Discovering Condition-Specific Gene Co-Expression Patterns Using Gaussian Mixture Models: A Cancer Case Study.

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Discovering Condition-Specific Gene Co-Expression Patterns Using Gaussian Mixture Models: A Cancer Case Study. is …
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scholarly articleQ13442814

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P6179Dimensions Publication ID1091161926
P356DOI10.1038/S41598-017-09094-4
P932PMC publication ID5561081
P698PubMed publication ID28819158

P50authorWilliam L PoehlmanQ88061412
Stephen FicklinQ30518875
P2093author name stringChristopher Watson
F Alex Feltus
Kimberly E Roche
Leland J Dunwoodie
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P275copyright licenseCreative Commons Attribution 4.0 InternationalQ20007257
P6216copyright statuscopyrightedQ50423863
P4510describes a project that usesWGCNAQ102537983
DESeq2Q113018293
P433issue1
P407language of work or nameEnglishQ1860
P304page(s)8617
P577publication date2017-08-17
P1433published inScientific ReportsQ2261792
P1476titleDiscovering Condition-Specific Gene Co-Expression Patterns Using Gaussian Mixture Models: A Cancer Case Study
P478volume7

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