Balov, 2013 - Google Patents
A categorical network approach for discovering differentially expressed regulations in cancerBalov, 2013
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- 9157714824740203984
- Author
- Balov N
- Publication year
- Publication venue
- BMC medical genomics
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Background The problem of efficient utilization of genome-wide expression profiles for identification and prediction of complex disease conditions is both important and challenging. Polygenic pathologies such as most types of cancer involve disregulation of …
- 230000033228 biological regulation 0 title abstract description 27
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- G06F19/345—Medical expert systems, neural networks or other automated diagnosis
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