EnECG: Efficient Ensemble Learning for Electrocardiogram Multi-task Foundation Model
Yuhao Xu, Xiaoda Wang, Jiaying Lu, Sirui Ding, Defu Cao, Huaxiu Yao, Yan Liu, Xiao Hu, Carl Yang

TL;DR
EnECG introduces an ensemble framework that combines specialized ECG foundation models with lightweight adaptation and Mixture of Experts to improve multi-task ECG analysis efficiently.
Contribution
It proposes a novel ensemble learning approach using Mixture of Experts and Low-Rank Adaptation for multi-task ECG interpretation, reducing computational costs.
Findings
Enhanced multi-task ECG performance with reduced training costs
Effective integration of multiple specialized models
Maintained high accuracy while minimizing fine-tuning scope
Abstract
Electrocardiogram (ECG) analysis plays a vital role in the early detection, monitoring, and management of various cardiovascular conditions. While existing models have achieved notable success in ECG interpretation, they fail to leverage the interrelated nature of various cardiac abnormalities. Conversely, developing a specific model capable of extracting all relevant features for multiple ECG tasks remains a significant challenge. Large-scale foundation models, though powerful, are not typically pretrained on ECG data, making full re-training or fine-tuning computationally expensive. To address these challenges, we propose EnECG(Mixture of Experts-based Ensemble Learning for ECG Multi-tasks), an ensemble-based framework that integrates multiple specialized foundation models, each excelling in different aspects of ECG interpretation. Instead of relying on a single model or single task,…
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Taxonomy
TopicsECG Monitoring and Analysis · Cardiac electrophysiology and arrhythmias · Atrial Fibrillation Management and Outcomes
