Blood Vessels Detection by Regional-based CNN for CT Scan of Lower Extremities

Littikrai Sakunpaisanwari, Nutcha Yodrabum, Tanongchai Sirirapisit, Taravichet Titijaroonroj
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Abstract

Blood vessels on computed tomography (CT) scan images are difficult to identify and discriminate between vessels and noise because blood vessels are not only small and shapeless, but its location can also be inconsistent. This is a challenge of object detection. We proposed an automatic blood vessel detection method based on YOLOv3 for object detection from CT scan of lower extremities. This work focused on detecting four main arteries: popliteal, anterior tibial, posterior tibial, and peroneal arteries. To obtain the best architecture for blood vessel detection, we evaluated and compared the performances of seven region-based CNN architectures: Faster R-CNN, Cascade R-CNN, Mask R-CNN, RetinaNet, YOLOv3, CornerNet, and Centernet. Experimental results show that the best architecture was YOLOv3 with precision, recall, and f1-score of 0.982, 0.954, and 0.968, respectively. Good accomplishment of YOLOv3 came from skip connections, multi-scale feature map, and anchor generated by k-means clustering.
基于区域CNN的下肢CT血管检测
计算机断层扫描(CT)图像上的血管很难识别和区分血管和噪声,因为血管不仅小而无形状,而且其位置也可能不一致。这是对目标检测的一个挑战。我们提出了一种基于YOLOv3的下肢CT扫描目标自动血管检测方法。这项工作的重点是检测四个主要动脉:腘动脉、胫骨前动脉、胫骨后动脉和腓骨动脉。为了获得血管检测的最佳架构,我们评估并比较了七种基于区域的CNN架构的性能:Faster R-CNN、Cascade R-CNN、Mask R-CNN、RetinaNet、YOLOv3、CornerNet和Centernet。实验结果表明,YOLOv3是最佳的结构,准确率为0.982,召回率为0.954,f1-score为0.968。通过k-means聚类生成的跳跃连接、多尺度特征图和锚点,YOLOv3完成的很好。
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