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基于张量投票的稳健膜检测用于电子断层扫描。

Robust membrane detection based on tensor voting for electron tomography.

作者信息

Martinez-Sanchez Antonio, Garcia Inmaculada, Asano Shoh, Lucic Vladan, Fernandez Jose-Jesus

机构信息

Supercomputing and Algorithms Group, Associated Unit CSIC-UAL, Universidad de Almeria, 04120 Almeria, Spain.

Supercomputing and Algorithms Group, Dept. Computer Architecture, Universidad de Malaga, 29080 Malaga, Spain.

出版信息

J Struct Biol. 2014 Apr;186(1):49-61. doi: 10.1016/j.jsb.2014.02.015. Epub 2014 Mar 10.

Abstract

Electron tomography enables three-dimensional (3D) visualization and analysis of the subcellular architecture at a resolution of a few nanometers. Segmentation of structural components present in 3D images (tomograms) is often necessary for their interpretation. However, it is severely hampered by a number of factors that are inherent to electron tomography (e.g. noise, low contrast, distortion). Thus, there is a need for new and improved computational methods to facilitate this challenging task. In this work, we present a new method for membrane segmentation that is based on anisotropic propagation of the local structural information using the tensor voting algorithm. The local structure at each voxel is then refined according to the information received from other voxels. Because voxels belonging to the same membrane have coherent structural information, the underlying global structure is strengthened. In this way, local information is easily integrated at a global scale to yield segmented structures. This method performs well under low signal-to-noise ratio typically found in tomograms of vitrified samples under cryo-tomography conditions and can bridge gaps present on membranes. The performance of the method is demonstrated by applications to tomograms of different biological samples and by quantitative comparison with standard template matching procedure.

摘要

电子断层扫描能够以几纳米的分辨率对亚细胞结构进行三维(3D)可视化和分析。对三维图像(断层扫描图)中存在的结构成分进行分割通常是解读这些图像所必需的。然而,它受到电子断层扫描固有的一些因素(如噪声、低对比度、失真)的严重阻碍。因此,需要新的和改进的计算方法来促进这项具有挑战性的任务。在这项工作中,我们提出了一种基于张量投票算法的局部结构信息各向异性传播的膜分割新方法。然后根据从其他体素接收到的信息对每个体素的局部结构进行细化。由于属于同一膜的体素具有连贯的结构信息,潜在的全局结构得到了强化。通过这种方式,局部信息很容易在全局尺度上整合,从而产生分割后的结构。该方法在低温断层扫描条件下玻璃化样品的断层扫描图中常见的低信噪比情况下表现良好,并且可以弥合膜上存在的间隙。通过将该方法应用于不同生物样品的断层扫描图以及与标准模板匹配程序进行定量比较,证明了该方法的性能。

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