Today, annotated amino acid sequences of more and more transcription factors (TFs) are readily available. Quantitative information about their DNA-binding specificities, however, are hard to obtain. Position frequency matrices (PFMs), the most widely used models to represent binding specificities, are experimentally characterized only for a small fraction of all TFs. Even for some of the most intensively studied eukaryotic organisms (i.e., human, rat and mouse), roughly one-sixth of all proteins with annotated DNA-binding domain have been characterized experimentally. Here, we present a new method based on support vector regression for predicting quantitative DNA-binding specificities of TFs in different eukaryotic species. This approach estimates a quantitative measure for the PFM similarity of two proteins, based on various features derived from their protein sequences. The method is trained and tested on a dataset containing 1 239 TFs with known DNAbinding specificity, and used to predict specific DNA target motifs for 645 TFs with high accuracy. © 2010 Schröder et al.
CITATION STYLE
Schröder, A., Eichner, J., Supper, J., Eichner, J., Wanke, D., Carsten, H., & Zell, A. (2010). Predicting DNA-binding specificities of eukaryotic transcription factors. PLoS ONE, 5(11). https://doi.org/10.1371/journal.pone.0013876
Mendeley helps you to discover research relevant for your work.