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MC EMiNEM Maps the Interaction Landscape of the Mediator

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Listed:
  • Theresa Niederberger
  • Stefanie Etzold
  • Michael Lidschreiber
  • Kerstin C Maier
  • Dietmar E Martin
  • Holger Fröhlich
  • Patrick Cramer
  • Achim Tresch

Abstract

The Mediator is a highly conserved, large multiprotein complex that is involved essentially in the regulation of eukaryotic mRNA transcription. It acts as a general transcription factor by integrating regulatory signals from gene-specific activators or repressors to the RNA Polymerase II. The internal network of interactions between Mediator subunits that conveys these signals is largely unknown. Here, we introduce MC EMiNEM, a novel method for the retrieval of functional dependencies between proteins that have pleiotropic effects on mRNA transcription. MC EMiNEM is based on Nested Effects Models (NEMs), a class of probabilistic graphical models that extends the idea of hierarchical clustering. It combines mode-hopping Monte Carlo (MC) sampling with an Expectation-Maximization (EM) algorithm for NEMs to increase sensitivity compared to existing methods. A meta-analysis of four Mediator perturbation studies in Saccharomyces cerevisiae, three of which are unpublished, provides new insight into the Mediator signaling network. In addition to the known modular organization of the Mediator subunits, MC EMiNEM reveals a hierarchical ordering of its internal information flow, which is putatively transmitted through structural changes within the complex. We identify the N-terminus of Med7 as a peripheral entity, entailing only local structural changes upon perturbation, while the C-terminus of Med7 and Med19 appear to play a central role. MC EMiNEM associates Mediator subunits to most directly affected genes, which, in conjunction with gene set enrichment analysis, allows us to construct an interaction map of Mediator subunits and transcription factors. Author Summary: Phenotypic diversity and environmental adaptation in genetically identical cells is achieved by an exact tuning of their transcriptional program. It is a challenging task to unravel parts of the complex network of involved gene regulatory components and their interactions. Here, we shed light on the role of the Mediator complex in transcription regulation in yeast. The Mediator is highly conserved in all eukaryotes and acts as an interface between gene-specific transcription factors and the general mRNA transcription machinery. Even though most of the involved proteins and numerous structural features are already known, details on its functional contribution on basal as well as on activated transcription remain obscure. We use gene expression data, measured upon perturbations of various Mediator subunits, to relate the Mediator structure to the way it processes regulatory information. Moreover, we relate specific subunits to interacting transcription factors.

Suggested Citation

  • Theresa Niederberger & Stefanie Etzold & Michael Lidschreiber & Kerstin C Maier & Dietmar E Martin & Holger Fröhlich & Patrick Cramer & Achim Tresch, 2012. "MC EMiNEM Maps the Interaction Landscape of the Mediator," PLOS Computational Biology, Public Library of Science, vol. 8(6), pages 1-10, June.
  • Handle: RePEc:plo:pcbi00:1002568
    DOI: 10.1371/journal.pcbi.1002568
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    References listed on IDEAS

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    1. Smyth Gordon K, 2004. "Linear Models and Empirical Bayes Methods for Assessing Differential Expression in Microarray Experiments," Statistical Applications in Genetics and Molecular Biology, De Gruyter, vol. 3(1), pages 1-28, February.
    2. Tresch Achim & Markowetz Florian, 2008. "Structure Learning in Nested Effects Models," Statistical Applications in Genetics and Molecular Biology, De Gruyter, vol. 7(1), pages 1-28, March.
    3. Tsuyoshi Imasaki & Guillermo Calero & Gang Cai & Kuang-Lei Tsai & Kentaro Yamada & Francesco Cardelli & Hediye Erdjument-Bromage & Paul Tempst & Imre Berger & Guy Lorch Kornberg & Francisco J. Asturia, 2011. "Architecture of the Mediator head module," Nature, Nature, vol. 475(7355), pages 240-243, July.
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