Whole-brain segmentation constitutes a fundamental task in medical image analysis, providing quantitative assessment of fine-grained brain regions and serving as a cornerstone for both clinical practice and neuroscience research.Despite its importance, the task is inherently challenging given the numerous brain regions, pronounced interclass heterogeneity, and sophisticated inter-class spatial dependencies.Accurate wholebrain segmentation requires not only precise delineation of local features but also comprehensive modeling of long-range dependencies and global contextual information.To tackle these challenges, we propose the Multi-Scale Channel-Mixing Hybrid Network (MSCMH-Net), a CNN-MLP hybrid framework integrating convolutional and MLP modules at multiple hierarchical levels.The framework leverages the strengths of CNNs to capture local features and spatial structures, while employing MLPs to model long-range dependencies and global contextual information.For integrating global and local information, a channel-mixing module incorporating an exponential moving average (EMA) fusion strategy is employed.A composite dataset of 106 brain MR scans was used, including 36 from MICCAI-2012, 30 from ADNI and 40 from OASIS.Ground truth labels were annotated and double-checked by experts.Comprehensive experiments conducted on the composite dataset validate that MSCMH-Net achieves competitive results relative to existing approaches.
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W. S. Zhang
Jinhua Yue
Yi Liu
Neuroscience
Beihang University
Beijing Transportation Research Center
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Zhang et al. (Sun,) studied this question.
www.synapsesocial.com/papers/69bf8692f665edcd009e8ef2 — DOI: https://doi.org/10.1016/j.neuroscience.2026.03.022