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Image-Based Subthalamic Nucleus Segmentation for Deep Brain Surgery with Electrophysiology Aided Refinement
Igor Varga
,
Eduard Bakstein
,
Greydon Gilmore
,
Daniel Novak
October 2020
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Conference paper
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In
International Workshop on Multimodal Learning for Clinical Decision Support
Greydon Gilmore
Electrophysiologist
My research interests include deep brain stimulation, machine learning and signal processing.
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Direct visualization and characterization of the human zona incerta and surrounding structures.
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Image guidance in deep brain stimulation surgery to treat Parkinson's disease: a comprehensive review
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