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Closed-Loop Design of Brain-Machine Interface Systems.

机译:脑机接口系统的闭环设计。

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摘要

Brain-machine interface (BMI) systems show great promise for restoring motor function to patients with motor disabilities, but significant improvements in performance are needed before they will be clinically viable. Moreover, BMIs must ultimately provide long-term performance that can be used in a variety of settings. One key challenge is to improve performance such that it can be maintained for long-term use in the varied activities of daily life. Leveraging the closed-loop, co-adaptive nature of BMI systems may be particularly beneficial for meeting these challenges. BMI creates an artificial, closed-loop control system, where the subject actively contributes to performance by volitional modulation of neural activity. In this work, we explore closed-loop design methods for BMI, which exploit the closed-loop and adaptive properties of BMI to improve performance and reliability.;We use a non-human primate model system, where subjects controlled 2-dimensional virtual cursors using spiking activity recorded from chronic electrode arrays implanted in motor cortex. We first explore closed-loop decoder adaptation (CLDA), which adapts the decoding algorithm as the user controls the BMI to improve performance. We present a CLDA algorithm that can rapidly and reliably improve performance regardless of the initial decoding algorithm, which may be particularly useful for clinical applications with paralyzed patients. We then demonstrate that CLDA can be combined with neural adaptation, and that leveraging both forms of adaptation may be useful for producing high-performance BMIs that can be maintained long-term. We also show that neural adaptation may be important for BMIs used in multiple contexts by exploring simultaneous motor and BMI control. We also show that both the selection of the neural signals for control will influence BMI operation. Finally, we explore neural representations of movement dynamics to explore alternative control signals for BMI. All together, this work shows the power of closed-loop engineering of BMI systems for motor neuroprostheses.
机译:脑机接口(BMI)系统对恢复运动障碍患者的运动功能显示出巨大的希望,但是在临床上可行之前,还需要对性能进行重大改进。此外,BMI必须最终提供可在各种设置中使用的长期性能。一个关键的挑战是提高性能,使其可以在日常生活的各种活动中长期使用。充分利用BMI系统的闭环,自适应特性对于应对这些挑战特别有益。 BMI创建了一个人工的闭环控制系统,在该系统中,受试者通过神经活动的自愿调节对行为做出了积极贡献。在这项工作中,我们探索了BMI的闭环设计方法,该方法利用BMI的闭环和自适应特性来提高性能和可靠性。我们使用非人类灵长类动物模型系统,其中对象控制二维虚拟游标使用从植入运动皮层的慢性电极阵列记录的尖峰活动。我们首先探索闭环解码器适配(CLDA),它在用户控制BMI来提高性能时适应解码算法。我们提出了一种CLDA算法,无论初始解码算法如何,它都能快速,可靠地提高性能,这对于瘫痪患者的临床应用可能特别有用。然后,我们证明了CLDA可以与神经适应相结合,并且利用两种适应形式都可以用于生产可以长期维持的高性能BMI。我们还通过探索同时的运动和BMI控制,表明神经适应对于在多种情况下使用的BMI可能很重要。我们还表明,用于控制的神经信号的选择都会影响BMI操作。最后,我们探索运动动力学的神经表示,以探索BMI的替代控制信号。总之,这项工作表明了用于运动神经假体的BMI系统的闭环工程的力量。

著录项

  • 作者

    Orsborn, Amy Leigh.;

  • 作者单位

    University of California, Berkeley.;

  • 授予单位 University of California, Berkeley.;
  • 学科 Engineering Biomedical.;Engineering Electronics and Electrical.;Biology Neuroscience.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 138 p.
  • 总页数 138
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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