Circulation, Ahead of Print. Background: Delayed or missed diagnosis of congenital heart disease (CHD) contributes to excess pediatric mortality worldwide.
Echocardiography (echo) is central to diagnosing and triaging CHD, yet expert interpretation remains a scarce and maldistributed global resource. Artificial intelligence (AI) offers the potential to democratize diagnostics and extend expert-level interpretation beyond large academic centers, but its application in CHD remains underexplored.Methods: We developed EchoFocus-CHD, an AI-enabled model for automated detection of 12 critical and 8 non-critical CHD lesions, individually and as composites.
The composite critical CHD outcome was the primary endpoint. The model expands on a multi-task, view-agnostic architecture (PanEcho) with a transformer encoder to improve focus on relevant echo views.
The model was internally trained (80%) and tested (20%) on the first echo per patient from Boston Children’s Hospital (BCH), with further evaluation on a referral cohort of echo studies performed at external US and international centers.Results: The internal and referral cohorts included 3.4 million videos from 54,727 echos (median age at echo 7.1 [IQR, 0.2-15.0] years; 5.8% critical CHD; 23.6% non-critical CHD) and 167,484 videos from 3,356 echos (median age at echo 2.5 [IQR, 0.3-9.4] years; 29.4% critical CHD; 45.6% non-critical CHD), respectively. EchoFocus-CHD showed excellent internal ability to detect the composite critical CHD outcome (AUROC 0.94, LR+ 7.50, LR- 0.14) and individual critical lesions (AUROC 0.83-1.00), as well as composite non-critical CHD (AUROC 0.90, LR+ 5.00, LR- 0.23) and individual non-critical lesions (AUROC 0.70-0.96).
Performance declined during evaluation on the referral cohort to detect critical CHD (AUROC 0.77), coinciding with greater expert disagreement on referral cases (k=0.72 versus 0.82 for internal cases). Explainability analyses demonstrated that the model prioritized the same clinically relevant views (parasternal long-axis, parasternal short-axis, subxiphoid long-axis, apical) across internal and referral cohorts, while UMAP analysis revealed a domain shift between cohorts.
Retraining on all available US patients attenuated domain shift effects, improving international critical CHD detection (AUROC 0.87) and calibration.Conclusions: EchoFocus-CHD shows promise for automated CHD detection to advance equitable global cardiovascular care, and highlights the need to address domain shift and establish external validation prior to real-world deployment.
Circulation published a clinical update in Research Highlights on 28 Mar 2026. The item focuses on Automated Echocardiographic Detection of Congenital Heart Disease Using Artificial Intelligence. Open the detail page to review the full original feed content.