Tang Jinshan, Millington Steven, Acton Scott T, Crandall Jeff, Hurwitz Shepard
Department of Electrical and Computer Engineering, University of Virginia, Charlottesville, VA 22903 USA.
IEEE Trans Biomed Eng. 2006 May;53(5):896-907. doi: 10.1109/TBME.2006.872816.
The accuracy of the surface extraction of magnetic resonance images of highly congruent joints with thin articular cartilage layers has a significant effect on the percentage errors and reproducibility of quantitative measurements (e.g., thickness and volume) of the articular cartilage. Traditional techniques such as gradient-based edge detection are not suitable for the extraction of these surfaces. This paper studies the extraction of articular cartilage surfaces using snakes, and a gradient vector flow (GVF)-based external force is proposed for this application. In order to make the GVF snake more stable and converge to the correct surfaces, directional gradient is used to produce the gradient vector flow. Experimental results show that the directional GVF snake is more robust than the traditional GVF snake for this application. Based on the newly developed snake model, an articular cartilage surface extraction algorithm is developed. Thickness is computed based on the surfaces extracted using the proposed algorithm. In order to make the thickness measurement more reproducible, a new thickness computation approach, which is called T-norm, is introduced. Experimental results show that the thickness measurement obtained by the new thickness computation approach has better reproducibility than that obtained by the existing thickness computation approaches.
对于具有薄关节软骨层的高度匹配关节的磁共振图像,其表面提取的准确性对关节软骨定量测量(如厚度和体积)的百分比误差及可重复性有显著影响。传统技术如基于梯度的边缘检测不适用于这些表面的提取。本文研究了使用蛇形模型提取关节软骨表面,并针对此应用提出了基于梯度向量流(GVF)的外力。为使GVF蛇形模型更稳定并收敛到正确表面,采用方向梯度来生成梯度向量流。实验结果表明,对于此应用,方向GVF蛇形模型比传统GVF蛇形模型更稳健。基于新开发的蛇形模型,开发了一种关节软骨表面提取算法。基于使用所提算法提取的表面计算厚度。为使厚度测量更具可重复性,引入了一种称为T范数的新厚度计算方法。实验结果表明,新厚度计算方法获得的厚度测量结果比现有厚度计算方法具有更好的可重复性。