Kyoto University, Graduate School of Medicine, Kyoto, Japan.
Kyoto University, Graduate School of Informatics, Kyoto, Japan.
Commun Biol. 2023 Oct 31;6(1):1105. doi: 10.1038/s42003-023-05453-2.
In the brain, many regions work in a network-like association, yet it is not known how durable these associations are in terms of activity and could survive without structural connections. To assess the association or similarity between brain regions with a generating approach, this study evaluated the similarity of activities of neurons within each region after disconnecting between regions. The "generation" approach here refers to using a multi-layer LSTM (Long Short-Term Memory) model to learn the rules of activity generation in one region and then apply that knowledge to generate activity in other regions. Surprisingly, the results revealed that activity generation from one region to disconnected regions was possible with similar accuracy to generation between the same regions in many cases. Notably, firing rates and synchronization of firing between neuron pairs, often used as neuronal representations, could be reproduced with precision. Additionally, accuracies were associated with the relative angle between brain regions and the strength of the structural connections that initially connected them. This outcome enables us to look into trends governing non-uniformity of the cortex based on the potential to generate informative data and reduces the need for animal experiments.
在大脑中,许多区域以网络状的关联方式协同工作,但目前尚不清楚这些关联在活动方面的持久程度,以及在没有结构连接的情况下是否能够存活。为了评估大脑区域之间的关联或相似性,本研究通过断开区域之间的连接,评估每个区域内神经元活动的相似性。这里的“生成”方法是指使用多层长短期记忆 (LSTM) 模型来学习一个区域中活动生成的规则,然后将该知识应用于其他区域的活动生成。令人惊讶的是,结果表明,在许多情况下,从一个区域到断开的区域的活动生成可以达到与相同区域之间生成相同的准确性。值得注意的是,神经元对之间的发射率和发射同步性(通常用作神经元表示)可以精确地再现。此外,准确性与大脑区域之间的相对角度以及最初连接它们的结构连接的强度有关。这一结果使我们能够根据生成信息性数据的潜力,研究基于大脑皮质的非均匀性的趋势,从而减少对动物实验的需求。