Title
Fragment-based identification of druggable 'hot spots' of proteins using Fourier domain correlation techniques.
Abstract
The binding sites of proteins generally contain smaller regions that provide major contributions to the binding free energy and hence are the prime targets in drug design. Screening libraries of fragment-sized compounds by NMR or X-ray crystallography demonstrates that such 'hot spot' regions bind a large variety of small organic molecules, and that a relatively high 'hit rate' is predictive of target sites that are likely to bind drug-like ligands with high affinity. Our goal is to determine the 'hot spots' computationally rather than experimentally.We have developed the FTMAP algorithm that performs global search of the entire protein surface for regions that bind a number of small organic probe molecules. The search is based on the extremely efficient fast Fourier transform (FFT) correlation approach which can sample billions of probe positions on dense translational and rotational grids, but can use only sums of correlation functions for scoring and hence is generally restricted to very simple energy expressions. The novelty of FTMAP is that we were able to incorporate and represent on grids a detailed energy expression, resulting in a very accurate identification of low-energy probe clusters. Overlapping clusters of different probes are defined as consensus sites (CSs). We show that the largest CS is generally located at the most important subsite of the protein binding site, and the nearby smaller CSs identify other important subsites. Mapping results are presented for elastase whose structure has been solved in aqueous solutions of eight organic solvents, and we show that FTMAP provides very similar information. The second application is to renin, a long-standing pharmaceutical target for the treatment of hypertension, and we show that the major CSs trace out the shape of the first approved renin inhibitor, aliskiren.FTMAP is available as a server at http://ftmap.bu.edu/.
Year
DOI
Venue
2009
10.1093/bioinformatics/btp036
Bioinformatics
Keywords
Field
DocType
fourier domain correlation technique,detailed energy expression,low-energy probe cluster,bind drug-like ligands,different probe,binding site,major css trace,binding free energy,organic solvent,ftmap algorithm,fragment-based identification,hot spot,protein conformation,internet,algorithms,binding sites,proteins
Plasma protein binding,Cluster (physics),Hot spot (veterinary medicine),Druggability,Binding site,Computer science,Fourier transform,Fast Fourier transform,Bioinformatics,Protein structure
Journal
Volume
Issue
ISSN
25
5
1367-4811
Citations 
PageRank 
References 
42
3.36
3
Authors
8
Name
Order
Citations
PageRank
Ryan Brenke1544.63
Dima Kozakov213115.72
Gwo-Yu Chuang3727.25
Dmitri Beglov4727.49
David R. Hall513611.68
Melissa R. Landon6554.66
Carla Mattos7423.36
Sandor Vajda827034.39