Liu Hao, Zhao Jianning, Dai Ning, Qian Hongbo, Tang Yuehong
Nanjing University of Aeronautics and Astronautics, P.R. China Jinling Hospital, Department Orthopedics, Nanjing University School of Medicine, P.R. China.
Jinling Hospital, Department Orthopedics, Nanjing University School of Medicine, P.R. China.
Biomed Mater Eng. 2014;24(6):3159-77. doi: 10.3233/BME-141138.
Separation of the femur head and acetabulum is one of main difficulties in the diseased hip joint due to deformed shapes and extreme narrowness of the joint space. To improve the segmentation accuracy is the key point of existing automatic or semi-automatic segmentation methods. In this paper, we propose a new method to improve the accuracy of the segmented acetabulum using surface fitting techniques, which essentially consists of three parts: (1) design a surface iterative process to obtain an optimization surface; (2) change the ellipsoid fitting to two-phase quadric surface fitting; (3) bring in a normal matching method and an optimization region method to capture edge points for the fitting quadric surface. Furthermore, this paper cited vivo CT data sets of 40 actual patients (with 79 hip joints). Test results for these clinical cases show that: (1) the average error of the quadric surface fitting method is 2.3 (mm); (2) the accuracy ratio of automatically recognized contours is larger than 89.4%; (3) the error ratio of section contours is less than 10% for acetabulums without severe malformation and less than 30% for acetabulums with severe malformation. Compared with similar methods, the accuracy of our method, which is applied in a software system, is significantly enhanced.
股骨头与髋臼分离是病变髋关节的主要难题之一,这是由于关节形状变形以及关节间隙极度狭窄所致。提高分割精度是现有自动或半自动分割方法的关键所在。在本文中,我们提出一种利用曲面拟合技术提高髋臼分割精度的新方法,该方法主要由三部分组成:(1)设计一个曲面迭代过程以获得优化曲面;(2)将椭球拟合改为两相二次曲面拟合;(3)引入法线匹配方法和优化区域方法来捕捉拟合二次曲面的边缘点。此外,本文引用了40例实际患者(共79个髋关节)的活体CT数据集。这些临床病例的测试结果表明:(1)二次曲面拟合方法的平均误差为2.3(毫米);(2)自动识别轮廓的准确率大于89.4%;(3)对于无严重畸形的髋臼,截面轮廓的误差率小于10%,对于有严重畸形的髋臼,误差率小于30%。与类似方法相比,我们应用于软件系统中的方法的精度得到了显著提高。