Improving explainability of deep neural network-based electrocardiogram interpretation using variational auto-encoders

Author:

van de Leur Rutger R12,Bos Max N13,Taha Karim12,Sammani Arjan1ORCID,Yeung Ming Wai4ORCID,van Duijvenboden Stefan5,Lambiase Pier D5,Hassink Rutger J1,van der Harst Pim1ORCID,Doevendans Pieter A126,Gupta Deepak K3,van Es René1

Affiliation:

1. Department of Cardiology, University Medical Center Utrecht , Internal ref E03.511, Heidelberglaan 100, 3584 CX Utrecht , The Netherlands

2. Netherlands Heart Institute , Moreelsepark 1, 3511 EP Utrecht , The Netherlands

3. Informatics Institute, University of Amsterdam , Science Park 904, 1098 XH Amsterdam , The Netherlands

4. Department of Cardiology, University Medical Center Groningen , Hanzeplein 1. 9713 GZ Groningen , The Netherlands

5. Institute of Cardiovascular Science, University College London , 62 Huntley St, London Wc1E 6Dd , UK

6. Central Military Hospital , Lundlaan 1, 3584 Utrecht , The Netherlands

Abstract

Abstract Aims Deep neural networks (DNNs) perform excellently in interpreting electrocardiograms (ECGs), both for conventional ECG interpretation and for novel applications such as detection of reduced ejection fraction (EF). Despite these promising developments, implementation is hampered by the lack of trustworthy techniques to explain the algorithms to clinicians. Especially, currently employed heatmap-based methods have shown to be inaccurate. Methods and results We present a novel pipeline consisting of a variational auto-encoder (VAE) to learn the underlying factors of variation of the median beat ECG morphology (the FactorECG), which are subsequently used in common and interpretable prediction models. As the ECG factors can be made explainable by generating and visualizing ECGs on both the model and individual level, the pipeline provides improved explainability over heatmap-based methods. By training on a database with 1.1 million ECGs, the VAE can compress the ECG into 21 generative ECG factors, most of which are associated with physiologically valid underlying processes. Performance of the explainable pipeline was similar to ‘black box’ DNNs in conventional ECG interpretation [area under the receiver operating curve (AUROC) 0.94 vs. 0.96], detection of reduced EF (AUROC 0.90 vs. 0.91), and prediction of 1-year mortality (AUROC 0.76 vs. 0.75). Contrary to the ‘black box’ DNNs, our pipeline provided explainability on which morphological ECG changes were important for prediction. Results were confirmed in a population-based external validation dataset. Conclusions Future studies on DNNs for ECGs should employ pipelines that are explainable to facilitate clinical implementation by gaining confidence in artificial intelligence and making it possible to identify biased models.

Funder

Netherlands Organisation for Health Research and Development

Dutch Heart Foundation

Publisher

Oxford University Press (OUP)

Subject

Energy Engineering and Power Technology,Fuel Technology

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