Stability of sensorimotor network sculpts the dynamic repertoire of resting state over lifespan

Author:

Sastry Nisha Chetana12,Roy Dipanjan34ORCID,Banerjee Arpan12ORCID

Affiliation:

1. Cognitive Brain Dynamics Laboratory , , NH 8, Manesar, Gurgaon 122052, India

2. National Brain Research Centre , , NH 8, Manesar, Gurgaon 122052, India

3. School of Artificial Intelligence & Data Science , , Jodhpur NH 62, Surpura Bypass Rd, Karwar, Rajasthan 342030, India

4. Centre for Brain Science & Applications, Indian Institute of Technology , , Jodhpur NH 62, Surpura Bypass Rd, Karwar, Rajasthan 342030, India

Abstract

Abstract Temporally stable patterns of neural coordination among distributed brain regions are crucial for survival. Recently, many studies highlight association between healthy aging and modifications in organization of functional brain networks, across various time-scales. Nonetheless, quantitative characterization of temporal stability of functional brain networks across healthy aging remains unexplored. This study introduces a data-driven unsupervised approach to capture high-dimensional dynamic functional connectivity (dFC) via low-dimensional patterns and subsequent estimation of temporal stability using quantitative metrics. Healthy aging related changes in temporal stability of dFC were characterized across resting-state, movie-viewing, and sensorimotor tasks (SMT) on a large (n = 645) healthy aging dataset (18–88 years). Prominent results reveal that (1) whole-brain temporal dynamics of dFC movie-watching task is closer to resting-state than to SMT with an overall trend of highest temporal stability observed during SMT followed by movie-watching and resting-state, invariant across lifespan aging, (2) in both tasks conditions stability of neurocognitive networks in young adults is higher than older adults, and (3) temporal stability of whole brain resting-state follows a U-shaped curve along lifespan—a pattern shared by sensorimotor network stability indicating their deeper relationship. Overall, the results can be applied generally for studying cohorts of neurological disorders using neuroimaging tools.

Funder

Ministry of Youth Affairs and Sports, Government of India

Department of Science and Technology

Publisher

Oxford University Press (OUP)

Subject

Cellular and Molecular Neuroscience,Cognitive Neuroscience

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