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Deep Learning for Brain MRI Tissue and Structure Segmentation: A Comprehensive Review

Nedim Šišić, Peter Rogelj

2025Algorithms5 citationsDOIOpen Access PDF

Abstract

Brain MRI segmentation plays a crucial role in neuroimaging studies and clinical trials by enabling the precise localization and quantification of brain tissues and structures. The advent of deep learning has transformed the field, offering accurate and fast tools for MRI segmentation. Nevertheless, several challenges limit the widespread applicability of these methods in practice. In this systematic review, we provide a comprehensive analysis of developments in deep learning-based segmentation of brain MRI in adults, segmenting the brain into tissues, structures, and regions of interest. We explore the key model factors influencing segmentation performance, including architectural design, choice of input size and model dimensionality, and generalization strategies. Furthermore, we address validation practices, which are particularly important given the scarcity of manual annotations, and identify the limitations of current methodologies. We present an extensive compilation of existing segmentation works and highlight the emerging trends and key results. Finally, we discuss the challenges and potential future directions in the field.

Topics & Concepts

Deep learningSegmentationComputer scienceArtificial intelligenceNeuroimagingKey (lock)GeneralizationMarket segmentationMachine learningDeep neural networksScarcityMagnetic resonance imagingImage segmentationPattern recognition (psychology)Artificial neural networkData scienceLimit (mathematics)Computational modelNeuroscienceConvolutional neural networkMedical Image Segmentation TechniquesBrain Tumor Detection and ClassificationAdvanced Neural Network Applications
Deep Learning for Brain MRI Tissue and Structure Segmentation: A Comprehensive Review | Litcius