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open-access-imgOpen AccessFetSAM: Advanced Segmentation Techniques for Fetal Head Biometrics in Ultrasound Imagery
Author(s)
Mahmood Alzubaidi,
Uzair Shah,
Marco Agus,
Mowafa Househ
Publication year2024
Publication title
ieee open journal of engineering in medicine and biology
Resource typeMagazines
PublisherIEEE
Goal: FetSAM represents a cutting-edge deep learning model aimed at revolutionizing fetal head ultrasound segmentation, thereby elevating prenatal diagnostic precision. Methods: Utilizing a comprehensive dataset-the largest to date for fetal head metrics-FetSAM incorporates prompt-based learning. It distinguishes itself with a dual loss mechanism, combining Weighted DiceLoss and Weighted Lovasz Loss, optimized through AdamW and underscored by class weight adjustments for better segmentation balance. Performance benchmarks against prominent models such as U-net, DeepLabV3, and Segformer highlight its efficacy. Results: FetSAM delivers unparalleled segmentation accuracy, demonstrated by a DSC of 0.90117, HD of 1.86484, and ASD of 0.46645. Conclusion: FetSAM sets a new benchmark in AI-enhanced prenatal ultrasound analysis, providing a robust, precise tool for clinical applications and pushing the envelope of prenatal care with its groundbreaking dataset and segmentation capabilities.
Subject(s)bioengineering , components, circuits, devices and systems , computing and processing
Keyword(s)Ultrasonic imaging, Image segmentation, Head, Brain modeling, Biological system modeling, Imaging, Ultrasonic variables measurement, Fetal Ultrasound Imaging, Image Segmentation, Prompt-based Learning, Prenatal Diagnostics, Ultrasound Biometrics
Language(s)English
eISSN2644-1276
DOI10.1109/ojemb.2024.3382487

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