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Automatic Semantic Segmentation of Structural Elements related to the Spinal Cord in the Lumbar Region by using Convolutional Neural Networks

机译:利用卷积神经网络自动与腰部脊髓相关的结构元素的语义分割

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This work addresses the problem of automatically segmenting the MR images corresponding to the lumbar spine. The purpose is to detect and delimit the different structural elements like vertebrae, intervertebral discs, nerves, blood vessels, etc. This task is known as semantic segmentation. The approach proposed in this work is based on convolutional neural networks whose output is a mask where each pixel from the input image is classified into one of the possible classes. Classes were defined by radiologists and correspond to structural elements and tissues. The proposed network architectures are variants of the U-Net. Several complementary blocks were used to define the variants: spatial attention models, deep supervision and multi-kernels at input, this last block type is based on the idea of inception. Those architectures which got the best results are described in this paper, and their results are discussed. Two of the proposed architectures outperform the standard U-Net used as baseline. Those architectures which got the best results are described in this paper, and their results are discussed. Two of the proposed architectures outperform the standard U-Net used as baseline.
机译:这项工作解决了自动分割对应于腰椎的MR图像的问题。目的是检测和分隔椎骨,椎间盘,神经,血管等不同的结构元素。这项任务称为语义分割。本作作品中提出的方法基于卷积神经网络,其输出是从输入图像的每个像素被分类为一个可能类的掩模。课程由放射科医师定义,对应于结构元素和组织。所提出的网络架构是U-Net的变体。使用了几个互补块来定义变体:空间注意模型,输入的深度监督和多核,这个最后一个块类型是基于成立的想法。本文描述了那些获得最佳结果的架构,并讨论了它们的结果。其中两个拟议的架构优于使用作为基线的标准U-Net。本文描述了那些获得最佳结果的架构,并讨论了它们的结果。其中两个拟议的架构优于使用作为基线的标准U-Net。

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