首页> 外文期刊>Acta crystallographica. Section D, Structural biology >Protein model refinement for cryo-EM maps using AlphaFold2 and the DAQ score
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Protein model refinement for cryo-EM maps using AlphaFold2 and the DAQ score

机译:使用 AlphaFold2 和 DAQ 评分对冷冻电镜图谱进行蛋白质模型细化

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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.
机译:随着越来越多的蛋白质结构模型决定从低温电子显微镜(低温电子显微镜)密度地图,建立如何评估模型的准确性和如何正确的模型是在这种情况下,它们包含错误成为至关重要的,以确保质量存入公共结构模型数据库,PDB。提出了评估蛋白质模型建立从低温电子显微镜图和应用局部结构细化的情况下,模型潜在的错误。执行使用deep-learning-based model-local采集地图评估分数,最近发展。由一个修改AlphaFold2过程,修剪模板模型和修剪多重序列比对提供作为输入控制结构区域细化而其他地区更有信心完整的模型。协议,DAQ-refine,持续改善低质量的区域的初始模型。18精制生成一个初始模型结构,采集显示了高度的相关性模型质量和可以识别最好的准确模型的测试用例。通过DAQ-refine在改善平均比现有的其他方法。

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