Department of Electrical and Computer Engineering, Michigan State University, East Lansing, MI, 48824, USA.
Department of Radiology, Michigan State University, East Lansing, MI, 48824, USA.
Sci Rep. 2022 Feb 9;12(1):2174. doi: 10.1038/s41598-022-05870-z.
Neurophysiological measurements suggest that human information processing is evinced by neuronal activity. However, the quantitative relationship between the activity of a brain region and its information processing capacity remains unclear. We introduce and validate a mathematical model of the information processing capacity of a brain region in terms of neuronal activity, input storage capacity, and the arrival rate of afferent information. We applied the model to fMRI data obtained from a flanker paradigm in young and old subjects. Our analysis showed that-for a given cognitive task and subject-higher information processing capacity leads to lower neuronal activity and faster responses. Crucially, processing capacity-as estimated from fMRI data-predicted task and age-related differences in reaction times, speaking to the model's predictive validity. This model offers a framework for modelling of brain dynamics in terms of information processing capacity, and may be exploited for studies of predictive coding and Bayes-optimal decision-making.
神经生理学测量表明,人类信息处理是由神经元活动表现出来的。然而,大脑区域的活动与其信息处理能力之间的定量关系尚不清楚。我们引入并验证了一个基于神经元活动、输入存储容量和传入信息到达率的大脑区域信息处理能力的数学模型。我们将该模型应用于年轻人和老年人进行侧抑制范式时的 fMRI 数据。我们的分析表明,对于给定的认知任务和个体,较高的信息处理能力会导致较低的神经元活动和更快的反应。至关重要的是,从 fMRI 数据中估计出的处理能力可以预测任务和年龄相关的反应时差异,证明了该模型的预测有效性。该模型提供了一个基于信息处理能力来模拟大脑动力学的框架,可用于研究预测编码和贝叶斯最优决策。