An all-atom knowledge-based energy function for protein-DNA threading, docking decoy discrimination, and prediction of transcription-factor binding profiles

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Author(s)
Xu, Beisi
Yang, Yuedong
Liang, Haojun
Zhou, Yaoqi
Year published
2009
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Show full item recordAbstract
How to make an accurate representation of protein-DNA interaction by an energy function is a long-standing unsolved problem in structural biology. Here, we modified a statistical potential based on the distancescaled, finite ideal-gas reference state so that it is optimized for protein-DNA interactions. The changes include a volume-fraction correction to account for unmixable atom types in proteins and DNA in addition to the usage of a low-count correction, residue/base-specific atom types, and a shorter cutoff distance for protein-DNA interactions. The new statistical energy functions are tested in threading and docking ...
View more >How to make an accurate representation of protein-DNA interaction by an energy function is a long-standing unsolved problem in structural biology. Here, we modified a statistical potential based on the distancescaled, finite ideal-gas reference state so that it is optimized for protein-DNA interactions. The changes include a volume-fraction correction to account for unmixable atom types in proteins and DNA in addition to the usage of a low-count correction, residue/base-specific atom types, and a shorter cutoff distance for protein-DNA interactions. The new statistical energy functions are tested in threading and docking decoy discriminations and prediction of protein-DNA binding affinities and transcriptionfactor binding profiles. The results indicate that new proposed energy functions are among the best in existing energy functions for protein-DNA interactions. The new energy functions are available as a web-server called DDNA 2.0 at http://sparks. informatics.iupui.edu. The server version was trained by the entire 212 protein-DNA complexes.
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View more >How to make an accurate representation of protein-DNA interaction by an energy function is a long-standing unsolved problem in structural biology. Here, we modified a statistical potential based on the distancescaled, finite ideal-gas reference state so that it is optimized for protein-DNA interactions. The changes include a volume-fraction correction to account for unmixable atom types in proteins and DNA in addition to the usage of a low-count correction, residue/base-specific atom types, and a shorter cutoff distance for protein-DNA interactions. The new statistical energy functions are tested in threading and docking decoy discriminations and prediction of protein-DNA binding affinities and transcriptionfactor binding profiles. The results indicate that new proposed energy functions are among the best in existing energy functions for protein-DNA interactions. The new energy functions are available as a web-server called DDNA 2.0 at http://sparks. informatics.iupui.edu. The server version was trained by the entire 212 protein-DNA complexes.
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Journal Title
Proteins: Structure, Function, and Bioinformatics
Volume
76
Issue
3
Copyright Statement
© 2009 Wiley Periodicals, Inc. This is the accepted version of the following article: An all-atom knowledge-based energy function for protein-DNA threading, docking decoy discrimination, and prediction of transcription-factor binding profiles, Proteins: Structure, Function, and Bioinformatics, Vol. 76(3), 2009, pp. 718-730, which has been published in final form at dx.doi.org/10.1002/prot.22384.
Subject
Structural Biology (incl. Macromolecular Modelling)
Bioinformatics
Mathematical Sciences
Biological Sciences
Information and Computing Sciences