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一种用于自动检测冷冻电子断层扫描重建中对齐误差的深度学习方法。

A deep learning approach to the automatic detection of alignment errors in cryo-electron tomographic reconstructions.

作者信息

de Isidro-Gómez F P, Vilas J L, Losana P, Carazo J M, Sorzano C O S

机构信息

Biocomputing Unit, Centro Nacional de Biotecnologia (CNB-CSIC), Darwin, 3, Campus Universidad Autonoma, 28049 Cantoblanco, Madrid, Spain; Univ. Autonoma de Madrid, 28049 Cantoblanco, Madrid, Spain.

Biocomputing Unit, Centro Nacional de Biotecnologia (CNB-CSIC), Darwin, 3, Campus Universidad Autonoma, 28049 Cantoblanco, Madrid, Spain.

出版信息

J Struct Biol. 2024 Mar;216(1):108056. doi: 10.1016/j.jsb.2023.108056. Epub 2023 Dec 14.

Abstract

Electron tomography is an imaging technique that allows for the elucidation of three-dimensional structural information of biological specimens in a very general context, including cellular in situ observations. The approach starts by collecting a set of images at different projection directions by tilting the specimen stage inside the microscope. Therefore, a crucial preliminary step is to precisely define the acquisition geometry by aligning all the tilt images to a common reference. Errors introduced in this step will lead to the appearance of artifacts in the tomographic reconstruction, rendering them unsuitable for the sample study. Focusing on fiducial-based acquisition strategies, this work proposes a deep-learning algorithm to detect misalignment artifacts in tomographic reconstructions by analyzing the characteristics of these fiducial markers in the tomogram. In addition, we propose an algorithm designed to detect fiducial markers in the tomogram with which to feed the classification algorithm in case the alignment algorithm does not provide the location of the markers. This open-source software is available as part of the Xmipp software package inside of the Scipion framework, and also through the command-line in the standalone version of Xmipp.

摘要

电子断层扫描是一种成像技术,它能够在非常广泛的背景下阐明生物标本的三维结构信息,包括细胞原位观察。该方法首先通过在显微镜内倾斜样品台,在不同投影方向收集一组图像。因此,一个关键的初步步骤是通过将所有倾斜图像与一个共同的参考对齐来精确确定采集几何结构。此步骤中引入的误差将导致断层重建中出现伪影,使其不适用于样本研究。针对基于基准点的采集策略,本文提出一种深度学习算法,通过分析断层图像中这些基准标记的特征来检测断层重建中的未对齐伪影。此外,我们还提出一种算法,用于在对齐算法未提供标记位置时,检测断层图像中的基准标记,以便为分类算法提供输入。这个开源软件作为Scipion框架内Xmipp软件包的一部分可用,也可以通过Xmipp独立版本的命令行获取。

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