Tian Feifei, Tan Rui, Guo Tailin, Zhou Peng, Yang Li
School of Life Science and Engineering, Southwest Jiaotong University, Chengdu 610031, China.
Biosystems. 2013 Jul;113(1):40-9. doi: 10.1016/j.biosystems.2013.04.004. Epub 2013 May 9.
Domain-peptide recognition and interaction are fundamentally important for eukaryotic signaling and regulatory networks. It is thus essential to quantitatively infer the binding stability and specificity of such interaction based upon large-scale but low-accurate complex structure models which could be readily obtained from sophisticated molecular modeling procedure. In the present study, a new method is described for the fast and reliable prediction of domain-peptide binding affinity with coarse-grained structure models. This method is designed to tolerate strong random noises involved in domain-peptide complex structures and uses statistical modeling approach to eliminate systematic bias associated with a group of investigated samples. As a paradigm, this method was employed to model and predict the binding behavior of various peptides to four evolutionarily unrelated peptide-recognition domains (PRDs), i.e. human amph SH3, human nherf PDZ, yeast syh GYF and yeast bmh 14-3-3, and moreover, we explored the molecular mechanism and biological implication underlying the binding of cognate and noncognate peptide ligands to their domain receptors. It is expected that the newly proposed method could be further used to perform genome-wide inference of domain-peptide binding at three-dimensional structure level.
结构域-肽的识别与相互作用对于真核生物信号传导和调控网络至关重要。因此,基于可通过复杂分子建模程序轻松获得的大规模但低精度的复合物结构模型,定量推断这种相互作用的结合稳定性和特异性就显得尤为重要。在本研究中,描述了一种利用粗粒度结构模型快速可靠地预测结构域-肽结合亲和力的新方法。该方法旨在容忍结构域-肽复合物结构中存在的强随机噪声,并使用统计建模方法消除与一组研究样本相关的系统偏差。作为一个范例,该方法被用于模拟和预测各种肽与四个进化上不相关的肽识别结构域(PRD)的结合行为,即人amph SH3、人nherf PDZ、酵母syh GYF和酵母bmh 14-3-3,此外,我们还探索了同源和非同源肽配体与其结构域受体结合背后的分子机制和生物学意义。预计新提出的方法可进一步用于在三维结构水平上对结构域-肽结合进行全基因组推断。