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Deep learning for interpretable end-to-end survival (E-E Surv) prediction in gastrointestinal cancer histopathology | Synapse
March 3, 2026
Deep learning for interpretable end-to-end survival (E-E Surv) prediction in gastrointestinal cancer histopathology
NL
Narmin Ghaffari Laleh
RWTH Aachen University
AE
Amelie Echle
HM
Hannah Sophie Muti
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Puntos clave
Survival prediction accuracy significantly improves with interpretable deep learning models, indicating better clinical applicability.
Performance metrics showcase over 80% accuracy rates for survival predictions in gastrointestinal cancer cases.
Using deep learning techniques on histopathology images allows for end-to-end analysis of survival outcomes.
Potential implications for clinical settings include enhanced patient management and tailored treatment strategies based on interpretable results.
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Cite This Study
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Laleh et al. (Fri,) studied this question.
synapsesocial.com/papers/69a75b9fc6e9836116a2345d