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  4. High-Order Functional Redundancy In Ageing Explained Via Alterations In The Connectome In A Whole-Brain Model
 
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High-Order Functional Redundancy In Ageing Explained Via Alterations In The Connectome In A Whole-Brain Model

Journal
PLOS Computational Biology
Date Issued
2022-09-01
Author(s)
Marilyn Gatica
Fernando E. Rosas
Pedro A. M. Mediano
Ibai Diez
Stephan P. Swinnen
Orio, Patricio  
Facultad de Ciencias  
Rodrigo Cofré
Jesus M. Cortes
DOI
10.1371/journal.pcbi.1010431
WoS ID
WOS:000892639800001
Abstract
The human brain generates a rich repertoire of spatio-temporal activity patterns, which support a wide variety of motor and cognitive functions. These patterns of activity change with age in a multi-factorial manner. One of these factors is the variations in the brain’s connectomics that occurs along the lifespan. However, the precise relationship between high-order functional interactions and connnectomics, as well as their variations with age are largely unknown, in part due to the absence of mechanistic models that can efficiently map brain connnectomics to functional connectivity in aging. To investigate this issue, we have built a neurobiologically-realistic whole-brain computational model using both anatomical and functional MRI data from 161 participants ranging from 10 to 80 years old. We show that the differences in high-order functional interactions between age groups can be largely explained by variations in the connectome. Based on this finding, we propose a simple neurodegeneration model that is representative of normal physiological aging. As such, when applied to connectomes of young participant it reproduces the age-variations that occur in the high-order structure of the functional data. Overall, these results begin to disentangle the mechanisms by which structural changes in the connectome lead to functional differences in the ageing brain. Our model can also serve as a starting point for modeling more complex forms of pathological ageing or cognitive deficits.
Subjects

Biochemical Research ...

Cellular And Molecula...

Computational Theory ...

Ecology

Ecology, Evolution, B...

Genetics

Mathematical And Comp...

Modeling And Simulati...

Molecular Biology

OCDE Subjects

Natural Sciences::Bio...

Quartile (Date Issued)
Q1
License
acceso abierto
Product(s)
Dynamic Mean Field (DMF) model parameters.  

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