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An analytics-driven review of U-Net for medical image segmentation

Fnu Neha, Deepshikha Bhati, Deepak Kumar Shukla, Sonavi Makarand Dalvi, Nikolaos Mantzou, Safa Shubbar

2025Healthcare Analytics12 citationsDOIOpen Access PDF

Abstract

Medical imaging (MI) plays a vital role in healthcare by providing detailed insights into anatomical structures and pathological conditions, supporting accurate diagnosis and treatment planning. Noninvasive modalities, such as X-ray, magnetic resonance imaging (MRI), computed tomography (CT), and ultrasound (US), produce high-resolution images of internal organs and tissues. The effective interpretation of these images relies on the precise segmentation of the regions of interest (ROI), including organs and lesions. Traditional methods based on manual feature extraction are time-consuming, inconsistent, and not scalable. This review explores recent advances in artificial intelligence (AI)-driven segmentation, focusing on Convolutional Neural Network (CNN) architectures, particularly the U-Net family and its variants—U-Net++, and U-Net 3+. These models enable automated, pixel-wise classification across modalities and have improved segmentation accuracy and efficiency. The review outlines the evolution of U-Net architectures, their clinical integration, and offers a modality-wise comparison. It also addresses challenges such as data heterogeneity, limited generalizability, and model interpretability, proposing solutions including attention mechanisms and Transformer-based designs. Emphasizing clinical applicability, this work bridges the gap between algorithmic development and real-world implementation. • Review U-Net applications in medical image segmentation across modalities. • Analyze deep learning advancements in healthcare imaging techniques. • Identify key challenges in data quality and model generalization. • Explore strategies to enhance segmentation efficiency and accuracy. • Provide insights for selecting models and datasets in healthcare.

Topics & Concepts

Artificial intelligenceSegmentationComputer scienceConvolutional neural networkMedical imagingImage segmentationDeep learningFeature extractionMagnetic resonance imagingFeature (linguistics)Pattern recognition (psychology)ModalitiesComputer visionMachine learningModality (human–computer interaction)Key (lock)Artificial neural networkImage qualityComputed tomographyQuality (philosophy)Image processingReal-time MRIClinical PracticeScale-space segmentationHealth careMarket segmentationSegmentation-based object categorizationRadiomics and Machine Learning in Medical ImagingMedical Imaging and AnalysisAI in cancer detection
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