Dynamic circadian protein-protein interaction networks predict temporal organization of cellular functions.
Essentially all biological processes depend on protein-protein interactions (PPIs). Timing of such interactions is crucial for regulatory function. Although circadian (~24-hour) clocks constitute fundamental cellular timing mechanisms regulating important physiological processes, PPI dynamics on thi...
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Series: | PLoS Genetics |
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doaj-269b5e0039ae40f5896b6665e1412f932020-11-25T01:04:30ZengPublic Library of Science (PLoS)PLoS Genetics1553-73901553-74042013-03-0193e100339810.1371/journal.pgen.1003398Dynamic circadian protein-protein interaction networks predict temporal organization of cellular functions.Thomas WallachKatja SchellenbergBert MaierRavi Kiran Reddy KalathurPablo PorrasErich E WankerMatthias E FutschikAchim KramerEssentially all biological processes depend on protein-protein interactions (PPIs). Timing of such interactions is crucial for regulatory function. Although circadian (~24-hour) clocks constitute fundamental cellular timing mechanisms regulating important physiological processes, PPI dynamics on this timescale are largely unknown. Here, we identified 109 novel PPIs among circadian clock proteins via a yeast-two-hybrid approach. Among them, the interaction of protein phosphatase 1 and CLOCK/BMAL1 was found to result in BMAL1 destabilization. We constructed a dynamic circadian PPI network predicting the PPI timing using circadian expression data. Systematic circadian phenotyping (RNAi and overexpression) suggests a crucial role for components involved in dynamic interactions. Systems analysis of a global dynamic network in liver revealed that interacting proteins are expressed at similar times likely to restrict regulatory interactions to specific phases. Moreover, we predict that circadian PPIs dynamically connect many important cellular processes (signal transduction, cell cycle, etc.) contributing to temporal organization of cellular physiology in an unprecedented manner.http://europepmc.org/articles/PMC3610820?pdf=render |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Thomas Wallach Katja Schellenberg Bert Maier Ravi Kiran Reddy Kalathur Pablo Porras Erich E Wanker Matthias E Futschik Achim Kramer |
spellingShingle |
Thomas Wallach Katja Schellenberg Bert Maier Ravi Kiran Reddy Kalathur Pablo Porras Erich E Wanker Matthias E Futschik Achim Kramer Dynamic circadian protein-protein interaction networks predict temporal organization of cellular functions. PLoS Genetics |
author_facet |
Thomas Wallach Katja Schellenberg Bert Maier Ravi Kiran Reddy Kalathur Pablo Porras Erich E Wanker Matthias E Futschik Achim Kramer |
author_sort |
Thomas Wallach |
title |
Dynamic circadian protein-protein interaction networks predict temporal organization of cellular functions. |
title_short |
Dynamic circadian protein-protein interaction networks predict temporal organization of cellular functions. |
title_full |
Dynamic circadian protein-protein interaction networks predict temporal organization of cellular functions. |
title_fullStr |
Dynamic circadian protein-protein interaction networks predict temporal organization of cellular functions. |
title_full_unstemmed |
Dynamic circadian protein-protein interaction networks predict temporal organization of cellular functions. |
title_sort |
dynamic circadian protein-protein interaction networks predict temporal organization of cellular functions. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS Genetics |
issn |
1553-7390 1553-7404 |
publishDate |
2013-03-01 |
description |
Essentially all biological processes depend on protein-protein interactions (PPIs). Timing of such interactions is crucial for regulatory function. Although circadian (~24-hour) clocks constitute fundamental cellular timing mechanisms regulating important physiological processes, PPI dynamics on this timescale are largely unknown. Here, we identified 109 novel PPIs among circadian clock proteins via a yeast-two-hybrid approach. Among them, the interaction of protein phosphatase 1 and CLOCK/BMAL1 was found to result in BMAL1 destabilization. We constructed a dynamic circadian PPI network predicting the PPI timing using circadian expression data. Systematic circadian phenotyping (RNAi and overexpression) suggests a crucial role for components involved in dynamic interactions. Systems analysis of a global dynamic network in liver revealed that interacting proteins are expressed at similar times likely to restrict regulatory interactions to specific phases. Moreover, we predict that circadian PPIs dynamically connect many important cellular processes (signal transduction, cell cycle, etc.) contributing to temporal organization of cellular physiology in an unprecedented manner. |
url |
http://europepmc.org/articles/PMC3610820?pdf=render |
work_keys_str_mv |
AT thomaswallach dynamiccircadianproteinproteininteractionnetworkspredicttemporalorganizationofcellularfunctions AT katjaschellenberg dynamiccircadianproteinproteininteractionnetworkspredicttemporalorganizationofcellularfunctions AT bertmaier dynamiccircadianproteinproteininteractionnetworkspredicttemporalorganizationofcellularfunctions AT ravikiranreddykalathur dynamiccircadianproteinproteininteractionnetworkspredicttemporalorganizationofcellularfunctions AT pabloporras dynamiccircadianproteinproteininteractionnetworkspredicttemporalorganizationofcellularfunctions AT erichewanker dynamiccircadianproteinproteininteractionnetworkspredicttemporalorganizationofcellularfunctions AT matthiasefutschik dynamiccircadianproteinproteininteractionnetworkspredicttemporalorganizationofcellularfunctions AT achimkramer dynamiccircadianproteinproteininteractionnetworkspredicttemporalorganizationofcellularfunctions |
_version_ |
1725197606583271424 |