MOTIVATION: Knowledge of the transmembrane helical topology can help identify binding sites and infer functions for membrane proteins. However, because membrane proteins are hard to solubilize and purify, only a very small amount of membrane proteins have structure and topology experimentally determined. This has motivated various computational methods for predicting the topology of membrane proteins. RESULTS: We present an improved hidden Markov model, TMMOD, for the identification and topology prediction of transmembrane proteins. Our model uses TMHMM as a prototype, but differs from TMHMM by the architecture of the submodels for loops on both sides of the membrane and also by the model training procedure. In cross-validation experiments using a set of 83 transmembrane proteins with known topology, TMMOD outperformed TMHMM and other existing methods, with an accuracy of 89% for both topology and locations. In another experiment using a separate set of 160 transmembrane proteins, TMMOD had 84% for topology and 89% for locations. When utilized for identifying transmembrane proteins from non-transmembrane proteins, particularly signal peptides, TMMOD has consistently fewer false positives than TMHMM does. Application of TMMOD to a collection of complete genomes shows that the number of predicted membrane proteins accounts for approximately 20-30% of all genes in those genomes, and that the topology where both the N- and C-termini are in the cytoplasm is dominant in these organisms except for Caenorhabditis elegans. AVAILABILITY: http://liao.cis.udel.edu/website/servers/TMMOD/
MOTIVATION: Knowledge of the transmembrane helical topology can help identify binding sites and infer functions for membrane proteins. However, because membrane proteins are hard to solubilize and purify, only a very small amount of membrane proteins have structure and topology experimentally determined. This has motivated various computational methods for predicting the topology of membrane proteins. RESULTS: We present an improved hidden Markov model, TMMOD, for the identification and topology prediction of transmembrane proteins. Our model uses TMHMM as a prototype, but differs from TMHMM by the architecture of the submodels for loops on both sides of the membrane and also by the model training procedure. In cross-validation experiments using a set of 83 transmembrane proteins with known topology, TMMOD outperformed TMHMM and other existing methods, with an accuracy of 89% for both topology and locations. In another experiment using a separate set of 160 transmembrane proteins, TMMOD had 84% for topology and 89% for locations. When utilized for identifying transmembrane proteins from non-transmembrane proteins, particularly signal peptides, TMMOD has consistently fewer false positives than TMHMM does. Application of TMMOD to a collection of complete genomes shows that the number of predicted membrane proteins accounts for approximately 20-30% of all genes in those genomes, and that the topology where both the N- and C-termini are in the cytoplasm is dominant in these organisms except for Caenorhabditis elegans. AVAILABILITY: http://liao.cis.udel.edu/website/servers/TMMOD/
Authors: Vasudha Agarwal; Pieu Naskar; Suchhanda Agasti; Gagandeep K Khurana; Poonam Vishwakarma; Andrew M Lynn; Paul A Roche; Niti Puri Journal: Biochim Biophys Acta Mol Cell Res Date: 2019-06-29 Impact factor: 4.739
Authors: Éva Nagy; Gábor Mocsár; Veronika Sebestyén; Julianna Volkó; Ferenc Papp; Katalin Tóth; Sándor Damjanovich; György Panyi; Thomas A Waldmann; Andrea Bodnár; György Vámosi Journal: Biophys J Date: 2018-05-10 Impact factor: 4.033
Authors: Gustavo Palacios; Robert B Tesh; Nazir Savji; Amelia P A Travassos da Rosa; Hilda Guzman; Ana Valeria Bussetti; Aaloki Desai; Jason Ladner; Maripaz Sanchez-Seco; W Ian Lipkin Journal: J Gen Virol Date: 2013-10-04 Impact factor: 3.891
Authors: Andrew M Kropinski; Irina V Kovalyova; Stephen J Billington; Aaron N Patrick; Brent D Butts; Jared A Guichard; Trevor J Pitcher; Carly C Guthrie; Anya D Sydlaske; Lisa M Barnhill; Kyle A Havens; Kenneth R Day; Darrel R Falk; Michael R McConnell Journal: Virology Date: 2007-09-07 Impact factor: 3.616