Jiang Ming, Ji Qiang, McEwen Bruce F
Department of Electrical, Computer and System Engineering, Rensselaer Polytechnic Institute, Troy, NY 12180, USA.
IEEE Trans Image Process. 2006 Jul;15(7):2035-48. doi: 10.1109/tip.2006.877054.
Kinetochore microtubules (KMTs) and the associated plus-ends have been areas of intense investigation in both cell biology and molecular medicine. Though electron tomography opens up new possibilities in understanding their function by imaging their high-resolution structures, the interpretation of the acquired data remains an obstacle because of the complex and cluttered cellular environment. As a result, practical segmentation of the electron tomography data has been dominated by manual operation, which is time consuming and subjective. In this paper, we propose a model-based automated approach to extracting KMTs and the associated plus-ends with a coarse-to-fine scale scheme consisting of volume preprocessing, microtubule segmentation and plus-end tracing. In volume preprocessing, we first apply an anisotropic invariant wavelet transform and a tube-enhancing filter to enhance the microtubules at coarse level for localization. This is followed with a surface-enhancing filter to accentuate the fine microtubule boundary features. The microtubule body is then segmented using a modified active shape model method. Starting from the segmented microtubule body, the plus-ends are extracted with a probabilistic tracing method improved with rectangular window based feature detection and the integration of multiple cues. Experimental results demonstrate that our automated method produces results comparable to manual segmentation but using only a fraction of the manual segmentation time.
动粒微管(KMTs)及其相关的正端一直是细胞生物学和分子医学领域深入研究的对象。尽管电子断层扫描通过对其高分辨率结构成像为理解它们的功能开辟了新的可能性,但由于细胞环境复杂且杂乱,对获取数据的解释仍然是一个障碍。因此,电子断层扫描数据的实际分割一直以人工操作为主,这既耗时又主观。在本文中,我们提出了一种基于模型的自动化方法,通过由体积预处理、微管分割和正端追踪组成的从粗到细的尺度方案来提取KMTs及其相关的正端。在体积预处理中,我们首先应用各向异性不变小波变换和管增强滤波器在粗粒度水平上增强微管以进行定位。接着使用表面增强滤波器突出微管的精细边界特征。然后使用改进的主动形状模型方法分割微管主体。从分割出的微管主体开始,通过基于矩形窗口特征检测改进的概率追踪方法并结合多种线索来提取正端。实验结果表明,我们的自动化方法产生的结果与人工分割相当,但只花费了人工分割时间的一小部分。