Bagos Pantelis G, Liakopoulos Theodore D, Spyropoulos Ioannis C, Hamodrakas Stavros J
Department of Cell Biology and Biophysics, Faculty of Biology, University of Athens, Panepistimiopolis, Athens 15701, Greece.
Nucleic Acids Res. 2004 Jul 1;32(Web Server issue):W400-4. doi: 10.1093/nar/gkh417.
The beta-barrel outer membrane proteins constitute one of the two known structural classes of membrane proteins. Whereas there are several different web-based predictors for alpha-helical membrane proteins, currently there is no freely available prediction method for beta-barrel membrane proteins, at least with an acceptable level of accuracy. We present here a web server (PRED-TMBB, http://bioinformatics.biol.uoa.gr/PRED-TMBB) which is capable of predicting the transmembrane strands and the topology of beta-barrel outer membrane proteins of Gram-negative bacteria. The method is based on a Hidden Markov Model, trained according to the Conditional Maximum Likelihood criterion. The model was retrained and the training set now includes 16 non-homologous outer membrane proteins with structures known at atomic resolution. The user may submit one sequence at a time and has the option of choosing between three different decoding methods. The server reports the predicted topology of a given protein, a score indicating the probability of the protein being an outer membrane beta-barrel protein, posterior probabilities for the transmembrane strand prediction and a graphical representation of the assumed position of the transmembrane strands with respect to the lipid bilayer.
β-桶状外膜蛋白是已知的两类膜蛋白结构之一。虽然有几种基于网络的α-螺旋膜蛋白预测工具,但目前还没有一种免费的β-桶状膜蛋白预测方法,至少没有达到可接受的准确水平。我们在此展示一个网络服务器(PRED-TMBB,http://bioinformatics.biol.uoa.gr/PRED-TMBB),它能够预测革兰氏阴性菌β-桶状外膜蛋白的跨膜链和拓扑结构。该方法基于一个根据条件最大似然准则训练的隐马尔可夫模型。该模型经过重新训练,现在的训练集包括16种具有原子分辨率结构的非同源外膜蛋白。用户每次可以提交一个序列,并可以在三种不同的解码方法之间进行选择。服务器会报告给定蛋白质的预测拓扑结构、一个表示该蛋白质是外膜β-桶状蛋白可能性的分数、跨膜链预测的后验概率以及跨膜链相对于脂质双层假定位置的图形表示。