Department of Bioengineering, University of Pittsburgh, Pittsburgh, PA 15213.
Center for Neural Basis of Cognition (CNBC), University of Pittsburgh, Pittsburgh, PA 15213.
eNeuro. 2022 Dec 1;9(6). doi: 10.1523/ENEURO.0347-22.2022. Print 2022 Nov-Dec.
Place code representation is ubiquitous in circuits that encode spatial parameters. For visually guided eye movements, neurons in many brain regions emit spikes when a stimulus is presented in their receptive fields and/or when a movement is directed into their movement fields. Crucially, individual neurons respond for a broad range of directions or eccentricities away from the optimal vector, making it difficult to decode the stimulus location or the saccade vector from each cell's activity. We investigated whether it is possible to decode the spatial parameter with a population-level analysis, even when the optimal vectors are similar across neurons. Spiking activity and local field potentials (LFPs) in the superior colliculus (SC) were recorded with a laminar probe as monkeys performed a delayed saccade task to one of eight targets radially equidistant in direction. A classifier was applied offline to decode the spatial configuration as the trial progresses from sensation to action. For spiking activity, decoding performance across all eight directions was highest during the visual and motor epochs and lower but well above chance during the delay period. Classification performance followed a similar pattern for LFP activity too, except the performance during the delay period was limited mostly to the preferred direction. Increasing the number of neurons in the population consistently increased classifier performance for both modalities. Overall, this study demonstrates the power of population activity for decoding spatial information not possible from individual neurons.
代码表示在编码空间参数的电路中无处不在。对于视觉引导的眼球运动,许多大脑区域的神经元在刺激呈现于其感受野中时以及当运动指向其运动野时会发出尖峰。至关重要的是,单个神经元对远离最佳向量的广泛方向或偏心度做出反应,使得从每个细胞的活动中解码刺激位置或扫视向量变得困难。我们研究了即使在神经元之间的最佳向量相似的情况下,是否可以通过群体水平分析来解码空间参数。当猴子执行延迟扫视任务以将一个刺激呈现在八个目标之一时,用层状探针记录上丘(SC)中的尖峰活动和局部场电位(LFP)。在线下,将分类器应用于解码从感觉到动作的过程中空间配置。对于尖峰活动,在视觉和运动时期,解码性能在所有八个方向上最高,而在延迟期间则较低但远高于机会水平。对于 LFP 活动,分类性能也遵循类似的模式,除了在延迟期间的性能主要限于首选方向。增加群体中神经元的数量一致地提高了两种模态的分类器性能。总的来说,这项研究表明,群体活动对于解码空间信息的能力比单个神经元更强大。