Nazhestkin Ivan, Svarnik Olga
Moscow Institute of Physics and Technology, 1 "A" Kerchenskaya St., 117303 Moscow, Russia.
Institute of Psychology of Russian Academy of Sciences, 13 Yaroslavskaya St., 129366 Moscow, Russia.
Brain Sci. 2022 May 3;12(5):596. doi: 10.3390/brainsci12050596.
The amount of integrated information, Φ, proposed in an integrated information theory (IIT) is useful to describe the degree of brain adaptation to the environment. However, its computation cannot be precisely performed for a reasonable time for time-series spike data collected from a large count of neurons.. Therefore, Φ was only used to describe averaged activity of a big group of neurons, and the behavior of small non-brain systems. In this study, we reported on ways for fast and precise Φ calculation using different approximation methods for Φ calculation in neural spike data, and checked the capability of Φ to describe a degree of adaptation in brain neural networks. We show that during instrumental learning sessions, all applied approximation methods reflect temporal trends of Φ in the rat hippocampus. The value of Φ is positively correlated with the number of successful acts performed by a rat. We also show that only one subgroup of neurons modulates their Φ during learning. The obtained results pave the way for application of Φ to investigate plasticity in the brain during the acquisition of new tasks.
整合信息理论(IIT)中提出的整合信息量Φ,对于描述大脑对环境的适应程度很有用。然而,对于从大量神经元收集的时间序列尖峰数据,在合理时间内无法精确计算其值。因此,Φ仅用于描述一大组神经元的平均活动以及小型非脑系统的行为。在本研究中,我们报告了在神经尖峰数据中使用不同近似方法进行快速精确的Φ计算的方法,并检验了Φ描述脑神经网络适应程度的能力。我们表明,在工具性学习过程中,所有应用的近似方法都反映了大鼠海马体中Φ的时间趋势。Φ的值与大鼠成功执行的行为数量呈正相关。我们还表明,在学习过程中只有一个神经元亚群会调节其Φ值。所得结果为应用Φ来研究大脑在获取新任务过程中的可塑性铺平了道路。