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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Automatic segmentation technique for acetabulum and femoral head in CT images
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Automatic segmentation technique for acetabulum and femoral head in CT images

机译:CT图像中髋臼和股骨头的自动分割技术

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摘要

Segmentation of the femoral head and proximal acetabulum from three dimensional (3D) CT data is essential for patient specific planning and simulation of hip surgery whereas it still remains challenging due to deformed shapes and extremely narrow inter-bone regions. In this paper, we present an accurate, automatic and fast approach for simultaneous segmentation of the femoral head and proximal acetabulum in the hip joint from 3D CT data. First valley-emphasized image is constructed from original images so that valleys stand out in high relief and initial thresholding segmentation is performed to divide the image set into bone (femoral head and acetabulum) and non-bone classes. It is employed as an initial boundary of the femoral head and acetabulum for further processing in the segmentation procedures. In the subsequent iterative process, the bone regions are further segmented with consideration of the narrow joint space, the neighborhood information and the partial volume effect. Finally, the segmented bone boundaries are corrected based on the normal direction of vertices of the 3D bone surface. Evaluation of the method is performed on the 110 hips including pathologies. Experimental results indicate that our method rapidly leads to very accurate segmentations of the femoral head and acetabulum in the hip joint and can be applied as a tool in the clinical practice.
机译:从三维(3D)CT数据分割股骨头和髋臼近端对于特定于患者的髋关节手术计划和仿真至关重要,但由于形状变形和极窄的骨间区域,它仍然具有挑战性。在本文中,我们提供了一种准确,自动和快速的方法,可根据3D CT数据同时分割髋关节中股骨头和髋臼近端。从原始图像中构造第一个以谷为重点的图像,以使谷以高浮雕突出,并执行初始阈值分割,以将图像集分为骨骼(股骨头和髋臼)和非骨骼类。它被用作股骨头和髋臼的初始边界,以在分割程序中进行进一步处理。在随后的迭代过程中,考虑到狭窄的关节空间,邻域信息和局部体积效应,进一步对骨骼区域进行分割。最终,基于3D骨骼表面的顶点的法线方向校正分段的骨骼边界。对包括病理在内的110髋进行方法评估。实验结果表明,我们的方法可快速导致髋关节的股骨头和髋臼非常精确的分割,并可在临床实践中用作工具。

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