Resource-Conscious RL Algorithms for Deep Brain Stimulation
Arkaprava Gupta, Nicholas Carter, William Zellers, Prateek Ganguli, Benedikt Dietrich, Vibhor Krishna, Parasara Sridhar Duggirala, Samarjit Chakraborty

TL;DR
This paper introduces a lightweight, resource-efficient RL algorithm for deep brain stimulation that can adaptively tune stimulation parameters in real-time, suitable for implantable devices, and demonstrates its effectiveness on hardware.
Contribution
The paper presents the T3P MAB RL approach, a novel resource-conscious algorithm for DBS that can be deployed on microcontrollers without extensive training.
Findings
T3P MAB outperforms existing RL algorithms in energy efficiency.
The algorithm effectively tunes both frequency and amplitude of DBS signals.
Hardware implementation confirms suitability for resource-constrained platforms.
Abstract
Deep Brain Stimulation (DBS) has proven to be a promising treatment of Parkinson's Disease (PD). DBS involves stimulating specific regions of the brain's Basal Ganglia (BG) using electric impulses to alleviate symptoms of PD such as tremors, rigidity, and bradykinesia. Although most clinical DBS approaches today use a fixed frequency and amplitude, they suffer from side effects (such as slurring of speech) and shortened battery life of the implant. Reinforcement learning (RL) approaches have been used in recent research to perform DBS in a more adaptive manner to improve overall patient outcome. These RL algorithms are, however, too complex to be trained in vivo due to their long convergence time and requirement of high computational resources. We propose a new Time & Threshold-Triggered Multi-Armed Bandit (T3P MAB) RL approach for DBS that is more effective than existing algorithms.…
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Taxonomy
TopicsNeurological disorders and treatments · EEG and Brain-Computer Interfaces · Voice and Speech Disorders
