基于卷积神经网络的颈动脉超声图像检测研究

Xiaoyu Sui, Yankun Cao, Jia Mi, Kemeng Tao, Jing Han, Kun Zhao, Chun Wang, Zhi Liu
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引用次数: 0

摘要

颈动脉超声是诊断斑块的主要且便捷的方法,因此准确获取斑块的超声图像信息对进一步的临床诊断至关重要。由于噪声的干扰和人工技术操作的差异,漏检的牌匾很可能造成漏检。因此,为了更准确地检测和识别颈动脉管腔和斑块,我们进行了基于卷积神经网络构建算法的对比实验。首先,我们构建了颈动脉数据集,然后通过基于迁移和学习的YOLOv5网络对颈动脉管腔和斑块进行分类测试,并使用Faster R-CNN和SSD网络进行对比实验。实验表明,当IOU值为0.5时,YOLOv5网络的平均准确率达到0.928,当IOU值为0.75时,平均准确率达到0.659,平均召回率达到0.673,高于Faster R-CNN和SSD网络;实验表明,综合对比的平均精度也优于其他两种对比网络。同时,模型计算速度满足实时性要求。因此,在颈动脉图像检测方面,YOLOv5网络可以提高管腔和斑块检测的正确性和实际意义。
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Research on Carotid Ultrasonic Image Detection Based on Convolutional Neural Network
Carotid ultrasound is a main and convenient method for diagnosing plaque, Therefore, accurately obtaining plaques information from ultrasound images is essential for further clinical diagnosis. Due to the interference of noise and the differences in artificial technical operations, the missed inspection of the plaques is likely to cause missed inspection. Therefore, a comparative experiment based on the constructing algorithm based on convolutional neural networks is performed to achieve more accurate detection and identification of cervical arterial tube cavity and plaques. First of all, we constructed the carotid artery data set, and then conducted the classification test of the carotid lumen and plaques through the YOLOv5 network based on migration and learning, and used the Faster R-CNN and SSD network for comparison experiments. Experiments show that the average accuracy obtained by YOLOv5 network reaches 0.928 when the IOU value is 0.5, and 0.659 when the IOU value is 0.75, and the average recall rate reaches 0.673, which are higher than the Faster R-CNN and SSD networks; The experiment shows that the average precision of the comprehensive comparison is also better than the other two comparison networks. At the same time, the model calculation speed meets the real-time needs. Therefore, the YOLOv5 network can improve the correctness and practical significance of the detection of the lumen and plaques in terms of carotid image detection.
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