Predicting the protein SUMO modification sites based on Properties Sequential Forward Selection (PSFS)

0303 health sciences 03 medical and health sciences Binding Sites Sequence Analysis, Protein SUMO-1 Protein Computational Biology Databases, Protein Protein Processing, Post-Translational Algorithms Software
DOI: 10.1016/j.bbrc.2007.04.097 Publication Date: 2007-04-24T12:26:20Z
ABSTRACT
Protein SUMO modification is an important post-translational modification and the optimization of prediction methods remains a challenge. Here, by using Support Vector Machines algorithm (SVM), a novel computational method was developed for SUMO modification site prediction based on Sequential Forward Selection (SFS) of hundreds of amino acid properties, which are collected by Amino Acid Index database (http://www.genome.jp/aaindex). Our method also compares with the 0/1 system, in which the 20 amino acids are represented by 20-dimensional vectors (A = 00000000000000000001, C = 00000000000000000010 and so on). The overall accuracy of leave-one-out cross-validation for our method reaches 89.18%, which is higher than 0/1 system. It indicated that the SUMO modification prediction process is highly related to the amino acid property and this approach here provide a helpful tool for further investigation of the SUMO modification and identification of sumoylation sites in proteins. The software is available at http://www.biosino.org/sumo.
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