Deep learning for brain electron microscopy segmentation: Advances, challenges, and future directions in connectomics and ultrastructure analysis
<p dir="ltr">This systematic review and meta-analysis comprehensively analyzes deep learning approaches for brain electron microscopy (EM) segmentation, addressing the critical challenge of extracting neuroanatomical information at nanometer resolution. Following PRISMA guidelines, w...
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| Main Author: | Uzair Shah (15740699) (author) |
|---|---|
| Other Authors: | Mahmood Alzubaidi (15740693) (author), Marco Agus (8032898) (author), Corrado Calí (17302723) (author), Pierre J. Magistretti (8032907) (author), Mowafa Househ (9154124) (author) |
| Published: |
2025
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| Subjects: | |
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