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Segmenting the femoral Head and Acetabulum m the Hip Joint Automatically Using a Multi-Step Scheme

机译:使用多步方案自动分割髋关节的股骨头和髋臼

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摘要

We describe a multi-step approach for automatic segmentation of the femoral head and the acetabulum in the hip joint from three dimensional (3D) CT images. Our segmentation method consists of the following steps: 1) construction of the valley-emphasized image by subtracting valleys from the original images; 2) initial segmentation of the bone regions by using conventional techniques including the initial threshold and binary morphological operations from the valley-emphasized image;3) further segmentation of the bone regions by using the iterative adaptive classification with the initial segmentation resu 4) detection of the rough bone boundaries based on the segmented bone regions; 5) 3D reconstruction of the bone surface using the rough bone boundaries obtained in step 4) by a network of triangles; 6) correction of all vertices of the 3D bone surface based on the normal direction of vertices; 7) adjustment of the bone surface based on the corrected vertices. We evaluated our approach on 35 CT patient data sets. Our experimental results show that our segmentation algorithm is more accurate and robust against noise than other conventional approaches for automatic segmentation of the femoral head and the acetabulum. Average root-mean-square (RMS) distance from manual reference segmentations created by experienced users was approximately 0.68 mm (in-plane resolution of the CT data).
机译:我们描述了从三维(3D)CT图像自动分割股骨头和髋关节中的髋臼的多步骤方法。我们的分割方法包括以下步骤:1)通过从原始图像中减去谷值来构建谷底强调图像; 2)通过使用常规技术对骨骼区域进行初始分割,包括从谷底图像中进行初始阈值和二进制形态学运算; 3)通过对初始分割结果进行迭代自适应分类,进一步对骨骼区域进行分割; 4)基于分割的骨区域检测粗糙的骨边界; 5)使用步骤4)中通过三角形网络获得的粗骨边界对骨表面进行3D重建; 6)根据顶点的法线方向校正3D骨骼表面的所有顶点; 7)根据校正后的顶点调整骨骼表面。我们评估了35种CT患者数据集的方法。我们的实验结果表明,与其他传统的股骨头和髋臼自动分割方法相比,我们的分割算法更准确,更抗噪声。与经验丰富的用户创建的手动参考分段的平均均方根(RMS)距离约为0.68 mm(CT数据的面内分辨率)。

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