Temporal phosphoproteomics reveals circuitry of phased propagation in insulin signaling

时间磷酸化蛋白质组学揭示胰岛素信号分阶段传播的回路

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作者:Michael Turewicz #, Christine Skagen #, Sonja Hartwig, Stephan Majda, Kristina Thedinga, Ralf Herwig, Christian Binsch, Delsi Altenhofen, D Margriet Ouwens, Pia Marlene Förster, Thorsten Wachtmeister, Karl Köhrer, Torben Stermann, Alexandra Chadt, Stefan Lehr, Tobias Marschall, G Hege Thoresen, Hadi

Abstract

Insulin is a pleiotropic hormone that elicits its metabolic and mitogenic actions through numerous rapid and reversible protein phosphorylations. The temporal regulation of insulin's intracellular signaling cascade is highly complex and insufficiently understood. We conduct a time-resolved analysis of the global insulin-regulated phosphoproteome of differentiated human primary myotubes derived from satellite cells of healthy donors using high-resolution mass spectrometry. Identification and tracking of ~13,000 phosphopeptides over time reveal a highly complex and coordinated network of transient phosphorylation and dephosphorylation events that can be allocated to time-phased regulation of distinct and non-overlapping subcellular pathways. Advanced network analysis combining protein-protein-interaction (PPI) resources and investigation of donor variability in relative phosphosite occupancy over time identifies novel putative candidates in non-canonical insulin signaling and key regulatory nodes that are likely essential for signal propagation. Lastly, we find that insulin-regulated phosphorylation of the pre-catalytic spliceosome complex is associated with acute alternative splicing events in the transcriptome of human skeletal muscle. Our findings highlight the temporal relevance of protein phosphorylations and suggest that synchronized contributions of multiple signaling pathways form part of the circuitry for propagating information to insulin effector sites.

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