Predicting transmembrane protein topology with a hidden markov model: application to complete genomes11Edited by F. Cohen — Anders Krogh (2001) | RDL Network
We describe and validate a new membrane protein topology prediction method, TMHMM, based on a hidden Markov model. We present a detailed analysis of TMHMM’s performance, and show that it correctly predicts 97–98 % of the transmembrane helices. Additionally, TMHMM can discriminate between soluble and membrane proteins with both specificity and sensitivity better than 99 %, although the accuracy drops when signal peptides are present. This high degree of accuracy allowed us to predict reliably integral membrane proteins in a large collection of genomes. Based on these predictions, we estimate that 20–30 % of all genes in most genomes encode membrane proteins, which is in agreement with previous estimates. We further discovered that proteins with Nin-Cin topologies are strongly preferred in all examined organisms, except Caenorhabditis elegans, where the large number of 7TM receptors increases the counts for Nout-Cin topologies. We discuss the possible relevance of this finding for our understanding of membrane protein assembly mechanisms. A TMHMM prediction service is available at http://www.cbs.dtu.dk/services/TMHMM/.
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