Stratmann Dirk, van Heijenoort Carine, Guittet Eric
Laboratoire de Chimie et Biologie Structurales, ICSN-CNRS, Gif-sur-Yvette, France.
Bioinformatics. 2009 Feb 15;25(4):474-81. doi: 10.1093/bioinformatics/btn638. Epub 2008 Dec 12.
A prerequisite for any protein study by NMR is the assignment of the resonances from the (15)N-(1)H HSQC spectrum to their corresponding atoms of the protein backbone. Usually, this assignment is obtained by analyzing triple resonance NMR experiments. An alternative assignment strategy exploits the information given by an already available 3D structure of the same or a homologous protein. Up to now, the algorithms that have been developed around the structure-based assignment strategy have the important drawbacks that they cannot guarantee a high assignment accuracy near to 100%.
We propose here a new program, called NOEnet, implementing an efficient complete search algorithm that ensures the correctness of the assignment results. NOEnet exploits the network character of unambiguous NOE constraints to realize an exhaustive search of all matching possibilities of the NOE network onto the structural one. NOEnet has been successfully tested on EIN, a large protein of 28 kDa, using only NOE data. The complete search of NOEnet finds all possible assignments compatible with experimental data that can be defined as an assignment ensemble. We show that multiple assignment possibilities of large NOE networks are restricted to a small spatial assignment range (SAR), so that assignment ensembles, obtained from accessible experimental data, are precise enough to be used for functional proteins studies, like protein-ligand interaction or protein dynamics studies. We believe that NOEnet can become a major tool for the structure-based backbone resonance assignment strategy in NMR.
The NOEnet program will be available under: http://www.icsn.cnrs-gif.fr/download/nmr.
通过核磁共振(NMR)进行任何蛋白质研究的一个先决条件是将(15)N-(1)H HSQC谱中的共振峰与其蛋白质主链的相应原子进行归属。通常,这种归属是通过分析三重共振NMR实验来实现的。另一种归属策略利用相同或同源蛋白质已有的三维结构所提供的信息。到目前为止,围绕基于结构的归属策略开发的算法存在重要缺陷,即它们不能保证接近100%的高归属准确率。
我们在此提出一个名为NOEnet的新程序,它实现了一种高效的完全搜索算法,可确保归属结果的正确性。NOEnet利用明确的NOE约束的网络特性,对NOE网络与结构网络的所有匹配可能性进行穷举搜索。仅使用NOE数据,NOEnet已在28 kDa的大蛋白EIN上成功测试。NOEnet的完全搜索找到了所有与实验数据兼容的可能归属,这些归属可定义为一个归属集合。我们表明,大NOE网络的多种归属可能性被限制在一个较小的空间归属范围(SAR)内,因此从可获取的实验数据获得的归属集合精确到足以用于功能蛋白质研究,如蛋白质-配体相互作用或蛋白质动力学研究。我们相信,NOEnet可以成为NMR中基于结构的主链共振归属策略的主要工具。
NOEnet程序可在以下网址获取:http://www.icsn.cnrs-gif.fr/download/nmr 。