| Literature DB >> 29675975 |
Md Mofijul Islam1,2, Sanjay Saha2, Md Mahmudur Rahman2, Swakkhar Shatabda2, Dewan Md Farid2, Abdollah Dehzangi3.
Abstract
Glycation is chemical reaction by which sugar molecule bonds with a protein without the help of enzymes. This is often cause to many diseases and therefore the knowledge about glycation is very important. In this paper, we present iProtGly-SS, a protein lysine glycation site identification method based on features extracted from sequence and secondary structural information. In the experiments, we found the best feature groups combination: Amino Acid Composition, Secondary Structure Motifs, and Polarity. We used support vector machine classifier to train our model and used an optimal set of features using a group based forward feature selection technique. On standard benchmark datasets, our method is able to significantly outperform existing methods for glycation prediction. A web server for iProtGly-SS is implemented and publicly available to use: http://brl.uiu.ac.bd/iprotgly-ss/.Entities:
Keywords: classification; evolutionary features; feature selection; protein glycation; structural features
Mesh:
Substances:
Year: 2018 PMID: 29675975 DOI: 10.1002/prot.25511
Source DB: PubMed Journal: Proteins ISSN: 0887-3585