剧目
人口
神经科学
神经活动
哺乳动物大脑
心理学
任务(项目管理)
计算机科学
医学
声学
环境卫生
物理
经济
管理
作者
Matthew D. Golub,Patrick T. Sadtler,Emily R. Oby,Kristin M. Quick,Stephen I. Ryu,Elizabeth C. Tyler‐Kabara,Aaron P. Batista,Steven M. Chase,Byron M. Yu
标识
DOI:10.1038/s41593-018-0095-3
摘要
Behavior is driven by coordinated activity across a population of neurons. Learning requires the brain to change the neural population activity produced to achieve a given behavioral goal. How does population activity reorganize during learning? We studied intracortical population activity in the primary motor cortex of rhesus macaques during short-term learning in a brain–computer interface (BCI) task. In a BCI, the mapping between neural activity and behavior is exactly known, enabling us to rigorously define hypotheses about neural reorganization during learning. We found that changes in population activity followed a suboptimal neural strategy of reassociation: animals relied on a fixed repertoire of activity patterns and associated those patterns with different movements after learning. These results indicate that the activity patterns that a neural population can generate are even more constrained than previously thought and might explain why it is often difficult to quickly learn to a high level of proficiency. Learning is ubiquitous in everyday life, yet it is unclear how neurons change their activity together during learning. Golub and colleagues show that short-term learning relies on a fixed neural repertoire, which limits behavioral improvement.
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