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Monitoring Achilles Tendon Healing Progress in Ultrasound Imaging with Convolutional Neural Networks

机译:利用卷积神经网络监测跟腱肌腱愈合情况的超声成像

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Achilles tendon rupture is a debilitating injury, which is typically treated with surgical repair and long-term rehabilitation. The recovery, however, is protracted and often incomplete. Diagnosis, as well as healing progress assessment, are largely based on ultrasound and magnetic resonance imaging. In this paper, we propose an automatic method based on deep learning for analysis of Achilles tendon condition and estimation of its healing progress on ultrasound images. We develop custom convolutional neural networks for classification and regression on healing score and feature extraction. Our models are trained and validated on an acquired dataset of over 250.000 sagittal and over 450.000 axial ultrasound slices. The obtained estimates show high correlation with the assessment of expert radiologists, with respect to all key parameters describing healing progress. We also observe that parameters associated with i.a. intratendinous healing processes are better modeled with sagittal slices. We prove that ultrasound imaging is quantitatively useful for clinical assessment of Achilles tendon healing process and should be viewed as complementary to magnetic resonance imaging.
机译:跟腱断裂是使人衰弱的损伤,通常通过外科手术修复和长期康复来治疗。然而,恢复是持久的,而且常常是不完整的。诊断以及愈合进度评估主要基于超声和磁共振成像。在本文中,我们提出了一种基于深度学习的自动方法,用于分析跟腱状况并在超声图像上估计其愈合进度。我们开发了自定义卷积神经网络,用于对治疗评分和特征提取进行分类和回归。我们的模型在超过250.000个矢状面和超过450.000个轴向超声切片的采集数据集上进行了训练和验证。就描述愈合进度的所有关键参数而言,获得的估计值与放射线专家的评估高度相关。我们还观察到与i.a.相关的参数矢状切面可以更好地模拟腱内愈合过程。我们证明,超声成像可定量地用于跟腱愈合过程的临床评估,应被视为磁共振成像的补充。

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