Nepomuceno-Chamorro et al., 2011 - Google Patents
Prognostic transcriptional association networks: a new supervised approach based on regression treesNepomuceno-Chamorro et al., 2011
View HTML- Document ID
- 10325726544333639914
- Author
- Nepomuceno-Chamorro I
- Azuaje F
- Devaux Y
- Nazarov P
- Muller A
- Aguilar-Ruiz J
- Wagner D
- Publication year
- Publication venue
- Bioinformatics
External Links
Snippet
Motivation: The application of information encoded in molecular networks for prognostic purposes is a crucial objective of systems biomedicine. This approach has not been widely investigated in the cardiovascular research area. Within this area, the prediction of clinical …
- 230000002103 transcriptional 0 title abstract description 18
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- G06F19/24—Bioinformatics, i.e. methods or systems for genetic or protein-related data processing in computational molecular biology for machine learning, data mining or biostatistics, e.g. pattern finding, knowledge discovery, rule extraction, correlation, clustering or classification
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