Back to Search Start Over

Influence of coronary stenosis location on diagnostic performance of machine learning-based fractional flow reserve from CT angiography.

Authors :
Renker, Matthias
Baumann, Stefan
Hamm, Christian W.
Tesche, Christian
Kim, Won-Keun
Savage, Rock H.
Coenen, Adriaan
Nieman, Koen
De Geer, Jakob
Persson, Anders
Kruk, Mariusz
Kepka, Cezary
Yang, Dong Hyun
Schoepf, U. Joseph
Source :
Journal of Cardiovascular Computed Tomography; Nov2021, Vol. 15 Issue 6, p492-498, 7p
Publication Year :
2021

Abstract

Compared with invasive fractional flow reserve (FFR), coronary CT angiography (cCTA) is limited in detecting hemodynamically relevant lesions. cCTA-based FFR (CT-FFR) is an approach to overcome this insufficiency by use of computational fluid dynamics. Applying recent innovations in computer science, a machine learning (ML) method for CT-FFR derivation was introduced and showed improved diagnostic performance compared to cCTA alone. We sought to investigate the influence of stenosis location in the coronary artery system on the performance of ML-CT-FFR in a large, multicenter cohort. Three hundred and thirty patients (75.2% male, median age 63 years) with 502 coronary artery stenoses were included in this substudy of the MACHINE (Machine Learning Based CT Angiography Derived FFR: A Multi-Center Registry) registry. Correlation of ML-CT-FFR with the invasive reference standard FFR was assessed and pooled diagnostic performance of ML-CT-FFR and cCTA was determined separately for the following stenosis locations: RCA, LAD, LCX, proximal, middle, and distal vessel segments. ML-CT-FFR correlated well with invasive FFR across the different stenosis locations. Per-lesion analysis revealed improved diagnostic accuracy of ML-CT-FFR compared with conventional cCTA for stenoses in the RCA (71.8% [95% confidence interval, 63.0%–79.5%] vs. 54.8% [45.7%–63.8%]), LAD (79.3 [73.9–84.0] vs. 59.6 [53.5–65.6]), LCX (84.1 [76.0–90.3] vs. 63.7 [54.1–72.6]), proximal (81.5 [74.6–87.1] vs. 63.8 [55.9–71.2]), middle (81.2 [75.7–85.9] vs. 59.4 [53.0–65.6]) and distal stenosis location (67.4 [57.0–76.6] vs. 51.6 [41.1–62.0]). In a multicenter cohort with high disease prevalence, ML-CT-FFR offered improved diagnostic performance over cCTA for detecting hemodynamically relevant stenoses regardless of their location. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
19345925
Volume :
15
Issue :
6
Database :
Supplemental Index
Journal :
Journal of Cardiovascular Computed Tomography
Publication Type :
Academic Journal
Accession number :
153337930
Full Text :
https://doi.org/10.1016/j.jcct.2021.05.005