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Intention estimation in brain-machine interfaces

机译:人机界面中的意图估计

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摘要

Objective. The objective of this work was to quantitatively investigate the mechanisms underlying the performance gains of the recently reported 'recalibrated feedback intention-trained Kalman Filter' (ReFIT-KF). Approach. This was accomplished by designing variants of the ReFIT-KF algorithm and evaluating training and online data to understand the neural basis of this improvement. We focused on assessing the contribution of two training set innovations of the ReFIT-KF algorithm: intention estimation and the two-stage training paradigm. Main results. Within the two-stage training paradigm, we found that intention estimation independently increased target acquisition rates by 37% and 59%, respectively, across two monkeys implanted with multiunit intracortical arrays. Intention estimation improved performance by enhancing the tuning properties and the mutual information between the kinematic and neural training data. Furthermore, intention estimation led to fewer shifts in channel tuning between the training set and online control, suggesting that less adaptation was required during online control. Retraining the decoder with online BMI training data also reduced shifts in tuning, suggesting a benefit of training a decoder in the same behavioral context; however, retraining also led to slower online decode velocities. Finally, we demonstrated that one- and two-stage training paradigms performed comparably when intention estimation is applied. Significance. These findings highlight the utility of intention estimation in reducing the need for adaptive strategies and improving the online performance of BMIs, helping to guide future BMI design decisions.
机译:目的。这项工作的目的是定量研究最近报道的“经过重新校准的反馈意图训练的卡尔曼滤波器”(ReFIT-KF)的性能提升所依据的机制。方法。这是通过设计ReFIT-KF算法的变体并评估培训和在线数据以了解这种改进的神经基础来实现的。我们专注于评估ReFIT-KF算法的两种训练集创新的贡献:意图估计和两阶段训练范式。主要结果。在两阶段训练范例中,我们发现,在植入多单元皮层内膜阵列的两只猴子中,意向估计分别独立地将目标获取率提高了37%和59%。意图估计通过增强调整特性以及运动和神经训练数据之间的相互信息来提高性能。此外,意图估计导致训练集和在线控制之间的频道调整次数减少,这表明在线控制期间所需的适应性较小。使用在线BMI训练数据对解码器进行再培训还可以减少调整的偏差,这表明在相同的行为上下文中训练解码器的好处。但是,再培训也导致在线解码速度变慢。最后,我们证明了在进行意向估计时,一阶段和两阶段的训练范式可比较地执行。意义。这些发现凸显了意图估计在减少对自适应策略的需求以及提高BMI的在线性能方面的效用,有助于指导未来的BMI设计决策。

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  • 来源
    《Journal of neural engineering》 |2014年第1期|016004.1-016004.13|共13页
  • 作者单位

    Department of Bioengineering, Stanford University, Stanford, CA, USA,School of Medicine, University of California San Francisco, San Francisco, CA, USA;

    Department of Bioengineering, Stanford University, Stanford, CA, USA,School of Medicine, Stanford University, Stanford, CA, USA;

    Department of Electrical Engineering, Stanford University, Stanford, CA, USA;

    Department of Electrical Engineering, Stanford University, Stanford, CA, USA,Stanford Institute for Neuro-Innovation and Translational Neuroscience, Stanford, CA, USA;

    Department of Electrical Engineering, Stanford University, Stanford, CA, USA,Department of Neurosurgery, Palo Alto Medical Foundation, Palo Alto, CA, USA;

    Department of Bioengineering, Stanford University, Stanford, CA, USA,Department of Electrical Engineering, Stanford University, Stanford, CA, USA,Stanford Institute for Neuro-Innovation and Translational Neuroscience, Stanford, CA, USA,Department of Neurobiology, Stanford University, Stanford, CA, USA;

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