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Fast large-scale clustering of protein structures using Gauss integrals
Authors:Harder Tim  Borg Mikael  Boomsma Wouter  Røgen Peter  Hamelryck Thomas
Institution:The Bioinformatics Section, Department of Biology, University of Copenhagen, Copenhagen, Denmark.
Abstract:MOTIVATION: Clustering protein structures is an important task in structural bioinformatics. De novo structure prediction, for example, often involves a clustering step for finding the best prediction. Other applications include assigning proteins to fold families and analyzing molecular dynamics trajectories. RESULTS: We present Pleiades, a novel approach to clustering protein structures with a rigorous mathematical underpinning. The method approximates clustering based on the root mean square deviation by first mapping structures to Gauss integral vectors--which were introduced by R?gen and co-workers--and subsequently performing K-means clustering. Conclusions: Compared to current methods, Pleiades dramatically improves on the time needed to perform clustering, and can cluster a significantly larger number of structures, while providing state-of-the-art results. The number of low energy structures generated in a typical folding study, which is in the order of 50,000 structures, can be clustered within seconds to minutes.
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