Pediatric Appendicitis Detection from Ultrasound Images
Fatemeh Hosseinabadi, Seyedhassan Sharifi

TL;DR
This paper presents a deep learning approach using a pretrained ResNet model to accurately detect pediatric appendicitis from ultrasound images, addressing diagnostic challenges with high performance metrics.
Contribution
The study develops and evaluates a ResNet-based model specifically fine-tuned for pediatric ultrasound images to improve appendicitis detection accuracy.
Findings
Achieved 93.44% accuracy in appendicitis detection
Model demonstrated high precision and recall rates
Effectively handled heterogeneous ultrasound views
Abstract
Pediatric appendicitis remains one of the most common causes of acute abdominal pain in children, and its diagnosis continues to challenge clinicians due to overlapping symptoms and variable imaging quality. This study aims to develop and evaluate a deep learning model based on a pretrained ResNet architecture for automated detection of appendicitis from ultrasound images. We used the Regensburg Pediatric Appendicitis Dataset, which includes ultrasound scans, laboratory data, and clinical scores from pediatric patients admitted with abdominal pain to Children Hospital. Hedwig in Regensburg, Germany. Each subject had 1 to 15 ultrasound views covering the right lower quadrant, appendix, lymph nodes, and related structures. For the image based classification task, ResNet was fine tuned to distinguish appendicitis from non-appendicitis cases. Images were preprocessed by normalization,…
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Taxonomy
TopicsAppendicitis Diagnosis and Management · Intraperitoneal and Appendiceal Malignancies · Ovarian cancer diagnosis and treatment
