about
Model-based analysis of ChIP-Seq (MACS)Cistrome: an integrative platform for transcriptional regulation studiesCaSNP: a database for interrogating copy number alterations of cancer genome from SNP array dataFoxA1 translates epigenetic signatures into enhancer-driven lineage-specific transcriptionNONCODE: an integrated knowledge database of non-coding RNAsNPInter: the noncoding RNAs and protein related biomacromolecules interaction databaseCR Cistrome: a ChIP-Seq database for chromatin regulators and histone modification linkages in human and mouseGFOLD: a generalized fold change for ranking differentially expressed genes from RNA-seq data.CistromeFinder for ChIP-seq and DNase-seq data reuse.Target analysis by integration of transcriptome and ChIP-seq data with BETA.Dynamic changes in subgraph preference profiles of crucial transcription factorsIntegrated analysis of multiple data sources reveals modular structure of biological networks.Phylophenetic properties of metabolic pathway topologies as revealed by global analysis.Identifying positioned nucleosomes with epigenetic marks in human from ChIP-Seq.Intrinsic histone-DNA interactions are not the major determinant of nucleosome positions in vivo.A transcriptional signature and common gene networks link cancer with lipid metabolism and diverse human diseasesNucleosome dynamics define transcriptional enhancers.Transcription factor-pathway coexpression analysis reveals cooperation between SP1 and ESR1 on dysregulating cell cycle arrest in non-hyperdiploid multiple myeloma.Systematic evaluation of factors influencing ChIP-seq fidelityNucleosome depletion at yeast terminators is not intrinsic and can occur by a transcriptional mechanism linked to 3'-end formation.CistromeMap: a knowledgebase and web server for ChIP-Seq and DNase-Seq studies in mouse and human.DiNuP: a systematic approach to identify regions of differential nucleosome positioning.The combination of Tet1 with Oct4 generates high-quality mouse-induced pluripotent stem cells.Classify hyperdiploidy status of multiple myeloma patients using gene expression profilesLocal chromatin dynamics of transcription factors imply cell-lineage specific functions during cellular differentiation.SETDB1 modulates PRC2 activity at developmental genes independently of H3K9 trimethylation in mouse ES cells.Computational inference of mRNA stability from histone modification and transcriptome profilesChiLin: a comprehensive ChIP-seq and DNase-seq quality control and analysis pipeline.Comprehensive profiling reveals mechanisms of SOX2-mediated cell fate specification in human ESCs and NPCs.A comprehensive view of nuclear receptor cancer cistromesPPARgamma and C/EBP factors orchestrate adipocyte biology via adjacent binding on a genome-wide scale.Identification of key factors conquering developmental arrest of somatic cell cloned embryos by combining embryo biopsy and single-cell sequencing.Integrative genomic analyses reveal clinically relevant long noncoding RNAs in human cancer.Androgen receptor regulates a distinct transcription program in androgen-independent prostate cancer.The interactome as a tree--an attempt to visualize the protein-protein interaction network in yeast.Canonical nucleosome organization at promoters forms during genome activationEpigenome sequencing comes of age in development, differentiation and disease mechanism research.Evidence against a genomic code for nucleosome positioning. Reply to "Nucleosome sequence preferences influence in vivo nucleosome organization.".CAM: A quality control pipeline for MNase-seq data.Dr.seq2: A quality control and analysis pipeline for parallel single cell transcriptome and epigenome data.
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P50
description
Chinese bioinformatician
@en
bioinformáticu chinu
@ast
chinesischer Bioinformatiker
@de
chiński bioinformatyk
@pl
name
Yong Zhang
@ast
Yong Zhang
@cy
Yong Zhang
@en
Yong Zhang
@es
Yong Zhang
@fr
Yong Zhang
@ga
Yong Zhang
@nl
type
label
Yong Zhang
@ast
Yong Zhang
@cy
Yong Zhang
@en
Yong Zhang
@es
Yong Zhang
@fr
Yong Zhang
@ga
Yong Zhang
@nl
prefLabel
Yong Zhang
@ast
Yong Zhang
@cy
Yong Zhang
@en
Yong Zhang
@es
Yong Zhang
@fr
Yong Zhang
@ga
Yong Zhang
@nl
P1053
B-4838-2011
P106
P21
P2456
P31
P3829
P496
0000-0001-6316-2734