Evaluation of the DAMSUN-HF trial: the role of an artificial intelligence stethoscope in detecting reduced ejection fraction in patients living in a low-resource region

Dmitry Abramov*, Baljash S. Cheema, Kalliopi Keramida, Kaveh Hosseini, Marat Fudim, Abdul Mannan Khan Minhas

*Corresponding author af dette arbejde

Abstract

Evaluation of ejection fraction (EF) is paramount for patients with symptoms of heart failure. While transthoracic echocardiography (TTE) is the most common way to evaluate EF, recent advances in artificial intelligence (AI) have opened the door for alternative methods to screen for reduced EF with smaller and more portable technology. The DAMSUN-HF study evaluated the accuracy of an AI-based stethoscope for detecting reduced EF (≤40%) in patients with symptoms of heart failure in a region with geographic and economic barriers to obtaining timely TTE. This mini-review examines the DAMSUN-HF study and highlights the potential clinical implications of the study findings.

OriginalsprogEngelsk
Artikelnummer17
TidsskriftHeart Failure Reviews
Vol/bind31
Udgave nummer1
ISSN1382-4147
DOI
StatusUdgivet - dec. 2026

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