3D convolutional neural networks for stalled brain capillary detection
Roman Solovyev, Alexandr A. Kalinin, Tatiana Gabruseva
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3D convolutional neural networks for stalled brain capillary detection focuses on initialization.
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Evidence graph: 2 refs, 1 links.
Utility signals: depth 65/100, grounding 58/100, status medium.
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Research context
3
Citations
50
References
Tasks
Initialization, Convolutional neural network, Computer science, Deep learning, Transfer of learning, Pattern recognition (psychology), Medicine, Radiology, Nuclear Medicine and Imaging
Methods
None detected
Domains
Artificial intelligence, Machine learning
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