Shibahara et al., 2023 - Google Patents
Deep learning generates custom-made logistic regression models for explaining how breast cancer subtypes are classifiedShibahara et al., 2023
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- 15383864650414867523
- Author
- Shibahara T
- Wada C
- Yamashita Y
- Fujita K
- Sato M
- Kuwata J
- Okamoto A
- Ono Y
- Publication year
- Publication venue
- Plos one
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Snippet
Differentiating the intrinsic subtypes of breast cancer is crucial for deciding the best treatment strategy. Deep learning can predict the subtypes from genetic information more accurately than conventional statistical methods, but to date, deep learning has not been …
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