GPS 6.0: an updated server for prediction of kinase-specific phosphorylation sites in proteins.
Miaomiao ChenWeizhi ZhangYujie GouDanyang XuYuxiang WeiDan LiuCheng HanXinhe HuangChengzhi LiWan-Shan NingDi PengYang XuPublished in: Nucleic acids research (2023)
Protein phosphorylation, catalyzed by protein kinases (PKs), is one of the most important post-translational modifications (PTMs), and involved in regulating almost all of biological processes. Here, we report an updated server, Group-based Prediction System (GPS) 6.0, for prediction of PK-specific phosphorylation sites (p-sites) in eukaryotes. First, we pre-trained a general model using penalized logistic regression (PLR), deep neural network (DNN), and Light Gradient Boosting Machine (LightGMB) on 490 762 non-redundant p-sites in 71 407 proteins. Then, transfer learning was conducted to obtain 577 PK-specific predictors at the group, family and single PK levels, using a well-curated data set of 30 043 known site-specific kinase-substrate relations in 7041 proteins. Together with the evolutionary information, GPS 6.0 could hierarchically predict PK-specific p-sites for 44046 PKs in 185 species. Besides the basic statistics, we also offered the knowledge from 22 public resources to annotate the prediction results, including the experimental evidence, physical interactions, sequence logos, and p-sites in sequences and 3D structures. The GPS 6.0 server is freely available at https://gps.biocuckoo.cn. We believe that GPS 6.0 could be a highly useful service for further analysis of phosphorylation.
Keyphrases
- protein kinase
- healthcare
- protein protein
- mental health
- neural network
- squamous cell carcinoma
- amino acid
- gene expression
- genome wide
- physical activity
- emergency department
- high intensity
- tyrosine kinase
- binding protein
- dna methylation
- artificial intelligence
- room temperature
- body composition
- lymph node metastasis
- adverse drug