about
Analysis of the Basidiomycete Coprinopsis cinerea reveals conservation of the core meiotic expression program over half a billion years of evolutionGetting to the edge: protein dynamical networks as a new frontier in plant-microbe interactionsNetwork-based identification of biomarkers coexpressed with multiple pathwaysA predictive model of the oxygen and heme regulatory network in yeastNetwork analysis of breast cancer progression and reversal using a tree-evolving network algorithmA validated regulatory network for Th17 cell specificationThe Mycobacterium tuberculosis regulatory network and hypoxiaIdentification of functional elements and regulatory circuits by Drosophila modENCODEGene expression inference with deep learning.Reconstruction of regulatory networks through temporal enrichment profiling and its application to H1N1 influenza viral infection.DREM 2.0: Improved reconstruction of dynamic regulatory networks from time-series expression dataShort time-series microarray analysis: methods and challenges.SMARTS: reconstructing disease response networks from multiple individuals using time series gene expression dataInferring Broad Regulatory Biology from Time Course Data: Have We Reached an Upper Bound under Constraints Typical of In Vivo Studies?Uncovering transcriptional interactions via an adaptive fuzzy logic approachData- and knowledge-based modeling of gene regulatory networks: an update.Evaluating Transcription Factor Activity Changes by Scoring Unexplained Target Genes in Expression DataA semi-supervised method for predicting transcription factor-gene interactions in Escherichia coli.Transcriptome analysis of a respiratory Saccharomyces cerevisiae strain suggests the expression of its phenotype is glucose insensitive and predominantly controlled by Hap4, Cat8 and Mig1A cross-species transcriptomics approach to identify genes involved in leaf development.High hydrostatic pressure activates transcription factors involved in Saccharomyces cerevisiae stress tolerance.Identification of yeast transcriptional regulation networks using multivariate random forestsExtracting biologically significant patterns from short time series gene expression data.Learning "graph-mer" motifs that predict gene expression trajectories in development.Toward the dynamic interactome: it's about time.Integrating multiple evidence sources to predict transcription factor binding in the human genome.Inference of hierarchical regulatory network of estrogen-dependent breast cancer through ChIP-based data.Antiviral response dictated by choreographed cascade of transcription factors.Learning transcriptional regulation on a genome scale: a theoretical analysis based on gene expression data.Large scale comparison of innate responses to viral and bacterial pathogens in mouse and macaque.How yeast re-programmes its transcriptional profile in response to different nutrient impulsesCoordination of frontline defense mechanisms under severe oxidative stress.Discovering pathways by orienting edges in protein interaction networksConnectedness of PPI network neighborhoods identifies regulatory hub proteins.Phosphoproteomic analysis of protein phosphorylation networks in Tetrahymena thermophila, a model single-celled organism.Metabolic labeling of RNA uncovers principles of RNA production and degradation dynamics in mammalian cellsPredicting tissue specific transcription factor binding sites.Senescence-secreted factors activate Myc and sensitize pretransformed cells to TRAIL-induced apoptosis.Inferring transcription factor collaborations in gene regulatory networksDECOD: fast and accurate discriminative DNA motif finding
P2860
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P2860
description
2007 nî lūn-bûn
@nan
2007年の論文
@ja
2007年論文
@yue
2007年論文
@zh-hant
2007年論文
@zh-hk
2007年論文
@zh-mo
2007年論文
@zh-tw
2007年论文
@wuu
2007年论文
@zh
2007年论文
@zh-cn
name
Reconstructing dynamic regulatory maps.
@en
type
label
Reconstructing dynamic regulatory maps.
@en
prefLabel
Reconstructing dynamic regulatory maps.
@en
P2093
P2860
P356
P1476
Reconstructing dynamic regulatory maps.
@en
P2093
Christopher T Harbison
Jason Ernst
Oded Vainas
P2860
P356
10.1038/MSB4100115
P577
2007-01-16T00:00:00Z