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Transient neural network dynamics in cognitive ageing

Roni Tibon, Kamen A. Tsvetanov, Darren Price, David J. Nesbitt, Cam Can, Richard N. Henson

2021Neurobiology of Aging49 citationsDOIOpen Access PDF

Abstract

It is important to maintain cognitive function in old age, yet the neural substrates that support successful cognitive ageing remain unclear. One factor that might be crucial, but has been overlooked due to limitations of previous data and methods, is the ability of brain networks to flexibly reorganize and coordinate over a millisecond time-scale. Magnetoencephalography (MEG) provides such temporal resolution, and can be combined with Hidden Markov Models (HMMs) to characterise transient neural states. We applied HMMs to resting-state MEG data from a large cohort (N=595) of population-based adults (aged 18-88), who also completed a range of cognitive tasks. Using multivariate analysis of neural and cognitive profiles, we found that decreased occurrence of "lower-order" brain networks, coupled with increased occurrence of "higher-order" networks, was associated with both increasing age and decreased fluid intelligence. These results favour theories of age-related reductions in neural efficiency over current theories of age-related functional compensation, and suggest that this shift might reflect a stable property of the ageing brain.

Topics & Concepts

Transient (computer programming)AgeingArtificial neural networkCognitionDynamics (music)Cognitive agingNeuroscienceComputer sciencePsychologyArtificial intelligenceMedicineOperating systemInternal medicinePedagogyFunctional Brain Connectivity StudiesNeural dynamics and brain functionEEG and Brain-Computer Interfaces
Transient neural network dynamics in cognitive ageing | Litcius