Angiography-based coronary flow reserve: The feasibility of automatic computation by artificial intelligence.

IF 2.5 3区 医学 Q2 CARDIAC & CARDIOVASCULAR SYSTEMS
Qiuyang Zhao, Chunming Li, Miao Chu, Juan Luis Gutiérrez-Chico, Shengxian Tu
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引用次数: 4

Abstract

Background: Coronary flow reserve (CFR) has prognostic value in patients with coronary artery disease. However, its measurement is complex, and automatic methods for CFR computation are scarcely available. We developed an automatic method for CFR computation based on coronary angiography and assessed its feasibility.

Methods: Coronary angiographies from the Corelab database were annotated by experienced analysts. A convolutional neural network (CNN) model was trained for automatic segmentation of the main coronary arteries during contrast injection. The segmentation performance was evaluated using 5-fold cross-validation. Subsequently, the CNN model was implemented into a prototype software package for automatic computation of the CFR (CFRauto) and applied on a different sample of patients with angiographies performed both at rest and during maximal hyperemia, to assess the feasibility of CFRauto and its agreement with the manual computational method based on frame count (CFRmanual).

Results: Altogether, 137,126 images of 5913 angiographic runs from 2407 patients were used to develop and evaluate the CNN model. Good segmentation performance was observed. CFRauto was successfully computed in 136 out of 149 vessels (91.3%). The average analysis time to derive CFRauto was 18.1 ± 10.3 s per vessel. Moderate correlation (r = 0.51, p < 0.001) was observed between CFRauto and CFRmanual, with a mean difference of 0.12 ± 0.53.

Conclusions: Automatic computation of the CFR based on coronary angiography is feasible. This method might facilitate wider adoption of coronary physiology in the catheterization laboratory to assess microcirculatory function.

Abstract Image

Abstract Image

Abstract Image

基于血管造影的冠状动脉血流储备:人工智能自动计算的可行性。
背景:冠状动脉血流储备(CFR)在冠状动脉疾病患者中具有预测预后的价值。然而,其测量非常复杂,而且很少有自动计算CFR的方法。我们提出了一种基于冠状动脉造影的CFR自动计算方法,并对其可行性进行了评估。方法:由经验丰富的分析人员对Corelab数据库中的冠状动脉造影进行注释。训练卷积神经网络(CNN)模型,用于造影剂注射过程中冠状动脉的自动分割。采用5次交叉验证对分割性能进行评价。随后,将CNN模型实现到CFR自动计算的原型软件包(CFRauto)中,并应用于静止和最大充血时进行血管造影的不同患者样本,以评估CFRauto的可行性及其与基于帧数的手动计算方法(CFRmanual)的一致性。结果:共使用2407例患者5913组血管造影137126张图像来建立和评估CNN模型。观察到良好的分割性能。149只血管中有136只(91.3%)成功计算了CFRauto。获得CFRauto的平均分析时间为每只血管18.1±10.3 s。CFRauto与CFRmanual存在中度相关(r = 0.51, p < 0.001),平均差值为0.12±0.53。结论:基于冠状动脉造影自动计算CFR是可行的。该方法可促进导管实验室更广泛地采用冠状动脉生理学来评估微循环功能。
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来源期刊
Cardiology journal
Cardiology journal CARDIAC & CARDIOVASCULAR SYSTEMS-
CiteScore
5.10
自引率
10.30%
发文量
188
审稿时长
4-8 weeks
期刊介绍: Cardiology Journal is a scientific, peer-reviewed journal covering a broad spectrum of topics in cardiology. The journal has been published since 1994 and over the years it has become an internationally recognized journal of cardiological and medical community. Cardiology Journal is the journal for practicing cardiologists, researchers, and young trainees benefiting from broad spectrum of useful educational content.
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