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

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Abstract
Background and aims: 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.

Methods: 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.

Results: 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.

Conclusions: 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.
Issued Date
2023
Rikuta Hamaya
Shinichi Goto
Doyeon Hwang
Jinlong Zhang
Seokhun Yang
Joo Myung Lee
Masahiro Hoshino
Chang-Wook Nam
Eun-Seok Shin
Joon-Hyung Doh
Shao-Liang Chen
Gabor G Toth
Zsolt Piroth
Abdul Hakeem
Barry F Uretsky
Yohei Hokama
Nobuhiro Tanaka
Hong-Seok Lim
Tsuyoshi Ito
Akiko Matsuo
Lorenzo Azzalini
Massoud A Leesar
Carlos Collet
Bon-Kwon Koo
Bernard De Bruyne
Tsunekazu Kakuta
Type
Article
Keyword
Fractional flow reserveMachine-learningPercutaneous coronary intervention
DOI
10.1016/j.atherosclerosis.2023.117310
URI
https://oak.ulsan.ac.kr/handle/2021.oak/17042
Publisher
ATHEROSCLEROSIS
Language
영어
ISSN
0021-9150
Citation Volume
383
Citation Start Page
117310
Appears in Collections:
Medicine > Nursing
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