Litcius/Paper detail

Controlling brain dynamics: Landscape and transition path for working memory

Leijun Ye, Jianfeng Feng, Chunhe Li

2023PLoS Computational Biology15 citationsDOIOpen Access PDF

Abstract

Understanding the underlying dynamical mechanisms of the brain and controlling it is a crucial issue in brain science. The energy landscape and transition path approach provides a possible route to address these challenges. Here, taking working memory as an example, we quantified its landscape based on a large-scale macaque model. The working memory function is governed by the change of landscape and brain-wide state switching in response to the task demands. The kinetic transition path reveals that information flow follows the direction of hierarchical structure. Importantly, we propose a landscape control approach to manipulate brain state transition by modulating external stimulation or inter-areal connectivity, demonstrating the crucial roles of associative areas, especially prefrontal and parietal cortical areas in working memory performance. Our findings provide new insights into the dynamical mechanism of cognitive function, and the landscape control approach helps to develop therapeutic strategies for brain disorders.

Topics & Concepts

Working memoryComputer scienceEnergy landscapeNeuroscienceTransition (genetics)CognitionMechanism (biology)Content-addressable memoryFunction (biology)Cognitive psychologyCognitive scienceArtificial intelligencePsychologyBiologyPhysicsArtificial neural networkEvolutionary biologyGeneQuantum mechanicsBiochemistryNeural dynamics and brain functionFunctional Brain Connectivity StudiesPhotoreceptor and optogenetics research