Department of Biomedical Engineering, Marquette University, Milwaukee, WI 53201-1881, USA.
Neuroimage. 2012 Jan 2;59(1):582-600. doi: 10.1016/j.neuroimage.2011.07.072. Epub 2011 Aug 4.
We used functional MR imaging (FMRI), a robotic manipulandum and systems identification techniques to examine neural correlates of predictive compensation for spring-like loads during goal-directed wrist movements in neurologically-intact humans. Although load changed unpredictably from one trial to the next, subjects nevertheless used sensorimotor memories from recent movements to predict and compensate upcoming loads. Prediction enabled subjects to adapt performance so that the task was accomplished with minimum effort. Population analyses of functional images revealed a distributed, bilateral network of cortical and subcortical activity supporting predictive load compensation during visual target capture. Cortical regions--including prefrontal, parietal and hippocampal cortices--exhibited trial-by-trial fluctuations in BOLD signal consistent with the storage and recall of sensorimotor memories or "states" important for spatial working memory. Bilateral activations in associative regions of the striatum demonstrated temporal correlation with the magnitude of kinematic performance error (a signal that could drive reward-optimizing reinforcement learning and the prospective scaling of previously learned motor programs). BOLD signal correlations with load prediction were observed in the cerebellar cortex and red nuclei (consistent with the idea that these structures generate adaptive fusimotor signals facilitating cancelation of expected proprioceptive feedback, as required for conditional feedback adjustments to ongoing motor commands and feedback error learning). Analysis of single subject images revealed that predictive activity was at least as likely to be observed in more than one of these neural systems as in just one. We conclude therefore that motor adaptation is mediated by predictive compensations supported by multiple, distributed, cortical and subcortical structures.
我们使用功能磁共振成像(fMRI)、机器人操作器和系统识别技术,研究了在神经完整的人类中,目标导向的手腕运动过程中,对弹簧样负载进行预测性补偿的神经相关性。尽管负载在下一次试验中不可预测地变化,但受试者仍然使用来自最近运动的感觉运动记忆来预测和补偿即将到来的负载。预测使受试者能够适应性能,以便以最小的努力完成任务。功能图像的群体分析揭示了一个支持视觉目标捕获期间预测性负载补偿的皮质和皮质下活动的分布式双侧网络。包括前额叶、顶叶和海马皮质在内的皮质区域表现出与感觉运动记忆的存储和回忆一致的 BOLD 信号的逐次波动,或者对于空间工作记忆很重要的“状态”。纹状体的关联区域的双侧激活与运动学性能误差的幅度表现出时间相关性(这是一种可以驱动奖励优化的强化学习以及先前学习的运动程序的前瞻性缩放的信号)。小脑皮质和红核中观察到与负载预测的 BOLD 信号相关性(与这些结构产生自适应的 fusimotor 信号的想法一致,这些信号有助于取消预期的本体感受反馈,这是对正在进行的运动命令和反馈误差学习进行条件反馈调整所必需的)。对单个受试者图像的分析表明,预测性活动至少在一个以上的这些神经系统中比在一个系统中更有可能被观察到。因此,我们得出结论,运动适应是由多个分布式皮质和皮质下结构支持的预测性补偿介导的。