Accueil
Explorer
nav.journalClub
Tendances
Plus
synapse
⌘+K
Langue
Français
Français
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
See all
Key Points
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.
Abstract
81
Mark Helpful
Like
Save
Bookmark
Relay
Share
Mark Helpful
Like
Save
Bookmark
Relay
Share
Cite This Study
Copy
Laleh et al. (Fri,) studied this question.
synapsesocial.com/papers/69a75b9fc6e9836116a2345d