| Literature DB >> 23349097 |
Fabian Dey1, Qiangfeng Cliff Zhang, Donald Petrey, Barry Honig.
Abstract
We outline a set of strategies to infer protein function from structure. The overall approach depends on extensive use of homology modeling, the exploitation of a wide range of global and local geometric relationships between protein structures and the use of machine learning techniques. The combination of modeling with broad searches of protein structure space defines a "structural BLAST" approach to infer function with high genomic coverage. Applications are described to the prediction of protein-protein and protein-ligand interactions. In the context of protein-protein interactions, our structure-based prediction algorithm, PrePPI, has comparable accuracy to high-throughput experiments. An essential feature of PrePPI involves the use of Bayesian methods to combine structure-derived information with non-structural evidence (e.g. co-expression) to assign a likelihood for each predicted interaction. This, combined with a structural BLAST approach significantly expands the range of applications of protein structure in the annotation of protein function, including systems level biological applications where it has previously played little role.Mesh:
Substances:
Year: 2013 PMID: 23349097 PMCID: PMC3610042 DOI: 10.1002/pro.2225
Source DB: PubMed Journal: Protein Sci ISSN: 0961-8368 Impact factor: 6.725