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Abstract 10891: Artificial Intelligence Echocardiographic Detection of Right Ventricular Dysfunction in Patients With High-Risk Pulmonary Embolism

Authors :
Hsia, Brian C
Subramaniam, Varsha
Singh, Supreet
Lai, Ashton
Samtani, Rajeev
Bienstock, Solomon
Liao, Steve
Stern, Eric
LaRocca, Gina
Sanz, Javier
lerakis, stamatios
Croft, Lori
Stone, Gregg
Goldman, Martin E
Source :
Circulation (Ovid); November 2022, Vol. 146 Issue: Supplement 1 pA10891-A10891, 1p
Publication Year :
2022

Abstract

Introduction:Patients (pts) with pulmonary embolism (PE) and right ventricular (RV) dysfunction have a worse prognosis. We previously validated a real-time artificial intelligence software (AI, LVivoRV®) which calculates RV fractional area changes (FAC), free wall strain (FWS), and tricuspid annular planar systolic excursion (TAPSE) from a single unedited, non-ultrasound agent-enhanced apical 4-chamber (A4C) TTE view.Hypothesis:AI-calculated TTE parameters of RV function will accurately identify pts with intermediate-high and high-risk PE that would otherwise have been identified by comprehensive physician assessment of all TTE parameters, physical exam and biomarkers (“physician assessment”).Methods:We retrospectively identified pts in whom both a TTE (60.7% with ultrasound contrast) and chest CTA were performed for PE evaluation (median 1 day between studies). Based on comprehensive physician assessments, pts were stratified by the 2019 ESC guidelines from low-risk to high-risk for PE mortality. The accuracy of AI-TTE thresholds for RV dysfunction (previously defined) to identify physician-assessed high-risk PE was examined.Results:Of the 107 pts, 66 (61.7%) had confirmed PE on CTA. By physician assessment, 28 of these 66 cases were classified as intermediate-high/high-risk PE. Across all AI-TTE parameters, the sensitivities and negative predictive values for intermediate-high/high-risk PE (n=28) ranged from 79-86% and 83-87% respectively (Table). In contrast, the specificities and positive predictive values ranged from 30-56% and 29-38%.Conclusions:A simple to use, fully automated, AI-based TTE assessment of RV dysfunction at the bedside identified ~85% of all cases that would otherwise have been identified as intermediate-high and high-risk PE by comprehensive physician assessment (although the false positive rate was high). Further studies are warranted to examine how best to integrate this AI into clinical care pathways.

Details

Language :
English
ISSN :
00097322 and 15244539
Volume :
146
Issue :
Supplement 1
Database :
Supplemental Index
Journal :
Circulation (Ovid)
Publication Type :
Periodical
Accession number :
ejs61503615
Full Text :
https://doi.org/10.1161/circ.146.suppl_1.10891