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Coronary CTA With AI-QCT Interpretation

Authors :
Isabella Lipkin
Anha Telluri
Yumin Kim
Alfateh Sidahmed
Joseph M. Krepp
Brian G. Choi
Rebecca Jonas
Hugo Marques
Hyuk-Jae Chang
Jung Hyun Choi
Joon-Hyung Doh
Ae-Young Her
Bon-Kwon Koo
Chang-Wook Nam
Hyung-Bok Park
Sang-Hoon Shin
Jason Cole
Alessia Gimelli
Muhammad Akram Khan
Bin Lu
Yang Gao
Faisal Nabi
Ryo Nakazato
U. Joseph Schoepf
Roel S. Driessen
Michiel J. Bom
James J. Jang
Michael Ridner
Chris Rowan
Erick Avelar
Philippe Généreux
Paul Knaapen
Guus A. de Waard
Gianluca Pontone
Daniele Andreini
Mouaz H. Al-Mallah
Tami R. Crabtree
James P. Earls
Andrew D. Choi
James K. Min
Cardiology
ACS - Atherosclerosis & ischemic syndromes
ACS - Heart failure & arrhythmias
Source :
AJR. American journal of roentgenology, 219(3), 407-419, Lipkin, I, Telluri, A, Kim, Y, Sidahmed, A, Krepp, J M, Choi, B G, Jonas, R, Marques, H, Chang, H-J, Choi, J H, Doh, J-H, Her, A-Y, Koo, B-K, Nam, C-W, Park, H-B, Shin, S-H, Cole, J, Gimelli, A, Khan, M A, Lu, B, Gao, Y, Nabi, F, Nakazato, R, Schoepf, U J, Driessen, R S, Bom, M J, Jang, J J, Ridner, M, Rowan, C, Avelar, E, Généreux, P, Knaapen, P, de Waard, G A, Pontone, G, Andreini, D, Al-Mallah, M H, Crabtree, T R, Earls, J P, Choi, A D & Min, J K 2022, ' Coronary CTA With AI-QCT Interpretation : Comparison With Myocardial Perfusion Imaging for Detection of Obstructive Stenosis Using Invasive Angiography as Reference Standard ', AJR. American journal of roentgenology, vol. 219, no. 3, pp. 407-419 . https://doi.org/10.2214/AJR.21.27289
Publication Year :
2022

Abstract

BACKGROUND. Deep learning frameworks have been applied to interpretation of coronary CTA performed for coronary artery disease (CAD) evaluation. OBJECTIVE. The purpose of our study was to compare the diagnostic performance of myocardial perfusion imaging (MPI) and coronary CTA with artificial intelligence quantitative CT (AI-QCT) interpretation for detection of obstructive CAD on invasive angiography and to assess the downstream impact of including coronary CTA with AI-QCT in diagnostic algorithms. METHODS. This study entailed a retrospective post hoc analysis of the derivation cohort of the prospective 23-center Computed Tomographic Evaluation of Atherosclerotic Determinants of Myocardial Ischemia (CREDENCE) trial. The study included 301 patients (88 women and 213 men; mean age, 64.4 ± 10.2 [SD] years) recruited from May 2014 to May 2017 with stable symptoms of myocardial ischemia referred for nonemergent invasive angiography. Patients underwent coronary CTA and MPI before angiography with quantitative coronary angiography (QCA) measurements and fractional flow reserve (FFR). CTA examinations were analyzed using an FDA-cleared cloud-based software platform that performs AI-QCT for stenosis determination. Diagnostic performance was evaluated. Diagnostic algorithms were compared. RESULTS. Among 102 patients with no ischemia on MPI, AI-QCT identified obstructive (≥ 50%) stenosis in 54% of patients, including severe (≥ 70%) stenosis in 20%. Among 199 patients with ischemia on MPI, AI-QCT identified nonobstructive (1-49%) stenosis in 23%. AI-QCT had significantly higher AUC (all p < .001) than MPI for predicting ≥ 50% stenosis by QCA (0.88 vs 0.66), ≥ 70% stenosis by QCA (0.92 vs 0.81), and FFR < 0.80 (0.90 vs 0.71). An AI-QCT result of ≥ 50% stenosis and ischemia on stress MPI had sensitivity of 95% versus 74% and specificity of 63% versus 43% for detecting ≥ 50% stenosis by QCA measurement. Compared with performing MPI in all patients and those showing ischemia undergoing invasive angiography, a scenario of performing coronary CTA with AIQCT in all patients and those showing ≥ 70% stenosis undergoing invasive angiography would reduce invasive angiography utilization by 39%; a scenario of performing MPI in all patients and those showing ischemia undergoing coronary CTA with AI-QCT and those with ≥ 70% stenosis on AI-QCT undergoing invasive angiography would reduce invasive angiography utilization by 49%. CONCLUSION. Coronary CTA with AI-QCT had higher diagnostic performance than MPI for detecting obstructive CAD. CLINICAL IMPACT. A diagnostic algorithm incorporating AI-QCT could substantially reduce unnecessary downstream invasive testing and costs. TRIAL REGISTRATION. Clinicaltrials.gov NCT02173275.

Details

Language :
English
ISSN :
15463141
Volume :
219
Issue :
3
Database :
OpenAIRE
Journal :
AJR. American journal of roentgenology
Accession number :
edsair.doi.dedup.....1806a3eae9b5f37acf728ba919993316
Full Text :
https://doi.org/10.2214/ajr.21.27289