Explicit DNase sequence bias modeling enables high-resolution transcription factor footprint detection.
about
Next generation sequencing technology and genomewide data analysis: Perspectives for retinal researchProtein-DNA binding in high-resolutionBinDNase: a discriminatory approach for transcription factor binding prediction using DNase I hypersensitivity data.Combining transcription factor binding affinities with open-chromatin data for accurate gene expression predictionSurvey of protein-DNA interactions in Aspergillus oryzae on a genomic scaleGenome-wide footprinting: ready for prime time?Transcriptional regulatory logic of the diurnal cycle in the mouse liver.A novel dinuclear iridium(III) complex as a G-quadruplex-selective probe for the luminescent switch-on detection of transcription factor HIF-1αDiscovery and validation of information theory-based transcription factor and cofactor binding site motifs.Correcting nucleotide-specific biases in high-throughput sequencing data.Assessing the model transferability for prediction of transcription factor binding sites based on chromatin accessibility.Genomic footprinting.Mocap: large-scale inference of transcription factor binding sites from chromatin accessibilityDynamic enhancer function in the chromatin context.Bivariate Genomic Footprinting Detects Changes in Transcription Factor ActivityOn Accounting for Sequence-Specific Bias in Genome-Wide Chromatin Accessibility Experiments: Recent Advances and Contradictions.Universal correction of enzymatic sequence bias reveals molecular signatures of protein/DNA interactions.Sasquatch: predicting the impact of regulatory SNPs on transcription factor binding from cell- and tissue-specific DNase footprints.Analysis of computational footprinting methods for DNase sequencing experiments.
P2860
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P2860
Explicit DNase sequence bias modeling enables high-resolution transcription factor footprint detection.
description
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2014 թուականի Հոկտեմբերին հրատարակուած գիտական յօդուած
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2014 թվականի հոտեմբերին հրատարակված գիտական հոդված
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2014年の論文
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2014年論文
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2014年論文
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2014年論文
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2014年論文
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2014年論文
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Explicit DNase sequence bias m ...... on factor footprint detection.
@ast
Explicit DNase sequence bias m ...... on factor footprint detection.
@en
Explicit DNase sequence bias m ...... on factor footprint detection.
@nl
type
label
Explicit DNase sequence bias m ...... on factor footprint detection.
@ast
Explicit DNase sequence bias m ...... on factor footprint detection.
@en
Explicit DNase sequence bias m ...... on factor footprint detection.
@nl
prefLabel
Explicit DNase sequence bias m ...... on factor footprint detection.
@ast
Explicit DNase sequence bias m ...... on factor footprint detection.
@en
Explicit DNase sequence bias m ...... on factor footprint detection.
@nl
P2860
P356
P1476
Explicit DNase sequence bias m ...... on factor footprint detection.
@en
P2093
Christopher L Frank
Galip Gürkan Yardımcı
P2860
P304
11865-11878
P356
10.1093/NAR/GKU810
P407
P577
2014-10-07T00:00:00Z