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Identification of high-risk imaging features in hypertrophic cardiomyopathy using electrocardiography: A deep-learning approach

Publication Type : Journal Article

Publisher : Elsevier

Source : Heart Rhythm

Url : https://www.sciencedirect.com/science/article/abs/pii/S1547527124000857

Campus : Kochi

School : School of Medicine

Year : 2024

Abstract :

Background

Patients with hypertrophic cardiomyopathy (HCM) are at risk of sudden death, and individuals with ≥1 major risk markers are considered for primary prevention implantable cardioverter-defibrillators. Guidelines recommend cardiac magnetic resonance (CMR) imaging to identify high-risk imaging features. However, CMR imaging is resource intensive and is not widely accessible worldwide.

Objective

The purpose of this study was to develop electrocardiogram (ECG) deep-learning (DL) models for the identification of patients with HCM and high-risk imaging features.

Methods

Patients with HCM evaluated at Tufts Medical Center (N = 1930; Boston, MA) were used to develop ECG-DL models for the prediction of high-risk imaging features: systolic dysfunction, massive hypertrophy (≥30 mm), apical aneurysm, and extensive late gadolinium enhancement. ECG-DL models were externally validated in a cohort of patients with HCM from the Amrita Hospital HCM Center (N = 233; Kochi, India).

Results

ECG-DL models reliably identified high-risk features (systolic dysfunction, massive hypertrophy, apical aneurysm, and extensive late gadolinium enhancement) during holdout testing (c-statistic 0.72, 0.83, 0.93, and 0.76) and external validation (c-statistic 0.71, 0.76, 0.91, and 0.68). A hypothetical screening strategy using echocardiography combined with ECG-DL–guided selective CMR use demonstrated a sensitivity of 97% for identifying patients with high-risk features while reducing the number of recommended CMRs by 61%. The negative predictive value with this screening strategy for the absence of high-risk features in patients without ECG-DL recommendation for CMR was 99.5%.

Conclusion

In HCM, novel ECG-DL models reliably identified patients with high-risk imaging features while offering the potential to reduce CMR testing requirements in underresourced areas.

Cite this Research Publication : Richard T Carrick, Hisham Ahamed, Eric Sung, Martin S Maron, Christopher Madias, Vennela Avula, Rachael Studley, Chen Bao, Nadia Bokhari, Erick Quintana, Ramiah Rajesh-Kannan, Barry J Maron, Katherine C Wu, Ethan J Rowin, Identification of high-risk imaging features in hypertrophic cardiomyopathy using electrocardiography: A deep-learning approach, Heart Rhythm,2024

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