猴子在视觉项目识别过程中形成的全脑神经几何图形

He Chen, Jun Kunimatsu, Tomomichi Oya, Yuri Imaizumi, Yukiko Hori, Masayuki Matsumoto, Yasuhiro Tsubo, Okihide Hikosaka, Takafumi Minamimoto, Yuji Naya, Hiroshi Yamada
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摘要

神经动态反映了大脑中传递和转换信息的典型计算。以往的研究已将许多单个脑区的神经群动态确定为低维神经空间中的轨迹几何。然而,这些神经群是否在整个大脑神经群中共享特定的几何模式仍不清楚。在这里,我们通过广泛绘制猴子皮层和皮层下结构中颞叶/额叶/边缘区域的神经动态图,表明包括 2,500 个神经元在内的 10 个神经群以随机方式传播视觉项目信息。我们发现,视觉输入主要在高阶视觉区、TE 及其下游纹状体尾部唤起旋转动态,而在下游的眶额叶/海马网络中则更频繁地出现曲线/直线动态。这些几何变化并不是确定性的,而是根据各自的出现率随机发生的。这些结果表明,视觉信息是作为随机神经群信号的异质混合物在大脑中传播的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Formation of brain-wide neural geometry during visual item recognition in monkeys
Neural dynamics reflect canonical computations that relay and transform information in the brain. Previous studies have identified the neural population dynamics in many individual brain regions as a trajectory geometry in a low-dimensional neural space. However, whether these populations share particular geometric patterns across brain-wide neural populations remains unclear. Here, by mapping neural dynamics widely across temporal/frontal/limbic regions in the cortical and subcortical structures of monkeys, we show that 10 neural populations, including 2,500 neurons, propagate visual item information in a stochastic manner. We found that the visual inputs predominantly evoked rotational dynamics in the higher-order visual area, the TE and its downstream striatum tail, while curvy/straight dynamics appeared more frequently downstream in the orbitofrontal/hippocampal network. These geometric changes were not deterministic but rather stochastic according to their respective emergence rates. These results indicated that visual information propagates as a heterogeneous mixture of stochastic neural population signals in the brain.
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