Confounding Factors in the Transcriptome Analysis of an In-Vivo Exposure Experiment

scientific article published on 20 January 2016

Confounding Factors in the Transcriptome Analysis of an In-Vivo Exposure Experiment is …
instance of (P31):
scholarly articleQ13442814

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P819ADS bibcode2016PLoSO..1145252B
P356DOI10.1371/JOURNAL.PONE.0145252
P932PMC publication ID4720430
P698PubMed publication ID26789003
P5875ResearchGate publication ID291340772

P50authorHan RauwerdaQ57147278
Wendy RodenburgQ131000680
P2093author name stringMartijs J Jonker
Annemieke de Vries
Timo M Breit
Oskar Bruning
Rob J Dekker
Conny van Oostrom
Paul F K Wackers
Wim A Ensink
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Harmonics of circadian gene transcription in mammalsQ33426339
A range finding protocol to support design for transcriptomics experimentation: examples of in-vitro and in-vivo murine UV exposureQ33605031
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P275copyright licenseCreative Commons Attribution 4.0 InternationalQ20007257
P6216copyright statuscopyrightedQ50423863
P4510describes a project that useslimmaQ112236343
P433issue1
P407language of work or nameEnglishQ1860
P304page(s)e0145252
P577publication date2016-01-20
P1433published inPLOS OneQ564954
P1476titleConfounding Factors in the Transcriptome Analysis of an In-Vivo Exposure Experiment
P478volume11

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cites work (P2860)
Q93216493Accurate estimation of cell composition in bulk expression through robust integration of single-cell information
Q58799625Genome-wide identification of directed gene networks using large-scale population genomics data

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