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首页> 外文期刊>Journal of Biomolecular NMR >Robust and highly accurate automatic NOESY assignment and structure determination with Rosetta
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Robust and highly accurate automatic NOESY assignment and structure determination with Rosetta

机译:使用Rosetta进行鲁棒且高度准确的自动NOESY分配和结构确定

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摘要

We have developed a novel and robust approach for automatic and unsupervised simultaneous nuclear Overhauser effect (NOE) assignment and structure determination within the CS-Rosetta framework. Starting from unassigned peak lists and chemical shift assignments, auto- NOE-Rosetta determines NOE cross-peak assignments and generates structural models. The approach tolerates incomplete and raw NOE peak lists as well as incomplete or partially incorrect chemical shift assignments, and its performance has been tested on 50 protein targets ranging from 50 to 200 residues in size. We find a significantly improved performance compared to established programs, particularly for larger proteins and for NOE data obtained on perdeuterated protein samples. X-ray crystallographic structures allowed comparison of Rosetta and conventional, PDB-deposited, NMR models in 20 of 50 test cases. The unsupervised autoNOE-Rosetta models were often of significantly higher accuracy than the corresponding expertsupervised NMR models deposited in the PDB. We also tested the method with unrefined peak lists and found that performance was nearly as good as for refined peak lists. Finally, demonstrating our method’s remarkable robustness against problematic input data, we provided correct models for an incorrect PDB-deposited NMR solution structure.
机译:我们为CS-Rosetta框架内的自动和无监督同时核Overhauser效应(NOE)分配和结构确定开发了一种新颖而强大的方法。从未分配的峰列表和化学位移分配开始,自动NOE-Rosetta确定NOE跨峰分配并生成结构模型。该方法可以耐受不完整和原始的NOE峰列表,以及不完全或部分不正确的化学位移分配,并且已对50种蛋白质目标(大小从50到200个残基)进行了测试。与已建立的程序相比,我们发现性能得到了显着提高,尤其是对于较大的蛋白质和在经过氘化的蛋白质样品上获得的NOE数据。 X射线晶体学结构允许在50个测试案例中的20个中比较Rosetta和传统的PDB沉积的NMR模型。无监督的autoNOE-Rosetta模型的准确度通常比存放在PDB中的相应的专家监督的NMR模型高得多。我们还使用未精简的峰列表测试了该方法,发现性能几乎与精简的峰列表一样好。最后,展示了我们的方法对有问题的输入数据的出色鲁棒性,我们为不正确的PDB沉积的NMR溶液结构提供了正确的模型。

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