Research project on missing data, calibration, and trustworthy prediction in clinical machine learning.
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Updated
Apr 25, 2026 - Python
Research project on missing data, calibration, and trustworthy prediction in clinical machine learning.
This repository contains the data and analysis code for the study "Machine Learning-driven biomarker discovery for stratifying treatment response in tick-borne illness". It investigates the identification of robust and reproducible baseline predictors of treatment response using a stability-aware, multi-method machine learning framework.
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