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A Framework for Automated Spine and Vertebrae Interpolation-Based Detection and Model-Based Segmentation

机译:基于脊柱和椎骨插值的自动检测和基于模型的分割的框架

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摘要

Automated and semi-automated detection and segmentation of spinal and vertebral structures from computed tomography (CT) images is a challenging task due to a relatively high degree of anatomical complexity, presence of unclear boundaries and articulation of vertebrae with each other, as well as due to insufficient image spatial resolution, partial volume effects, presence of image artifacts, intensity variations and low signal-to-noise ratio. In this paper, we describe a novel framework for automated spine and vertebrae detection and segmentation from 3-D CT images. A novel optimization technique based on interpolation theory is applied to detect the location of the whole spine in the 3-D image and, using the obtained location of the whole spine, to further detect the location of individual vertebrae within the spinal column. The obtained vertebra detection results represent a robust and accurate initialization for the subsequent segmentation of individual vertebrae, which is performed by an improved shape-constrained deformable model approach. The framework was evaluated on two publicly available CT spine image databases of 50 lumbar and 170 thoracolumbar vertebrae. Quantitative comparison against corresponding reference vertebra segmentations yielded an overall mean centroid-to-centroid distance of 1.1 mm and Dice coefficient of 83.6% for vertebra detection, and an overall mean symmetric surface distance of 0.3 mm and Dice coefficient of 94.6% for vertebra segmentation. The results indicate that by applying the proposed automated detection and segmentation framework, vertebrae can be successfully detected and accurately segmented in 3-D from CT spine images.
机译:从计算机断层扫描(CT)图像中自动和半自动检测和分割脊椎和椎骨结构是一项艰巨的任务,因为其解剖学程度相对较高,边界不明确且椎骨之间存在关节连接以及图像空间分辨率不足,部分体积效应,图像伪影的存在,强度变化和低信噪比。在本文中,我们描述了一种用于从3-D CT图像进行自动脊柱和椎骨检测和分割的新颖框架。一种基于插值理论的新颖优化技术被应用于检测3D图像中整个脊柱的位置,并使用获得的整个脊柱的位置来进一步检测单个椎骨在脊柱内的位置。所获得的椎骨检测结果代表了对单个椎骨后续分段的鲁棒且准确的初始化,这是通过改进的形状约束可变形模型方法执行的。该框架在两个可公开获得的50腰椎和170胸腰椎椎骨的CT脊柱图像数据库上进行了评估。与相应的参考椎骨分割进行定量比较,对于椎骨检测,整体平均质心到质心距离为1.1 mm,Dice系数为83.6%,对于椎骨分割,整体平均对称表面距离为0.3 mm,Dice系数为94.6%。结果表明,通过应用所提出的自动检测和分割框架,可以成功地检测出椎骨并将其准确地从CT脊柱图像以3-D分割。

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