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N-GlycoGo: Predicting Protein N-Glycosylation Sites on Imbalanced Data Sets by Using Heterogeneous and Comprehensive Strategy

Ching-Hsuan Chien, Chi‐Chang Chang, Shih-Huan Lin, Chi-Wei Chen, Zong-Han Chang, Yen-Wei Chu

2020IEEE Access21 citationsDOIOpen Access PDF

Abstract

Glycosylation is the most complex post-modification effect of proteins. It participates in many biological processes in the human body and is closely related to many disease states. Among them, N-linked glycosylation is the most contained glycosylation data. However, the current N-linked glycosylation prediction tool does not take into account the serious imbalance between positive and negative data. In this study, we used protein sequence and amino acid characteristics to construct an N-linked glycosylation prediction model called N-GlycoGo. Based on sequence, structure, and function, 11 heterogeneous features were encoded. Further, XGBoost was selected for modeling. Finally, independent testing of human and mouse prediction models showed that N-GlycoGo is superior to other tools with Matthews correlation coefficient (MCC) values of 0.397 and 0.719, respectively, which is higher than other glycosylation site prediction tools. We have developed a fast and accurate prediction tool, N-GlycoGo, for N-linked glycosylation. N-GlycoGo is available at http://ncblab.nchu.edu.tw/n-glycogo/.

Topics & Concepts

GlycosylationComputational biologyComputer scienceSequence (biology)Construct (python library)N-linked glycosylationBioinformaticsBiologyGlycoproteinBiochemistryGlycanProgramming languageMachine Learning in BioinformaticsGlycosylation and Glycoproteins ResearchGenomics and Phylogenetic Studies
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