Predicting kinase activity in angiotensin receptor phosphoproteomes based on sequence-motifs and interactions.

Recent progress in the understanding of seven-transmembrane receptor (7TMR) signalling has promoted the development of a new generation of pathway selective ligands. The angiotensin II type I receptor (AT1aR) is one of the most studied 7TMRs with respect to selective activation of the β-arrestin dep...

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Main Authors: Rikke Bøgebo, Heiko Horn, Jesper V Olsen, Steen Gammeltoft, Lars J Jensen, Jakob L Hansen, Gitte L Christensen
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3983226?pdf=render
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spelling doaj-ec9ebed78472471cbad6359fc435aad32020-11-25T01:20:00ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0194e9467210.1371/journal.pone.0094672Predicting kinase activity in angiotensin receptor phosphoproteomes based on sequence-motifs and interactions.Rikke BøgeboHeiko HornJesper V OlsenSteen GammeltoftLars J JensenJakob L HansenGitte L ChristensenRecent progress in the understanding of seven-transmembrane receptor (7TMR) signalling has promoted the development of a new generation of pathway selective ligands. The angiotensin II type I receptor (AT1aR) is one of the most studied 7TMRs with respect to selective activation of the β-arrestin dependent signalling. Two complimentary global phosphoproteomics studies have analyzed the complex signalling induced by the AT1aR. Here we integrate the data sets from these studies and perform a joint analysis using a novel method for prediction of differential kinase activity from phosphoproteomics data. The method builds upon NetworKIN, which applies sophisticated linear motif analysis in combination with contextual network modelling to predict kinase-substrate associations with high accuracy and sensitivity. These predictions form the basis for subsequently nonparametric statistical analysis to identify likely activated kinases. This suggested that AT1aR-dependent signalling activates 48 of the 285 kinases detected in HEK293 cells. Of these, Aurora B, CLK3 and PKG1 have not previously been described in the pathway whereas others, such as PKA, PKB and PKC, are well known. In summary, we have developed a new method for kinase-centric analysis of phosphoproteomes to pinpoint differential kinase activity in large-scale data sets.http://europepmc.org/articles/PMC3983226?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Rikke Bøgebo
Heiko Horn
Jesper V Olsen
Steen Gammeltoft
Lars J Jensen
Jakob L Hansen
Gitte L Christensen
spellingShingle Rikke Bøgebo
Heiko Horn
Jesper V Olsen
Steen Gammeltoft
Lars J Jensen
Jakob L Hansen
Gitte L Christensen
Predicting kinase activity in angiotensin receptor phosphoproteomes based on sequence-motifs and interactions.
PLoS ONE
author_facet Rikke Bøgebo
Heiko Horn
Jesper V Olsen
Steen Gammeltoft
Lars J Jensen
Jakob L Hansen
Gitte L Christensen
author_sort Rikke Bøgebo
title Predicting kinase activity in angiotensin receptor phosphoproteomes based on sequence-motifs and interactions.
title_short Predicting kinase activity in angiotensin receptor phosphoproteomes based on sequence-motifs and interactions.
title_full Predicting kinase activity in angiotensin receptor phosphoproteomes based on sequence-motifs and interactions.
title_fullStr Predicting kinase activity in angiotensin receptor phosphoproteomes based on sequence-motifs and interactions.
title_full_unstemmed Predicting kinase activity in angiotensin receptor phosphoproteomes based on sequence-motifs and interactions.
title_sort predicting kinase activity in angiotensin receptor phosphoproteomes based on sequence-motifs and interactions.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description Recent progress in the understanding of seven-transmembrane receptor (7TMR) signalling has promoted the development of a new generation of pathway selective ligands. The angiotensin II type I receptor (AT1aR) is one of the most studied 7TMRs with respect to selective activation of the β-arrestin dependent signalling. Two complimentary global phosphoproteomics studies have analyzed the complex signalling induced by the AT1aR. Here we integrate the data sets from these studies and perform a joint analysis using a novel method for prediction of differential kinase activity from phosphoproteomics data. The method builds upon NetworKIN, which applies sophisticated linear motif analysis in combination with contextual network modelling to predict kinase-substrate associations with high accuracy and sensitivity. These predictions form the basis for subsequently nonparametric statistical analysis to identify likely activated kinases. This suggested that AT1aR-dependent signalling activates 48 of the 285 kinases detected in HEK293 cells. Of these, Aurora B, CLK3 and PKG1 have not previously been described in the pathway whereas others, such as PKA, PKB and PKC, are well known. In summary, we have developed a new method for kinase-centric analysis of phosphoproteomes to pinpoint differential kinase activity in large-scale data sets.
url http://europepmc.org/articles/PMC3983226?pdf=render
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