계명대학교 의학도서관 Repository

Artificial Intelligence-Enabled Quantitative Coronary Plaque and Hemodynamic Analysis for Predicting Acute Coronary Syndrome

Metadata Downloads
Author(s)
Bon-Kwon KooSeokhun YangJae Wook JungJinlong ZhangKeehwan LeeDoyeon HwangKyu-Sun LeeJoon-Hyung DohChang-Wook NamTae Hyun KimEun-Seok ShinEun Ju ChunSu-Yeon ChoiHyun Kuk KimYoung Joon HongHun-Jun ParkSong-Yi KimMirza HusicJess LambrechtsenJesper M JensenBjarne L NørgaardDaniele AndreiniPal Maurovich-HorvatBela MerkelyMartin PenickaBernard de BruyneAbdul IhdayhidBrian KoGeorgios TzimasJonathon LeipsicJavier SanzMark G RabbatFarhan KatchiMoneal ShahNobuhiro TanakaRyo NakazatoTaku AsanoMitsuyasu TerashimaHiroaki TakashimaTetsuya AmanoYoshihiro SobueHitoshi MatsuoHiromasa OtakeTakashi KuboMasahiro TakahataTakashi AkasakaTeruhito KidoTeruhito MochizukiHiroyoshi YokoiTaichi OkonogiTomohiro KawasakiKoichi NakaoTomohiro SakamotoTaishi YonetsuTsunekazu KakutaYohei YamauchiJeroen J BaxLeslee J ShawPeter H StoneJagat Narula
Keimyung Author(s)
Nam, Chang Wook
Department
Dept. of Internal Medicine (내과학)
Journal Title
JACC Cardiovasc Imaging
Issued Date
2024
Volume
17
Issue
9
Keyword
acute coronary syndromeartificial intelligencecoronary CT angiographyhemodynamicsplaque characteristics
Abstract
Background:
A lesion-level risk prediction for acute coronary syndrome (ACS) needs better characterization.

Objectives:
This study sought to investigate the additive value of artificial intelligence–enabled quantitative coronary plaque and hemodynamic analysis (AI-QCPHA).

Methods:
Among ACS patients who underwent coronary computed tomography angiography (CTA) from 1 month to 3 years before the ACS event, culprit and nonculprit lesions on coronary CTA were adjudicated based on invasive coronary angiography. The primary endpoint was the predictability of the risk models for ACS culprit lesions. The reference model included the Coronary Artery Disease Reporting and Data System, a standardized classification for stenosis severity, and high-risk plaque, defined as lesions with ≥2 adverse plaque characteristics. The new prediction model was the reference model plus AI-QCPHA features, selected by hierarchical clustering and information gain in the derivation cohort. The model performance was assessed in the validation cohort.

Results:
Among 351 patients (age: 65.9 ± 11.7 years) with 2,088 nonculprit and 363 culprit lesions, the median interval from coronary CTA to ACS event was 375 days (Q1-Q3: 95-645 days), and 223 patients (63.5%) presented with myocardial infarction. In the derivation cohort (n = 243), the best AI-QCPHA features were fractional flow reserve across the lesion, plaque burden, total plaque volume, low-attenuation plaque volume, and averaged percent total myocardial blood flow. The addition of AI-QCPHA features showed higher predictability than the reference model in the validation cohort (n = 108) (AUC: 0.84 vs 0.78; P < 0.001). The additive value of AI-QCPHA features was consistent across different timepoints from coronary CTA.

Conclusions:
AI-enabled plaque and hemodynamic quantification enhanced the predictability for ACS culprit lesions over the conventional coronary CTA analysis.
Keimyung Author(s)(Kor)
남창욱
Publisher
School of Medicine (의과대학)
Type
Article
ISSN
1936-878X
Source
https://www.sciencedirect.com/science/article/pii/S1936878X2400130X
DOI
10.1016/j.jcmg.2024.03.015
URI
https://kumel.medlib.dsmc.or.kr/handle/2015.oak/45729
Appears in Collections:
1. School of Medicine (의과대학) > Dept. of Internal Medicine (내과학)
공개 및 라이선스
  • 공개 구분공개
  • 엠바고Forever
파일 목록
  • 관련 파일이 존재하지 않습니다.

Items in Repository are protected by copyright, with all rights reserved, unless otherwise indicated.