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Template-based automatic extraction of the joint space of foot bones from CT scan

机译:基于模板的CT扫描的脚骨联合空间的自动提取

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Clean bone segmentation is critical in studying the joint anatomy for measuring the spacing between the bones. However, separation of the coupled bones in CT images is sometimes difficult due to ambiguous gray values coming from the noise and the heterogeneity of bone materials as well as narrowing of the joint space. For fine reconstruction of the individual local boundaries, manual operation is a common practice where the segmentation remains to be a bottleneck. In this paper, we present an automatic method for extracting the joint space by applying graph cut on Markov random field model to the region of interest (ROI) which is identified by a template of 3D bone structures. The template includes encoded articular surface which identifies the tight region of the high-intensity bone boundaries together with the fuzzy joint area of interest. The localized shape information from the template model within the ROI effectively separates the bones nearby. By narrowing the ROI down to the region including two types of tissue, the object extraction problem was reduced to binary segmentation and solved via graph cut. Based on the shape of a joint space marked by the template, the hard constraint was set by the initial seeds which were automatically generated from thresholding and morphological operations. The performance and the robustness of the proposed method are evaluated on 12 volumes of ankle CT data, where each volume includes a set of 4 tarsal bones (calcaneus, talus, navicular and cuboid).
机译:清洁骨分割对于研究用于测量骨骼之间的间距的关节解剖结构至关重要。然而,由于来自噪声和骨材料的异质性以及接合空间的缩小,因此由于来自噪声的模糊灰度值以及关节空间的缩小,因此有时难以分离CT图像中的耦合骨骼。为了对各个局部边界进行精细重建,手动操作是一个常见的做法,其中分割仍然是瓶颈。在本文中,我们提出了一种通过将Markov随机场模型的图表切割到感兴趣区域(ROI)的映射来提取联合空间的自动方法,该曲线结构由3D骨结构模板识别。该模板包括编码关节表面,其与感兴趣的模糊联合区域一起识别高强度骨边界的紧密区域。 ROI内模板模型的局部形状信息有效地将骨骼附近分开。通过将ROI缩小到包括两种组织的区域,对象提取问题减少到二进制分割并通过图切割解决。基于由模板标记的关节空间的形状,通过从阈值和形态操作自动产生的初始种子来设定硬约束。所提出的方法的性能和稳健性在12卷踝关节CT数据上进行评估,其中每个体积包括一组4个塔形骨骨(Callaneus,Talus,Nefoider)。

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