Manley Jason, Demas Jeffrey, Kim Hyewon, Traub Francisca Martínez, Vaziri Alipasha
Laboratory of Neurotechnology and Biophysics, The Rockefeller University, New York, NY 10065, USA.
The Kavli Neural Systems Institute, The Rockefeller University, New York, NY 10065, USA.
bioRxiv. 2024 Jan 16:2024.01.15.575721. doi: 10.1101/2024.01.15.575721.
The brain's remarkable properties arise from collective activity of millions of neurons. Widespread application of dimensionality reduction to multi-neuron recordings implies that neural dynamics can be approximated by low-dimensional "latent" signals reflecting neural computations. However, what would be the biological utility of such a redundant and metabolically costly encoding scheme and what is the appropriate resolution and scale of neural recording to understand brain function? Imaging the activity of one million neurons at cellular resolution and near-simultaneously across mouse cortex, we demonstrate an unbounded scaling of dimensionality with neuron number. While half of the neural variance lies within sixteen behavior-related dimensions, we find this unbounded scaling of dimensionality to correspond to an ever-increasing number of internal variables without immediate behavioral correlates. The activity patterns underlying these higher dimensions are fine-grained and cortex-wide, highlighting that large-scale recording is required to uncover the full neural substrates of internal and potentially cognitive processes.
大脑非凡的特性源于数百万个神经元的集体活动。将降维方法广泛应用于多神经元记录意味着神经动力学可以通过反映神经计算的低维“潜在”信号来近似。然而,这样一种冗余且代谢成本高昂的编码方案有何生物学效用,以及理解脑功能所需的神经记录的适当分辨率和规模是多少?我们以细胞分辨率并近乎同时对小鼠整个皮层的一百万个神经元的活动进行成像,证明了维度随神经元数量呈无界缩放。虽然一半的神经方差存在于16个与行为相关的维度内,但我们发现这种无界的维度缩放对应于越来越多与即时行为无关的内部变量。这些更高维度背后的活动模式是精细且全皮层范围的,这突出表明需要进行大规模记录才能揭示内部和潜在认知过程的完整神经基础。