Electrocardiogram-based deep learning improves outcome prediction following cardiac resynchronization therapy

Publication date

2023-02-21

Authors

Wouters, Philippe C
van de Leur, Rutger
Vessies, Melle B.
van Stipdonk, Antonius M.W.
Ghossein, Mohammed A.
Hassink, Rutger J.ISNI 0000000393555672
Doevendans, PieterISNI 0000000110574516
van der Harst, PimORCID 0000-0002-2713-686X
Maass, Alexander H.
Prinzen, Frits W.

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Supervisors

Document Type

Article

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License

cc_by_nc

Abstract

Aims This study aims to identify and visualize electrocardiogram (ECG) features using an explainable deep learning–based algorithm to predict cardiac resynchronization therapy (CRT) outcome. Its performance is compared with current guideline ECG criteria and QRSAREA. Methods A deep learning algorithm, trained on 1.1 million ECGs from 251 473 patients, was used to compress the median beat ECG, and results thereby summarizing most ECG features into only 21 explainable factors (FactorECG). Pre-implantation ECGs of 1306 CRT patients from three academic centres were converted into their respective FactorECG. FactorECG predicted the combined clinical endpoint of death, left ventricular assist device, or heart transplantation [c-statistic 0.69, 95% confidence interval (CI) 0.66–0.72], significantly outperforming QRSAREA and guideline ECG criteria [c-statistic 0.61 (95% CI 0.58–0.64) and 0.57 (95% CI 0.54–0.60), P< 0.001 for both]. The addition of 13 clinical variables was of limited added value for the FactorECG model when compared with QRSAREA (Δ c-statistic 0.03 vs. 0.10). FactorECG identified inferolateral T-wave inversion, smaller right precordial S- and T-wave amplitude, ventricular rate, and increased PR interval and P-wave duration to be important predictors for poor outcome. An online visualization tool was created to provide interactive visualizations (https://crt.ecgx.ai). Conclusion Requiring only a standard 12-lead ECG, FactorECG held superior discriminative ability for the prediction of clinical outcome when compared with guideline criteria and QRSAREA, without requiring additional clinical variables. End-to-end automated visualization of ECG features allows for an explainable algorithm, which may facilitate rapid uptake of this personalized decision-making tool in CRT.

Keywords

Cardiac resynchronization therapy, Deep learning, Electrocardiogram, Explainable, Heart failure, QRS area, Cardiology and Cardiovascular Medicine, Journal Article

Citation

Wouters, P C, van de Leur, R R, Vessies, M B, van Stipdonk, A M W, Ghossein, M A, Hassink, R J, Doevendans, P A, van der Harst, P, Maass, A H, Prinzen, F W, Vernooy, K, Meine, M & van Es, R 2023, 'Electrocardiogram-based deep learning improves outcome prediction following cardiac resynchronization therapy', European heart journal, vol. 44, no. 8, pp. 680-692. https://doi.org/10.1093/eurheartj/ehac617