Vertebrae segmentation techniques for spinal medical images

A. Darwish, M. A. Salem, Doaa Hegazy, H. M. Ebeid
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引用次数: 4

Abstract

Accurate localization and segmentation of the spine from medical images plays an important role in CAD (Computer Aided Diagnoses) as it used for many clinical tasks to diagnose many diseases like degenerative disc disease, kyphosis, scoliosis and spondylolisthesis. Besides it can be used as an input to the classification process. Although the bone structures in medical images have high contrast but the vertebrae identification is considered a challenging task due to many difficulties like the unclear boundaries of the vertebrae, the abnormal spine curves and complex structure of the vertebra. In order to achieve an accurate, efficient and automated spine segmentation and detection from medical images, there are several techniques. This paper analyze and review the different vertebrae segmentation techniques. The spine segmentation task divides into three main stages: initial spine skeleton detection, vertebrae segmentation of the spine while the third stage is designed to enhance the results of the vertebrae segmentation. This paper presents different algorithms for each stage as each algorithm is supported by one or more paper which explain the algorithm.
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脊柱医学图像的椎体分割技术
医学图像中脊柱的准确定位和分割在CAD(计算机辅助诊断)中起着重要的作用,因为它用于许多临床任务,诊断许多疾病,如退行性椎间盘病、后凸、脊柱侧凸和脊柱滑脱。此外,它还可以作为分类过程的输入。尽管医学图像中的骨结构具有很高的对比度,但由于椎体边界不清、脊柱弯曲异常、椎体结构复杂等困难,椎体识别被认为是一项具有挑战性的任务。为了从医学图像中实现准确、高效和自动化的脊柱分割和检测,有几种技术。本文对不同的椎体分割技术进行了分析和综述。脊柱分割任务分为初始脊柱骨架检测、脊柱分割三个主要阶段,第三阶段是对脊柱分割结果进行增强。由于每个算法都有一篇或多篇解释算法的论文支持,因此本文为每个阶段提供了不同的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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