3D-MIND: A flexible device that can be integrated with living brain cells
Summary
The article introduces 3D-MIND, a novel flexible device designed to seamlessly integrate with living brain tissue for advanced neural interfacing. This development aims to improve biocompatibility and signal quality for next-generation brain-computer applications.
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