Title of article
T-RMSD: A Fine-grained, Structure-based Classification Method and its Application to the Functional Characterization of TNF Receptors
Author/Authors
Cedrik Magis، نويسنده , , François Stricher، نويسنده , , Almer M. van der Sloot، نويسنده , , Luis Serrano، نويسنده , , Cedric Notredame، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2010
Pages
13
From page
605
To page
617
Abstract
This study addresses the relation between structural and functional similarity in proteins. We introduce a novel method named tree based on root mean square deviation (T-RMSD), which uses distance RMSD (dRMSD) variations to build fine-grained structure-based classifications of proteins. The main improvement of the T-RMSD over similar methods, such as Dali, is its capacity to produce the equivalent of a bootstrap value for each cluster node. We validated our approach on two domain families studied extensively for their role in many biological and pathological pathways: the small GTPase RAS superfamily and the cysteine-rich domains (CRDs) associated with the tumor necrosis factor receptors (TNFRs) family. Our analysis showed that T-RMSD is able to automatically recover and refine existing classifications. In the case of the small GTPase ARF subfamily, T-RMSD can distinguish GTP- from GDP-bound states, while in the case of CRDs it can identify two new subgroups associated with well defined functional features (ligand binding and formation of ligand pre-assembly complex). We show how hidden Markov models (HMMs) can be built on these new groups and propose a methodology to use these models simultaneously in order to do fine-grained functional genomic annotation without known 3D structures. T-RMSD, an open source freeware incorporated in the T-Coffee package, is available online.
Keywords
functional classification , structural classification , multiple sequence alignment , Tumor Necrosis Factor Receptor , cysteine-rich domain
Journal title
Journal of Molecular Biology
Serial Year
2010
Journal title
Journal of Molecular Biology
Record number
1251966
Link To Document