4.8 Article

Quantitative modeling of transcription factor binding specificities using DNA shape

出版社

NATL ACAD SCIENCES
DOI: 10.1073/pnas.1422023112

关键词

protein-DNA recognition; statistical machine learning; support vector regression; protein binding microarray; DNA structure

资金

  1. National Institutes of Health [R01GM106056, U01GM103804, R01HG003008, U54CA121852, R01GM058575, F32GM099160]
  2. National Science Foundation [MCB-1412045, MCB-1413539]
  3. Pharmaceutical Research and Manufacturers of America Foundation
  4. Direct For Biological Sciences
  5. Div Of Molecular and Cellular Bioscience [1413539] Funding Source: National Science Foundation
  6. Div Of Molecular and Cellular Bioscience
  7. Direct For Biological Sciences [1412045] Funding Source: National Science Foundation

向作者/读者索取更多资源

DNA binding specificities of transcription factors (TFs) are a key component of gene regulatory processes. Underlying mechanisms that explain the highly specific binding of TFs to their genomic target sites are poorly understood. A better understanding of TF-DNA binding requires the ability to quantitatively model TF binding to accessible DNA as its basic step, before additional in vivo components can be considered. Traditionally, these models were built based on nucleotide sequence. Here, we integrated 3D DNA shape information derived with a high-throughput approach into the modeling of TF binding specificities. Using support vector regression, we trained quantitative models of TF binding specificity based on protein binding microarray (PBM) data for 68 mammalian TFs. The evaluation of our models included cross-validation on specific PBM array designs, testing across different PBM array designs, and using PBM-trained models to predict relative binding affinities derived from in vitro selection combined with deep sequencing (SELEX-seq). Our results showed that shape-augmented models compared favorably to sequence-based models. Although both k-mer and DNA shape features can encode inter-dependencies between nucleotide positions of the binding site, using DNA shape features reduced the dimensionality of the feature space. In addition, analyzing the feature weights of DNA shape-augmented models uncovered TF family-specific structural readout mechanisms that were not revealed by the DNA sequence. As such, this work combines knowledge from structural biology and genomics, and suggests a new path toward understanding TF binding and genome function.

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