Wei Kunlin, Körding Konrad
Department of Physiology, Rehabilitation Institute of Chicago, Northwestern University, 345 E. Superior Street, Rm. O-922, Chicago, IL 60611, USA.
J Neurophysiol. 2009 Feb;101(2):655-64. doi: 10.1152/jn.90545.2008. Epub 2008 Nov 19.
During motor adaptation the nervous system constantly uses error information to improve future movements. Today's mainstream models simply assume that the nervous system adapts linearly and proportionally to errors. However, not all movement errors are relevant to our own action. The environment may transiently disturb the movement production-for example, a gust of wind blows the tennis ball away from its intended trajectory. Apparently the nervous system should not adapt its motor plan in the subsequent tennis strokes based on this irrelevant movement error. We hypothesize that the nervous system estimates the relevance of each observed error and adapts strongly only to relevant errors. Here we present a Bayesian treatment of this problem. The model calculates how likely an error is relevant to the motor plant and derives an ideal adaptation strategy that leads to the most precise movements. This model predicts that adaptation should be a nonlinear function of the size of an error. In reaching experiments we found strong evidence for the predicted nonlinear strategy. The model also explains published data on saccadic gain adaptation, adaptation to visuomotor rotations, and force perturbations. Our study suggests that the nervous system constantly and effortlessly estimates the relevance of observed movement errors for successful motor adaptation.
在运动适应过程中,神经系统不断利用误差信息来改善未来的动作。当今的主流模型简单地假设神经系统以线性方式且按比例适应误差。然而,并非所有的运动误差都与我们自身的动作相关。环境可能会暂时干扰动作的产生——例如,一阵风将网球吹离其预期轨迹。显然,神经系统不应基于这种无关的运动误差在后续的网球击球动作中调整其运动计划。我们假设神经系统会估计每个观察到的误差的相关性,并且仅对相关误差进行强烈适应。在此,我们提出对此问题的贝叶斯处理方法。该模型计算误差与运动装置相关的可能性,并推导出一种能实现最精确动作的理想适应策略。此模型预测适应应该是误差大小的非线性函数。在伸手实验中,我们发现了支持所预测的非线性策略的有力证据。该模型还解释了已发表的关于眼跳增益适应、适应视觉运动旋转和力扰动的数据。我们的研究表明,为了成功进行运动适应,神经系统会持续且轻松地估计观察到的运动误差的相关性。