Scientific Reports (Mar 2022)

Computational identification of new potential transcriptional partners of ERRα in breast cancer cells: specific partners for specific targets

  • Catherine Cerutti,
  • Ling Zhang,
  • Violaine Tribollet,
  • Jing-Ru Shi,
  • Riwan Brillet,
  • Benjamin Gillet,
  • Sandrine Hughes,
  • Christelle Forcet,
  • Tie-Liu Shi,
  • Jean-Marc Vanacker

DOI
https://doi.org/10.1038/s41598-022-07744-w
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 15

Abstract

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Abstract Estrogen related receptors are orphan members of the nuclear receptor superfamily acting as transcription factors (TFs). In contrast to classical nuclear receptors, the activities of the ERRs are not controlled by a natural ligand. Regulation of their activities thus relies on availability of transcriptional co-regulators. In this paper, we focus on ERRα, whose involvement in cancer progression has been broadly demonstrated. We propose a new approach to identify potential co-activators, starting from previously identified ERRα-activated genes in a breast cancer (BC) cell line. Considering mRNA gene expression from two sets of human BC cells as major endpoint, we used sparse partial least squares modeling to uncover new transcriptional regulators associated with ERRα. Among them, DDX21, MYBBP1A, NFKB1, and SETD7 are functionally relevant in MDA-MB-231 cells, specifically activating the expression of subsets of ERRα-activated genes. We studied SET7 in more details and showed its co-localization with ERRα and its ERRα-dependent transcriptional and phenotypic effects. Our results thus demonstrate the ability of a modeling approach to identify new transcriptional partners from gene expression. Finally, experimental results show that ERRα cooperates with distinct co-regulators to control the expression of distinct sets of target genes, thus reinforcing the combinatorial specificity of transcription.