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Automated segmentation of acetabulum and femoral head from 3-d CT images

机译:从3D CT图像自动分割髋臼和股骨头

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This paper describes several new methods and software for automatic segmentation of the pelvis and the femur, based on clinically obtained multislice computed tomography (CT) data. The hip joint is composed of the acetabulum, cavity of the pelvic bone, and the femoral head. In vivo CT data sets of 60 actual patients were used in the study. The 120 (60 /spl times/ 2) hip joints in the data sets were divided into four groups according to several key features for segmentation. Conventional techniques for classification of bony tissues were first employed to distinguish the pelvis and the femur from other CT tissue images in the hip joint. Automatic techniques were developed to extract the boundary between the acetabulum and the femoral head. An automatic method was built up to manage the segmentation task according to image intensity of bone tissues, size, center, shape of the femoral heads, and other characters. The processing scheme consisted of the following five steps: 1) preprocessing, including resampling 3-D CT data by a modified Sine interpolation to create isotropic volume and to avoid Gibbs ringing, and smoothing the resulting images by a 3-D Gaussian filter; 2) detecting bone tissues from CT images by conventional techniques including histogram-based thresholding and binary morphological operations; 3) estimating initial boundary of the femoral head and the joint space between the acetabulum and the femoral head by a new approach utilizing the constraints of the greater trochanter and the shapes of the femoral head; 4) enhancing the joint space by a Hessian filter; and 5) refining the rough boundary obtained in step 3) by a moving disk technique and the filtered images obtained in step 4). The above method was implemented in a Microsoft Windows software package and the resulting software is freely available on the Internet. The feasibility of this method was tested on the data sets of 60 clinical cases (5000 CT images).
机译:本文基于临床获得的多层计算机断层扫描(CT)数据,介绍了几种自动分割骨盆和股骨的新方法和软件。髋关节由髋臼,骨盆腔和股骨头组成。研究中使用了60位实际患者的体内CT数据集。数据集中的120个(60次/ spl次/ 2)髋关节根据用于分割的几个关键特征分为四组。首先采用传统的骨组织分类技术,将骨盆和股骨与髋关节的其他CT组织图像区分开。开发了自动技术以提取髋臼和股骨头之间的边界。建立了一种自动方法来根据骨组织的图像强度,大小,中心,股骨头的形状和其他特征来管理分割任务。处理方案包括以下五个步骤:1)预处理,包括通过改进的Sine插值对3-D CT数据进行重采样以创建各向同性体积并避免Gibbs振铃,并通过3-D高斯滤波器对所得图像进行平滑处理; 2)通过常规技术从CT图像中检测骨骼组织,包括基于直方图的阈值化和二进制形态学运算; 3)利用大转子的约束和股骨头的形状的新方法,估计股骨头的初始边界以及髋臼和股骨头之间的关节空间。 4)通过Hessian过滤器增加关节空间; 5)通过动盘技术细化步骤3)中获得的粗糙边界和步骤4)中获得的滤波图像。以上方法是在Microsoft Windows软件包中实现的,生成的软件可在Internet上免费获得。在60例临床病例(5000张CT图像)的数据集上测试了该方法的可行性。

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