Ronsse Renaud, Miall R Chris, Swinnen Stephan P
Motor Control Laboratory, Department of Biomedical Kinesiology, Katholieke Universiteit Leuven, B-3001 Heverlee, Belgium.
J Neurosci. 2009 Jul 1;29(26):8419-28. doi: 10.1523/JNEUROSCI.5734-08.2009.
Optimal integration of different sensory modalities weights each modality as a function of its degree of certainty (maximum likelihood). Humans rely on near-optimal integration in decision-making tasks (involving e.g., auditory, visual, and/or tactile afferents), and some support for these processes has also been provided for discrete sensorimotor tasks. Here, we tested optimal integration during the continuous execution of a motor task, using a cyclical bimanual coordination pattern in which feedback was provided by means of proprioception and augmented visual feedback (AVF, the position of both wrists being displayed as the orthogonal coordinates of a single cursor). Assuming maximum likelihood integration, the following predictions were addressed: (1) the coordination variability with both AVF and proprioception available is smaller than with only one of the two modalities, and should reach an optimal level; (2) if the AVF is artificially corrupted by noise, variability should increase but saturate toward the level without AVF; (3) if the AVF is imperceptibly phase shifted, the stabilized pattern should be partly adapted to compensate for this phase shift, whereby the amount of compensation reflects the weight assigned to AVF in the computation of the integrated signal. Whereas performance variability gradually decreased over 5 d of practice, we showed that these model-based predictions were already observed on the first day. This suggests not only that the performer integrated proprioceptive feedback and AVF online during task execution by tending to optimize the signal statistics, but also that this occurred before reaching an asymptotic performance level.
不同感觉模态的最优整合会根据其确定程度(最大似然性)对每种模态进行加权。人类在决策任务(例如涉及听觉、视觉和/或触觉传入神经)中依赖近乎最优的整合,并且对于离散的感觉运动任务也提供了一些对这些过程的支持。在此,我们使用一种周期性双手协调模式,通过本体感觉和增强视觉反馈(AVF,双腕位置显示为单个光标的正交坐标)提供反馈,测试了运动任务连续执行过程中的最优整合。假设进行最大似然性整合,我们探讨了以下预测:(1)同时具备AVF和本体感觉时的协调变异性小于仅具备两种模态之一时的情况,并且应达到最优水平;(2)如果AVF被人为地加入噪声,变异性应增加,但会朝着没有AVF时的水平饱和;(3)如果AVF存在不易察觉的相位偏移,稳定模式应部分适应以补偿这种相位偏移,由此补偿量反映了在整合信号计算中分配给AVF的权重。尽管在5天的练习过程中表现变异性逐渐降低,但我们表明在第一天就已经观察到了这些基于模型的预测。这不仅表明执行者在任务执行过程中通过倾向于优化信号统计在线整合本体感觉反馈和AVF,而且表明这一过程发生在达到渐近表现水平之前。