Cell Reports (Sep 2023)

Deciphering the functional landscape of phosphosites with deep neural network

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

Journal volume & issue
Vol. 42, no. 9
p. 113048

Abstract

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Summary: 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.

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