Banting and Best Department of Medical Research, The Donnelly Centre, University of Toronto, Toronto, Ontario, Canada.
Mol Syst Biol. 2011 Apr 26;7:484. doi: 10.1038/msb.2011.18.
Modular protein interaction domains form the building blocks of eukaryotic signaling pathways. Many of them, known as peptide recognition domains, mediate protein interactions by recognizing short, linear amino acid stretches on the surface of their cognate partners with high specificity. Residues in these stretches are usually assumed to contribute independently to binding, which has led to a simplified understanding of protein interactions. Conversely, we observe in large binding peptide data sets that different residue positions display highly significant correlations for many domains in three distinct families (PDZ, SH3 and WW). These correlation patterns reveal a widespread occurrence of multiple binding specificities and give novel structural insights into protein interactions. For example, we predict a new binding mode of PDZ domains and structurally rationalize it for DLG1 PDZ1. We show that multiple specificity more accurately predicts protein interactions and experimentally validate some of the predictions for the human proteins DLG1 and SCRIB. Overall, our results reveal a rich specificity landscape in peptide recognition domains, suggesting new ways of encoding specificity in protein interaction networks.
模块化蛋白质相互作用结构域构成了真核信号通路的基石。其中许多被称为肽识别结构域,通过识别其同源伴侣表面上的短线性氨基酸片段,以高度特异性介导蛋白质相互作用。这些片段中的残基通常被认为独立地参与结合,这导致了对蛋白质相互作用的简化理解。相反,我们在三个不同家族(PDZ、SH3 和 WW)的大量结合肽数据集观察到,对于许多结构域,不同的残基位置显示出高度显著的相关性。这些相关模式揭示了多种结合特异性的广泛存在,并为蛋白质相互作用提供了新的结构见解。例如,我们预测了 PDZ 结构域的一种新的结合模式,并为 DLG1 PDZ1 进行了结构合理化。我们表明,多种特异性更准确地预测了蛋白质相互作用,并通过实验验证了一些人类蛋白 DLG1 和 SCRIB 的预测。总的来说,我们的结果揭示了肽识别结构域中丰富的特异性景观,这表明在蛋白质相互作用网络中编码特异性的新方法。