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Vertebra Fracture Classification from 3D CT Lumbar Spine Segmentation Masks Using a Convolutional Neural Network

机译:使用卷积神经网络从3D CT腰椎分割面罩进行椎骨骨折分类

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Accurate and efficient identification of vertebra fractures in spinal images is of utmost importance in improving clinical tasks such as diagnosis, surgical planning, and post-operative assessment. Previous methods that tackle the problem of vertebra fracture identification rely on quantitative morphometry methods. Standard six-point morphome-try involves manual identification of the vertebral bodies' corners and placement of points on identified corners. This task is time-consuming and requires effort from experts and technicians and prone to subjective errors in visual estimation in spinal images. In this paper, we propose an automated method to detect and classify vertebra fractures from 3D CT lumbar spine images. Fifteen 3D CT images with accompanying fracture labels for each of the five lumbar vertebra from the xVertSeg Challenge were utilized as data set. Each vertebra from the 3D image is processed into 100 × 50 2D 3-channel images composed of three grayscale images. The three grayscale images represent the vertebral slices in the sagittal, coronal, and transverse anatomical planes. These 100 × 50 2D images are fed into the 152 layer Residual Network. A total of 13,400 images were generated from the data pre-processing stage. 12,700 of which having varying classifications were used as training data, and 100 images for each of the seven vertebra fracture classifications were used as testing data. The network achieved 93.29% testing accuracy.
机译:准确有效地识别脊柱图像中的椎骨骨折对于改善临床任务(如诊断,手术计划和术后评估)至关重要。解决椎骨骨折识别问题的先前方法依赖于定量形态学方法。标准的六点形态学方法包括手动识别椎体的角点以及将点放置在已识别的角点上。这项工作很耗时,需要专家和技术人员的努力,并且容易在脊柱图像的视觉估计中出现主观错误。在本文中,我们提出了一种从3D CT腰椎图像检测和分类椎骨骨折的自动方法。使用来自xVertSeg Challenge的五个腰椎中的每一个的15张3D CT图像以及相应的骨折标签作为数据集。 3D图像中的每个椎骨都被处理成由三个灰度图像组成的100×50 2D 3通道图像。这三个灰度图像表示在矢状,冠状和横断解剖平面中的椎骨切片。这些100×50 2D图像被馈入152层残差网络。从数据预处理阶段总共生成了13,400张图像。将12,700个分类不同的数据用作训练数据,并将七个椎骨骨折分类中的每一个的100张图像用作测试数据。该网络达到了93.29%的测试精度。

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