Department of Computer Science and Information Engineering, National Cheng Kung University, Taiwan.
Artif Intell Med. 2012 Mar;54(3):189-200. doi: 10.1016/j.artmed.2011.11.008. Epub 2012 Jan 11.
This paper presents an algorithm based on multi-level watershed segmentation combined with three fuzzy systems to segment a large number of myelinated nerve fibers in microscope images. The method can estimate various geometrical parameters of myelinated nerve fibers in peripheral nerves. It is expected to be a promising tool for the quantitative assessment of myelinated nerve fibers in related research.
A novel multi-level watershed scheme iteratively detects pre-candidate nerve fibers. At each immersion level, watershed segmentation extracts the initial axon locations and obtains meaningful myelinated nerve fiber features. Thereafter, according to a priori characteristics of the myelinated nerve fibers, fuzzy rules reject unlikely pre-candidates and collect a set of candidates. Initial candidate boundaries are then refined by a fuzzy active contour model, which flexibly deforms contours according to the observed features of each nerve fiber. A final scan with a different set of fuzzy rules based on the a priori properties of the myelinated nerve fibers removes false detections. A particle swarm optimization method is employed to efficiently train the large number of parameters in the proposed fuzzy systems.
The proposed method can automatically segment the transverse cross-sections of nerve fibers obtained from optical microscope images. Although the microscope image is usually noisy with weak or variable levels of contrast, the proposed system can handle images with a large number of myelinated nerve fibers and achieve a high fiber detection ratio. As compared to manual segmentation by experts, the proposed system achieved an average accuracy of 91% across different data sets.
We developed an image segmentation system that automatically handles myelinated nerve fibers in microscope images. Experimental results showed the efficacy of this system and its superiority to other nerve fiber segmentation approaches. Moreover, the proposed method can be extended to other applications of automatic segmentation of microscopic images.
本文提出了一种基于多级分水岭分割结合三个模糊系统的算法,用于分割显微镜图像中的大量有髓神经纤维。该方法可以估计周围神经中髓鞘神经纤维的各种几何参数。有望成为相关研究中定量评估有髓神经纤维的一种有前途的工具。
提出了一种新颖的多级分水岭方案,该方案可迭代检测预候选神经纤维。在每个浸渍水平上,分水岭分割提取初始轴突位置,并获得有意义的有髓神经纤维特征。此后,根据有髓神经纤维的先验特征,模糊规则拒绝不太可能的预候选,并收集一组候选者。然后通过模糊主动轮廓模型对初始候选边界进行细化,该模型根据每个神经纤维的观察特征灵活地变形轮廓。最后,根据有髓神经纤维的先验特性,使用不同的模糊规则集进行再次扫描,以去除假检测。采用粒子群优化方法有效地训练了所提出的模糊系统中的大量参数。
所提出的方法可以自动分割从光学显微镜图像获得的神经纤维的横截面。尽管显微镜图像通常具有噪声,并且对比度较弱或变化较大,但该系统可以处理具有大量有髓神经纤维的图像,并实现高纤维检测率。与专家手动分割相比,该系统在不同数据集上的平均准确率达到 91%。
我们开发了一种自动处理显微镜图像中有髓神经纤维的图像分割系统。实验结果表明了该系统的有效性及其优于其他神经纤维分割方法的优越性。此外,所提出的方法可以扩展到其他自动分割显微镜图像的应用中。