2021
DOI: 10.1101/2021.09.15.460435
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High-order functional interactions in ageing explained via alterations in the connectome in a whole-brain model

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 mo… Show more

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Cited by 3 publications
(4 citation statements)
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“…Information theory [70] and algebraic topological approaches [71, 72] may provide useful information about high-order interdependencies in the brain. Indeed, a whole-brain model was proposed as a non-linear model of neurodegeneration to simulate the ageing of connectomes [73]. This model successfully reproduced the changes of high-order statistics observed in neuroimaging data [74], specifically, a significant increase in redundancy-dominated interdependencies between BOLD activity in older subjects.…”
Section: Discussionmentioning
confidence: 99%
“…Information theory [70] and algebraic topological approaches [71, 72] may provide useful information about high-order interdependencies in the brain. Indeed, a whole-brain model was proposed as a non-linear model of neurodegeneration to simulate the ageing of connectomes [73]. This model successfully reproduced the changes of high-order statistics observed in neuroimaging data [74], specifically, a significant increase in redundancy-dominated interdependencies between BOLD activity in older subjects.…”
Section: Discussionmentioning
confidence: 99%
“…In contrast, the synergy was associated with the wiring distance matrix between pairs of regions and favored integrated processing ( Luppi et al, 2022 ). In healthy aging, redundancy increased in the older population ( CaminoPontes et al, 2018 ; Gatica et al, 2021a ), and could be explained by a non-linear-neurodegenerative model applied to the structural connectivity ( Gatica et al, 2021b ). Furthermore, these high-order methods have been used in a wide range of studies, such as neurodegeneration ( Herzog et al, 2022 ), artificial neural networks ( Proca et al, 2022 ), spiking neurons ( Stramaglia et al, 2021 ), and elementary cellular automata ( Rosas et al, 2018 ; Orio et al, 2023 ).…”
Section: Introductionmentioning
confidence: 99%
“…1C), allowing a direct comparison with empirical fMRI data. The DMF has been used to simulate BOLD signals measured during an ample range of different conditions and global brain states 12,15,17,[31][32][33][34] . Despite these achievements, a few limitations prevent the DMF model from being more widely exploited by the scientific community.…”
Section: Introductionmentioning
confidence: 99%
“…1C), allowing a direct comparison with empirical fMRI data. The DMF has been used to simulate BOLD signals measured during an ample range of different conditions and global brain states 12,15,17,3134 .…”
Section: Introductionmentioning
confidence: 99%