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A Sau, A H Ribeiro, K A Mcgurk, L Pastika, J Y Chen, M Ardissino, E Sabino, L Giatti, S M Barreto, D Mandic, N S Peters, M Malik, J Ware, A L P Ribeiro, F S Ng, Neural network-derived electrocardiographic features have prognostic significance and important phenotypic and genotypic associations, European Heart Journal, Volume 44, Issue Supplement_2, November 2023, ehad655.2921, https://doi.org/10.1093/eurheartj/ehad655.2921
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Abstract
Subtle, prognostically-meaningful ECG features may not be apparent to physicians. In the course of supervised machine learning (ML) training, many thousands of ECG features are identified. These are not limited to conventional ECG parameters and morphology.
To investigate novel neural network (NN)-derived ECG features, that may have clinical, phenotypic and genotypic associations and prognostic significance.
We extracted 5120 NN-derived ECG features from an AI-ECG model trained for six simple diagnoses and applied unsupervised machine learning to identify three phenogroups. The derivation set, the Clinical Outcomes in Digital Electrocardiography (CODE) cohort (n = 1,558,421), is a database of ECGs recorded in primary care in Brazil. There were four external validation cohorts. A cohort of British civil servants (WH II, n = 5,066). A longitudinal study of volunteers in the UK (UK Biobank, n = 42,386). A longitudinal cohort of Brazilian public servants (ELSA-Brasil, n = 13,739). Lastly, a cohort of patients with chronic Chagas cardiomyopathy (SaMi-Trop, n = 1,631) .
In the derivation cohort (CODE), the three phenogroups had significantly different mortality profiles (Figure 1). After adjusting for known covariates, phenogroup B had a 1.2-fold increase in long-term mortality compared to phenogroup A (HR 1.20, 95% CI 1.17-1.23, p < 0.0001). We externally validated our findings in four diverse cohorts. Phenogroup C was poorly represented in the volunteer cohorts and therefore was excluded from those analyses. We found phenogroup B had a significantly greater risk of mortality in all cohorts (Figure 1). We performed a phenome-wide association study (PheWAS) in the UK Biobank. We found ECG phenogroup significantly associated with cardiac and non-cardiac phenotypes, including cardiac chamber volumes and cardiac output (Figure 2A). A single-trait genome-wide association study (GWAS) was conducted. The GWAS yielded four loci (Figure 2B). SCN10A, SCN5A and CAV1 have well described roles in cardiac conduction and arrhythmia. ARHGAP24 has been previously associated with ECG parameters, however, our analysis has identified for the first time ARHGAP24 as a gene associated with a prognostically significant phenogroup. Mendelian randomisation demonstrated the higher risk ECG phenogroup was causally associated with higher odds of atrioventricular (AV) block but lower odds of atrial fibrillation and ischaemic heart disease.
Author notes
Funding Acknowledgements: Type of funding sources: Public grant(s) – National budget only. Main funding source(s): British Heart Foundation
- cardiac arrhythmia
- atrial fibrillation
- phenotype
- electrocardiogram
- myocardial ischemia
- cardiac output
- cardiac chamber
- brazil
- chagas cardiomyopathy
- genes
- genotype
- primary health care
- heart
- mortality
- patient prognosis
- treatment outcome
- cardiac conduction
- scn5a gene
- genome-wide association study
- scn10a gene
- biobanks
- supervised machine learning
- unsupervised machine learning
- mendelian randomization analysis