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Taylor R and Acquaah-Mensah G. Regulatory network inference: use of whole brain vs brain region-specific gene expression data in the mouse [version 1; not peer reviewed]. F1000Research 2016, 5(ISCB Comm J):85 (slides) (https://doi.org/10.7490/f1000research.1111268.1)
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Regulatory network inference: use of whole brain vs brain region-specific gene expression data in the mouse

Ronald Taylor1, George Acquaah-Mensah
Author Affiliations
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Published 19 Jan 2016

Regulatory network inference: use of whole brain vs brain region-specific gene expression data in the mouse

[version 1; not peer reviewed]

Ronald Taylor1, George Acquaah-Mensah
Author Affiliations
1 Pacific Northwest National Laboratory, USA
Presented at
13th Annual Rocky Mountain Bioinformatics Conference 2015
Competing Interests

No competing interests were disclosed

Keywords
transcriptional regulatory network, TRN, network inference, gene expression, mouse brain, hippocampus
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