Mapping and modeling age-related changes in intrinsic neural timescales

Abstract Intrinsic timescales of brain regions exhibit heterogeneity, escalating with hierarchical levels, and are crucial for the temporal integration of external stimuli. Aging, often associated with cognitive decline, involves progressive neuronal and synaptic loss, reshaping brain structure and...

Full description

Saved in:
Bibliographic Details
Main Authors: Kaichao Wu, Leonardo L. Gollo
Format: Article
Language:English
Published: Nature Portfolio 2025-02-01
Series:Communications Biology
Online Access:https://doi.org/10.1038/s42003-025-07517-x
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1823861748413759488
author Kaichao Wu
Leonardo L. Gollo
author_facet Kaichao Wu
Leonardo L. Gollo
author_sort Kaichao Wu
collection DOAJ
description Abstract Intrinsic timescales of brain regions exhibit heterogeneity, escalating with hierarchical levels, and are crucial for the temporal integration of external stimuli. Aging, often associated with cognitive decline, involves progressive neuronal and synaptic loss, reshaping brain structure and dynamics. However, the impact of these structural changes on temporal coding in the aging brain remains unclear. We mapped intrinsic timescales and gray matter volume (GMV) using magnetic resonance imaging (MRI) in young and elderly adults. We found shorter intrinsic timescales across multiple large-scale functional networks in the elderly cohort, and a significant positive association between intrinsic timescales and GMV. Additionally, age-related decline in performance on visual discrimination tasks was linked to a reduction in intrinsic timescales in the cuneus. To explain these age-related shifts, we developed an age-dependent spiking neuron network model. In younger subjects, brain regions were near a critical branching regime, while regions in elderly subjects had fewer neurons and synapses, pushing the dynamics toward a subcritical regime. The model accurately reproduced the empirical results, showing longer intrinsic timescales in young adults due to critical slowing down. Our findings reveal how age-related structural brain changes may drive alterations in brain dynamics, offering testable predictions and informing possible interventions targeting cognitive decline.
format Article
id doaj-art-a881303277d844a18d70da1c1ab6cf25
institution Kabale University
issn 2399-3642
language English
publishDate 2025-02-01
publisher Nature Portfolio
record_format Article
series Communications Biology
spelling doaj-art-a881303277d844a18d70da1c1ab6cf252025-02-09T12:50:28ZengNature PortfolioCommunications Biology2399-36422025-02-018111610.1038/s42003-025-07517-xMapping and modeling age-related changes in intrinsic neural timescalesKaichao Wu0Leonardo L. Gollo1Brain Networks and Modelling Laboratory and The Turner Institute for Brain and Mental Health, Monash UniversityBrain Networks and Modelling Laboratory and The Turner Institute for Brain and Mental Health, Monash UniversityAbstract Intrinsic timescales of brain regions exhibit heterogeneity, escalating with hierarchical levels, and are crucial for the temporal integration of external stimuli. Aging, often associated with cognitive decline, involves progressive neuronal and synaptic loss, reshaping brain structure and dynamics. However, the impact of these structural changes on temporal coding in the aging brain remains unclear. We mapped intrinsic timescales and gray matter volume (GMV) using magnetic resonance imaging (MRI) in young and elderly adults. We found shorter intrinsic timescales across multiple large-scale functional networks in the elderly cohort, and a significant positive association between intrinsic timescales and GMV. Additionally, age-related decline in performance on visual discrimination tasks was linked to a reduction in intrinsic timescales in the cuneus. To explain these age-related shifts, we developed an age-dependent spiking neuron network model. In younger subjects, brain regions were near a critical branching regime, while regions in elderly subjects had fewer neurons and synapses, pushing the dynamics toward a subcritical regime. The model accurately reproduced the empirical results, showing longer intrinsic timescales in young adults due to critical slowing down. Our findings reveal how age-related structural brain changes may drive alterations in brain dynamics, offering testable predictions and informing possible interventions targeting cognitive decline.https://doi.org/10.1038/s42003-025-07517-x
spellingShingle Kaichao Wu
Leonardo L. Gollo
Mapping and modeling age-related changes in intrinsic neural timescales
Communications Biology
title Mapping and modeling age-related changes in intrinsic neural timescales
title_full Mapping and modeling age-related changes in intrinsic neural timescales
title_fullStr Mapping and modeling age-related changes in intrinsic neural timescales
title_full_unstemmed Mapping and modeling age-related changes in intrinsic neural timescales
title_short Mapping and modeling age-related changes in intrinsic neural timescales
title_sort mapping and modeling age related changes in intrinsic neural timescales
url https://doi.org/10.1038/s42003-025-07517-x
work_keys_str_mv AT kaichaowu mappingandmodelingagerelatedchangesinintrinsicneuraltimescales
AT leonardolgollo mappingandmodelingagerelatedchangesinintrinsicneuraltimescales