Machine-learning-based prediction of fractional flow reserve after percutaneous coronary intervention.

Details

Serval ID
serval:BIB_D5749FCE06CA
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
Machine-learning-based prediction of fractional flow reserve after percutaneous coronary intervention.
Journal
Atherosclerosis
Author(s)
Hamaya R., Goto S., Hwang D., Zhang J., Yang S., Lee J.M., Hoshino M., Nam C.W., Shin E.S., Doh J.H., Chen S.L., Toth G.G., Piroth Z., Hakeem A., Uretsky B.F., Hokama Y., Tanaka N., Lim H.S., Ito T., Matsuo A., Azzalini L., Leesar M.A., Collet C., Koo B.K., De Bruyne B., Kakuta T.
ISSN
1879-1484 (Electronic)
ISSN-L
0021-9150
Publication state
Published
Issued date
10/2023
Peer-reviewed
Oui
Volume
383
Pages
117310
Language
english
Notes
Publication types: Multicenter Study ; Journal Article
Publication Status: ppublish
Abstract
Post-percutaneous coronary intervention (PCI) fractional flow reserve (FFR) reflects residual atherosclerotic burden and is associated with future events. How much post-PCI FFR can be predicted based on baseline basic information and the clinical relevance have not been investigated.
We compiled a multicenter registry of patients undergoing pre- and post-PCI FFR. Machine-learning (ML) algorithms were designed to predict post-PCI FFR levels from baseline demographics, quantitative coronary angiography, and pre-PCI FFR. FFR deviation was defined as actual minus ML-predicted post-PCI FFR levels, and its association with incident target vessel failure (TVF) was evaluated.
Median (IQR) pre- and post-PCI FFR values were 0.71 (0.61, 0.77) and 0.88 (0.84, 0.93), respectively. The Spearman correlation coefficient of the actual and predicted post-PCI FFR was 0.54 (95% CI: 0.52, 0.57). FFR deviation was non-linearly associated with incident TVF (HR [95% CI] with Q3 as reference: 1.65 [1.14, 2.39] in Q1, 1.42 [0.98, 2.08] in Q2, 0.81 [0.53, 1.26] in Q4, and 1.04 [0.69, 1.56] in Q5). A model with polynomial function of continuous FFR deviation indicated increasing TVF risk for FFR deviation ≤0 but plateau risk with FFR deviation >0.
An ML-based algorithm using baseline data moderately predicted post-PCI FFR. The deviation of post-PCI FFR from the predicted value was associated with higher vessel-oriented event.
Keywords
Humans, Coronary Artery Disease/diagnosis, Coronary Artery Disease/therapy, Fractional Flow Reserve, Myocardial, Treatment Outcome, Percutaneous Coronary Intervention, Coronary Angiography, Predictive Value of Tests, Fractional flow reserve, Machine-learning, Percutaneous coronary intervention
Pubmed
Web of science
Create date
09/10/2023 13:41
Last modification date
19/12/2023 8:14
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