Protein sequence information extraction and subcellular localization prediction with gapped k-Mer method.

Journal: BMC Bioinformatics
Published:
Abstract

Background: Subcellular localization prediction of protein is an important component of bioinformatics, which has great importance for drug design and other applications. A multitude of computational tools for proteins subcellular location have been developed in the recent decades, however, existing methods differ in the protein sequence representation techniques and classification algorithms adopted.

Results: In this paper, we firstly introduce two kinds of protein sequences encoding schemes: dipeptide information with space and Gapped k-mer information. Then, the Gapped k-mer calculation method which is based on quad-tree is also introduced.

Conclusions: >From the prediction results, this method not only reduces the dimension, but also improves the prediction precision of protein subcellular localization.

Authors
Yu-hua Yao, Ya-ping Lv, Ling Li, Hui-min Xu, Bin-bin Ji, Jing Chen, Chun Li, Bo Liao, Xu-ying Nan