Janelia Research Campus, HHMI, Ashburn, VA, 20147, USA.
The Solomon H. Snyder Department of Neuroscience, Johns Hopkins University School of Medicine, Baltimore, MD, 21205, USA.
Nat Commun. 2019 Jan 15;10(1):216. doi: 10.1038/s41467-018-08141-6.
Animals are not simple input-output machines. Their responses to even very similar stimuli are variable. A key, long-standing question in neuroscience is to understand the neural correlates of such behavioral variability. To reveal these correlates, behavior and neural population activity must be related to one another on single trials. Such analysis is challenging due to the dynamical nature of brain function (e.g., in decision making), heterogeneity across neurons and limited sampling of the relevant neural population. By analyzing population recordings from mouse frontal cortex in perceptual decision-making tasks, we show that an analysis approach tailored to the coarse grain features of the dynamics is able to reveal previously unrecognized structure in the organization of population activity. This structure is similar on error and correct trials, suggesting dynamics that may be constrained by the underlying circuitry, is able to predict multiple aspects of behavioral variability and reveals long time-scale modulation of population activity.
动物不是简单的输入-输出机器。即使是非常相似的刺激,它们的反应也是多变的。神经科学中的一个关键的、长期存在的问题是理解这种行为变异性的神经相关物。为了揭示这些相关性,必须在单个试验中将行为和神经群体活动相互关联。由于大脑功能的动态性质(例如,在决策中)、神经元之间的异质性以及相关神经群体的有限抽样,这种分析具有挑战性。通过分析在感知决策任务中来自小鼠前额皮质的群体记录,我们表明,专门针对动态的粗略特征设计的分析方法能够揭示群体活动组织中以前未被识别的结构。这种结构在错误和正确的试验中相似,这表明可能受到基础电路约束的动态能够预测行为变异性的多个方面,并揭示了群体活动的长时间尺度调制。