Department of Computer Science and Applied Mathematics, Weizmann Institute of Science, Rehovot 7610001, Israel.
Department of Computer Science and Applied Mathematics, Weizmann Institute of Science, Rehovot 7610001, Israel.
Neuron. 2014 Jan 22;81(2):452-62. doi: 10.1016/j.neuron.2013.10.058.
How does the human motor system encode our incredibly diverse motor repertoire in an efficient manner? One possible way of encoding movements efficiently is to represent them according to their shape/trajectory without regard to their size, by using neural populations that are invariant across scale. To examine this hypothesis, we recorded movement kinematics and functional magnetic resonance imaging (fMRI) while subjects wrote three letters in two different scales. A classification algorithm was trained to identify each letter according to its associated voxel-by-voxel response pattern in each of several motor areas. Accurate decoding of letter identity was possible in primary motor cortex (M1) and anterior intraparietal sulcus (aIPS) regardless of the letter's scale. These results reveal that large, distributed neural populations in human M1 and aIPS encode complex handwriting movements regardless of their particular dynamics and kinematics, in a scale-invariant manner.
人类运动系统如何以高效的方式对我们多样化的运动技能进行编码?一种可能的高效编码方式是根据运动的形状/轨迹进行表示,而不考虑其大小,使用对尺度不变的神经群体。为了检验这一假设,我们记录了受试者在两种不同尺度下书写三个字母时的运动运动学和功能磁共振成像(fMRI)数据。分类算法根据与每个运动区域的每个体素的响应模式相关联的体素来训练以识别每个字母。无论字母的大小如何,主要运动皮层(M1)和前内顶叶皮层(aIPS)都可以准确解码字母的身份。这些结果表明,人类 M1 和 aIPS 中的大型分布式神经群体以尺度不变的方式对复杂的手写运动进行编码,而不管它们的特定动力学和运动学如何。