Wu Hui, Zhao Jing, Li Jiehui, Zeng Yan, Wu Weiwei, Zhou Zhuhuang, Wu Shuicai, Xu Liang, Song Min, Yu Qibin, Song Ziwei, Chen Lin
Department of Biomedical Engineering, Faculty of Environment and Life, Beijing University of Technology, Beijing 100124, China.
Department of Geriatrics, The Third Medical Center of Chinese PLA General Hospital, Beijing 100039, China.
Diagnostics (Basel). 2023 Sep 21;13(18):3011. doi: 10.3390/diagnostics13183011.
It is rare to use the one-stage model without segmentation for the automatic detection of coronary lesions. This study sequentially enrolled 200 patients with significant stenoses and occlusions of the right coronary and categorized their angiography images into two angle views: The CRA (cranial) view of 98 patients with 2453 images and the LAO (left anterior oblique) view of 176 patients with 3338 images. Randomization was performed at the patient level to the training set and test set using a 7:3 ratio. YOLOv5 was adopted as the key model for direct detection. Four types of lesions were studied: Local Stenosis (LS), Diffuse Stenosis (DS), Bifurcation Stenosis (BS), and Chronic Total Occlusion (CTO). At the image level, the precision, recall, mAP@0.1, and mAP@0.5 predicted by the model were 0.64, 0.68, 0.66, and 0.49 in the CRA view and 0.68, 0.73, 0.70, and 0.56 in the LAO view, respectively. At the patient level, the precision, recall, and predicted by the model were 0.52, 0.91, and 0.65 in the CRA view and 0.50, 0.94, and 0.64 in the LAO view, respectively. YOLOv5 performed the best for lesions of CTO and LS at both the image level and the patient level. In conclusion, the one-stage model without segmentation as YOLOv5 is feasible to be used in automatic coronary lesion detection, with the most suitable types of lesions as LS and CTO.
在冠状动脉病变的自动检测中,很少使用无分割的单阶段模型。本研究连续纳入了200例右冠状动脉存在严重狭窄和闭塞的患者,并将他们的血管造影图像分为两个角度视图:98例患者的2453张图像的头位(CRA)视图和176例患者的3338张图像的左前斜位(LAO)视图。在患者层面进行随机分组,按照7:3的比例分为训练集和测试集。采用YOLOv5作为直接检测的关键模型。研究了四种类型的病变:局灶性狭窄(LS)、弥漫性狭窄(DS)、分叉处狭窄(BS)和慢性完全闭塞(CTO)。在图像层面,模型在CRA视图中预测的精度、召回率、mAP@0.1和mAP@0.5分别为0.64、0.68、0.66和0.49,在LAO视图中分别为0.68、0.73、0.70和0.56。在患者层面,模型在CRA视图中预测的精度、召回率和分别为0.52、0.91和0.65,在LAO视图中分别为0.50、0.94和0.64。YOLOv5在图像层面和患者层面对于CTO和LS病变的表现最佳。总之,像YOLOv5这样的无分割单阶段模型可用于冠状动脉病变的自动检测,其中最适合的病变类型为LS和CTO。