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Offline Learning of Closed-Loop Deep Brain Stimulation Controllers for Parkinson Disease Treatment

Deep brain stimulation (DBS) has shown great promise toward treating motor symptoms caused by Parkinson's disease (PD), by delivering electrical pulses to the Basal Ganglia (BG) region of the brain. However, DBS devices approved by the U.S. Food and Drug Administration (FDA) can only deliver co...

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Autores principales: Gao, Qitong, Schimdt, Stephen L., Chowdhury, Afsana, Feng, Guangyu, Peters, Jennifer J., Genty, Katherine, Grill, Warren M., Turner, Dennis A., Pajic, Miroslav
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cornell University 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9934729/
https://www.ncbi.nlm.nih.gov/pubmed/36798453
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author Gao, Qitong
Schimdt, Stephen L.
Chowdhury, Afsana
Feng, Guangyu
Peters, Jennifer J.
Genty, Katherine
Grill, Warren M.
Turner, Dennis A.
Pajic, Miroslav
author_facet Gao, Qitong
Schimdt, Stephen L.
Chowdhury, Afsana
Feng, Guangyu
Peters, Jennifer J.
Genty, Katherine
Grill, Warren M.
Turner, Dennis A.
Pajic, Miroslav
author_sort Gao, Qitong
collection PubMed
description Deep brain stimulation (DBS) has shown great promise toward treating motor symptoms caused by Parkinson's disease (PD), by delivering electrical pulses to the Basal Ganglia (BG) region of the brain. However, DBS devices approved by the U.S. Food and Drug Administration (FDA) can only deliver continuous DBS (cDBS) stimuli at a fixed amplitude; this energy inefficient operation reduces battery lifetime of the device, cannot adapt treatment dynamically for activity, and may cause significant side-effects (e.g., gait impairment). In this work, we introduce an offline reinforcement learning (RL) framework, allowing the use of past clinical data to train an RL policy to adjust the stimulation amplitude in real time, with the goal of reducing energy use while maintaining the same level of treatment (i.e., control) efficacy as cDBS. Moreover, clinical protocols require the safety and performance of such RL controllers to be demonstrated ahead of deployments in patients. Thus, we also introduce an offline policy evaluation (OPE) method to estimate the performance of RL policies using historical data, before deploying them on patients. We evaluated our framework on four PD patients equipped with the RC+S DBS system, employing the RL controllers during monthly clinical visits, with the overall control efficacy evaluated by severity of symptoms (i.e., bradykinesia and tremor), changes in PD biomakers (i.e., local field potentials), and patient ratings. The results from clinical experiments show that our RL-based controller maintains the same level of control efficacy as cDBS, but with significantly reduced stimulation energy. Further, the OPE method is shown effective in accurately estimating and ranking the expected returns of RL controllers.
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spelling pubmed-99347292023-02-17 Offline Learning of Closed-Loop Deep Brain Stimulation Controllers for Parkinson Disease Treatment Gao, Qitong Schimdt, Stephen L. Chowdhury, Afsana Feng, Guangyu Peters, Jennifer J. Genty, Katherine Grill, Warren M. Turner, Dennis A. Pajic, Miroslav ArXiv Article Deep brain stimulation (DBS) has shown great promise toward treating motor symptoms caused by Parkinson's disease (PD), by delivering electrical pulses to the Basal Ganglia (BG) region of the brain. However, DBS devices approved by the U.S. Food and Drug Administration (FDA) can only deliver continuous DBS (cDBS) stimuli at a fixed amplitude; this energy inefficient operation reduces battery lifetime of the device, cannot adapt treatment dynamically for activity, and may cause significant side-effects (e.g., gait impairment). In this work, we introduce an offline reinforcement learning (RL) framework, allowing the use of past clinical data to train an RL policy to adjust the stimulation amplitude in real time, with the goal of reducing energy use while maintaining the same level of treatment (i.e., control) efficacy as cDBS. Moreover, clinical protocols require the safety and performance of such RL controllers to be demonstrated ahead of deployments in patients. Thus, we also introduce an offline policy evaluation (OPE) method to estimate the performance of RL policies using historical data, before deploying them on patients. We evaluated our framework on four PD patients equipped with the RC+S DBS system, employing the RL controllers during monthly clinical visits, with the overall control efficacy evaluated by severity of symptoms (i.e., bradykinesia and tremor), changes in PD biomakers (i.e., local field potentials), and patient ratings. The results from clinical experiments show that our RL-based controller maintains the same level of control efficacy as cDBS, but with significantly reduced stimulation energy. Further, the OPE method is shown effective in accurately estimating and ranking the expected returns of RL controllers. Cornell University 2023-03-16 /pmc/articles/PMC9934729/ /pubmed/36798453 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/) , which allows reusers to distribute, remix, adapt, and build upon the material in any medium or format, so long as attribution is given to the creator. The license allows for commercial use.
spellingShingle Article
Gao, Qitong
Schimdt, Stephen L.
Chowdhury, Afsana
Feng, Guangyu
Peters, Jennifer J.
Genty, Katherine
Grill, Warren M.
Turner, Dennis A.
Pajic, Miroslav
Offline Learning of Closed-Loop Deep Brain Stimulation Controllers for Parkinson Disease Treatment
title Offline Learning of Closed-Loop Deep Brain Stimulation Controllers for Parkinson Disease Treatment
title_full Offline Learning of Closed-Loop Deep Brain Stimulation Controllers for Parkinson Disease Treatment
title_fullStr Offline Learning of Closed-Loop Deep Brain Stimulation Controllers for Parkinson Disease Treatment
title_full_unstemmed Offline Learning of Closed-Loop Deep Brain Stimulation Controllers for Parkinson Disease Treatment
title_short Offline Learning of Closed-Loop Deep Brain Stimulation Controllers for Parkinson Disease Treatment
title_sort offline learning of closed-loop deep brain stimulation controllers for parkinson disease treatment
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9934729/
https://www.ncbi.nlm.nih.gov/pubmed/36798453
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