Weighted gene coexpression network analysis: state of the art.
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Introduction to sequencing the brain transcriptomeIdentification of co-expression gene networks, regulatory genes and pathways for obesity based on adipose tissue RNA Sequencing in a porcine modelGenes associated with ant social behavior show distinct transcriptional and evolutionary patternsMolecular microcircuitry underlies functional specification in a basal ganglia circuit dedicated to vocal learningGene networks and haloperidol-induced catalepsy.Systems genetics: a novel approach to dissect the genetic basis of osteoporosis.Systems genetic analysis of osteoblast-lineage cellsA system level analysis of gastric cancer across tumor stages with RNA-seq data.Network-Based Biomedical Data Analysis.Epistatic Networks Jointly Influence Phenotypes Related to Metabolic Disease and Gene Expression in Diversity Outbred Mice.Gene co-expression network analysis in Rhodobacter capsulatus and application to comparative expression analysis of Rhodobacter sphaeroides.Correlation set analysis: detecting active regulators in disease populations using prior causal knowledgeProtection genes in nucleus accumbens shell affect vulnerability to nicotine self-administration across isogenic strains of adolescent ratSpectral gene set enrichment (SGSE).Genetic architecture of gene expression in the chickenStat and interferon genes identified by network analysis differentially regulate primitive and definitive erythropoiesisLink clustering reveals structural characteristics and biological contexts in signed molecular networksPositively correlated miRNA-mRNA regulatory networks in mouse frontal cortex during early stages of alcohol dependenceRole of tumor necrosis factor-α in the human systemic endotoxin-induced transcriptome.A predictor for predicting Escherichia coli transcriptome and the effects of gene perturbations.Identification of common regulators of genes in co-expression networks affecting muscle and meat properties.Modeling the diagnostic criteria for alcohol dependence with genetic animal models.Large-scale gene co-expression network as a source of functional annotation for cattle genesPreservation affinity in consensus modules among stages of HIV-1 progression.Evaluation and improvement of the regulatory inference for large co-expression networks with limited sample size.Integrative genomics in cardiovascular medicineA Phenotype-Driven Dimension Reduction (PhDDR) approach to integrated genomic association analyses.Voluntary wheel running reduces voluntary consumption of ethanol in mice: identification of candidate genes through striatal gene expression profilingmicroRNAs in the Same Clusters Evolve to Coordinately Regulate Functionally Related Genes.Network Analysis-Based Approach for Exploring the Potential Diagnostic Biomarkers of Acute Myocardial Infarction.Aberrant transcriptional networks in step-wise neurogenesis of paroxysmal kinesigenic dyskinesia-induced pluripotent stem cells.Gene co-expression network analysis reveals common system-level properties of prognostic genes across cancer types.Genes, behavior and next-generation RNA sequencing.Identification and evaluation of lncRNA and mRNA integrative modules in human peripheral blood mononuclear cells.An integrated analysis for long noncoding RNAs and microRNAs with the mediated competing endogenous RNA network in papillary renal cell carcinomaRat Genome and Model Resources.Applicability of gene expression and systems biology to develop pharmacogenetic predictors; antipsychotic-induced extrapyramidal symptoms as an example.Network-Based Genomic Analysis of Human Oligodendrocyte Progenitor DifferentiationIdentification and functional analysis of a potential key lncRNA involved in fat loss of cancer cachexia.Cross-species gene modules emerge from a systems biology approach to osteoarthritis.
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Weighted gene coexpression network analysis: state of the art.
description
article científic
@ca
article scientifique
@fr
articolo scientifico
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artigo científico
@pt
bilimsel makale
@tr
scientific article published on March 2010
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vedecký článok
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vetenskaplig artikel
@sv
videnskabelig artikel
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vědecký článek
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name
Weighted gene coexpression network analysis: state of the art.
@en
Weighted gene coexpression network analysis: state of the art.
@nl
type
label
Weighted gene coexpression network analysis: state of the art.
@en
Weighted gene coexpression network analysis: state of the art.
@nl
prefLabel
Weighted gene coexpression network analysis: state of the art.
@en
Weighted gene coexpression network analysis: state of the art.
@nl
P2093
P2860
P1476
Weighted gene coexpression network analysis: state of the art.
@en
P2093
Peter Langfelder
Steve Hovarth
Tova Fuller
P2860
P304
P356
10.1080/10543400903572753
P577
2010-03-01T00:00:00Z