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首页> 外文期刊>The journal of physical chemistry, B. Condensed matter, materials, surfaces, interfaces & biophysical >Generating Intrinsically Disordered Protein Conformational Ensembles from a Database of Ramachandran Space Pair Residue Probabilities Using a Markov Chain
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Generating Intrinsically Disordered Protein Conformational Ensembles from a Database of Ramachandran Space Pair Residue Probabilities Using a Markov Chain

机译:使用Markov链从Ramachandran空间对残留概率数据库产生本质上无序的蛋白质整合集合

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摘要

Intrinsically disordered proteins (IDPs), involved in regulatory pathways and cell signaling, sample a range of conformations. Constructing structural ensembles of IDPs is a difficult task for both experiment and simulation. In this work, we produce potential IDP ensembles using an existing database of pair residue phi and psi angle probabilities chosen from turn, coil, and bend parts of sequences from the Protein Data Bank. For all residue pair types, a k-means-based discretization is used to create a set of rotamers and their probabilities in this pair Ramachandran space. For a given sequence, a Markov-based probabilistic algorithm is used to create Ramachandran space database-Markov ensembles that are converted to Cartesian coordinates of the backbone atoms. From these Cartesian coordinates and phi and psi dihedral angles of a sequence, various observables: the radius of gyration and shape parameters, the distance probability distribution that is related to the small-angle X-ray scattering intensity, atom-atom contact percentages, local structural information, NMR three- bond J couplings, CA chemical shifts, and residual dipolar couplings are evaluated. A benchmark set of ensembles for 16 residue, regular sequences is constructed and used to validate the method and to explore the implications of the database for some of the above-mentioned observables. Then, we examine a set of nonapeptides of the form EGAAXAASS where X denotes residues of different characters. These peptides were studied by NMR, and subsequent molecular dynamics (MD) simulations were carried out using various force fields to find which one best agrees with the NMR data. Our analysis of these peptides shows that the combination of the database and the Markov algorithm yields ensembles that agree very well with the NMR and MD results for the above-listed observables. Thus, this database-Markov method is a promising method to generate IDP conformational ensembles.
机译:本质无序的蛋白质(IDP),参与调节途径和细胞信号传导,样品一定的构象。构建IDP的结构集合是实验和仿真的难以任务。在这项工作中,我们使用现有的对残留物数据库和从蛋白质数据库的序列的序列的弯曲部分选择的现有数据库产生潜在的IDP系列。对于所有残留物对类型,基于K均值的离散化用于在该对Ramachandran空间中创建一组旋转液器及其概率。对于给定序列,基于Markov的概率算法用于创建Ramachandran空间数据库-Markov集合,该标签被转换为骨干原子的笛卡尔坐标。从这些笛卡尔坐标和PHI和PSI二面角度的序列,各种可观察到:环绕和形状参数的半径,距离概率分布与小角度X射线散射强度相关,原子原子接触百分比,本地评估结构信息,NMR三键J联轴器,CA化学换档和残留的双极联轴器。为16个残差的基准集合集,常规序列构造并用于验证该方法并探索数据库对上述一些可观察者的影响。然后,我们研究了EGAAXAASS形式的一组非肽,其中X表示不同特征的残基。通过NMR研究了这些肽,并使用各种力场进行随后的分子动力学(MD)模拟,以找到最佳与NMR数据一致的域。我们对这些肽的分析表明,数据库和马尔可夫算法的组合产生了与上述可观察到的NMR和MD结果非常吻合的合奏。因此,该数据库-Markov方法是生成IDP构象集合的有希望的方法。

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