Research Article
Automated scaffold selection for enzyme design
Article first published online: 19 MAR 2009
DOI: 10.1002/prot.22418
Copyright © 2009 Wiley-Liss, Inc.
Issue

Proteins: Structure, Function, and Bioinformatics
Volume 77, Issue 1, pages 74–83, October 2009
Additional Information
How to Cite
Malisi, C., Kohlbacher, O. and Höcker, B. (2009), Automated scaffold selection for enzyme design. Proteins: Structure, Function, and Bioinformatics, 77: 74–83. doi: 10.1002/prot.22418
Publication History
- Issue published online: 7 AUG 2009
- Article first published online: 19 MAR 2009
- Accepted manuscript online: 19 MAR 2009 12:00AM EST
- Manuscript Accepted: 25 FEB 2009
- Manuscript Revised: 7 FEB 2009
- Manuscript Received: 15 OCT 2008
Funded by
- Max Planck Society (Institutional Funds)
Keywords:
- protein design;
- active site recapitulation;
- computational biology;
- structural bioinformatics;
- motif search
Abstract
A major goal of computational protein design is the construction of novel functions on existing protein scaffolds. There the first question is which scaffold is suitable for a specific reaction. Given a set of catalytic residues and their spatial arrangement, one wants to identify a protein scaffold that can host this active site. Here, we present an algorithm called ScaffoldSelection that is able to rapidly search large sets of protein structures for potential attachment sites of an enzymatic motif. The method consists of two steps; it first identifies pairs of backbone positions in pocket-like regions. Then, it combines these to complete attachment sites using a graph theoretical approach. Identified matches are assessed for their ability to accommodate the substrate or transition state. A representative set of structures from the Protein Data Bank (∼3500) was searched for backbone geometries that support the catalytic residues for 12 chemical reactions. Recapitulation of native active site geometries is used as a benchmark for the performance of the program. The native motif is identified in all 12 test cases, ranking it in the top percentile in 5 out of 12. The algorithm is fast and efficient, although dependent on the complexity of the motif. Comparisons to other methods show that ScaffoldSelection performs equally well in terms of accuracy and far better in terms of speed. Thus, ScaffoldSelection will aid future computational protein design experiments by preselecting protein scaffolds that are suitable for a specific reaction type and the introduction of a predefined amino acid motif. Proteins 2009. © 2009 Wiley-Liss, Inc.

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