Takafuji Masafumi, Ishida Masaki, Shiomi Takuma, Nakayama Ryohei, Fujita Miyuko, Yamaguchi Shintaro, Washiyama Yuzo, Nagata Motonori, Ichikawa Yasutaka, Inoue Katsuhiro R T, Nakamura Satoshi, Sakuma Hajime
Department of Radiology, Mie University Hospital, 2-174 Edobashi, Tsu, Mie 514-8507, Japan.
Department of Radiology, Mie University Hospital, 2-174 Edobashi, Tsu, Mie 514-8507, Japan.
J Cardiovasc Magn Reson. 2025 Jun 30:101932. doi: 10.1016/j.jocmr.2025.101932.
Whole-heart coronary magnetic resonance angiography (CMRA) enables noninvasive and accurate detection of coronary artery stenosis. Nevertheless, the visual interpretation of CMRA is constrained by the observer's experience, necessitating substantial training. The purposes of this study were to develop a deep learning (DL) algorithm using a deep convolutional neural network to accurately detect significant coronary artery stenosis in CMRA and to investigate the effectiveness of this DL algorithm as a tool for assisting in accurate detection of coronary artery stenosis.
Nine hundred and fifty-one coronary segments from 75 patients who underwent both CMRA and invasive coronary angiography (ICA) were studied. Significant stenosis was defined as a reduction in luminal diameter of >50% on quantitative ICA. A DL algorithm was proposed to classify CMRA segments into those with and without significant stenosis. A 4-fold cross-validation method was used to train and test the DL algorithm. An observer study was then conducted using 40 segments with stenosis and 40 segments without stenosis. Three radiology experts and 3 radiology trainees independently rated the likelihood of the presence of stenosis in each coronary segment with a continuous scale from 0 to 1, first without the support of the DL algorithm, then using the DL algorithm.
Significant stenosis was observed in 84 (8.8%) of the 951 coronary segments. Using the DL algorithm trained by the 4-fold cross-validation method, the area under the receiver operating characteristic curve (AUC) for the detection of segments with significant coronary artery stenosis was 0.890, with 83.3% sensitivity, 83.6% specificity and 83.6% accuracy. In the observer study, the average AUC of trainees was significantly improved using the DL algorithm (0.898) compared to that without the algorithm (0.821, p<0.001). The average AUC of experts tended to be higher with the DL algorithm (0.897), but not significantly different from that without the algorithm (0.879, p=0.082).
We developed a DL algorithm offering high diagnostic accuracy for detecting significant coronary artery stenosis on CMRA. Our proposed DL algorithm appears to be an effective tool for assisting inexperienced observers to accurately detect coronary artery stenosis in whole-heart CMRA.
全心冠状动脉磁共振血管造影(CMRA)能够无创且准确地检测冠状动脉狭窄。然而,CMRA的视觉解读受观察者经验的限制,需要大量培训。本研究的目的是使用深度卷积神经网络开发一种深度学习(DL)算法,以准确检测CMRA中的显著冠状动脉狭窄,并研究这种DL算法作为辅助准确检测冠状动脉狭窄工具的有效性。
对75例同时接受CMRA和有创冠状动脉造影(ICA)的患者的951个冠状动脉节段进行研究。显著狭窄定义为定量ICA显示管腔直径减少>50%。提出一种DL算法,将CMRA节段分类为有或无显著狭窄的节段。采用4折交叉验证方法训练和测试DL算法。然后使用40个有狭窄节段和40个无狭窄节段进行观察者研究。三名放射学专家和三名放射学实习生独立地以0至1的连续量表对每个冠状动脉节段存在狭窄的可能性进行评分,首先在没有DL算法支持的情况下进行,然后使用DL算法。
951个冠状动脉节段中有84个(8.8%)观察到显著狭窄。使用通过4折交叉验证方法训练的DL算法,检测有显著冠状动脉狭窄节段的受试者操作特征曲线(AUC)下面积为0.890,灵敏度为83.3%,特异性为83.6%,准确性为83.6%。在观察者研究中,与不使用算法相比,实习生使用DL算法的平均AUC显著提高(0.898)(0.821,p<0.001)。专家使用DL算法的平均AUC倾向于更高(0.897),但与不使用算法时相比无显著差异(0.879,p=0.082)。
我们开发了一种DL算法,对检测CMRA中的显著冠状动脉狭窄具有较高的诊断准确性。我们提出的DL算法似乎是一种有效的工具,可帮助经验不足的观察者在全心CMRA中准确检测冠状动脉狭窄。