TomoNet:简化的低温电子断层扫描软件流水线,可在灵活的晶格上自动拾取粒子。

Biological imaging Pub Date : 2024-05-09 eCollection Date: 2024-01-01 DOI:10.1017/S2633903X24000060
Hui Wang, Shiqing Liao, Xinye Yu, Jiayan Zhang, Z Hong Zhou
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引用次数: 0

摘要

低温电子断层扫描(cryoET)能够通过平均 50 万个子断层图,以接近原子的分辨率确定分子复合物的原位生物结构。虽然丰富的复合物/颗粒通常以阵列形式聚集,但在许多断层扫描中精确定位和无缝平均这些颗粒是一项重大挑战。在此,我们开发了 TomoNet,这是一款具有现代图形用户界面的软件包,可执行低温电子显微镜和子断层图平均的整个流程,以实现高分辨率。TomoNet 具有内置的自动粒子拾取和三维(3D)分类功能,并集成了常用的软件包,可简化一维、二维或三维阵列结构的高分辨率子图平均。自动粒子拾取是通过两种互补的方式完成的:一种是基于模板匹配,另一种是使用深度学习。TomoNet 的分层文件组织和可视化显示有助于实现大型 cryoET 数据集所需的高效数据管理。TomoNet 在三种数据集上的应用表明,它能够在灵活和不完美的晶格上高效、准确地拾取粒子,从而获得高分辨率的三维生物结构:类病毒粒子、细胞薄片内的细菌表层以及由核出口蛋白复合物装饰的膜。这些结果表明,TomoNet 有潜力广泛应用于各种以高分辨率原位结构为目标的低温电子显微镜项目。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TomoNet: A streamlined cryogenic electron tomography software pipeline with automatic particle picking on flexible lattices.

Cryogenic electron tomography (cryoET) is capable of determining in situ biological structures of molecular complexes at near-atomic resolution by averaging half a million subtomograms. While abundant complexes/particles are often clustered in arrays, precisely locating and seamlessly averaging such particles across many tomograms present major challenges. Here, we developed TomoNet, a software package with a modern graphical user interface to carry out the entire pipeline of cryoET and subtomogram averaging to achieve high resolution. TomoNet features built-in automatic particle picking and three-dimensional (3D) classification functions and integrates commonly used packages to streamline high-resolution subtomogram averaging for structures in 1D, 2D, or 3D arrays. Automatic particle picking is accomplished in two complementary ways: one based on template matching and the other using deep learning. TomoNet's hierarchical file organization and visual display facilitate efficient data management as required for large cryoET datasets. Applications of TomoNet to three types of datasets demonstrate its capability of efficient and accurate particle picking on flexible and imperfect lattices to obtain high-resolution 3D biological structures: virus-like particles, bacterial surface layers within cellular lamellae, and membranes decorated with nuclear egress protein complexes. These results demonstrate TomoNet's potential for broad applications to various cryoET projects targeting high-resolution in situ structures.

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