Department of Neurobiology, University of Pittsburgh, Pittsburgh, Pennsylvania, USA.
J Neurophysiol. 2012 Jul;108(2):624-44. doi: 10.1152/jn.00371.2011. Epub 2012 Apr 11.
Brain-computer interfaces (BCIs) provide a defined link between neural activity and devices, allowing a detailed study of the neural adaptive responses generating behavioral output. We trained monkeys to perform two-dimensional center-out movements of a computer cursor using a BCI. We then applied a perturbation by randomly selecting a subset of the recorded units and rotating their directional contributions to cursor movement by a consistent angle. Globally, this perturbation mimics a visuomotor transformation, and in the first part of this article we characterize the psychophysical indications of motor adaptation and compare them with known results from adaptation of natural reaching movements. Locally, however, only a subset of the neurons in the population actually contributes to error, allowing us to probe for signatures of neural adaptation that might be specific to the subset of neurons we perturbed. One compensation strategy would be to selectively adapt the subset of cells responsible for the error. An alternate strategy would be to globally adapt the entire population to correct the error. Using a recently developed mathematical technique that allows us to differentiate these two mechanisms, we found evidence of both strategies in the neural responses. The dominant strategy we observed was global, accounting for ∼86% of the total error reduction. The remaining 14% came from local changes in the tuning functions of the perturbed units. Interestingly, these local changes were specific to the details of the applied rotation: in particular, changes in the depth of tuning were only observed when the percentage of perturbed cells was small. These results imply that there may be constraints on the network's adaptive capabilities, at least for perturbations lasting only a few hundreds of trials.
脑机接口(BCI)在神经活动和设备之间提供了明确的联系,允许对产生行为输出的神经自适应反应进行详细研究。我们训练猴子使用 BCI 执行计算机光标二维中心外运动。然后,我们通过随机选择记录单元的子集并将其对光标运动的方向贡献旋转一致角度来施加干扰。全局上,这种干扰模拟了视动转换,在本文的第一部分,我们描述了运动适应的心理物理学迹象,并将其与自然运动适应的已知结果进行了比较。然而,在局部,只有群体中的一小部分神经元实际上会导致错误,从而允许我们探测可能与我们干扰的神经元子集特定的神经适应特征。一种补偿策略是选择性地适应负责错误的神经元子集。另一种策略是全局地适应整个群体以纠正错误。我们使用最近开发的一种数学技术,可以区分这两种机制,我们在神经反应中发现了这两种策略的证据。我们观察到的主要策略是全局的,占总误差减少的约 86%。剩下的 14%来自受干扰单元调谐函数的局部变化。有趣的是,这些局部变化与应用旋转的细节有关:特别是,只有在受干扰细胞的百分比较小时才观察到调谐深度的变化。这些结果表明,至少对于持续数百次试验的干扰,网络的自适应能力可能存在限制。