Statistical analysis of efficient unbalanced factorial designs for two-color microarray experiments

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Statistical analysis of efficient unbalanced factorial designs for two-color microarray experiments is …
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scholarly articleQ13442814

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P356DOI10.1155/2008/584360
P932PMC publication ID2431090
P698PubMed publication ID18584033
P5875ResearchGate publication ID5272170

P2093author name stringRobert J Tempelman
P2860cites workSignificance analysis of microarrays applied to the ionizing radiation responseQ24606608
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The contributions of sex, genotype and age to transcriptional variance in Drosophila melanogasterQ44876819
Characterizing dye bias in microarray experimentsQ46387263
Expression profiling soybean response to Pseudomonas syringae reveals new defense-related genes and rapid HR-specific downregulation of photosynthesisQ46850520
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Statistical designs for two-color spotted microarray experiments.Q48180014
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P275copyright licenseCreative Commons Attribution 3.0 UnportedQ14947546
P6216copyright statuscopyrightedQ50423863
P921main subjectstatisticsQ12483
P304page(s)584360
P577publication date2008-01-01
P13046publication type of scholarly workreview articleQ7318358
P1433published inInternational Journal of Plant GenomicsQ15751529
P1476titleStatistical analysis of efficient unbalanced factorial designs for two-color microarray experiments
P478volume2008

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Q33548674SWISS MADE: Standardized WithIn Class Sum of Squares to evaluate methodologies and dataset elements.cites workP2860

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