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Towards Real-Time Continuous Decoding of Gripping Force From Deep Brain Local Field Potentials

机译:实时连续地从深部大脑局部场电势解码抓力

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摘要

Lack of force information and longevity issues are impediments to the successful translation of brain–computer interface systems for prosthetic control from experimental settings to widespread clinical application. The ability to decode force using deep brain stimulation electrodes in the subthalamic nucleus (STN) of the basal ganglia provides an opportunity to address these limitations. This paper explores the use of various classes of algorithms (Wiener filter, Wiener-Cascade model, Kalman filter, and dynamic neural networks) and recommends the use of a Wiener-Cascade model for decoding force from STN. This recommendation is influenced by a combination of accuracy and practical considerations to enable real-time, continuous operation. This paper demonstrates an ability to decode a continuous signal (force) from the STN in real time, allowing the possibility of decoding more than two states from the brain at low latency.
机译:缺乏力信息和寿命问题阻碍了用于人工控制的脑机接口系统从实验设置到广泛的临床应用的成功转化。使用基底神经节的丘脑下核(STN)中的深层大脑刺激电极来解码力的能力为解决这些局限性提供了机会。本文探讨了各种算法的使用(维纳滤波器,维纳级联模型,卡尔曼滤波器和动态神经网络),并建议使用维纳级联模型来解码来自STN的力。此建议受精度和实际考虑因素的影响,以实现实时,连续操作。本文演示了实时解码来自STN的连续信号(力)的能力,从而允许以低延迟从大脑解码两个以上状态的可能性。

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