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

IF 12.8 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
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引用次数: 0

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. (Exploring the Mechanism of Plaque Rupture in Acute Coronary Syndrome Using Coronary Computed Tomography Angiography and Computational Fluid Dynamics II [EMERALD-II]; NCT03591328)

Abstract Image

用于预测急性冠状动脉综合征的人工智能冠状动脉斑块和血流动力学定量分析。
背景:急性冠状动脉综合征(ACS)的病变水平风险预测需要更好的表征:急性冠状动脉综合征(ACS)的病变水平风险预测需要更好的特征描述:本研究旨在探讨人工智能冠状动脉斑块和血流动力学定量分析(AI-QCPHA)的附加价值:在 ACS 事件发生前 1 个月至 3 年间接受冠状动脉计算机断层扫描(CTA)的 ACS 患者中,冠状动脉 CTA 上的罪魁祸首病变和非罪魁祸首病变根据有创冠状动脉造影进行判定。主要终点是 ACS 罪魁祸首病变风险模型的可预测性。参考模型包括冠状动脉疾病报告和数据系统、狭窄严重程度标准化分类和高风险斑块,高风险斑块定义为具有≥2个不良斑块特征的病变。新的预测模型是参考模型加上AI-QCPHA特征,通过分层聚类和衍生队列中的信息增益进行筛选。在验证队列中对模型性能进行了评估:在 351 名患者(年龄:65.9 ± 11.7 岁)中,有 2,088 个非病灶和 363 个病灶,从冠状动脉 CTA 到 ACS 事件的中位间隔为 375 天(Q1-Q3:95-645 天),223 名患者(63.5%)出现心肌梗死。在推导队列(n = 243)中,最佳的 AI-QCPHA 特征是整个病变的分数血流储备、斑块负荷、斑块总体积、低衰减斑块体积和平均总心肌血流百分比。在验证队列(n = 108)中,添加 AI-QCPHA 特征的预测性高于参考模型(AUC:0.84 vs 0.78;P < 0.001)。在冠状动脉CTA的不同时间点上,AI-QCPHA特征的附加值是一致的:结论:与传统的冠状动脉 CTA 分析相比,AI 支持的斑块和血流动力学量化提高了 ACS 罪魁祸首病变的可预测性。(利用冠状动脉计算机断层扫描血管造影和计算流体动力学探索急性冠状动脉综合征斑块破裂的机制 II [EMERALD-II];NCT03591328)。
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来源期刊
JACC. Cardiovascular imaging
JACC. Cardiovascular imaging CARDIAC & CARDIOVASCULAR SYSTEMS-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
CiteScore
24.90
自引率
5.70%
发文量
330
审稿时长
4-8 weeks
期刊介绍: JACC: Cardiovascular Imaging, part of the prestigious Journal of the American College of Cardiology (JACC) family, offers readers a comprehensive perspective on all aspects of cardiovascular imaging. This specialist journal covers original clinical research on both non-invasive and invasive imaging techniques, including echocardiography, CT, CMR, nuclear, optical imaging, and cine-angiography. JACC. Cardiovascular imaging highlights advances in basic science and molecular imaging that are expected to significantly impact clinical practice in the next decade. This influence encompasses improvements in diagnostic performance, enhanced understanding of the pathogenetic basis of diseases, and advancements in therapy. In addition to cutting-edge research,the content of JACC: Cardiovascular Imaging emphasizes practical aspects for the practicing cardiologist, including advocacy and practice management.The journal also features state-of-the-art reviews, ensuring a well-rounded and insightful resource for professionals in the field of cardiovascular imaging.
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