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Automatic Paraspinal Muscle Segmentation in Patients with Lumbar Pathology Using Deep Convolutional Neural Network

机译:腰部病理患者使用深度卷积神经网络的自动椎旁肌分段

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Recent evidence suggests an association between low back pain (LBP) and changes in lumbar paraspinal muscle morphology and composition (i.e., fatty infiltration). Quantitative measurements of muscle cross-sectional areas (CSAs) from MRI scans are commonly used to examine the relationship between paraspinal muscle characters and different lumbar conditions. The current investigation primarily uses manual segmentation that is time-consuming, laborious, and can be inconsistent. However, no automatic MRI segmentation algorithms exist for pathological data, likely due to the complex paraspinal muscle anatomy and high variability in muscle composition among patients. We employed deep convolutional neural networks using U-Net+CRF-RNN with multi-data training to automatically segment paraspinal muscles from T2-weighted MRI axial slices at the L4-L5 and L5-S1 spinal levels and achieved averaged Dice score of 93.9% and mean boundary distance of 1 mm. We also demonstrate the application using the segmentation results to reveal tissue characteristics of the muscles in relation to age and sex.
机译:最近的证据表明,下腰痛(LBP)与腰椎旁脊柱肌肉形态和组成的变化(即脂肪浸润)之间存在关联。 MRI扫描得出的肌肉截面积(CSA)的定量测​​量通常用于检查椎旁肌特征与不同腰椎病之间的关系。当前的调查主要使用费时,费力且可能不一致的手动细分。但是,由于病理复杂的椎旁肌解剖结构和患者之间的肌肉组成差异很大,因此没有用于病理数据的自动MRI分割算法。我们采用U-Net + CRF-RNN进行深度卷积神经网络和多数据训练,以在L4-L5和L5-S1脊柱水平自动分割T2加权MRI轴向切片的脊柱旁肌肉,平均Dice得分为93.9%和平均边界距离为1毫米。我们还演示了使用分割结果揭示与年龄和性别有关的肌肉组织特征的应用程序。

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