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Closed-loop control of epileptiform activities in a neural population model using a proportional-derivative controller 被引量:3

Closed-loop control of epileptiform activities in a neural population model using a proportional-derivative controller
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摘要 Epilepsy is believed to be caused by a lack of balance between excitation and inhibitation in the brain. A promising strategy for the control of the disease is closed-loop brain stimulation. How to determine the stimulation control parameters for effective and safe treatment protocols remains, however, an unsolved question. To constrain the complex dynamics of the biological brain, we use a neural population model(NPM). We propose that a proportional-derivative(PD) type closed-loop control can successfully suppress epileptiform activities. First, we determine the stability of root loci, which reveals that the dynamical mechanism underlying epilepsy in the NPM is the loss of homeostatic control caused by the lack of balance between excitation and inhibition. Then, we design a PD type closed-loop controller to stabilize the unstable NPM such that the homeostatic equilibriums are maintained; we show that epileptiform activities are successfully suppressed. A graphical approach is employed to determine the stabilizing region of the PD controller in the parameter space, providing a theoretical guideline for the selection of the PD control parameters. Furthermore, we establish the relationship between the control parameters and the model parameters in the form of stabilizing regions to help understand the mechanism of suppressing epileptiform activities in the NPM. Simulations show that the PD-type closed-loop control strategy can effectively suppress epileptiform activities in the NPM. Epilepsy is believed to be caused by a lack of balance between excitation and inhibitation in the brain. A promising strategy for the control of the disease is closed-loop brain stimulation. How to determine the stimulation control parameters for effective and safe treatment protocols remains, however, an unsolved question. To constrain the complex dynamics of the biological brain, we use a neural population model(NPM). We propose that a proportional-derivative(PD) type closed-loop control can successfully suppress epileptiform activities. First, we determine the stability of root loci, which reveals that the dynamical mechanism underlying epilepsy in the NPM is the loss of homeostatic control caused by the lack of balance between excitation and inhibition. Then, we design a PD type closed-loop controller to stabilize the unstable NPM such that the homeostatic equilibriums are maintained; we show that epileptiform activities are successfully suppressed. A graphical approach is employed to determine the stabilizing region of the PD controller in the parameter space, providing a theoretical guideline for the selection of the PD control parameters. Furthermore, we establish the relationship between the control parameters and the model parameters in the form of stabilizing regions to help understand the mechanism of suppressing epileptiform activities in the NPM. Simulations show that the PD-type closed-loop control strategy can effectively suppress epileptiform activities in the NPM.
出处 《Chinese Physics B》 SCIE EI CAS CSCD 2015年第3期434-441,共8页 中国物理B(英文版)
基金 supported by the National Natural Science Foundation of China(Grant Nos.61473208,61025019,and 91132722) ONR MURI N000141010278 NIH grant R01EY016281
关键词 neural population model epileptiform activities proportional-derivative controller stabilizing region neural population model,epileptiform activities,proportional-derivative controller,stabilizing region
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  • 1Bartolomei E Chauvel P and Wendling F 2008 Brain 131 1818.
  • 2Lytton W W 2008 Nature Reviews Neuroscience 9 626.
  • 3Wendling F, Bellanger J J, Bartolomei F and Chauvel P 2000 Biological Cybernetics 83 367.
  • 4Xia X F and Wang J S 2014 Acta Phys. Sin. 63 140503 (in Chinese).
  • 5Mountcastle V B 1997 Brain 120 701.
  • 6Da Silva F L, Hocks A, Smits H and Zetterberg L 1974 Kybernetik 15 27.
  • 7Da Silva F L, Van Rotterdam A, Barts P, Van Heusden E and Burr W 1976 Progress in Brain Research 45 281.
  • 8Jansen B H and Rit V G 1995 Biological Cybernetics 73 357.
  • 9Chakravarthy N, Sabesan S, Tsakalis K and Iasemidis L 2009 Journal of Combinatorial Optimization 17 98.
  • 10Poreisz C, Boros K, Antal A and Paulus W 2007 Brain Research Bul- letin 72 208.

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