Deep Learning Model Predictive Control for Deep Brain Stimulation in Parkinson's Disease
- URL: http://arxiv.org/abs/2504.00618v1
- Date: Tue, 01 Apr 2025 10:16:49 GMT
- Title: Deep Learning Model Predictive Control for Deep Brain Stimulation in Parkinson's Disease
- Authors: Sebastian Steffen, Mark Cannon,
- Abstract summary: We present a data-driven computation algorithm for DBS for the treatment of Parkinson's disease (PD)<n>In tests using a simulated model of beta-band activity response, we achieve more than 20% in both tracking error and control activity.<n>The proposed control strategy provides a generalizable data-driven technique that can be applied to the treatment of PD and other diseases targeted by CLDBS.
- Score: 0.552480439325792
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We present a nonlinear data-driven Model Predictive Control (MPC) algorithm for deep brain stimulation (DBS) for the treatment of Parkinson's disease (PD). Although DBS is typically implemented in open-loop, closed-loop DBS (CLDBS) uses the amplitude of neural oscillations in specific frequency bands (e.g. beta 13-30 Hz) as a feedback signal, resulting in improved treatment outcomes with reduced side effects and slower rates of patient habituation to stimulation. To date, CLDBS has only been implemented in vivo with simple control algorithms, such as proportional or proportional-integral control. Our approach employs a multi-step predictor based on differences of input-convex neural networks to model the future evolution of beta oscillations. The use of a multi-step predictor enhances prediction accuracy over the optimization horizon and simplifies online computation. In tests using a simulated model of beta-band activity response and data from PD patients, we achieve reductions of more than 20% in both tracking error and control activity in comparison with existing CLDBS algorithms. The proposed control strategy provides a generalizable data-driven technique that can be applied to the treatment of PD and other diseases targeted by CLDBS, as well as to other neuromodulation techniques.
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