Department of Cardiovascular Medicine, Chiba University Graduate School of Medicine, 1-8-1 Inohana, Chuo-ku, Chiba, Japan.
Graduate School of Science and Engineering, Chiba University, Chiba, Japan.
Heart Vessels. 2023 Nov;38(11):1318-1328. doi: 10.1007/s00380-023-02288-z. Epub 2023 Aug 8.
Fractional flow reserve derived from coronary CT (FFR-CT) is a noninvasive physiological technique that has shown a good correlation with invasive FFR. However, the use of FFR-CT is restricted by strict application standards, and the diagnostic accuracy of FFR-CT analysis may potentially be decreased by severely calcified coronary arteries because of blooming and beam hardening artifacts. The aim of this study was to evaluate the utility of deep learning (DL)-based coronary computed tomography (CT) data analysis in predicting invasive fractional flow reserve (FFR), especially in cases with severely calcified coronary arteries. We analyzed 184 consecutive cases (241 coronary arteries) which underwent coronary CT and invasive coronary angiography, including invasive FFR, within a three-month period. Mean coronary artery calcium scores were 963 ± 1226. We evaluated and compared the vessel-based diagnostic accuracy of our proposed DL model and a visual assessment to evaluate functionally significant coronary artery stenosis (invasive FFR < 0.80). A deep neural network was trained with consecutive short axial images of coronary arteries on coronary CT. Ninety-one coronary arteries of 89 cases (48%) had FFR-positive functionally significant stenosis. On receiver operating characteristics (ROC) analysis to predict FFR-positive stenosis using the trained DL model, average area under the curve (AUC) of the ROC curve was 0.756, which was superior to the AUC of visual assessment of significant (≥ 70%) coronary artery stenosis on CT (0.574, P = 0.011). The sensitivity, specificity, positive and negative predictive value (PPV and NPV), and accuracy of the DL model and visual assessment for detecting FFR-positive stenosis were 82 and 36%, 68 and 78%, 59 and 48%, 87 and 69%, and 73 and 63%, respectively. Sensitivity and NPV for the prediction of FFR-positive stenosis were significantly higher with our DL model than visual assessment (P = 0.0004, and P = 0.024). DL-based coronary CT data analysis has a higher diagnostic accuracy for functionally significant coronary artery stenosis than visual assessment.
从冠状动脉 CT(FFR-CT)得出的分流量储备是一种非侵入性的生理技术,与侵入性 FFR 有很好的相关性。然而,FFR-CT 的使用受到严格的应用标准的限制,由于blooming 和 beam hardening 伪影,严重钙化的冠状动脉可能会降低 FFR-CT 分析的诊断准确性。本研究的目的是评估基于深度学习(DL)的冠状动脉计算机断层扫描(CT)数据分析在预测侵入性分流量储备(FFR)方面的效用,特别是在严重钙化的冠状动脉情况下。我们分析了在三个月内接受冠状动脉 CT 和侵入性冠状动脉造影检查,包括侵入性 FFR 的 184 例连续病例(241 支冠状动脉)。平均冠状动脉钙分数为 963 ± 1226。我们评估并比较了我们提出的 DL 模型和一种视觉评估的血管基础诊断准确性,以评估有功能意义的冠状动脉狭窄(侵入性 FFR < 0.80)。一个深度神经网络使用冠状动脉 CT 上的连续短轴冠状动脉图像进行训练。89 例中有 91 支冠状动脉(48%)存在 FFR 阳性的有功能意义的狭窄。在使用训练好的 DL 模型预测 FFR 阳性狭窄的受试者工作特征(ROC)分析中,ROC 曲线的平均曲线下面积(AUC)为 0.756,优于 CT 上有意义(≥70%)冠状动脉狭窄的视觉评估的 AUC(0.574,P = 0.011)。DL 模型和视觉评估检测 FFR 阳性狭窄的灵敏度、特异性、阳性和阴性预测值(PPV 和 NPV)以及准确性分别为 82%和 36%、68%和 78%、59%和 48%、87%和 69%和 73%和 63%。与视觉评估相比,DL 模型对 FFR 阳性狭窄的预测具有更高的灵敏度和 NPV(P = 0.0004,P = 0.024)。基于冠状动脉 CT 数据的 DL 分析对有功能意义的冠状动脉狭窄的诊断准确性高于视觉评估。