Tan Xuqian, Boniuk Ethan, Abraham Anisha, Zhou Xueting, Yu Zhili, Ludtke Steven J, Wang Zhao
Verna and Marrs McLean Department of Biochemistry and Molecular Pharmacology, Baylor College of Medicine, Houston, TX 77030, USA.
Bioengineering Program, Rice University, Houston, TX 77030, USA.
bioRxiv. 2024 Nov 8:2024.11.06.622356. doi: 10.1101/2024.11.06.622356.
Electron cryo-tomography (cryo-ET) is a powerful imaging tool that allows three-dimensional visualization of subcellular architecture. During morphological analysis, reliable tomogram segmentation can only be achieved through high-quality data. However, unlike single-particle analysis or subtomogram averaging, the field lacks a useful quantitative measurement of cellular tomogram quality. Currently, the most prevalent method to determine cellular tomogram resolvability is an empirical judgment by experts, which is time-consuming. Methods like FSC between split tilt series suffer from severe geometrical artifacts. We address this gap with a neural network model to predict per-slice resolvability that can apply to tomograms collected from various species and magnifications. We introduce a novel metric, "TomoScore", providing a single-value evaluation of cellular tomogram quality, which is a powerful tool for pre-screening tomograms for subsequent automatic segmentation. We further explore the relationship between accumulated electron dose and resulting quality, suggesting an optimum dose range for cryo-ET data collection. Overall, our study streamlines data processing and reduces the need for human involvement during pre-selection for tomogram segmentation.
电子冷冻断层扫描(cryo-ET)是一种强大的成像工具,可实现亚细胞结构的三维可视化。在形态学分析过程中,只有通过高质量的数据才能实现可靠的断层扫描分割。然而,与单颗粒分析或亚断层平均不同,该领域缺乏对细胞断层扫描质量的有用定量测量。目前,确定细胞断层扫描分辨率的最普遍方法是专家的经验判断,这很耗时。像分裂倾斜系列之间的傅里叶壳相关(FSC)等方法存在严重的几何伪影。我们用一个神经网络模型来填补这一空白,以预测可应用于从各种物种和放大倍数收集的断层扫描的每切片分辨率。我们引入了一种新的指标“TomoScore”,对细胞断层扫描质量进行单值评估,这是一种用于对断层扫描进行预筛选以进行后续自动分割的强大工具。我们进一步探索了累积电子剂量与所得质量之间的关系,提出了冷冻电子断层扫描数据采集的最佳剂量范围。总体而言,我们的研究简化了数据处理,并减少了断层扫描分割预选择过程中对人工参与的需求。