Elastic network models for understanding biomolecular machinery: from enzymes to supramolecular assemblies

, , and

Published 9 November 2005 2005 IOP Publishing Ltd
, , Citation Chakra Chennubhotla et al 2005 Phys. Biol. 2 S173 DOI 10.1088/1478-3975/2/4/S12

1478-3975/2/4/S173

Abstract

With advances in structure genomics, it is now recognized that knowledge of structure alone is insufficient to understand and control the mechanisms of biomolecular function. Additional information in the form of dynamics is needed. As demonstrated in a large number of studies, the machinery of proteins and their complexes can be understood to a good approximation by adopting Gaussian (or elastic) network models (GNM) for simplified normal mode analyses. While this approximation lacks chemical details, it provides us with a means for assessing the collective motions of large structures/assemblies and perform a comparative analysis of a series of proteins, thus providing insights into the mechanical aspects of biomolecular dynamics. In this paper, we discuss recent applications of GNM to a series of enzymes as well as large structures such as the HK97 bacteriophage viral capsids. Understanding the dynamics of large protein structures can be computationally challenging. To this end, we introduce a new approach for building a hierarchical, reduced rank representation of the protein topology and consequently the fluctuation dynamics.

Export citation and abstract BibTeX RIS

Please wait… references are loading.
10.1088/1478-3975/2/4/S12