Illustrations
No response
Background and References