Movement-responsive deep brain stimulation for Parkinson’s disease using a remotely optimized neural decoder.

Publication date: Jun 27, 2025

Deep brain stimulation (DBS) has garnered widespread use as an effective treatment for advanced Parkinson’s disease. Conventional DBS (cDBS) provides electrical stimulation to the basal ganglia at fixed amplitude and frequency, yet patients’ therapeutic needs are often dynamic with residual symptom fluctuations or side effects. Adaptive DBS (aDBS) is an emerging technology that modulates stimulation with respect to real-time clinical, physiological or behavioural states, enabling therapy to dynamically align with patient-specific symptoms. Here we report an aDBS algorithm intended to mitigate movement slowness by delivering targeted stimulation increases during movement using decoded motor signals from the brain. Our approach demonstrated improvements in dominant hand movement speeds and study participant-reported therapeutic efficacy compared with an inverted control, as well as increased typing speed and reduced dyskinesia compared with cDBS. Furthermore, we demonstrate proof of principle of a machine learning pipeline capable of remotely optimizing aDBS parameters in a home setting. This work illustrates the potential of movement-responsive aDBS as a promising therapeutic approach and highlights how machine learning-assisted programming can simplify complex optimization to facilitate translational scalability.

Concepts Keywords
Biomed Adbs
Deep Brain
Parkinson Cdbs
Therapy Clinical
Typing Compared
Dbs
Deep
Learning
Movement
Neural
Optimized
Parkinson
Responsive
Stimulation
Therapeutic

Semantics

Type Source Name
disease MESH Parkinson’s disease
disease MESH dyskinesia

Original Article

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