This is the official repository for the paper Uncovering ECG Changes during Healthy Aging using Explainable AI accepted by PLOS ONE. The research uncovers healthy age-related ECG changes by analyzing ECG data from diverse age groups using diverse models such as deep learning and tree-based classifiers, as well as model explainability.
@article{ott2024using,
title={Using explainable AI to investigate electrocardiogram changes during healthy aging—From expert features to raw signals},
author={Ott, Gabriel and Schaubelt, Yannik and Lopez Alcaraz, Juan Miguel and Haverkamp, Wilhelm and Strodthoff, Nils},
journal={Plos one},
volume={19},
number={4},
pages={e0302024},
year={2024},
publisher={Public Library of Science San Francisco, CA USA}
}