Department of Electrical Engineering, Stanford University, Stanford, CA, USA.
J Struct Biol. 2010 Apr;170(1):134-45. doi: 10.1016/j.jsb.2009.12.015. Epub 2009 Dec 24.
Cryogenic electron tomography (cryo-ET) has gained increasing interest in recent years due to its ability to image whole cells and subcellular structures in 3D at nanometer resolution in their native environment. However, due to dose restrictions and the inability to acquire high tilt angle images, the reconstructed volumes are noisy and have missing information. Thus, features are unreliable, and precision extraction of the cell boundary is difficult, manual and time intensive. This paper presents an efficient recursive algorithm called BLASTED (Boundary Localization using Adaptive Shape and Texture Discovery) to automatically extract the cell boundary using a conditional random field (CRF) framework in which boundary points and shape are jointly inferred. The algorithm learns the texture of the boundary region progressively, and uses a global shape model and shape-dependent features to propose candidate boundary points on a slice of the membrane. It then updates the shape of that slice by accepting the appropriate candidate points using local spatial clustering, the global shape model, and trained boosted texture classifiers. The BLASTED algorithm segmented the cell membrane over an average of 93% of the length of the cell in 19 difficult cryo-ET datasets.
近年来,由于其能够在纳米分辨率下对活细胞和亚细胞结构进行 3D 成像,且在其天然环境下进行,低温电子断层扫描(cryo-ET)技术受到了越来越多的关注。然而,由于剂量限制和无法获取高倾斜角度图像,重建的体积存在噪声且信息缺失。因此,特征不可靠,细胞边界的精确提取变得困难,这既耗时又费力。本文提出了一种高效的递归算法,称为 BLASTED(使用自适应形状和纹理发现进行边界定位),它使用条件随机场(CRF)框架自动提取边界,在该框架中,边界点和形状被联合推断。该算法逐步学习边界区域的纹理,并使用全局形状模型和与形状相关的特征在膜的一个切片上提出候选边界点。然后,它通过使用局部空间聚类、全局形状模型和训练有素的提升纹理分类器接受适当的候选点来更新该切片的形状。BLASTED 算法在 19 个困难的 cryo-ET 数据集上平均分割了细胞膜,其长度超过细胞长度的 93%。