Abstract
AbstractThe electrocardiogram (ECG) is a ubiquitous diagnostic modality. Convolutional neural networks (CNNs) applied towards ECG analysis require large sample sizes, and transfer learning approaches for biomedical problems may result in suboptimal performance when pre-training is done on natural images. We leveraged masked image modeling to create a vision-based transformer model, HeartBEiT, for electrocardiogram waveform analysis. We pre-trained this model on 8.5 million ECGs and then compared performance vs. standard CNN architectures for diagnosis of hypertrophic cardiomyopathy, low left ventricular ejection fraction and ST elevation myocardial infarction using differing training sample sizes and independent validation datasets. We find that HeartBEiT has significantly higher performance at lower sample sizes compared to other models. We also find that HeartBEiT improves explainability of diagnosis by highlighting biologically relevant regions of the EKG vs. standard CNNs. Domain specific pre-trained transformer models may exceed the classification performance of models trained on natural images especially in very low data regimes. The combination of the architecture and such pre-training allows for more accurate, granular explainability of model predictions.
Publisher
Springer Science and Business Media LLC
Subject
Health Information Management,Health Informatics,Computer Science Applications,Medicine (miscellaneous)
Reference30 articles.
1. Drazen, E., Mann, N., Borun, R., Laks, M. & Bersen, A. Survey of computer-assisted electrocardiography in the United States. J. Electrocardiol. 21, S98–S104 (1988).
2. Vaid, A. et al. Automated Determination of Left Ventricular Function Using Electrocardiogram Data in Patients on Maintenance Hemodialysis. Clin. J. Am. Soc. Nephrol. 17, 1017–1025 (2022).
3. Vaid, A. et al. Using deep-learning algorithms to simultaneously identify right and left ventricular dysfunction from the electrocardiogram. Cardiovasc. Imaging 15, 395–410 (2022).
4. Vaid, A. et al. Multi-center retrospective cohort study applying deep learning to electrocardiograms to identify left heart valvular dysfunction. Commun. Med. 3, 24 (2023).
5. Mincholé, A., Camps, J., Lyon, A. & Rodríguez, B. Machine learning in the electrocardiogram. J. Electrocardiol. 57, S61–S64 (2019).
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