Literature DB >> 19099508

A novel computational approach to predict transcription factor DNA binding preference.

Yudong Cai1, Jianfeng He, Xinlei Li, Lin Lu, Xinyi Yang, Kaiyan Feng, Wencong Lu, Xiangyin Kong.   

Abstract

Transcription is one of the most important processes in cell in which transcription factors translate DNA sequences into RNA sequences. Accurate prediction of DNA binding preference of transcription factors is valuable for understanding the transcription regulatory mechanism and (1) elucidating regulation network. (2-4) Here we predict the DNA binding preference of transcription factor based on the protein amino acid composition and physicochemical properties, 0/1 encoding system of nucleotide, minimum Redundancy Maximum Relevance Feature Selection method, (5) and Nearest Neighbor Algorithm. The overall prediction accuracy of Jackknife cross-validation test is 91.1%, indicating that this approach is a useful tool to explore the relation between transcription factor and its binding sites. Moreover, we find that the secondary structure and polarizability of transcriptor contribute mostly in the prediction. Especially, a 7-nt motif with AT-rich region of the DNA binding sites discovered via our method is also consistent with the statistical analysis from the TRANSFAC database. (6).

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Year:  2009        PMID: 19099508     DOI: 10.1021/pr800717y

Source DB:  PubMed          Journal:  J Proteome Res        ISSN: 1535-3893            Impact factor:   4.466


  19 in total

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4.  DP-BINDER: machine learning model for prediction of DNA-binding proteins by fusing evolutionary and physicochemical information.

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8.  Predicting functions of proteins in mouse based on weighted protein-protein interaction network and protein hybrid properties.

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10.  Prediction of pharmacological and xenobiotic responses to drugs based on time course gene expression profiles.

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