基于直方图的异常值剖面图,用于从冷冻电子显微镜得出的原子结构。

Lin Chen, Jing He
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摘要

随着越来越多的原子结构由冷冻电镜(cryo-EM)密度图确定,对这些结构进行验证是一项重要任务。我们对 2016 年 12 月之前发布的低温电子显微镜结构与 2017 年至 2019 年之间发布的低温电子显微镜结构的变化进行了比较分析,并报告了分析结果。根据分辨率优于 6 Å 的密度图创建的冷冻电镜模型被分为六个数据集。采用了基于直方图的离群点评分(HBOS),并从蛋白质数据库收集了验证报告。结果表明,2016 年 12 月之后发布的 EM 结构的整体质量优于 2017 年之前发布的结构。除了高分辨率数据集(高于 4 Å)中的亮氨酸、苯丙氨酸和丝氨酸外,大多数残基类型的构象质量可能都有所改善。我们观察到,根据 0-4 Å 分辨率密度图解算出的结构与根据 4-6 Å 分辨率密度图得出的结构具有几乎相同的 HBOS 曲线。
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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A Histogram-based Outlier Profile for Atomic Structures Derived from Cryo-Electron Microscopy.

As more atomic structures are determined from cryo-electron microscopy (cryo-EM) density maps, validation of such structures is an important task. We report findings after analyzing the change of cryo-EM structures in a comparison between those released by December 2016 and those released between 2017 and 2019. The cryo-EM models created from density maps with resolution better than 6 Å were divided into six data sets. A histogram-based outlier score (HBOS) was implemented and validation reports were collected from the Protein Data Bank. The results suggest that the overall quality of EM structures released after December 2016 is better than that of structures released before 2017. The conformation qualities of most residue types might have been improved, except for Leucine, Phenylalanine, and Serine in high-resolution datasets (higher than 4 Å). We observe that structures solved from 0-4 Å resolution density maps have an almost identical HBOS profile as that of structures derived from density maps with 4-6 Å resolution.

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