A Directed Protein Interaction Network for Investigating Intracellular Signal Transduction

信号转导 细胞生物学 生物 蛋白质-蛋白质相互作用 细胞内 神经科学 化学 计算生物学
作者
Arunachalam Vinayagam,Ulrich Stelzl,Raphaele Foulle,Stephanie Plaßmann,Martina Zenkner,Jan Timm,Heike E. Assmus,Miguel A. Andrade‐Navarro,Erich E. Wanker
出处
期刊:Science Signaling [American Association for the Advancement of Science (AAAS)]
卷期号:4 (189): rs8-rs8 被引量:367
标识
DOI:10.1126/scisignal.2001699
摘要

Cellular signal transduction is a complex process involving protein-protein interactions (PPIs) that transmit information. For example, signals from the plasma membrane may be transduced to transcription factors to regulate gene expression. To obtain a global view of cellular signaling and to predict potential signal modulators, we searched for protein interaction partners of more than 450 signaling-related proteins by means of automated yeast two-hybrid interaction mating. The resulting PPI network connected 1126 proteins through 2626 PPIs. After expansion of this interaction map with publicly available PPI data, we generated a directed network resembling the signal transduction flow between proteins with a naïve Bayesian classifier. We exploited information on the shortest PPI paths from membrane receptors to transcription factors to predict input and output relationships between interacting proteins. Integration of directed PPI with time-resolved protein phosphorylation data revealed network structures that dynamically conveyed information from the activated epidermal growth factor and extracellular signal-regulated kinase (EGF/ERK) signaling cascade to directly associated proteins and more distant proteins in the network. From the model network, we predicted 18 previously unknown modulators of EGF/ERK signaling, which we validated in mammalian cell-based assays. This generic experimental and computational approach provides a framework for elucidating causal connections between signaling proteins and facilitates the identification of proteins that modulate the flow of information in signaling networks.
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