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LEARNING-BASED SPINE VERTEBRA LOCALIZATION AND SEGMENTATION IN 3D CT IMAGE

机译:基于学习的脊柱椎骨定位与3D CT图像分割

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Spine segmentation is important for spinal screening and examination in the assistance of pathological progression evaluation and therapies. In this paper, we propose a novel solution for spine vertebra localization and segmentation in 3D volumetric CT data. Our spine vertebra localization includes: (1) spine centerline and spine canal centerline extraction and (2) vertebra centers and intervertebral disc centers localization. The final spine segmentation is based on the results of spine vertebra localization. Our solution is characterized by three key ingredients: First, we present a new and efficient way to extract spine centerline and spine canal centerline. Second, the vertebra center and intervertebral disc center localization are estimated by probabilistic inference approach. Third, a case-specific foreground and background constraints are constructed for each vertebra digit in the segmentation framework. For evaluation, the proposed method is applied to a data set which contains 10 CT volumes. Our approach achieves average detection error of 1.6 mm for both vertebra center and intervertebral disc center. Segmentation results also demonstrate the effectiveness of our method.
机译:在病理进展评估和疗法的帮助下,脊柱细分对于脊柱筛查和检查是重要的。在本文中,我们提出了一种新的3D体积CT数据中脊柱椎体定位和分割的新解决方案。我们的脊柱椎体本地化包括:(1)脊柱中心线和脊柱管中心线提取和(2)椎骨中心和椎间盘中心定位。最终的脊柱分割是基于脊柱椎体定位的结果。我们的解决方案的特点是三个关键成分:首先,我们提出了一种新的有效的方法来提取脊柱中心线和脊柱管中心线。其次,通过概率推理方法估算椎骨中心和椎间盘中心定位。第三,为分段框架中的每个椎骨数字构建特定于特定的前景和背景约束。为了评估,所提出的方法应用于包含10ct卷的数据集。我们的方法为椎骨中心和椎间盘中心达到1.6毫米的平均检测误差。分段结果还证明了我们方法的有效性。

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