EMQIT: a machine learning approach for energy based PWM matrix quality improvement

Biol Direct. 2017 Aug 1;12(1):17. doi: 10.1186/s13062-017-0189-y.

Abstract

Background: Transcription factor binding affinities to DNA play a key role for the gene regulation. Learning the specificity of the mechanisms of binding TFs to DNA is important both to experimentalists and theoreticians. With the development of high-throughput methods such as, e.g., ChiP-seq the need to provide unbiased models of binding events has been made apparent. We present EMQIT a modification to the approach introduced by Alamanova et al. and later implemented as 3DTF server. We observed that tuning of Boltzmann factor weights, used for conversion of calculated energies to nucleotide probabilities, has a significant impact on the quality of the associated PWM matrix.

Results: Consequently, we proposed to use receiver operator characteristics curves and the 10-fold cross-validation to learn best weights using experimentally verified data from TRANSFAC database. We applied our method to data available for various TFs. We verified the efficiency of detecting TF binding sites by the 3DTF matrices improved with our technique using experimental data from the TRANSFAC database. The comparison showed a significant similarity and comparable performance between the improved and the experimental matrices (TRANSFAC). Improved 3DTF matrices achieved significantly higher AUC values than the original 3DTF matrices (at least by 0.1) and, at the same time, detected notably more experimentally verified TFBSs.

Conclusions: The resulting new improved PWM matrices for analyzed factors show similarity to TRANSFAC matrices. Matrices had comparable predictive capabilities. Moreover, improved PWMs achieve better results than matrices downloaded from 3DTF server. Presented approach is general and applicable to any energy-based matrices. EMQIT is available online at http://biosolvers.polsl.pl:3838/emqit .

Reviewers: This article was reviewed by Oliviero Carugo, Marek Kimmel and István Simon.

Keywords: 3DTF; Jaspar; PWM matrix; TFBS; TRANSFAC.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Binding Sites
  • Computational Biology / methods
  • Datasets as Topic
  • Gene Expression Regulation
  • Machine Learning*
  • Models, Genetic
  • Models, Molecular
  • Position-Specific Scoring Matrices*
  • ROC Curve
  • Software
  • Transcription Factors / chemistry*
  • Transcription Factors / metabolism

Substances

  • Transcription Factors