使用 AlphaFold2 和 DAQ 分数完善低温电子显微镜图的蛋白质模型。

IF 2.6 4区 生物学 Q2 BIOCHEMICAL RESEARCH METHODS Acta Crystallographica. Section D, Structural Biology Pub Date : 2023-01-01 DOI:10.1107/S2059798322011676
Genki Terashi, Xiao Wang, Daisuke Kihara
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摘要

随着越来越多的蛋白质结构模型是通过低温电子显微镜(cryo-EM)密度图确定的,如何评估模型的准确性以及如何在模型包含错误的情况下修正模型,对于确保公共数据库(PDB)中结构模型的质量变得至关重要。本文介绍了一种新的方案,用于评估根据低温电子显微镜图建立的蛋白质模型,并在模型存在潜在错误的情况下应用局部结构完善。首先,使用最近开发的基于深度学习的模型局部图评估分数 DAQ 对模型进行评估。随后的局部细化是通过修改后的 AlphaFold2 程序进行的,该程序将经过修剪的模板模型和经过修剪的多序列比对作为输入,以控制需要细化的结构区域,同时保留模型中其他更有把握的区域。一项基准研究表明,DAQ-refine 程序能持续改进初始模型中的低质量区域。在为初始结构生成的 18 个精炼模型中,DAQ 显示出与模型质量的高度相关性,并能在大多数测试案例中识别出最佳精确模型。与其他现有方法相比,DAQ-refine 的平均改进幅度更大。
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Protein model refinement for cryo-EM maps using AlphaFold2 and the DAQ score.

As more protein structure models have been determined from cryogenic electron microscopy (cryo-EM) density maps, establishing how to evaluate the model accuracy and how to correct models in cases where they contain errors is becoming crucial to ensure the quality of the structural models deposited in the public database, the PDB. Here, a new protocol is presented for evaluating a protein model built from a cryo-EM map and applying local structure refinement in the case where the model has potential errors. Firstly, model evaluation is performed using a deep-learning-based model-local map assessment score, DAQ, that has recently been developed. The subsequent local refinement is performed by a modified AlphaFold2 procedure, in which a trimmed template model and a trimmed multiple sequence alignment are provided as input to control which structure regions to refine while leaving other more confident regions of the model intact. A benchmark study showed that this protocol, DAQ-refine, consistently improves low-quality regions of the initial models. Among 18 refined models generated for an initial structure, DAQ shows a high correlation with model quality and can identify the best accurate model for most of the tested cases. The improvements obtained by DAQ-refine were on average larger than other existing methods.

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来源期刊
Acta Crystallographica. Section D, Structural Biology
Acta Crystallographica. Section D, Structural Biology BIOCHEMICAL RESEARCH METHODSBIOCHEMISTRY &-BIOCHEMISTRY & MOLECULAR BIOLOGY
CiteScore
4.50
自引率
13.60%
发文量
216
期刊介绍: Acta Crystallographica Section D welcomes the submission of articles covering any aspect of structural biology, with a particular emphasis on the structures of biological macromolecules or the methods used to determine them. Reports on new structures of biological importance may address the smallest macromolecules to the largest complex molecular machines. These structures may have been determined using any structural biology technique including crystallography, NMR, cryoEM and/or other techniques. The key criterion is that such articles must present significant new insights into biological, chemical or medical sciences. The inclusion of complementary data that support the conclusions drawn from the structural studies (such as binding studies, mass spectrometry, enzyme assays, or analysis of mutants or other modified forms of biological macromolecule) is encouraged. Methods articles may include new approaches to any aspect of biological structure determination or structure analysis but will only be accepted where they focus on new methods that are demonstrated to be of general applicability and importance to structural biology. Articles describing particularly difficult problems in structural biology are also welcomed, if the analysis would provide useful insights to others facing similar problems.
期刊最新文献
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