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Multimodal Deep Learning for Predicting Recurrence in Non–muscle invasive bladder cancer: Comparison with Traditional Risk Models - v1.0.0-paper

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@leekj3133 leekj3133 released this 23 Jul 03:29
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This release includes the sample data and the frontend code used in the web demonstration accompanying the manuscript.
It provides a minimal working example for recurrence prediction in NMIBC using our multimodal AI model (MIBR).

Contents:

Sample clinical records and image metadata (de-identified)
Streamlit app frontend (home.py)
Utility modules (preprocess.py, util.py)
requirements.txt for dependency installation
Note:

Model weights, backend training pipeline, and inference engine are excluded due to data protection regulations.
This release is intended for code structure review, documentation purposes, and interactive demonstration.
For access to model weights, full training code, or backend modules, please contact the corresponding author.

Full Changelog: https://github.com/leekj3133/MIBR_study/commits/v1.0.0-paper