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Improving brain: machine interface performance by decoding intended future movements

机译:改善大脑:通过解码预期的未来动作来提高机器界面性能

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摘要

Objective. A brain-machine interface (BMI) records neural signals in real time from a subject's brain, interprets them as motor commands, and reroutes them to a device such as a robotic arm, so as to restore lost motor function. Our objective here is to improve BMI performance by minimizing the deleterious effects of delay in the BMI control loop. We mitigate the effects of delay by decoding the subject's intended movements a short time lead in the future. Approach. We use the decoded, intended future movements of the subject as the control signal that drives the movement of our BMI. This should allow the user's intended trajectory to be implemented more quickly by the BMI, reducing the amount of delay in the system. In our experiment, a monkey (Macaca mulatta) uses a future prediction BMI to control a simulated arm to hit targets on a screen. Main Results. Results from experiments with BMIs possessing different system delays (100, 200 and 300 ms) show that the monkey can make significantly straighter, faster and smoother movements when the decoder predicts the user's future intent. We also characterize how BMI performance changes as a function of delay, and explore offline how the accuracy of future prediction decoders varies at different time leads. Significance. This study is the first to characterize the effects of control delays in a BMI and to show that decoding the user's future intent can compensate for the negative effect of control delay on BMI performance.
机译:目的。脑机接口(BMI)实时记录来自受试者大脑的神经信号,将其解释为运动命令,然后将其重新路由至机械手臂等设备,以恢复失去的运动功能。我们的目标是通过最大程度地减少BMI控制回路中的延迟的有害影响来提高BMI性能。我们通过在不久的将来将对象的预期动作解码来减轻延迟的影响。方法。我们使用解码后的,预期的对象将来的运动作为驱动BMI运动的控制信号。这应该允许BMI更快地实现用户的预期轨迹,从而减少系统中的延迟量。在我们的实验中,一只猴子(猕猴)使用未来的预测BMI来控制模拟手臂以击中屏幕上的目标。主要结果。具有不同系统延迟(100、200和300 ms)的BMI的实验结果表明,当解码器预测用户的未来意图时,猴子可以做出明显的笔直,更快和更平滑的动作。我们还描述了BMI性能如何随延迟而变化,并离线研究了未来预测解码器的精度在不同时间导致的变化。意义。这项研究是第一个表征BMI中控制延迟的影响,并表明解码用户的未来意图可以补偿控制延迟对BMI性能的负面影响。

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  • 来源
    《Journal of neural engineering》 |2013年第2期|12.1-12.14|共14页
  • 作者单位

    Department of Organismal Biology and Anatomy at the University of Chicago, Chicago, IL 60637,USA,Present address:Department of Biomedical Engineering at Case Westrtn Reserve University,Cleveland,OH 44106,USA.,Both authors contributed equally to this work;

    Department of Organismal Biology and Anatomy at the University of Chicago, Chicago, IL 60637,USA,Both authors contributed equally to this work;

    School of Computer Science at the University of Oklahoma, Norman, OK 73019, USA;

    Department of Organismal Biology and Anatomy at the University of Chicago, Chicago, IL 60637,USA,Committee on Computational Neuroscience at the University of Chicago, Chicago, IL 60637, USA;

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