Structure-driven Approaches to Protein-protein Recognition
Author | : Julian Mintseris |
Publisher | : |
Total Pages | : 242 |
Release | : 2006 |
ISBN-10 | : OCLC:302250951 |
ISBN-13 | : |
Rating | : 4/5 (51 Downloads) |
Book excerpt: Abstract: Much of our understanding of protein function arises from the cellular context in which the protein operates. While two proteins may be functionally linked in a variety of ways, the most direct way for them to interact is through physical recognition of the protein surface followed by a binding event. If the function of a single protein can be understood in terms of its interactions, then the function of a biological system as a whole can be viewed through the network of protein interactions. I use structure-driven approaches to gain additional insight into the organization of protein interaction networks by showing distinct differences between transient and obligate protein interactions. This important distinction can be detected on a purely structural level by comparing the pair-wise contact frequencies between different types of atoms at the protein complex interface. On the functional level, the distinction can be made by looking at the curated ontology annotations. Proteins involved in transient and obligate interactions have been subject to different levels of evolutionary pressure and traces of these differences can be detected by considering their evolutionary histories. Residues in the interfaces of obligate complexes tend to evolve at a relatively slower rate, allowing them to co-evolve with their interacting partners. In contrast, the plasticity inherent in transient interactions leads to an increased rate of substitution for the interface residues and leaves little or no evidence of correlated mutations. Recent advances in high-throughput proteomic technologies combined with computational approaches have identified large numbers of putative novel interactions. However both experimental and computational approaches tend to do better identifying components of large obligate complexes, while fleeting interactions crucial in systems such as signaling cascades and immune response are harder to predict. To this end, I developed new representations of protein structure and derived empirical potentials for protein-protein docking, improving on our ability to predict the complex structures of transient complexes from individually crystallized components.