Mahmoud Ahmed

Postdoc - Cancer Genomics

Integrating binding and expression data to predict transcription factors combined function


Journal article


Mahmoud Ahmed, Do Sik Min, Deok Ryong Kim
BMC Genomics, vol. 21(1), 2020, p. 610


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APA   Click to copy
Ahmed, M., Min, D. S., & Kim, D. R. (2020). Integrating binding and expression data to predict transcription factors combined function. BMC Genomics, 21(1), 610. https://doi.org/10.1186/s12864-020-06977-1


Chicago/Turabian   Click to copy
Ahmed, Mahmoud, Do Sik Min, and Deok Ryong Kim. “Integrating Binding and Expression Data to Predict Transcription Factors Combined Function.” BMC Genomics 21, no. 1 (2020): 610.


MLA   Click to copy
Ahmed, Mahmoud, et al. “Integrating Binding and Expression Data to Predict Transcription Factors Combined Function.” BMC Genomics, vol. 21, no. 1, 2020, p. 610, doi:10.1186/s12864-020-06977-1.


BibTeX   Click to copy

@article{mahmoud2020a,
  title = {Integrating binding and expression data to predict transcription factors combined function},
  year = {2020},
  issue = {1},
  journal = {BMC Genomics},
  pages = {610},
  volume = {21},
  doi = {10.1186/s12864-020-06977-1},
  author = {Ahmed, Mahmoud and Min, Do Sik and Kim, Deok Ryong}
}

Abstract

Background: Transcription factor binding to the regulatory region of a gene induces or represses its gene expression. Transcription factors share their binding sites with other factors, co-factors, and/or DNA-binding proteins. These proteins form complexes that bind to the DNA as one-units. The binding of two factors to a shared site does not always lead to a functional interaction.
Results: We propose a method to predict the combined functions of two factors using comparable binding and expression data (target). We based this method on binding and expression target analysis (BETA), which we re-implemented in R and extended for this purpose. target ranks the factor's targets by importance and predicts the dominant type of interaction between two transcription factors. We applied the method to simulated and real datasets of transcription factor-binding sites and gene expression under perturbation of factors. We found that Yin Yang 1 transcription factor (YY1) and YY2 have antagonistic and independent regulatory targets in HeLa cells, but they may cooperate on a few shared targets.
Conclusion: We developed an R package and a web application to integrate binding (ChIP-seq) and expression (microarrays or RNA-seq) data to determine the cooperative or competitive combined function of two transcription factors.