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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >A Single-Shot Region-Adaptive Network for Myotendinous Junction Segmentation in Muscular Ultrasound Images
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A Single-Shot Region-Adaptive Network for Myotendinous Junction Segmentation in Muscular Ultrasound Images

机译:用于肌肉超声图像中肌腱结分割的单次区域自适应网络

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Tracking the myotendinous junction (MTJ) in consecutive ultrasound images is crucial for understanding the mechanics and pathological conditions of the muscle–tendon unit. However, the lack of reliable and efficient identification of MTJ due to poor image quality and boundary ambiguity restricts its application in motion analysis. In recent years, with the rapid development of deep learning, the region-based convolution neural network (RCNN) has shown great potential in the field of simultaneous objection detection and instance segmentation in medical images. This article proposes a region-adaptive network (RAN) to localize MTJ region and to segment it in a single shot. Our model learns about the salient information of MTJ with the help of a composite architecture. Herein, a region-based multitask learning network explores the region containing MTJ, while a parallel end-to-end U-shaped path extracts the MTJ structure from the adaptively selected region for combating data imbalance and boundary ambiguity. By demonstrating the ultrasound images of the gastrocnemius, we showed that the RAN achieves superior segmentation performance when compared with the state-of-the-art Mask RCNN method with an average Dice score of 80.1. Our proposed method is robust and reliable for advanced muscle and tendon function examinations obtained by ultrasound imaging.
机译:在连续超声图像中追踪肌腱连接处 (MTJ) 对于了解肌腱单位的力学和病理状况至关重要。然而,由于图像质量差和边界模糊性,MTJ缺乏可靠和有效的识别,限制了其在运动分析中的应用。近年来,随着深度学习的快速发展,基于区域的卷积神经网络(RCNN)在医学图像中的同时异议检测和实例分割领域显示出巨大的潜力。本文提出了一种区域自适应网络 (RAN) 来定位 MTJ 区域并在单个镜头中对其进行分割。我们的模型在复合架构的帮助下学习了 MTJ 的显著信息。本文,基于区域的多任务学习网络探索包含MTJ的区域,而并行的端到端U型路径从自适应选择的区域中提取MTJ结构,以解决数据不平衡和边界模糊问题。通过展示腓肠肌的超声图像,我们发现,与最先进的Mask RCNN方法相比,RAN实现了卓越的分割性能,平均Dice得分为80.1%。我们提出的方法对于通过超声成像获得的高级肌肉和肌腱功能检查是稳健可靠的。

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