Literature DB >> 16362910

Integrating genomic data to predict transcription factor binding.

Dustin T Holloway1, Mark Kon, Charles DeLisi.   

Abstract

Transcription factor binding sites (TFBS) in gene promoter regions are often predicted by using position specific scoring matrices (PSSMs), which summarize sequence patterns of experimentally determined TF binding sites. Although PSSMs are more reliable than simple consensus string matching in predicting a true binding site, they generally result in high numbers of false positive hits. This study attempts to reduce the number of false positive matches and generate new predictions by integrating various types of genomic data by two methods: a Bayesian allocation procedure, and support vector machine classification. Several methods will be explored to strengthen the prediction of a true TFBS in the Saccharomyces cerevisiae genome: binding site degeneracy, binding site conservation, phylogenetic profiling, TF binding site clustering, gene expression profiles, GO functional annotation, and k-mer counts in promoter regions. Binding site degeneracy (or redundancy) refers to the number of times a particular transcription factor's binding motif is discovered in the upstream region of a gene. Phylogenetic conservation takes into account the number of orthologous upstream regions in other genomes that contain a particular binding site. Phylogenetic profiling refers to the presence or absence of a gene across a large set of genomes. Binding site clusters are statistically significant clusters of TF binding sites detected by the algorithm ClusterBuster. Gene expression takes into account the idea that when the gene expression profiles of a transcription factor and a potential target gene are correlated, then it is more likely that the gene is a genuine target. Also, genes with highly correlated expression profiles are often regulated by the same TF(s). The GO annotation data takes advantage of the idea that common transcription targets often have related function. Finally, the distribution of the counts of all k-mers of length 4, 5, and 6 in gene's promoter region were examined as means to predict TF binding. In each case the data are compared to known true positives taken from ChIP-chip data, Transfac, and the Saccharomyces Genome Database. First, degeneracy, conservation, expression, and binding site clusters were examined independently and in combination via Bayesian allocation. Then, binding sites were predicted with a support vector machine (SVM) using all methods alone and in combination. The SVM works best when all genomic data are combined, but can also identify which methods contribute the most to accurate classification. On average, a support vector machine can classify binding sites with high sensitivity and an accuracy of almost 80%.

Entities:  

Mesh:

Substances:

Year:  2005        PMID: 16362910

Source DB:  PubMed          Journal:  Genome Inform        ISSN: 0919-9454


  24 in total

1.  Context specific transcription factor prediction.

Authors:  Eric Yang; David Simcha; Richard R Almon; Debra C Dubois; William J Jusko; Ioannis P Androulakis
Journal:  Ann Biomed Eng       Date:  2007-03-22       Impact factor: 3.934

2.  Uncovering the transcriptional circuitry in skeletal muscle regeneration.

Authors:  Minghui Wang; Qishan Wang; Xiangzhe Zhang; Yumei Yang; Hongbo Zhao; Yufang Ma; Yuchun Pan
Journal:  Mamm Genome       Date:  2011-04-21       Impact factor: 2.957

3.  A DNA shape-based regulatory score improves position-weight matrix-based recognition of transcription factor binding sites.

Authors:  Jichen Yang; Stephen A Ramsey
Journal:  Bioinformatics       Date:  2015-06-30       Impact factor: 6.937

4.  Identification of novel pretranslational regulatory mechanisms for NF-κB activation.

Authors:  Xiao Huang; Ren Gong; Xinyuan Li; Anthony Virtue; Fan Yang; Irene H Yang; Anh H Tran; Xiao-Feng Yang; Hong Wang
Journal:  J Biol Chem       Date:  2013-03-20       Impact factor: 5.157

5.  Differences in local genomic context of bound and unbound motifs.

Authors:  Loren Hansen; Leonardo Mariño-Ramírez; David Landsman
Journal:  Gene       Date:  2012-06-10       Impact factor: 3.688

Review 6.  Machine learning: its challenges and opportunities in plant system biology.

Authors:  Mohsen Hesami; Milad Alizadeh; Andrew Maxwell Phineas Jones; Davoud Torkamaneh
Journal:  Appl Microbiol Biotechnol       Date:  2022-05-16       Impact factor: 4.813

7.  Genome-wide histone acetylation data improve prediction of mammalian transcription factor binding sites.

Authors:  Stephen A Ramsey; Theo A Knijnenburg; Kathleen A Kennedy; Daniel E Zak; Mark Gilchrist; Elizabeth S Gold; Carrie D Johnson; Aaron E Lampano; Vladimir Litvak; Garnet Navarro; Tetyana Stolyar; Alan Aderem; Ilya Shmulevich
Journal:  Bioinformatics       Date:  2010-07-27       Impact factor: 6.937

8.  Uncovering a macrophage transcriptional program by integrating evidence from motif scanning and expression dynamics.

Authors:  Stephen A Ramsey; Sandy L Klemm; Daniel E Zak; Kathleen A Kennedy; Vesteinn Thorsson; Bin Li; Mark Gilchrist; Elizabeth S Gold; Carrie D Johnson; Vladimir Litvak; Garnet Navarro; Jared C Roach; Carrie M Rosenberger; Alistair G Rust; Natalya Yudkovsky; Alan Aderem; Ilya Shmulevich
Journal:  PLoS Comput Biol       Date:  2008-03-21       Impact factor: 4.475

9.  Homocysteine induces inflammatory transcriptional signaling in monocytes.

Authors:  Shu Meng; Stephen Ciment; Michael Jan; Tran Tran; Hung Pham; Ramon Cueto; Xiao-Feng Yang; Hong Wang
Journal:  Front Biosci (Landmark Ed)       Date:  2013-01-01

10.  Identification and characterization of renal cell carcinoma gene markers.

Authors:  Gul S Dalgin; Dustin T Holloway; Louis S Liou; Charles DeLisi
Journal:  Cancer Inform       Date:  2007-02-09
View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.