Cryo-forum: A framework for orientation recovery with uncertainty measure with the application in cryo-EM image analysis

IF 3 3区 生物学 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY
Szu-Chi Chung
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引用次数: 0

Abstract

In single-particle cryo-electron microscopy (cryo-EM), efficient determination of orientation parameters for particle images poses a significant challenge yet is crucial for reconstructing 3D structures. This task is complicated by the high noise levels in the datasets, which often include outliers, necessitating several time-consuming 2D clean-up processes. Recently, solutions based on deep learning have emerged, offering a more streamlined approach to the traditionally laborious task of orientation estimation. These solutions employ amortized inference, eliminating the need to estimate parameters individually for each image. However, these methods frequently overlook the presence of outliers and may not adequately concentrate on the components used within the network. This paper introduces a novel method using a 10-dimensional feature vector for orientation representation, extracting orientations as unit quaternions with an accompanying uncertainty metric. Furthermore, we propose a unique loss function that considers the pairwise distances between orientations, thereby enhancing the accuracy of our method. Finally, we also comprehensively evaluate the design choices in constructing the encoder network, a topic that has not received sufficient attention in the literature. Our numerical analysis demonstrates that our methodology effectively recovers orientations from 2D cryo-EM images in an end-to-end manner. Notably, the inclusion of uncertainty quantification allows for direct clean-up of the dataset at the 3D level. Lastly, we package our proposed methods into a user-friendly software suite named cryo-forum, designed for easy access by developers.

Abstract Image

Abstract Image

低温论坛:在低温电子显微镜图像分析中应用带不确定性测量的定向恢复框架
在单颗粒冷冻电镜(cryo-EM)中,有效确定颗粒图像的方向参数是一项重大挑战,但对于重建三维结构却至关重要。由于数据集中的噪声水平较高,其中往往包括异常值,因此这项任务变得更加复杂,需要进行多次耗时的二维清理过程。最近,出现了基于深度学习的解决方案,为传统上费力的方位估计任务提供了一种更简化的方法。这些解决方案采用摊销推理,无需为每幅图像单独估算参数。然而,这些方法经常会忽略异常值的存在,而且可能无法充分专注于网络中使用的组件。本文介绍了一种新方法,它使用 10 维特征向量来表示方向,并应用二次约束二次方程程序将预测方向推导为单位四元数,同时辅以不确定性度量。此外,我们还提出了一个独特的损失函数,该函数考虑了方向之间的成对距离,从而提高了我们方法的准确性。最后,我们还全面评估了构建编码器网络时的设计选择,而这一主题在文献中尚未得到足够重视。我们的数值分析表明,我们的方法以端到端的方式从二维冷冻电镜图像中有效地恢复了方向。值得注意的是,加入不确定性量化后,可以在三维层面直接清理数据集。最后,我们将所提出的方法打包成一个名为 cryo-forum 的用户友好型软件套件,方便开发人员使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of structural biology
Journal of structural biology 生物-生化与分子生物学
CiteScore
6.30
自引率
3.30%
发文量
88
审稿时长
65 days
期刊介绍: Journal of Structural Biology (JSB) has an open access mirror journal, the Journal of Structural Biology: X (JSBX), sharing the same aims and scope, editorial team, submission system and rigorous peer review. Since both journals share the same editorial system, you may submit your manuscript via either journal homepage. You will be prompted during submission (and revision) to choose in which to publish your article. The editors and reviewers are not aware of the choice you made until the article has been published online. JSB and JSBX publish papers dealing with the structural analysis of living material at every level of organization by all methods that lead to an understanding of biological function in terms of molecular and supermolecular structure. Techniques covered include: • Light microscopy including confocal microscopy • All types of electron microscopy • X-ray diffraction • Nuclear magnetic resonance • Scanning force microscopy, scanning probe microscopy, and tunneling microscopy • Digital image processing • Computational insights into structure
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