磷酸化
蛋白质磷酸化
计算生物学
序列(生物学)
激酶
信号转导
鉴定(生物学)
蛋白质测序
翻译后修饰
生物
蛋白激酶A
生物信息学
计算机科学
细胞生物学
生物化学
肽序列
基因
酶
植物
作者
Xiaokun Hong,Jiyang Lv,Zhengxin Li,Yi Xiong,Jian Zhang,Haifeng Chen
标识
DOI:10.1016/j.ijbiomac.2023.125233
摘要
Protein phosphorylation, catalyzed by kinases, is an important biochemical process, which plays an essential role in multiple cell signaling pathways. Meanwhile, protein-protein interactions (PPI) constitute the signaling pathways. Abnormal phosphorylation status on protein can regulate protein functions through PPI to evoke severe diseases, such as Cancer and Alzheimer's disease. Due to the limited experimental evidence and high costs to experimentally identify novel evidence of phosphorylation regulation on PPI, it is necessary to develop a high-accuracy and user-friendly artificial intelligence method to predict phosphorylation effect on PPI. Here, we proposed a novel sequence-based machine learning method named PhosPPI, which achieved better identification performance (Accuracy and AUC) than other competing predictive methods of Betts, HawkDock and FoldX. PhosPPI is now freely available in web server (https://phosppi.sjtu.edu.cn/). This tool can help the user to identify functional phosphorylation sites affecting PPI and explore phosphorylation-associated disease mechanism and drug development.
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