Refinement of AlphaFold2 models against experimental and hybrid cryo-EM density maps.

Q3 Biochemistry, Genetics and Molecular Biology QRB Discovery Pub Date : 2022-01-01 DOI:10.1017/qrd.2022.13
Maytha Alshammari, Willy Wriggers, Jiangwen Sun, Jing He
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引用次数: 3

Abstract

Recent breakthroughs in deep learning-based protein structure prediction show that it is possible to obtain highly accurate models for a wide range of difficult protein targets for which only the amino acid sequence is known. The availability of accurately predicted models from sequences can potentially revolutionise many modelling approaches in structural biology, including the interpretation of cryo-EM density maps. Although atomic structures can be readily solved from cryo-EM maps of better than 4 Å resolution, it is still challenging to determine accurate models from lower-resolution density maps. Here, we report on the benefits of models predicted by AlphaFold2 (the best-performing structure prediction method at CASP14) on cryo-EM refinement using the Phenix refinement suite for AlphaFold2 models. To study the robustness of model refinement at a lower resolution of interest, we introduced hybrid maps (i.e. experimental cryo-EM maps) filtered to lower resolutions by real-space convolution. The AlphaFold2 models were refined to attain good accuracies above 0.8 TM scores for 9 of the 13 cryo-EM maps. TM scores improved for AlphaFold2 models refined against all 13 cryo-EM maps of better than 4.5 Å resolution, 8 hybrid maps of 6 Å resolution, and 3 hybrid maps of 8 Å resolution. The results show that it is possible (at least with the Phenix protocol) to extend the refinement success below 4.5 Å resolution. We even found isolated cases in which resolution lowering was slightly beneficial for refinement, suggesting that high-resolution cryo-EM maps might sometimes trap AlphaFold2 models in local optima.

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针对实验和混合低温电镜密度图的AlphaFold2模型的改进。
最近在基于深度学习的蛋白质结构预测方面的突破表明,对于只有氨基酸序列已知的各种困难的蛋白质靶点,有可能获得高度精确的模型。从序列中准确预测模型的可用性可能会彻底改变结构生物学中的许多建模方法,包括低温电镜密度图的解释。虽然原子结构可以很容易地从高于4 Å分辨率的低温电镜图中求解,但从低分辨率的密度图中确定精确的模型仍然具有挑战性。在这里,我们报告了AlphaFold2 (CASP14上表现最好的结构预测方法)预测的模型在使用AlphaFold2模型的Phenix优化套件进行冷冻电镜优化时的好处。为了研究模型在低分辨率下的鲁棒性,我们引入了混合地图(即实验低温电镜地图),通过实空间卷积过滤到低分辨率。对AlphaFold2模型进行了改进,使其在13张冷冻电镜图中有9张的TM得分超过0.8。针对所有13张分辨率高于4.5 Å的cro - em图、8张分辨率为6 Å的混合图和3张分辨率为8 Å的混合图,AlphaFold2模型的TM分数都有所提高。结果表明,有可能(至少使用Phenix协议)将细化成功扩展到4.5 Å分辨率以下。我们甚至发现在个别情况下,降低分辨率对改进略有好处,这表明高分辨率低温电镜图有时可能会使AlphaFold2模型处于局部最优状态。
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来源期刊
QRB Discovery
QRB Discovery Biochemistry, Genetics and Molecular Biology-Biophysics
CiteScore
3.60
自引率
0.00%
发文量
18
审稿时长
12 weeks
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