基于径向变换的关节软骨分割

Ku-Yaw Chang, S. Chen, Lih-Shyang Chen, Cheng-Jung Wu
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引用次数: 6

摘要

骨关节炎(OA)是老年人致残的主要原因之一。膝关节软骨在MR图像上的准确分割对临床诊断和治疗具有重要意义。提出了一种基于径向变换的膝关节软骨半自动分割方法。径向变换是通过径向方法对原始图像重新采样,生成新图像的过程,称为径向图像。首先在径向图像上圈定软骨边界,然后变换回原始图像。由于可能存在舍入误差和数字化效果,原始图像上的软骨边界需要轻微变形才能变得更加准确和完整。一般来说,软骨分割一直被认为是一个二维图像处理的难题。然而,该方法通过将软骨解剖的先验知识纳入径向变换,将这一挑战变为一维工作,从而简化了分割问题。
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Articular Cartilage Segmentation Based on Radial Transformation
Osteoarthritis(OA) is one of the major causes of disability in the elderly population. The accurate segmentation of the articular knee cartilages from MR images is important to clinical diagnosis and treatment. In this paper, a semi-automatic segmentation method of knee cartilage based on radial transformation is proposed. A radial transformation is the process of generating a new image, called a radial image, by re-sampling the original image in a radial approach. The cartilage boundary is initially delineated on the radial image, and then transformed back to the original image. Due to the possible round-off errors and digitization effects, the cartilage boundary on the original image requires a slight deformation to become more accurate and complete. In general, the cartilage segmentation has been considered as a two- dimensional image processing challenge. However, the proposed method turns such a challenge into a one-dimensional job by incorporating the prior knowledge of cartilage anatomy into the radial transformation, and thus simplifies the segmentation problem.
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