Diagnostic performance of deep learning-based coronary computed tomography angiography in detecting coronary artery stenosis.

Yang Chen, Hong Yu, Bin Fan, Yong Wang, Zhibo Wen, Zhihui Hou, Jihong Yu, Haiping Wang, Zhe Tang, Ning Li, Peng Jiang, Yang Wang, Weihua Yin, Bin Lu
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Abstract

Purpose: To validate a fully automated, deep learning model based on coronary computed tomography angiography (CCTA) for the diagnosis of obstructive coronary artery disease (CAD) with stenosis ≥ 50%, which is commonly used as a clinical threshold for further testing and management. This model aims to improve diagnostic efficiency by automating the identification of significant coronary stenosis(≥ 50%).

Methods: This multicenter clinical trial included patients been undergone CCTA from October 13, 2022, to February 28, 2023. CCTA data from suspected coronary artery disease (CAD) patients were retrospectively analyzed using deep learning-based software for comprehensive assessment, including coronary segmentation, lumen, and stenosis determination with comparison to the reference standard of consensus by three experts. This study utilized a multi-stage deep learning framework for coronary artery segmentation and stenosis analysis from CCTA images, consisting of several key components, including the 3D Multi-resolution Cascade Convolutional Neural Network (CNN), 3D Cascade-Locally Optimized Network, and Stenosis Analysis Network. The clinical trial registry number was NCT06172985.

Results: A total of 1090 patients (mean age: 59.90 ± 11.51 years, 47.3% female) were included in this multicenter study. Artificial intelligence (AI) demonstrated excellent performance at the patient level, accurately diagnosing ≥ 50% stenosis by assessing each patient's coronary artery condition. The AI system showed high values for accuracy, sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV). The values of the above statistics were 92.8%, 95.3%, 91.4%, 85.6%, and 97.3%, respectively. Excellent agreement was seen between expert readers and deep learning-determined maximal diameter stenosis for per-patient (kappa coefficients: 0.84, 95%CI: 0.81-0.88). Regarding diagnostic efficiency, comparing the AI with expert readers, the average reading time decreased from 5.94 min to 2.01 min (p < 0.001).

Conclusion: A novel AI-based assessment of CCTA can accurately and rapidly identify patients with coronary artery stenosis ≥ 50%, aiding in effective triage within the defined study population.

基于深度学习的冠状动脉计算机断层造影在冠状动脉狭窄诊断中的应用。
目的:验证基于冠状动脉计算机断层血管造影(CCTA)的全自动深度学习模型对狭窄度≥50%的阻塞性冠状动脉疾病(CAD)的诊断价值,该阈值通常用作进一步检测和管理的临床阈值。该模型旨在通过自动识别显著冠状动脉狭窄(≥50%)来提高诊断效率。方法:该多中心临床试验纳入了2022年10月13日至2023年2月28日接受CCTA治疗的患者。回顾性分析疑似冠心病(CAD)患者的CCTA数据,采用基于深度学习的软件进行综合评估,包括冠状动脉分割、管腔和狭窄的确定,并与三位专家一致的参考标准进行比较。本研究利用多阶段深度学习框架对CCTA图像进行冠状动脉分割和狭窄分析,该框架由几个关键组件组成,包括3D多分辨率级联卷积神经网络(CNN)、3D级联局部优化网络和狭窄分析网络。临床试验注册号为NCT06172985。结果:共纳入1090例患者(平均年龄59.90±11.51岁,女性47.3%)。人工智能(AI)在患者层面表现出色,通过评估每位患者的冠状动脉状况,准确诊断出≥50%的狭窄。人工智能系统在准确性、敏感性、特异性、阳性预测值(PPV)和阴性预测值(NPV)方面均表现出较高的值。以上统计值分别为92.8%、95.3%、91.4%、85.6%、97.3%。专家读者和深度学习确定的每位患者最大直径狭窄之间的一致性非常好(kappa系数:0.84,95%CI: 0.81-0.88)。在诊断效率方面,与专家阅读者相比,人工智能的平均阅读时间从5.94分钟减少到2.01分钟(p)。结论:一种新的基于人工智能的CCTA评估可以准确、快速地识别冠状动脉狭窄≥50%的患者,有助于在确定的研究人群中进行有效的分诊。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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