Li et al., 2022 - Google Patents
SEPA: signaling entropy-based algorithm to evaluate personalized pathway activation for survival analysis on pan-cancer dataLi et al., 2022
View HTML- Document ID
- 17178323505566688355
- Author
- Li X
- Li M
- Xiang J
- Zhao Z
- Shang X
- Publication year
- Publication venue
- Bioinformatics
External Links
Snippet
Motivation Biomarkers with prognostic ability and biological interpretability can be used to support decision-making in the survival analysis. Genes usually form functional modules to play synergistic roles, such as pathways. Predicting significant features from the functional …
- 230000037361 pathway 0 title abstract description 170
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