Abstract
BackgroundAs one of the most common protein post-translational modifications, glycosylation is involved in a variety of important biological processes. Computational identification of glycosylation sites in protein sequences becomes increasingly important in the post-genomic era. A new encoding scheme was employed to improve the prediction of mucin-type O-glycosylation sites in mammalian proteins.ResultsA new protein bioinformatics tool, CKSAAP_OGlySite, was developed to predict mucin-type O-glycosylation serine/threonine (S/T) sites in mammalian proteins. Using the composition of k-spaced amino acid pairs (CKSAAP) based encoding scheme, the proposed method was trained and tested in a new and stringent O-glycosylation dataset with the assistance of Support Vector Machine (SVM). When the ratio of O-glycosylation to non-glycosylation sites in training datasets was set as 1:1, 10-fold cross-validation tests showed that the proposed method yielded a high accuracy of 83.1% and 81.4% in predicting O-glycosylated S and T sites, respectively. Based on the same datasets, CKSAAP_OGlySite resulted in a higher accuracy than the conventional binary encoding based method (about +5.0%). When trained and tested in 1:5 datasets, the CKSAAP encoding showed a more significant improvement than the binary encoding. We also merged the training datasets of S and T sites and integrated the prediction of S and T sites into one single predictor (i.e. S+T predictor). Either in 1:1 or 1:5 datasets, the performance of this S+T predictor was always slightly better than those predictors where S and T sites were independently predicted, suggesting that the molecular recognition of O-glycosylated S/T sites seems to be similar and the increase of the S+T predictor's accuracy may be a result of expanded training datasets. Moreover, CKSAAP_OGlySite was also shown to have better performance when benchmarked against two existing predictors.ConclusionBecause of CKSAAP encoding's ability of reflecting characteristics of the sequences surrounding mucin-type O-glycosylation sites, CKSAAP_ OGlySite has been proved more powerful than the conventional binary encoding based method. This suggests that it can be used as a competitive mucin-type O-glycosylation site predictor to the biological community. CKSAAP_OGlySite is now available at .
Highlights
As one of the most common protein post-translational modifications, glycosylation is involved in a variety of important biological processes
The verified O-glycosylated S and T sites were compiled into positive sites, while those S and T residues in these proteins with no annotation related to O-glycosylation site were selected as non-glycosylation sites
Represented by a sequence fragment with central S or T residue, each site was further parameterized by using the composition of k-spaced amino acid pairs (CKSAAP) encoding scheme
Summary
As one of the most common protein post-translational modifications, glycosylation is involved in a variety of important biological processes. Computational identification of glycosylation sites in protein sequences becomes increasingly important in the post-genomic era. Glycosylation is involved in a variety of important biological processes including protein stability, solubility, secretion of signal, regulation of interactions, extracellular recognition, etc [2]. The detection of glycosylation sites in a query protein is very helpful to understand its biological function. Compared with the huge number of known protein sequences obtained from genomic and proteomic studies, the experimentally identified glycosylation sites are still limited. Proteomics analysis of glycoproteins by mass spectrometry (MS) is very promising to speed up the experimental identification of glycosylation sites [2]. Computational detection of glycosylation sites is playing an increasingly important role [4,5]
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