Clinical Evidence
EKG AI EACVI 2026 · Congress Abstract

Development and Multicenter Validation of an Echocardiography-Supervised AI Electrocardiogram Model for Left-Chamber Abnormality Detection

205k+
ECG–Echo Pairs
44,583 patients · development
4
Validation Cohorts
Hospital · Primary Care · Screening
0.944
Peak AUROC
LVE · Primary care cohort
p<0.001
vs Rule-Based
All cohorts · DeLong's test

Left ventricular hypertrophy (LVH), left atrial enlargement (LAE), and left ventricular enlargement (LVE) are key echocardiographic markers of adverse cardiac remodelling. As universal echocardiographic screening is impractical, AI-enabled electrocardiogram (AI-ECG) models have been developed to identify patients who may benefit from targeted imaging. However, whether such models can simultaneously detect LVH, LAE, and LVE across diverse clinical settings — including lower-prevalence community populations — remains unclear.

To develop and validate an echocardiography-supervised AI-ECG model for simultaneously detecting LVH, LAE, and LVE across diverse clinical settings, and compare it with an alternative AI model trained on conventional ECG criteria.

A multicentre retrospective study used paired 12-lead ECGs and echocardiograms obtained within 30 days. A 1D squeeze-and-excitation residual network was developed using a tertiary-hospital-based public cohort of 205,916 ECG–echocardiography pairs from 44,583 patients, split 9:1 patient-disjoint into training and internal validation sets. Three external validation cohorts represented secondary care, primary care, and health screening settings. Echocardiographic labels were derived from quantitative guideline-based measurements. The comparator model used the same architecture but was trained on conventional rule-based ECG criteria. Discrimination was assessed by AUROC and compared using DeLong's test.

Internal validation
4,610 pts
Secondary hospital
14,382 pts
Primary care
1,485 pts
Health screening
4,651 pts

Across all cohorts, prevalence ranged from 5.5%–30.4% (LVH), 2.4%–31.5% (LAE), and 0.5%–15.8% (LVE). AUROC across the four cohorts:

Target Internal Secondary Hospital Primary Care Health Screening
LVH 0.783 (0.769–0.798) 0.786 (0.778–0.794) 0.892 (0.870–0.914) 0.854 (0.827–0.882)
LAE 0.782 (0.768–0.797) 0.826 (0.817–0.834) 0.912 (0.874–0.949) 0.840 (0.794–0.886)
LVE 0.832 (0.810–0.852) 0.782 (0.769–0.796) 0.944 (0.852–1.000) 0.774 (0.725–0.824)

The echocardiography-supervised model outperformed the rule-based comparator for LVH and LAE across all cohorts (all p<0.001 by DeLong's test). In pooled validation, discrimination was maintained across age, sex, comorbidity, and ECG acquisition settings.

An echocardiography-supervised AI-ECG model enabled simultaneous detection of LVH, LAE, and LVE across hospital, primary care, and health screening populations. Its superiority over a rule-based comparator suggests that echocardiographic supervision adds diagnostic value beyond conventional ECG criteria and may support scalable prioritisation for echocardiography across variable-prevalence settings.

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