Predicting DNA recognition by Cys2His2 zinc finger proteins
Open Access
- 13 November 2008
- journal article
- research article
- Published by Oxford University Press (OUP) in Bioinformatics
- Vol. 25 (1) , 22-29
- https://doi.org/10.1093/bioinformatics/btn580
Abstract
Motivation: Cys2His2 zinc finger (ZF) proteins represent the largest class of eukaryotic transcription factors. Their modular structure and well-conserved protein-DNA interface allow the development of computational approaches for predicting their DNA-binding preferences even when no binding sites are known for a particular protein. The ‘canonical model’ for ZF protein-DNA interaction consists of only four amino acid nucleotide contacts per zinc finger domain. Results: We present an approach for predicting ZF binding based on support vector machines (SVMs). While most previous computational approaches have been based solely on examples of known ZF protein–DNA interactions, ours additionally incorporates information about protein–DNA pairs known to bind weakly or not at all. Moreover, SVMs with a linear kernel can naturally incorporate constraints about the relative binding affinities of protein-DNA pairs; this type of information has not been used previously in predicting ZF protein-DNA binding. Here, we build a high-quality literature-derived experimental database of ZF–DNA binding examples and utilize it to test both linear and polynomial kernels for predicting ZF protein–DNA binding on the basis of the canonical binding model. The polynomial SVM outperforms previously published prediction procedures as well as the linear SVM. This may indicate the presence of dependencies between contacts in the canonical binding model and suggests that modification of the underlying structural model may result in further improved performance in predicting ZF protein–DNA binding. Overall, this work demonstrates that methods incorporating information about non-binding and relative binding of protein–DNA pairs have great potential for effective prediction of protein–DNA interactions. Availability: An online tool for predicting ZF DNA binding is available at http://compbio.cs.princeton.edu/zf/. Contact:mona@cs.princeton.edu Supplementary information: Supplementary data are available at Bioinformatics online.Keywords
This publication has 41 references indexed in Scilit:
- Development of Zinc Finger Domains for Recognition of the 5′-CNN-3′ Family DNA Sequences and Their Use in the Construction of Artificial Transcription FactorsJournal of Biological Chemistry, 2005
- Scanning the human genome with combinatorial transcription factor librariesNature Biotechnology, 2003
- Probabilistic Code for DNA Recognition by Proteins of the EGR FamilyJournal of Molecular Biology, 2002
- Nucleotides of transcription factor binding sites exert interdependent effects on the binding affinities of transcription factorsNucleic Acids Research, 2002
- Development of Zinc Finger Domains for Recognition of the 5′-ANN-3′ Family of DNA Sequences and Their Use in the Construction of Artificial Transcription FactorsJournal of Biological Chemistry, 2001
- Exploring the DNA-binding specificities of zinc fingers with DNA microarraysProceedings of the National Academy of Sciences, 2001
- SAMIE: STATISTICAL ALGORITHM FOR MODELING INTERACTION ENERGIESPacific Symposium on Biocomputing, 2000
- Insights into the molecular recognition of the 5′-GNN-3′ family of DNA sequences by zinc finger domains 1 1Edited by M. YanivJournal of Molecular Biology, 2000
- An Introduction to Support Vector Machines and Other Kernel-based Learning MethodsPublished by Cambridge University Press (CUP) ,2000
- The Protein Data BankNucleic Acids Research, 2000