A proof-of-principle simulation for closed-loop control based on preexisting experimental thalamic DBS-enhanced instrumental learning

Deep brain stimulation (DBS) has been applied as an effective therapy for treating Parkinson's disease or essential tremor. Several open-loop DBS control strategies have been developed for clinical experiments, but they are limited by short battery life and inefficient therapy. Therefore, many...

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Main Authors: Ching-Fu Wang, Shih-Hung Yang, Sheng-Huang Lin, Po-Chuan Chen, Yu-Chun Lo, Han-Chi Pan, Hsin-Yi Lai, Lun-De Liao, Hui-Ching Lin, Hsu-Yan Chen, Wei-Chen Huang, Wun-Jhu Huang, You-Yin Chen
Format: Article
Language:English
Published: Elsevier 2017-05-01
Series:Brain Stimulation
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Online Access:http://www.sciencedirect.com/science/article/pii/S1935861X17306113
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language English
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author Ching-Fu Wang
Shih-Hung Yang
Sheng-Huang Lin
Po-Chuan Chen
Yu-Chun Lo
Han-Chi Pan
Hsin-Yi Lai
Lun-De Liao
Hui-Ching Lin
Hsu-Yan Chen
Wei-Chen Huang
Wun-Jhu Huang
You-Yin Chen
spellingShingle Ching-Fu Wang
Shih-Hung Yang
Sheng-Huang Lin
Po-Chuan Chen
Yu-Chun Lo
Han-Chi Pan
Hsin-Yi Lai
Lun-De Liao
Hui-Ching Lin
Hsu-Yan Chen
Wei-Chen Huang
Wun-Jhu Huang
You-Yin Chen
A proof-of-principle simulation for closed-loop control based on preexisting experimental thalamic DBS-enhanced instrumental learning
Brain Stimulation
Deep brain stimulation
Closed-loop system
Local field potential
Autoregressive exogenous
Fuzzy expert system
Instrumental skill learning
author_facet Ching-Fu Wang
Shih-Hung Yang
Sheng-Huang Lin
Po-Chuan Chen
Yu-Chun Lo
Han-Chi Pan
Hsin-Yi Lai
Lun-De Liao
Hui-Ching Lin
Hsu-Yan Chen
Wei-Chen Huang
Wun-Jhu Huang
You-Yin Chen
author_sort Ching-Fu Wang
title A proof-of-principle simulation for closed-loop control based on preexisting experimental thalamic DBS-enhanced instrumental learning
title_short A proof-of-principle simulation for closed-loop control based on preexisting experimental thalamic DBS-enhanced instrumental learning
title_full A proof-of-principle simulation for closed-loop control based on preexisting experimental thalamic DBS-enhanced instrumental learning
title_fullStr A proof-of-principle simulation for closed-loop control based on preexisting experimental thalamic DBS-enhanced instrumental learning
title_full_unstemmed A proof-of-principle simulation for closed-loop control based on preexisting experimental thalamic DBS-enhanced instrumental learning
title_sort proof-of-principle simulation for closed-loop control based on preexisting experimental thalamic dbs-enhanced instrumental learning
publisher Elsevier
series Brain Stimulation
issn 1935-861X
publishDate 2017-05-01
description Deep brain stimulation (DBS) has been applied as an effective therapy for treating Parkinson's disease or essential tremor. Several open-loop DBS control strategies have been developed for clinical experiments, but they are limited by short battery life and inefficient therapy. Therefore, many closed-loop DBS control systems have been designed to tackle these problems by automatically adjusting the stimulation parameters via feedback from neural signals, which has been reported to reduce the power consumption. However, when the association between the biomarkers of the model and stimulation is unclear, it is difficult to develop an optimal control scheme for other DBS applications, i.e., DBS-enhanced instrumental learning. Furthermore, few studies have investigated the effect of closed-loop DBS control for cognition function, such as instrumental skill learning, and have been implemented in simulation environments. In this paper, we proposed a proof-of-principle design for a closed-loop DBS system, cognitive-enhancing DBS (ceDBS), which enhanced skill learning based on in vivo experimental data. The ceDBS acquired local field potential (LFP) signal from the thalamic central lateral (CL) nuclei of animals through a neural signal processing system. A strong coupling of the theta oscillation (4–7 Hz) and the learning period was found in the water reward-related lever-pressing learning task. Therefore, the theta-band power ratio, which was the averaged theta band to averaged total band (1–55 Hz) power ratio, could be used as a physiological marker for enhancement of instrumental skill learning. The on-line extraction of the theta-band power ratio was implemented on a field-programmable gate array (FPGA). An autoregressive with exogenous inputs (ARX)-based predictor was designed to construct a CL-thalamic DBS model and forecast the future physiological marker according to the past physiological marker and applied DBS. The prediction could further assist the design of a closed-loop DBS controller. A DBS controller based on a fuzzy expert system was devised to automatically control DBS according to the predicted physiological marker via a set of rules. The simulated experimental results demonstrate that the ceDBS based on the closed-loop control architecture not only reduced power consumption using the predictive physiological marker, but also achieved a desired level of physiological marker through the DBS controller.
