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  4. Machine-Learning-Powered Neural Interfaces for Smart Prosthetics and Diagnostics
 
conference paper

Machine-Learning-Powered Neural Interfaces for Smart Prosthetics and Diagnostics

Shaeri, Mohammad  
•
Liu, Jinhan  
•
Shoaran, Mahsa  
2025
2025 23rd IEEE International NEWCAS Conference (NEWCAS 2025)
2025 IEEE International NEWCAS Conference

Advanced neural interfaces are transforming applications ranging from neuroscience research to diagnostic tools (for mental state recognition, tremor and seizure detection) as well as prosthetic devices (for motor and communication recovery). By integrating complex functions into miniaturized neural devices, these systems unlock significant opportunities for personalized assistive technologies and adaptive therapeutic interventions. Leveraging high-density neural recordings, on-site signal processing, and machine learning (ML), these interfaces extract critical features, identify disease neuro-markers, and enable accurate, low-latency neural decoding. This integration facilitates real-time interpretation of neural signals, adaptive modulation of brain activity, and efficient control of assistive devices. Moreover, the synergy between neural interfaces and ML has paved the way for self-sufficient, ubiquitous platforms capable of operating in diverse environments with minimal hardware costs and external dependencies. In this work, we review recent advancements in AI-driven decoding algorithms and energy-efficient System-on-Chip (SoC) platforms for next-generation miniaturized neural devices. These innovations highlight the potential for developing intelligent neural interfaces, addressing critical challenges in scalability, reliability, interpretability, and user adaptability.

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2505.02516v1.pdf

Type

Main Document

Version

Accepted version

Access type

openaccess

License Condition

CC BY

Size

3.71 MB

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Adobe PDF

Checksum (MD5)

d1483d4e3a7a55c1713064cb6fe33313

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