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Abstract
Detecting changes in the activity of a transcription factor (TF) in response to a perturbation provides insights into the underlying cellular process. Transcription Factor Enrichment Analysis (TFEA) is a robust and reliable computational method that detects positional motif enrichment associated with changes in transcription observed in response to a perturbation. TFEA detects positional motif enrichment within a list of ranked regions of interest (ROIs), typically sites of RNA polymerase initiation inferred from regulatory data such as nascent transcription. Therefore, we also introduce muMerge, a statistically principled method of generating a consensus list of ROIs from multiple replicates and conditions. TFEA is broadly applicable to data that informs on transcriptional regulation including nascent transcription (eg. PRO-Seq), CAGE, histone ChIP-Seq, and accessibility data (e.g., ATAC-Seq). TFEA not only identifies the key regulators responding to a perturbation, but also temporally unravels regulatory networks with time series data. Consequently, TFEA serves as a hypothesis-generating tool that provides an easy, rigorous, and cost-effective means to broadly assess TF activity yielding new biological insights.
Rubin et al. introduce transcription factor enrichment analysis (TFEA), a new motif enrichment method specifically aimed at maximizing the informative nature of differential RNA polymerase initiation data. It provides an easy, rigorous, and cost-effective analysis aimed at deciphering the temporal and mechanistic details of complex regulatory networks.
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1 University of Colorado, Department of Biochemistry, Boulder, USA (GRID:grid.266190.a) (ISNI:0000000096214564)
2 University of Colorado, BioFrontiers Institute, Boulder, USA (GRID:grid.266190.a) (ISNI:0000000096214564)
3 University of Colorado, Computational Bioscience Program, Anschutz Medical Campus, Aurora, USA (GRID:grid.430503.1) (ISNI:0000 0001 0703 675X)
4 University of Colorado, Department of Molecular, Cellular and Developmental Biology, Boulder, USA (GRID:grid.266190.a) (ISNI:0000000096214564)
5 University of Colorado, BioFrontiers Institute, Boulder, USA (GRID:grid.266190.a) (ISNI:0000000096214564); University of Colorado, Department of Molecular, Cellular and Developmental Biology, Boulder, USA (GRID:grid.266190.a) (ISNI:0000000096214564); University of Colorado, Department of Computer Science, Boulder, USA (GRID:grid.266190.a) (ISNI:0000000096214564)