Coronary artery disease leading up to stenosis, the partial or total blocking of coronary arteries, is a severe condition that affects millions of patients each year. Automated identification and classification of stenosis severity from minimally invasive procedures would be of great clinical value, but existing methods do not match the accuracy of experienced cardiologists, due to the complexity of the task. Although a number of computational approaches for quantitative assessment of stenosis have been proposed to date, the performance of these methods is still far from the required levels for clinical applications. In this paper, we propose a two-step deep-learning framework to partially automate the detection of stenosis from X-ray coronary angiography images. In the two steps, we used two distinct convolutional neural network architectures, one to automatically identify and classify the angle of view, and another to determine the bounding boxes of the regions of interest in frames where stenosis is visible. Transfer learning and data augmentation techniques were used to boost the performance of the system in both tasks. We achieved a 0.97 accuracy on the task of classifying the Left/Right Coronary Artery (LCA/RCA) angle view and 0.68/0.73 recall on the determination of the regions of interest, for LCA and RCA, respectively. These results compare favorably with previous results obtained using related approaches, and open the way to a fully automated method for the identification of stenosis severity from X-ray angiographies.
翻译:虽然到目前为止已经提出了一系列计算方法,用于对心肺衰竭进行定量评估,但这些方法的性能仍远远低于临床应用所需的水平。在本文件中,我们提出了一个两步深层次的学习框架,将从X射线冠心血管血管成像图像中检测神经衰竭的部分自动化化。在两个步骤中,我们使用两种不同的进化神经网络结构,一个是自动识别和分类观点角度,另一个是确定感知度可见的框架中感兴趣的区域的界限。采用了转移学习和数据增强技术来提高系统在这两项任务中的性能。我们从X射线冠心血管成像图像中检测神经衰竭症的部分自动化化。在两个步骤中,我们采用了两种不同的进化神经神经神经网络结构,一个是自动识别和分类观点,一个是用X光线心神经神经神经系统(LA/RC)的完整分析方法,一个是用LAMAA/CAA/CR)的自动定性方法,一个是用X光谱解剖析法和CLAAA/CR的相关结果。