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LumNet: A Deep Neural Network for Lumbar Paraspinal Muscles Segmentation

机译:LumNet:腰椎旁肌肉分段的深层神经网络

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Lumber paraspinal muscles (LPM) segmentation is of essential importance in predicting response to treatment of low back pain. To date, all LPM segmentation methods are manually based instead of automatic. Manual segmentation of LPM requires vast radiological knowledge and experience. Moreover, the manual segmentation usually induces subjective variance. Therefore, an automatic segmentation is desireable. It is challenging to achieve automatic segmentation mainly because the ambiguous boundary of the LPM can be very difficult to locate. In this paper, we present a novel encoder-decoder and attention based deep convolutional neural network (CNN) to address this problem. With the help of skip connections, the encoder-decoder structure can capture both shadow and deep features which represent local and global information. Pre-trained VGG11 in ImageNet performed as encoder. In the decoder part, an attention block is applied to recalibrate the input feature. With the help of attention block, meaningful features are highlighted while irrelevant features are suppressed. To fully evaluate the performance of our proposed network, we construct the first large-scale LPM segmentation dataset with 1080 images and its segmentation masks. Experimental results show that our proposed network can not only achieve a good LPM segmentation result with a high dice score of 0.94 but also outperforms other state-of-the-art segmentation methods.
机译:腰椎旁肌肉(LPM)的分割对于预测对下腰痛的治疗反应至关重要。迄今为止,所有LPM细分方法都是基于手动而非自动的。 LPM的手动分割需要大量的放射学知识和经验。此外,手动分割通常会引起主观差异。因此,期望自动分割。实现自动分割具有挑战性,主要是因为LPM的模糊边界很难定位。在本文中,我们提出了一种新颖的编码器-解码器和基于注意力的深度卷积神经网络(CNN)来解决这个问题。借助跳过连接,编码器-解码器结构可以捕获表示本地和全局信息的阴影和深层特征。 ImageNet中的预训练VGG11作为编码器执行。在解码器部分,应注意模块以重新校准输入特征。借助注意块,突出显示了有意义的功能,而抑制了不相关的功能。为了全面评估我们提出的网络的性能,我们构建了第一个包含1080张图像及其分割蒙版的大规模LPM分割数据集。实验结果表明,我们提出的网络不仅可以以0.94的高骰子得分获得良好的LPM分割结果,而且还优于其他最新的分割方法。

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