Generalization challenges in electrocardiogram deep learning: insights from dataset characteristics and attention mechanism.
Zhaojing HuangSarisha MacLachlanLeping YuLuis Fernando Herbozo ContrerasNhan Duy TruongAntonio Luiz P RibeiroOmid KaveheiPublished in: Future cardiology (2024)
Aim: Deep learning's widespread use prompts heightened scrutiny, particularly in the biomedical fields, with a specific focus on model generalizability. This study delves into the influence of training data characteristics on the generalization performance of models, specifically in cardiac abnormality detection. Materials & methods: Leveraging diverse electrocardiogram datasets, models are trained on subsets with varying characteristics and subsequently compared for performance. Additionally, the introduction of the attention mechanism aims to improve generalizability. Results: Experiments reveal that using a balanced dataset, just 1% of a large dataset, leads to equal performance in generalization tasks, notably in detecting cardiology abnormalities. Conclusion: This balanced training data notably enhances model generalizability, while the integration of the attention mechanism further refines the model's ability to generalize effectively.