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Development of an invasive brain machine interface with a monkey model 被引量:5

Development of an invasive brain-machine interface with a monkey model
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摘要 Brain-machine interfaces (BMIs) translate neural activities of the brain into specific instructions that can be carried out by external devices. BMIs have the potential to restore or augment motor functions of paralyzed patients suffering from spinal cord damage. The neural activities have been used to predict the 2D or 3D movement trajectory of monkey's arm or hand in many studies. However, there are few studies on decoding the wrist movement from neural activities in center-out paradigm. The present study developed an invasive BMI system with a monkey model using a 10×10-microelectrode array in the primary motor cortex. The monkey was trained to perform a two-dimensional forelimb wrist movement paradigm where neural activities and movement signals were simultaneous recorded. Results showed that neuronal firing rates highly correlated with forelimb wrist movement; > 70% (105/149) neurons exhibited specific firing changes during movement and > 36% (54/149) neurons were used to discriminate directional pairs. The neuronal firing rates were also used to predict the wrist moving directions and continuous trajectories of the forelimb wrist. The four directions could be classified with 96% accuracy using a support vector machine, and the correlation coefficients of trajectory prediction using a general regression neural network were above 0.8 for both horizontal and vertical directions. Results showed that this BMI system could predict monkey wrist movements in high accuracy through the use of neuronal firing information. Brain-machine interfaces (BMIs) translate neural activities of the brain into specific instructions that can be carried out by external devices. BMIs have the potential to restore or augment motor functions of paralyzed patients suffering from spinal cord damage. The neural activities have been used to predict the 2D or 3D movement trajectory of monkey's arm or hand in many studies. However, there are few studies on decoding the wrist movement from neural activities in center-out paradigm. The present study developed an invasive BMI system with a monkey model using a 10×10-microelectrode array in the primary motor cortex. The monkey was trained to perform a two-dimensional forelimb wrist movement paradigm where neural activities and movement signals were simultaneous recorded. Results showed that neuronal firing rates highly correlated with forelimb wrist movement; 〉 70% (105/149) neurons exhibited specific firing changes during movement and 〉 36% (54/149) neurons were used to discriminate directional pairs. The neuronal firing rates were also used to predict the wrist moving directions and continuous trajectories of the forelimb wrist. The four directions could be classified with 96% accuracy using a support vector machine, and the correlation coefficients of trajectory prediction using a general regression neural network were above 0.8 for both horizontal and vertical directions. Results showed that this BMI system could predict monkey wrist movements in high accuracy through the use of neuronal firing information.
出处 《Chinese Science Bulletin》 SCIE CAS 2012年第16期2036-2045,共10页
基金 supported by the National Natural Science Foundation of China (61031002, 61001172) the National Basic Research Program of China (2011CB504405) the Zhejiang Provincial Key Science and Technology Program for International Cooperation (2011C14005)
关键词 脑机接口 子模型 侵入性 猴子 神经活动 运动功能 轨迹预测 回归神经网络 brain-machine interface, primary motor cortex, center-out paradigm, neural decoding, support vector machine, general regression neural network
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  • 1FENG Zhou-yan,CHEN Wei-dong,YE Xue-song,ZHANG Shao-min,ZHENG Xiao-jing,WANG Peng,JIANG Jun,JIN Lin,XU Zhi-jian,LIU Chun-qing,LIU Fu-xin,LUO Jian-hong,ZHUANG Yue-ting,ZHENG Xiao-xiang.A remote control training system for rat navigation in complicated environment[J].Journal of Zhejiang University-Science A(Applied Physics & Engineering),2007,8(2):323-330. 被引量:16
  • 2http://bcmi.sjtu.edu.cn/~zhaoqibin/demos.html .
  • 3Muller K R,Anderson C W,Birch G E.Linear and nonlinear methods for brain-computer interfaces[].IEEE Transactions on Neural Systems and Rehabilitation Engineering.2003
  • 4Nicolelis MAL.Actions from thoughts[].Nature.2001
  • 5J. R. Wolpaw,N. Birbaumer,D. J. McFarland,G. Pfurtscheller,and T. M. Vaughan."Brain computer interfaces for communication and control"[].Clin Neurophysiol.2002
  • 6Dornhege G.Toward Brain-Computer Interfacing[]..2007
  • 7M. D. Serruya,,N. G. Hatsopoulos,,L. Paninski,,M. R. Fellows,,and J. P. Donoghue.Brain-machine interface: Instant neural control of a movement signal,"[].Nature.2002
  • 8J. Wessberg,,C. R. Stambaugh,,J. D. Kralik,,P. D. Beck,,M. Laubach,,J. K. Chapin,,J. Kim,,S. J. Biggs,,M. A. Srinivasan,,and M. A. Nicolelis."Real-time prediction of hand trajectory by ensembles of cortical neurons in primates,"[].Nature.2000
  • 9D. M. Taylor,,S. I. Tillery,and A. B. Schwartz."Direct cortical control of 3d neuroprosthetic devices,"[].Science.2002
  • 10Musallam S,Corneil BD,Greger,B,et al.Cognitive control signals for neural prosthetics[].Science.2004

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