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Integrative genomics of gene and metabolic regulation by estrogen receptors α and β, and their coregulators.

Molecular systems biology | 2013

The closely related transcription factors (TFs), estrogen receptors ERα and ERβ, regulate divergent gene expression programs and proliferative outcomes in breast cancer. Utilizing breast cancer cells with ERα, ERβ, or both receptors as a model system to define the basis for differing response specification by related TFs, we show that these TFs and their key coregulators, SRC3 and RIP140, generate overlapping as well as unique chromatin-binding and transcription-regulating modules. Cistrome and transcriptome analyses and the use of clustering algorithms delineated 11 clusters representing different chromatin-bound receptor and coregulator assemblies that could be functionally associated through enrichment analysis with distinct patterns of gene regulation and preferential coregulator usage, RIP140 with ERβ and SRC3 with ERα. The receptors modified each other's transcriptional effect, and ERβ countered the proliferative drive of ERα through several novel mechanisms associated with specific binding-site clusters. Our findings delineate distinct TF-coregulator assemblies that function as control nodes, specifying precise patterns of gene regulation, proliferation, and metabolism, as exemplified by two of the most important nuclear hormone receptors in human breast cancer.

Pubmed ID: 23774759 RIS Download

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Associated grants

  • Agency: NIDDK NIH HHS, United States
    Id: R37 DK015556
  • Agency: NIEHS NIH HHS, United States
    Id: T32 ES007326
  • Agency: NIDDK NIH HHS, United States
    Id: R37DK015556
  • Agency: NIEHS NIH HHS, United States
    Id: T32 ES07326
  • Agency: NIDDK NIH HHS, United States
    Id: R01 DK015556
  • Agency: NCCIH NIH HHS, United States
    Id: P50 AT006268

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