4.6 Article

Modelling reveals novel roles of two parallel signalling pathways and homeostatic feedbacks in yeast

期刊

MOLECULAR SYSTEMS BIOLOGY
卷 8, 期 -, 页码 -

出版社

WILEY
DOI: 10.1038/msb.2012.53

关键词

adaptation; ensemble modeling; Hopf bifurcation; model discrimination; osmotic stress

资金

  1. European Commission (QUASI) [503230]
  2. European Commission (CELLCOMPUT) [043310]
  3. UniCellSys [201142]
  4. German Ministry of Science and Education (BMBF) [0135779, 01DN12003]
  5. Argentine Ministry of Science and Productive Innovation (MYNCYT project) [AL/10/02]
  6. Argentine Ministry of Science and Productive Innovation (ANPCyT project) [PICT2007-847]

向作者/读者索取更多资源

The high osmolarity glycerol (HOG) pathway in yeast serves as a prototype signalling system for eukaryotes. We used an unprecedented amount of data to parameterise 192 models capturing different hypotheses about molecular mechanisms underlying osmo-adaptation and selected a best approximating model. This model implied novel mechanisms regulating osmo-adaptation in yeast. The model suggested that (i) the main mechanism for osmo-adaptation is a fast and transient non-transcriptional Hog1-mediated activation of glycerol production, (ii) the transcriptional response serves to maintain an increased steady-state glycerol production with low steady-state Hog1 activity, and (iii) fast negative feedbacks of activated Hog1 on upstream signalling branches serves to stabilise adaptation response. The best approximating model also indicated that homoeostatic adaptive systems with two parallel redundant signalling branches show a more robust and faster response than single-branch systems. We corroborated this notion to a large extent by dedicated measurements of volume recovery in single cells. Our study also demonstrates that systematically testing a model ensemble against data has the potential to achieve a better and unbiased understanding of molecular mechanisms.

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