| Literature DB >> 24613488 |
Yonatan Aizner1, Oz Sharabi1, Jason Shirian1, George R Dakwar1, Marina Risman1, Orly Avraham1, Julia Shifman2.
Abstract
Our understanding of protein evolution would greatly benefit from mapping of binding landscapes, i.e., changes in protein-protein binding affinity due to all single mutations. However, experimental generation of such landscapes is a tedious task due to a large number of possible mutations. Here, we use a simple computational protocol to map the binding landscape for two homologous high-affinity complexes, involving a snake toxin fasciculin and acetylcholinesterase from two different species. To verify our computational predictions, we experimentally measure binding between 25 Fas mutants and the 2 enzymes. Both computational and experimental results demonstrate that the Fas sequence is close to the optimum when interacting with its targets, yet a few mutations could further improve Kd, kon, and koff. Our computational predictions agree well with experimental results and generate distributions similar to those observed in other high-affinity PPIs, demonstrating the potential of simple computational protocols in capturing realistic binding landscapes.Mesh:
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Year: 2014 PMID: 24613488 DOI: 10.1016/j.str.2014.01.012
Source DB: PubMed Journal: Structure ISSN: 0969-2126 Impact factor: 5.006