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用于识别蛋白质原纤维形成片段的三维轮廓法。

The 3D profile method for identifying fibril-forming segments of proteins.

作者信息

Thompson Michael J, Sievers Stuart A, Karanicolas John, Ivanova Magdalena I, Baker David, Eisenberg David

机构信息

Howard Hughes Medical Institute, University of California, Los Angeles, CA 90095, USA.

出版信息

Proc Natl Acad Sci U S A. 2006 Mar 14;103(11):4074-8. doi: 10.1073/pnas.0511295103. Epub 2006 Mar 7.

Abstract

Based on the crystal structure of the cross-beta spine formed by the peptide NNQQNY, we have developed a computational approach for identifying those segments of amyloidogenic proteins that themselves can form amyloid-like fibrils. The approach builds on experiments showing that hexapeptides are sufficient for forming amyloid-like fibrils. Each six-residue peptide of a protein of interest is mapped onto an ensemble of templates, or 3D profile, generated from the crystal structure of the peptide NNQQNY by small displacements of one of the two intermeshed beta-sheets relative to the other. The energy of each mapping of a sequence to the profile is evaluated by using ROSETTADESIGN, and the lowest energy match for a given peptide to the template library is taken as the putative prediction. If the energy of the putative prediction is lower than a threshold value, a prediction of fibril formation is made. This method can reach an accuracy of approximately 80% with a P value of approximately 10(-12) when a conservative energy threshold is used to separate peptides that form fibrils from those that do not. We see enrichment for positive predictions in a set of fibril-forming segments of amyloid proteins, and we illustrate the method with applications to proteins of interest in amyloid research.

摘要

基于由肽NNQQNY形成的交叉β-脊柱的晶体结构,我们开发了一种计算方法,用于识别淀粉样蛋白原性蛋白质中那些自身能够形成类淀粉样纤维的片段。该方法基于实验,这些实验表明六肽足以形成类淀粉样纤维。将感兴趣蛋白质的每个六残基肽映射到一组模板上,或称为3D轮廓,这些模板是通过两个相互啮合的β-折叠中的一个相对于另一个的小位移从肽NNQQNY的晶体结构生成的。通过使用ROSETTADESIGN评估序列到轮廓的每次映射的能量,并将给定肽与模板库的最低能量匹配作为推定预测。如果推定预测的能量低于阈值,则做出纤维形成的预测。当使用保守的能量阈值来区分形成纤维的肽和不形成纤维的肽时,该方法在P值约为10^(-12)时可以达到约80%的准确率。我们在一组淀粉样蛋白的纤维形成片段中看到了阳性预测的富集,并且我们通过将该方法应用于淀粉样研究中感兴趣的蛋白质来说明该方法。

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