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Deciphering the functional landscape of phosphosites with deep neural network

Zhongjie Liang, Tonghai Liu, Qi Li, Guangyu Zhang, Bei Zhang, Xi-kun Du, Jingqiu Liu, Zhifeng Chen, Hong Ding, Guang Hu, Lin Hao, Fei Zhu, Cheng Luo

2023Cell Reports18 citationsDOIOpen Access PDF

Abstract

Current biochemical approaches have only identified the most well-characterized kinases for a tiny fraction of the phosphoproteome, and the functional assignments of phosphosites are almost negligible. Herein, we analyze the substrate preference catalyzed by a specific kinase and present a novel integrated deep neural network model named FuncPhos-SEQ for functional assignment of human proteome-level phosphosites. FuncPhos-SEQ incorporates phosphosite motif information from a protein sequence using multiple convolutional neural network (CNN) channels and network features from protein-protein interactions (PPIs) using network embedding and deep neural network (DNN) channels. These concatenated features are jointly fed into a heterogeneous feature network to prioritize functional phosphosites. Combined with a series of in vitro and cellular biochemical assays, we confirm that NADK-S48/50 phosphorylation could activate its enzymatic activity. In addition, ERK1/2 are discovered as the primary kinases responsible for NADK-S48/50 phosphorylation. Moreover, FuncPhos-SEQ is developed as an online server.

Topics & Concepts

Convolutional neural networkComputational biologyComputer scienceKinasePhosphorylationHuman proteome projectBiologyArtificial intelligenceProteomicsCell biologyBiochemistryGeneMachine Learning in BioinformaticsBioinformatics and Genomic NetworksProtein Structure and Dynamics
Deciphering the functional landscape of phosphosites with deep neural network | Litcius