School of Psychology, University of Glasgow, Glasgow, G12 8QB, UK.
School of Engineering, University of Glasgow, Glasgow, G12 8QB, UK.
Sci Rep. 2020 Mar 24;10(1):5362. doi: 10.1038/s41598-020-62071-2.
Multivariate Pattern Analysis (MVPA) has grown in importance due to its capacity to use both coarse and fine scale patterns of brain activity. However, a major limitation of multivariate analysis is the difficulty of aligning features across brains, which makes MVPA a subject specific analysis. Recent work by Haxby et al. (2011) introduced a method called Hyperalignment that explored neural activity in ventral temporal cortex during object recognition and demonstrated the ability to align individual patterns of brain activity into a common high dimensional space to facilitate Between Subject Classification (BSC). Here we examined BSC based on Hyperalignment of motor cortex during a task of motor imagery of three natural actions (lift, knock and throw). To achieve this we collected brain activity during the combined tasks of action observation and motor imagery to a parametric action space containing 25 stick-figure blends of the three natural actions. From these responses we derived Hyperalignment transformation parameters that were used to map subjects' representational spaces of the motor imagery task in the motor cortex into a common model representational space. Results showed that BSC of the neural response patterns based on Hyperalignment exceeded both BSC based on anatomical alignment as well as a standard Within Subject Classification (WSC) approach. We also found that results were sensitive to the order in which participants entered the Hyperalignment algorithm. These results demonstrate the effectiveness of Hyperalignment to align neural responses across subject in motor cortex to enable BSC of motor imagery.
多变量模式分析(MVPA)因其能够利用大脑活动的粗糙和精细模式而变得越来越重要。然而,多元分析的一个主要限制是难以在大脑之间对齐特征,这使得 MVPA 成为特定于主题的分析。最近,Haxby 等人(2011 年)引入了一种称为超对齐的方法,该方法探索了在物体识别过程中腹侧颞叶皮层的神经活动,并证明了将个体大脑活动模式对齐到共同的高维空间以促进主体间分类(BSC)的能力。在这里,我们研究了基于运动想象任务期间运动皮层的超对齐的 BSC,该任务涉及三种自然动作(提起、敲击和投掷)的运动想象。为了实现这一点,我们在动作观察和运动想象的组合任务中收集大脑活动,以包含 25 个三种自然动作的 stick-figure 混合的参数动作空间。从这些反应中,我们得出了超对齐变换参数,用于将运动想象任务中主体的表示空间映射到运动皮层的共同模型表示空间中。结果表明,基于超对齐的神经反应模式的 BSC 不仅超过了基于解剖学对齐的 BSC,也超过了标准的主体内分类(WSC)方法。我们还发现,结果对参与者进入超对齐算法的顺序敏感。这些结果证明了超对齐在运动皮层中对齐主体间神经反应以实现运动想象的 BSC 的有效性。