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体感与运动脑区之间的功能连接通过观察预测运动学习中的个体差异。

Functional connectivity between somatosensory and motor brain areas predicts individual differences in motor learning by observing.

作者信息

McGregor Heather R, Gribble Paul L

机构信息

The Brain and Mind Institute, Department of Psychology, The University of Western Ontario, London, Ontario, Canada.

Graduate Program in Neuroscience, The University of Western Ontario, London, Ontario, Canada; and.

出版信息

J Neurophysiol. 2017 Aug 1;118(2):1235-1243. doi: 10.1152/jn.00275.2017. Epub 2017 May 31.

Abstract

Action observation can facilitate the acquisition of novel motor skills; however, there is considerable individual variability in the extent to which observation promotes motor learning. Here we tested the hypothesis that individual differences in brain function or structure can predict subsequent observation-related gains in motor learning. Subjects underwent an anatomical MRI scan and resting-state fMRI scans to assess preobservation gray matter volume and preobservation resting-state functional connectivity (FC), respectively. On the following day, subjects observed a video of a tutor adapting her reaches to a novel force field. After observation, subjects performed reaches in a force field as a behavioral assessment of gains in motor learning resulting from observation. We found that individual differences in resting-state FC, but not gray matter volume, predicted postobservation gains in motor learning. Preobservation resting-state FC between left primary somatosensory cortex and bilateral dorsal premotor cortex, primary motor cortex, and primary somatosensory cortex and left superior parietal lobule was positively correlated with behavioral measures of postobservation motor learning. Sensory-motor resting-state FC can thus predict the extent to which observation will promote subsequent motor learning. We show that individual differences in preobservation brain function can predict subsequent observation-related gains in motor learning. Preobservation resting-state functional connectivity within a sensory-motor network may be used as a biomarker for the extent to which observation promotes motor learning. This kind of information may be useful if observation is to be used as a way to boost neuroplasticity and sensory-motor recovery for patients undergoing rehabilitation for diseases that impair movement such as stroke.

摘要

动作观察可以促进新运动技能的习得;然而,观察对运动学习的促进程度存在相当大的个体差异。在这里,我们检验了一个假设,即大脑功能或结构的个体差异可以预测随后与观察相关的运动学习收益。受试者分别接受了解剖磁共振成像扫描和静息态功能磁共振成像扫描,以评估观察前的灰质体积和观察前的静息态功能连接(FC)。在接下来的一天,受试者观看了一段导师在新的力场中调整伸手动作的视频。观察后,受试者在力场中进行伸手动作,作为对观察导致的运动学习收益的行为评估。我们发现,静息态FC的个体差异而非灰质体积能够预测观察后的运动学习收益。左初级体感皮层与双侧背侧运动前皮层、初级运动皮层以及初级体感皮层与左上顶叶之间的观察前静息态FC与观察后运动学习的行为指标呈正相关。因此,感觉运动静息态FC可以预测观察促进后续运动学习的程度。我们表明,观察前大脑功能的个体差异可以预测随后与观察相关的运动学习收益。感觉运动网络内的观察前静息态功能连接可以用作观察促进运动学习程度的生物标志物。如果将观察用作促进中风等损害运动的疾病康复患者的神经可塑性和感觉运动恢复的一种方法,这类信息可能会很有用。

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