Betel Doron, Breitkreuz Kevin E, Isserlin Ruth, Dewar-Darch Danielle, Tyers Mike, Hogue Christopher W V
Samuel Lunenfeld Research Institute, Mt. Sinai Hospital, Toronto, Ontario, Canada.
PLoS Comput Biol. 2007 Sep;3(9):1783-9. doi: 10.1371/journal.pcbi.0030182.
The multitude of functions performed in the cell are largely controlled by a set of carefully orchestrated protein interactions often facilitated by specific binding of conserved domains in the interacting proteins. Interacting domains commonly exhibit distinct binding specificity to short and conserved recognition peptides called binding profiles. Although many conserved domains are known in nature, only a few have well-characterized binding profiles. Here, we describe a novel predictive method known as domain-motif interactions from structural topology (D-MIST) for elucidating the binding profiles of interacting domains. A set of domains and their corresponding binding profiles were derived from extant protein structures and protein interaction data and then used to predict novel protein interactions in yeast. A number of the predicted interactions were verified experimentally, including new interactions of the mitotic exit network, RNA polymerases, nucleotide metabolism enzymes, and the chaperone complex. These results demonstrate that new protein interactions can be predicted exclusively from sequence information.
细胞中执行的众多功能很大程度上由一组精心编排的蛋白质相互作用控制,这些相互作用通常由相互作用蛋白质中保守结构域的特异性结合来促进。相互作用结构域通常对称为结合谱的短而保守的识别肽表现出独特的结合特异性。尽管自然界中已知许多保守结构域,但只有少数具有特征明确的结合谱。在这里,我们描述了一种称为基于结构拓扑的结构域-基序相互作用(D-MIST)的新型预测方法,用于阐明相互作用结构域的结合谱。一组结构域及其相应的结合谱来自现有的蛋白质结构和蛋白质相互作用数据,然后用于预测酵母中的新型蛋白质相互作用。许多预测的相互作用通过实验得到了验证,包括有丝分裂退出网络、RNA聚合酶、核苷酸代谢酶和伴侣复合体的新相互作用。这些结果表明,可以仅从序列信息预测新的蛋白质相互作用。