Furnham Nicholas, de Bakker Paul Iw, Gore Swanand, Burke David F, Blundell Tom L
Department of Biochemistry, Sanger Building, University of Cambridge, 80 Tennis Court Road, Cambridge, CB2 1GA, UK.
BMC Struct Biol. 2008 Jan 31;8:7. doi: 10.1186/1472-6807-8-7.
Although comparative modelling is routinely used to produce three-dimensional models of proteins, very few automated approaches are formulated in a way that allows inclusion of restraints derived from experimental data as well as those from the structures of homologues. Furthermore, proteins are usually described as a single conformer, rather than an ensemble that represents the heterogeneity and inaccuracy of experimentally determined protein structures. Here we address these issues by exploring the application of the restraint-based conformational space search engine, RAPPER, which has previously been developed for rebuilding experimentally defined protein structures and for fitting models to electron density derived from X-ray diffraction analyses.
A new application of RAPPER for comparative modelling uses positional restraints and knowledge-based sampling to generate models with accuracies comparable to other leading modelling tools. Knowledge-based predictions are based on geometrical features of the homologous templates and rules concerning main-chain and side-chain conformations. By directly changing the restraints derived from available templates we estimate the accuracy limits of the method in comparative modelling.
The application of RAPPER to comparative modelling provides an effective means of exploring the conformational space available to a target sequence. Enhanced methods for generating positional restraints can greatly improve structure prediction. Generation of an ensemble of solutions that are consistent with both target sequence and knowledge derived from the template structures provides a more appropriate representation of a structural prediction than a single model. By formulating homologous structural information as sets of restraints we can begin to consider how comparative models might be used to inform conformer generation from sparse experimental data.
尽管比较建模经常用于生成蛋白质的三维模型,但很少有自动化方法能以一种既纳入来自实验数据的约束又纳入来自同源物结构的约束的方式来构建。此外,蛋白质通常被描述为单一构象体,而非代表实验测定的蛋白质结构的异质性和不准确性的一组构象体。在此,我们通过探索基于约束的构象空间搜索引擎RAPPER的应用来解决这些问题,该引擎此前已被开发用于重建实验确定的蛋白质结构以及使模型与X射线衍射分析得出的电子密度相拟合。
RAPPER在比较建模中的新应用利用位置约束和基于知识的采样来生成与其他领先建模工具精度相当的模型。基于知识的预测基于同源模板的几何特征以及关于主链和侧链构象的规则。通过直接改变从可用模板得出的约束,我们估计了该方法在比较建模中的精度极限。
将RAPPER应用于比较建模提供了一种探索目标序列可用构象空间的有效方法。增强的生成位置约束的方法可极大地改善结构预测。生成与目标序列以及从模板结构得出的知识均一致的一组解决方案,比单一模型能更恰当地表示结构预测。通过将同源结构信息表述为约束集,我们可以开始考虑如何利用比较模型从稀疏的实验数据中为构象体生成提供信息。