Deep Learning-Enabled Assessment of Right Ventricular Function Improves Prognostication After Transcatheter Edge-to-Edge Repair for Mitral Regurgitation

Mark Lachmann, Vera Fortmeier, Lukas Stolz, Márton Tokodi, Attila Kovács, Amelie Hesse, Antonia Leipert, Elena Rippen, Héctor Alfonso Alvarez Covarrubias, Moritz Von Scheidt, Jule Tervooren, Ferdinand Roski, Michelle Fett, Muhammed Gerçek, Tibor Schuster, Gerhard Harmsen, Shinsuke Yuasa, N. Patrick Mayr, Adnan Kastrati, Heribert SchunkertMichael Joner, Erion Xhepa, Karl Ludwig Laugwitz, Jörg Hausleiter, Volker Rudolph, Teresa Trenkwalder

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Abstract

BACKGROUND: Right ventricular (RV) function has a well-established prognostic role in patients with severe mitral regurgitation (MR) undergoing transcatheter edge-to-edge repair (TEER) and is typically assessed using echocardiography-measured tricuspid annular plane systolic excursion. Recently, a deep learning model has been proposed that accurately predicts RV ejection fraction (RVEF) from 2-dimensional echocardiographic videos, with similar diagnostic accuracy as 3-dimensional imaging. This study aimed to evaluate the prognostic value of the deep learning-predicted RVEF values in patients with severe MR undergoing TEER. METHODS: This multicenter registry study analyzed the associations between the predicted RVEF values and 1-year mortality in patients with severe MR undergoing TEER. To predict RVEF, 2-dimensional apical 4-chamber view videos from preprocedural transthoracic echocardiographic studies were exported and processed by a rigorously validated deep learning model. RESULTS: Good-quality 2-dimensional apical 4-chamber view videos could be retrieved for 1154 patients undergoing TEER between 2017 and 2023. Survival at 1 year after TEER was 84.7%. The predicted RVEF values ranged from 26.6% to 64.0% and correlated only modestly with tricuspid annular plane systolic excursion (Pearson R=0.33; P<0.001). Importantly, predicted RVEF was superior to tricuspid annular plane systolic excursion levels in predicting 1-year mortality after TEER (area under the curve, 0.687 versus 0.625; P=0.029). Furthermore, Kaplan-Meier survival analysis revealed that patients with reduced RV function (n=723; defined as a predicted RVEF of <45%) had significantly worse 1-year survival rates than patients with preserved RV function (n=431; defined as a predicted RVEF of ≥45%; 80.3% [95% CI, 77.4%-83.3%] versus 92.1% [95% CI, 89.5%-94.7%]; hazard ratio for 1-year mortality, 2.67 [95% CI, 1.82-3.90]; P<0.001). CONCLUSIONS: Deep learning-enabled assessment of RV function using standard 2-dimensional echocardiographic videos can refine the prognostication of patients with severe MR undergoing TEER. Thus, it can be used to screen for patients with RV dysfunction who might benefit from intensified follow-up care.

Original languageEnglish
Article numbere017005
JournalCirculation: Cardiovascular Imaging
Volume18
Issue number1
DOIs
StatePublished - 1 Jan 2025

Keywords

  • deep learning
  • echocardiography
  • mitral valve
  • prognosis
  • survival analysis

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