Automated Segmentation of Coronal Brain Tissue Slabs for 3D Neuropathology

arXiv — cs.CVThursday, November 6, 2025 at 5:00:00 AM
Recent advancements in image registration and machine learning are revolutionizing the analysis of postmortem brain tissue, making it easier and more efficient. This new method allows for automated segmentation of coronal brain tissue slabs, which are essential for neuropathological studies. By reducing the need for costly manual intervention, this innovation not only streamlines research processes but also enhances the accuracy of findings in brain banks and laboratories worldwide. This is a significant step forward in understanding brain diseases and improving diagnostic techniques.
— via World Pulse Now AI Editorial System

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