Abstract
Cardiovascular diseases remain the leading global cause of mortality. Age is an important covariate whose effect is most easily investigated in a healthy cohort to properly distinguish the former from disease-related changes. Traditionally, most of such insights have been drawn from the analysis of electrocardiogram (ECG) feature changes in individuals as they age. However, these features, while informative, may potentially obscure underlying data relationships. In this paper we present the following contributions: (1) We employ a deep-learning model and a tree-based model to analyze ECG data from a robust dataset of healthy individuals across varying ages in both raw signals and ECG feature format. (2) We use explainable AI methods to identify the most discriminative ECG features across age groups.(3) Our analysis with tree-based classifiers reveals age-related declines in inferred breathing rates and identifies notably high SDANN values as indicative of elderly individuals, distinguishing them from younger adults. (4) Furthermore, the deep-learning model underscores the pivotal role of the P-wave in age predictions across all age groups, suggesting potential changes in the distribution of different P-wave types with age. These findings shed new light on age-related ECG changes, offering insights that transcend traditional feature-based approaches.
Publisher
Public Library of Science (PLoS)
Reference41 articles.
1. The global burden of cardiovascular diseases and risk,;M. Vaduganathan;Journal of the American College of Cardiology,2022
2. The biological age of the heart is consistently younger than chronological age,;S. Pavanello;Scientific Reports,2020
3. On merging feature engineering and deep learning for diagnosis, risk prediction and age estimation based on the 12-lead ECG;E. Zvuloni;IEEE Transactions on Biomedical Engineering,2023
4. Age and sex estimation using artificial intelligence from standard 12-lead ECGs;Z. I. Attia;Circulation: Arrhythmia and Electrophysiology,2019
5. Deep learning for ecg analysis: Benchmarks and insights from ptb-xl;N. Strodthoff;IEEE Journal of Biomedical and Health Informatics,2020