How data analysis affects power, reproducibility and biological insight of RNA-seq studies in complex datasets
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Practical impacts of genomic data "cleaning" on biological discovery using surrogate variable analysisSynthetic data sets for the identification of key ingredients for RNA-seq differential analysis.Multi-omics approaches to disease.The polymyxin B-induced transcriptomic response of a clinical, multidrug-resistant Klebsiella pneumoniae involves multiple regulatory elements and intracellular targets.Removal of unwanted variation reveals novel patterns of gene expression linked to sleep homeostasis in murine cortexAraport11: a complete reannotation of the Arabidopsis thaliana reference genome.Resolving host-pathogen interactions by dual RNA-seq.Characterization of a Novel Chromatin Sorting Tool Reveals Importance of Histone Variant H3.3 in Contextual Fear Memory and Motor LearningReplicates, Read Numbers, and Other Important Experimental Design Considerations for Microbial RNA-seq Identified Using Bacillus thuringiensis DatasetsGenomics of Natural Populations: How Differentially Expressed Genes Shape the Evolution of Chromosomal Inversions in Drosophila pseudoobscuraEstimation of random effects and identifying heterogeneous genes in meta-analysis of gene expression studies.RNA sequencing from neural ensembles activated during fear conditioning in the mouse temporal association cortex.Contextual fear conditioning induces differential alternative splicing.Rigor and Reproducibility in Rodent Behavioral Research.Learning-dependent chromatin remodeling highlights noncoding regulatory regions linked to autism.Identifying differentially expressed genes from cross-site integrated data based on relative expression orderings.Recent Developments in Single-Cell RNA-Seq of MicroorganismsAn integrated genomic analysis of anaplastic meningioma identifies prognostic molecular signatures
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P2860
How data analysis affects power, reproducibility and biological insight of RNA-seq studies in complex datasets
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2015 nî lūn-bûn
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2015 թուականի Յուլիսին հրատարակուած գիտական յօդուած
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2015 թվականի հուլիսին հրատարակված գիտական հոդված
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2015年の論文
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How data analysis affects powe ...... eq studies in complex datasets
@ast
How data analysis affects powe ...... eq studies in complex datasets
@en
type
label
How data analysis affects powe ...... eq studies in complex datasets
@ast
How data analysis affects powe ...... eq studies in complex datasets
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How data analysis affects powe ...... eq studies in complex datasets
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How data analysis affects powe ...... eq studies in complex datasets
@en
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P50
P921
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How data analysis affects powe ...... eq studies in complex datasets
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Marcelo A Wood
Mathieu E Wimmer
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P304
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10.1093/NAR/GKV736
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P577
2015-07-21T00:00:00Z