Klemencic A, Kovacic S, Pernus F
Faculty of Electrical Engineering, University of Ljubljana, Slovenia.
Cytometry. 1998 Aug 1;32(4):317-26. doi: 10.1002/(sici)1097-0320(19980801)32:4<317::aid-cyto9>3.0.co;2-e.
The cross-sectional area of different fiber types is an important anatomic feature in studying the structure and function of healthy and diseased human skeletal muscles. However, such studies are hampered by the thousands of fibers involved when manual segmentation has to be used. We have developed a semiautomatic segmentation method that uses computational geometry and recent computer vision techniques to significantly reduce the time required to accurately segment the fibers in a sample. The segmentation is achieved by simply pointing to the approximate centroid of each fiber. The set of centroids is then used to automatically construct the Voronoi polygons, which correspond to individual fibers. Each Voronoi polygon represents the initial shape of one active contour model, called a snake. In the energy minimization process, which is executed in several stages, different external forces and problem-specific knowledge are used to guide the snakes to converge to fiber boundaries. Our results indicate that this approach for segmenting muscle fiber images is fast, accurate, and reproducible compared with manual segmentation performed by experts.
不同纤维类型的横截面积是研究健康和患病人类骨骼肌结构与功能的一项重要解剖学特征。然而,当必须使用手动分割时,涉及数千根纤维,此类研究受到阻碍。我们开发了一种半自动分割方法,该方法利用计算几何和最新的计算机视觉技术,显著减少了准确分割样本中纤维所需的时间。通过简单地指向每根纤维的近似质心即可实现分割。然后,利用质心集自动构建对应于各个纤维的Voronoi多边形。每个Voronoi多边形代表一个主动轮廓模型(称为蛇形模型)的初始形状。在分几个阶段执行的能量最小化过程中,使用不同的外力和特定问题知识来引导蛇形模型收敛到纤维边界。我们的结果表明,与专家进行的手动分割相比,这种分割肌肉纤维图像的方法快速、准确且可重复。