@inproceedings{4c5e5c470f20412aaa3ac9631638d315,
title = "Towards Real-Time Detection of Fatty Liver Disease in Ultrasound Imaging: Challenges and Opportunities",
abstract = "This study presents an AI framework for real-time NAFLD detection using ultrasound imaging, addressing operator dependency, imaging variability, and class imbalance. It integrates CNNs with machine learning classifiers and applies preprocessing techniques, including normalization and GAN-based augmentation, to enhance prediction for underrepresented disease stages. Grad-CAM provides visual explanations to support clinical interpretation. Trained on 10,352 annotated images from multiple Saudi centers, the framework achieved 98.9\% accuracy and an AUC of 0.99, outperforming baseline CNNs by 12.4\% and improving sensitivity for advanced fibrosis and subtle features. Future work will extend multi-class classification, validate performance across settings, and integrate with clinical systems.",
keywords = "Deep Learning, Explainable Artificial Intelligence, NAFLD, Ultrasound Imaging",
author = "Alshagathrh, \{Fahad M.\} and Jens Schneider and Househ, \{Mowafa S.\}",
note = "Publisher Copyright: {\textcopyright} 2025 The Authors.; 20th World Congress on Medical and Health Informatics, MEDINFO 2025 ; Conference date: 09-08-2025 Through 13-08-2025",
year = "2025",
month = aug,
day = "7",
doi = "10.3233/SHTI250896",
language = "English",
series = "Studies in Health Technology and Informatics",
publisher = "IOS Press BV",
pages = "530--534",
editor = "Househ, \{Mowafa S.\} and Househ, \{Mowafa S.\} and Tariq, \{Zain Ul Abideen\} and Mahmood Al-Zubaidi and Uzair Shah and Elaine Huesing",
booktitle = "MEDINFO 2025 - Healthcare Smart x Medicine Deep",
address = "Netherlands",
}