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Modeling and Analysis of the Macronutrient Signaling Network in Budding Yeast

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Journal Mol Biol Cell
Date 2021 Sep 8
PMID 34495680
Citations 4
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Abstract

Adaptive modulation of the global cellular growth state of unicellular organisms is crucial for their survival in fluctuating nutrient environments. Because these organisms must be able to respond reliably to ever varying and unpredictable nutritional conditions, their nutrient signaling networks must have a certain inbuilt robustness. In eukaryotes, such as the budding yeast , distinct nutrient signals are relayed by specific plasma membrane receptors to signal transduction pathways that are interconnected in complex information-processing networks, which have been well characterized. However, the complexity of the signaling network confounds the interpretation of the overall regulatory "logic" of the control system. Here, we propose a literature-curated molecular mechanism of the integrated nutrient signaling network in budding yeast, focusing on early temporal responses to carbon and nitrogen signaling. We build a computational model of this network to reconcile literature-curated quantitative experimental data with our proposed molecular mechanism. We evaluate the robustness of our estimates of the model's kinetic parameter values. We test the model by comparing predictions made in mutant strains with qualitative experimental observations made in the same strains. Finally, we use the model to predict nutrient-responsive transcription factor activities in a number of mutant strains undergoing complex nutrient shifts.

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References
1.
Metzl-Raz E, Kafri M, Yaakov G, Soifer I, Gurvich Y, Barkai N . Principles of cellular resource allocation revealed by condition-dependent proteome profiling. Elife. 2017; 6. PMC: 5578734. DOI: 10.7554/eLife.28034. View

2.
Dalle Pezze P, Ruf S, Sonntag A, Langelaar-Makkinje M, Hall P, Heberle A . A systems study reveals concurrent activation of AMPK and mTOR by amino acids. Nat Commun. 2016; 7:13254. PMC: 5121333. DOI: 10.1038/ncomms13254. View

3.
Panchaud N, Peli-Gulli M, De Virgilio C . Amino acid deprivation inhibits TORC1 through a GTPase-activating protein complex for the Rag family GTPase Gtr1. Sci Signal. 2013; 6(277):ra42. DOI: 10.1126/scisignal.2004112. View

4.
Laomettachit T, Chen K, Baumann W, Tyson J . A Model of Yeast Cell-Cycle Regulation Based on a Standard Component Modeling Strategy for Protein Regulatory Networks. PLoS One. 2016; 11(5):e0153738. PMC: 4871373. DOI: 10.1371/journal.pone.0153738. View

5.
Vinod P, Venkatesh K . Quantification of the effect of amino acids on an integrated mTOR and insulin signaling pathway. Mol Biosyst. 2009; 5(10):1163-73. DOI: 10.1039/b816965a. View