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Way et al., 2019 - Google Patents

Discovering pathway and cell type signatures in transcriptomic compendia with machine learning

Way et al., 2019

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Document ID
3735826036403030095
Author
Way G
Greene C
Publication year
Publication venue
Annual Review of Biomedical Data Science

External Links

Snippet

Pathway and cell type signatures are patterns present in transcriptome data that are associated with biological processes or phenotypic consequences. These signatures result from specific cell type and pathway expression but can require large transcriptomic …
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Classifications

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