topic Deep brain stimulation
Closed-loop system
Local field potential
Autoregressive exogenous
Fuzzy expert system
Instrumental skill learning
url http://www.sciencedirect.com/science/article/pii/S1935861X17306113
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spelling doaj-f99122a6326d4e0483fe47e2d2c7018e2021-03-19T07:09:57ZengElsevierBrain Stimulation1935-861X2017-05-01103672683A proof-of-principle simulation for closed-loop control based on preexisting experimental thalamic DBS-enhanced instrumental learningChing-Fu Wang0Shih-Hung Yang1Sheng-Huang Lin2Po-Chuan Chen3Yu-Chun Lo4Han-Chi Pan5Hsin-Yi Lai6Lun-De Liao7Hui-Ching Lin8Hsu-Yan Chen9Wei-Chen Huang10Wun-Jhu Huang11You-Yin Chen12Department of Biomedical Engineering, National Yang Ming University, No.155, Sec.2, Linong St., Taipei 112, Taiwan, ROCDepartment of Mechanical and Computer Aided Engineering, Feng Chia University, No. 100, Wenhwa Rd., Taichung 407, Taiwan, ROC; Corresponding author.Department of Neurology, Tzu Chi General Hospital, Tzu Chi University, No. 707, Sec. 3, Chung, Yang Rd., Hualien 970, Taiwan, ROC; Corresponding author.Department of Biomedical Engineering, National Yang Ming University, No.155, Sec.2, Linong St., Taipei 112, Taiwan, ROCThe Ph.D. Program for Neural Regenerative Medicine, Taipei Medical University, No. 250 Wu-Hsing St., Taipei 110, Taiwan, ROCInstitute of Biomedical Engineering and Nanomedicine, National Health Research Institutes, No.35 Keyan Rd., Zhunan, Miaoli County 350, Taiwan, ROCInterdisciplinary Institute of Neuroscience and Technology (ZIINT), Qiushi Academy for Advanced Studies (QAAS), Zhejiang University, No.268, Kaixuan Rd., Hangzhou, Zhejiang 310029, ChinaInstitute of Biomedical Engineering and Nanomedicine, National Health Research Institutes, No.35 Keyan Rd., Zhunan, Miaoli County 350, Taiwan, ROC; Singapore Institute for Neurotechnology (SINAPSE), Centre for Life Sciences, National University of Singapore, No.28 Medical Drive, #05-COR, 117456, SingaporeDepartment and Institute of Physiology, School of Medicine, National Yang Ming University, Taipei 112, Taiwan, ROC; Brain Research Center, National Yang Ming University, No.155, Sec.2, Linong St., Taipei 112, Taiwan, ROCDepartment of Biomedical Engineering, National Yang Ming University, No.155, Sec.2, Linong St., Taipei 112, Taiwan, ROCDepartment of Materials Science and Engineering, Carnegie Mellon University, No.5000 Forbes Avenue, Wean Hall 3325, Pittsburgh, PA 15213, USADepartment of Mechanical and Computer Aided Engineering, Feng Chia University, No. 100, Wenhwa Rd., Taichung 407, Taiwan, ROCDepartment of Biomedical Engineering, National Yang Ming University, No.155, Sec.2, Linong St., Taipei 112, Taiwan, ROC; Corresponding author.Deep brain stimulation (DBS) has been applied as an effective therapy for treating Parkinson's disease or essential tremor. Several open-loop DBS control strategies have been developed for clinical experiments, but they are limited by short battery life and inefficient therapy. Therefore, many closed-loop DBS control systems have been designed to tackle these problems by automatically adjusting the stimulation parameters via feedback from neural signals, which has been reported to reduce the power consumption. However, when the association between the biomarkers of the model and stimulation is unclear, it is difficult to develop an optimal control scheme for other DBS applications, i.e., DBS-enhanced instrumental learning. Furthermore, few studies have investigated the effect of closed-loop DBS control for cognition function, such as instrumental skill learning, and have been implemented in simulation environments. In this paper, we proposed a proof-of-principle design for a closed-loop DBS system, cognitive-enhancing DBS (ceDBS), which enhanced skill learning based on in vivo experimental data. The ceDBS acquired local field potential (LFP) signal from the thalamic central lateral (CL) nuclei of animals through a neural signal processing system. A strong coupling of the theta oscillation (4–7 Hz) and the learning period was found in the water reward-related lever-pressing learning task. Therefore, the theta-band power ratio, which was the averaged theta band to averaged total band (1–55 Hz) power ratio, could be used as a physiological marker for enhancement of instrumental skill learning. The on-line extraction of the theta-band power ratio was implemented on a field-programmable gate array (FPGA). An autoregressive with exogenous inputs (ARX)-based predictor was designed to construct a CL-thalamic DBS model and forecast the future physiological marker according to the past physiological marker and applied DBS. The prediction could further assist the design of a closed-loop DBS controller. A DBS controller based on a fuzzy expert system was devised to automatically control DBS according to the predicted physiological marker via a set of rules. The simulated experimental results demonstrate that the ceDBS based on the closed-loop control architecture not only reduced power consumption using the predictive physiological marker, but also achieved a desired level of physiological marker through the DBS controller.http://www.sciencedirect.com/science/article/pii/S1935861X17306113Deep brain stimulationClosed-loop systemLocal field potentialAutoregressive exogenousFuzzy expert systemInstrumental skill learning