Deep neural networks reveal novel sex-specific electrocardiographic features relevant for mortality risk

Author:

Siegersma Klaske R12ORCID,van de Leur Rutger R34ORCID,Onland-Moret N Charlotte5ORCID,Leon David A678ORCID,Diez-Benavente Ernest2ORCID,Rozendaal Liesbeth9,Bots Michiel L5ORCID,Coronel Ruben10ORCID,Appelman Yolande1ORCID,Hofstra Leonard111,van der Harst Pim3ORCID,Doevendans Pieter A34ORCID,Hassink Rutger J3ORCID,den Ruijter Hester M2ORCID,van Es René3ORCID

Affiliation:

1. Department of Cardiology, Amsterdam University Medical Centres, VU University Amsterdam , Amsterdam , The Netherlands

2. Laboratory of Experimental Cardiology, University Medical Center Utrecht, Utrecht University , Utrecht , The Netherlands

3. Department of Cardiology, University Medical Center Utrecht , Utrecht , The Netherlands

4. Netherlands Heart Institute , Utrecht , The Netherlands

5. Julius Center for Health Sciences and Primary Care, University Medical Center Utrecht, Utrecht University , Utrecht , The Netherlands

6. Faculty of Epidemiology and Population Health, London School of Hygiene & Tropical Medicine , London WC1E 7HT , UK

7. International Laboratory for Population and Health, National Research University, Higher School of Economics , Moscow 101000 , Russian Federation

8. Department of Community Medicine, UiT The Arctic University of Norway , Tromsø , Norway

9. Julius Gezondheidscentrum Parkwijk , Utrecht , The Netherlands

10. Heart Center, Department of Experimental Cardiology, AMC, Amsterdam University Medical Centres , Amsterdam , The Netherlands

11. Cardiology Centers of the Netherlands , Amsterdam , The Netherlands

Abstract

Abstract Aims Incorporation of sex in study design can lead to discoveries in medical research. Deep neural networks (DNNs) accurately predict sex based on the electrocardiogram (ECG) and we hypothesized that misclassification of sex is an important predictor for mortality. Therefore, we first developed and validated a DNN that classified sex based on the ECG and investigated the outcome. Second, we studied ECG drivers of DNN-classified sex and mortality. Methods and results A DNN was trained to classify sex based on 131 673 normal ECGs. The algorithm was validated on internal (68 500 ECGs) and external data sets (3303 and 4457 ECGs). The survival of sex (mis)classified groups was investigated using time-to-event analysis and sex-stratified mediation analysis of ECG features. The DNN successfully distinguished female from male ECGs {internal validation: area under the curve (AUC) 0.96 [95% confidence interval (CI): 0.96, 0.97]; external validations: AUC 0.89 (95% CI: 0.88, 0.90), 0.94 (95% CI: 0.93, 0.94)}. Sex-misclassified individuals (11%) had a 1.4 times higher mortality risk compared with correctly classified peers. The ventricular rate was the strongest mediating ECG variable (41%, 95% CI: 31%, 56%) in males, while the maximum amplitude of the ST segment was strongest in females (18%, 95% CI: 11%, 39%). Short QRS duration was associated with higher mortality risk. Conclusion Deep neural networks accurately classify sex based on ECGs. While the proportion of ECG-based sex misclassifications is low, it is an interesting biomarker. Investigation of the causal pathway between misclassification and mortality uncovered new ECG features that might be associated with mortality. Increased emphasis on sex as a biological variable in artificial intelligence is warranted.

Funder

Netherlands Organisation for Health Research and Development

Dutch Heart Foundation

Dutch Cardiovascular Alliance

Cardiovascular Disease in Russia

Wellcome Trust Strategic Award

UiT The Arctic University of Norway

Norwegian Institute of Public Health

Norwegian Ministry of Health and Social Affairs

National Research University Higher School of Economics

Ministry of Health, Welfare, and Sport

University of Utrecht

Province of Utrecht

Dutch Organisation of Care Research

University Medical Center of Utrecht

Dutch College of Healthcare Insurance Companies

Publisher

Oxford University Press (OUP)

Subject

Energy Engineering and Power Technology,Fuel Technology

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