Oostwoud Wijdenes Leonie, Medendorp W Pieter
Donders Institute for Brain, Cognition and Behaviour, Radboud University, Nijmegen, Netherlands.
Front Integr Neurosci. 2017 Dec 19;11:38. doi: 10.3389/fnint.2017.00038. eCollection 2017.
Humans are highly skilled in controlling their reaching movements, making fast and task-dependent movement corrections to unforeseen perturbations. To guide these corrections, the neural control system requires a continuous, instantaneous estimate of the current state of the arm and body in the world. According to Optimal Feedback Control theory, this estimate is multimodal and constructed based on the integration of forward motor predictions and sensory feedback, such as proprioceptive, visual and vestibular information, modulated by context, and shaped by past experience. But how can a multimodal estimate drive fast movement corrections, given that the involved sensory modalities have different processing delays, different coordinate representations, and different noise levels? We develop the hypothesis that the earliest online movement corrections are based on multiple single modality state estimates rather than one combined multimodal estimate. We review studies that have investigated online multimodal integration for reach control and offer suggestions for experiments to test for the existence of intramodal state estimates. If proven true, the framework of Optimal Feedback Control needs to be extended with a stage of intramodal state estimation, serving to drive short-latency movement corrections.
人类在控制伸手动作方面技艺高超,能够针对不可预见的干扰进行快速且依赖任务的动作校正。为指导这些校正,神经控制系统需要对手臂和身体在现实世界中的当前状态进行连续、即时的估计。根据最优反馈控制理论,这种估计是多模态的,基于前馈运动预测与感觉反馈(如本体感觉、视觉和前庭信息)的整合构建而成,受情境调制,并由过去的经验塑造。但是,鉴于所涉及的感觉模态具有不同的处理延迟、不同的坐标表示和不同的噪声水平,多模态估计如何驱动快速的动作校正呢?我们提出一个假设,即最早的在线动作校正基于多个单模态状态估计,而非一个组合的多模态估计。我们回顾了研究在线多模态整合以控制伸手动作的研究,并为测试单模态状态估计的存在性的实验提供建议。如果这一假设被证明是正确的,最优反馈控制框架需要扩展一个单模态状态估计阶段,用于驱动短潜伏期的动作校正。