Interpretable Deep Learning Model for Pediatric Strangulated Small Bowel Obstruction on CT: A Multicenter Study
Abstract
To develop and validate a deep learning-based multi-instance learning model that integrates CT imaging and clinical data to improve the accuracy of discriminating between strangulated small bowel obstruction (StSBO) from simple small bowel obstruction (SiSBO) in pediatric patients.
Keywords
Small Bowel ObstructionStrangulated BowelPediatric RadiologyDeep LearningComputed TomographyMulti-instance LearningPediatric SurgeryHashtags
#PediatricRadiology#DeepLearning#BowelObstruction#ArtificialIntelligenceThis article is published on an external journal. Click below to read the full text.
Read full article ↗How to cite: GlobalCastMD. Interpretable Deep Learning Model for Pediatric Strangulated Small Bowel Obstruction on CT: A Multicenter Study. GlobalCastMD Medical Library. 2026-03-11. https://origin-library.globalcastmd.com/article/11661
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