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. 2024 Aug;14(6):307-318.
doi: 10.1089/brain.2023.0072. Epub 2024 Jul 3.

Particulate Matter Exposure and Default Mode Network Equilibrium During Early Adolescence

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Particulate Matter Exposure and Default Mode Network Equilibrium During Early Adolescence

Clara G Zundel et al. Brain Connect. 2024 Aug.

Abstract

Background: Air pollution exposure has been associated with adverse cognitive and mental health outcomes in children, adolescents, and adults, although youth may be particularly susceptible given ongoing brain development. However, the neurodevelopmental mechanisms underlying the associations among air pollution, cognition, and mental health remain unclear. We examined the impact of particulate matter (PM2.5) on resting-state functional connectivity (rsFC) of the default mode network (DMN) and three key attention networks: dorsal attention, ventral attention, and cingulo-opercular. Methods: Longitudinal changes in rsFC within/between networks were assessed from baseline (9-10 years) to the 2-year follow-up (11-12 years) in 10,072 youth (M ± SD = 9.93 + 0.63 years; 49% female) from the Adolescent Brain Cognitive Development (ABCD®) study. Annual ambient PM2.5 concentrations from the 2016 calendar year were estimated using hybrid ensemble spatiotemporal models. RsFC was estimated using functional neuroimaging. Linear mixed models were used to test associations between PM2.5 and change in rsFC over time while adjusting for relevant covariates (e.g., age, sex, race/ethnicity, parental education, and family income) and other air pollutants (O3, NO2). Results: A PM2.5 × time interaction was significant for within-network rsFC of the DMN such that higher PM2.5 concentrations were associated with a smaller increase in rsFC over time. Further, significant PM2.5 × time interactions were observed for between-network rsFC of the DMN and all three attention networks, with varied directionality. Conclusion: PM2.5 exposure was associated with alterations in the development and equilibrium of the DMN-a network implicated in self-referential processing-and anticorrelated attention networks, which may impact trajectories of cognitive and mental health symptoms across adolescence.

Keywords: Developmental biology; Psychiatry; Resting-state networks.

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Conflict of interest statement

While not relevant to the current work, the following are provided in the spirit of full disclosure: J.R.S. has received research support from the National Institutes of Health (NICHD, NIMH, NIEHS, NCATS), the Yung Family Foundation, and PCORI. He has received material support from Myriad and royalties from UpToDate, Springer, and Cambridge University Press. He has consulted with Cerevel, Intracellular Therapeutics, and Otsuka and plans to serve on an advisory board to Boehringer-Ingelheim and Genomind. The other co-authors have no conflicts to disclose.

Figures

FIG. 1.
FIG. 1.
(A) Significant PM2.5 × time interaction on within-network resting-state functional connectivity (rsFC) of the default mode network (DMN). For ease of interpretation, PM2.5 exposure is depicted as high/low groups, based on a median split. (B) Significant main effect of PM2.5 on within-network rsFC of the cingulo-opercular network (CON). Both A and B display the predicted outcomes (i.e., Fischer z-transformed rsFC values), from the fully adjusted (i.e., covariates and other pollutants) linear mixed-effect models. The shaded area represents the confidence limits of the predicted outcomes.
FIG. 2.
FIG. 2.
Significant PM2.5 × time interactions on between-network resting-state functional connectivity (rsFC) of the default mode network (DMN) with the three attention networks. (A) DAN: dorsal attention network. (B) VAN: ventral attention network. (C) CON: cingulo-opercular network. For ease of interpretation, graphs depict PM2.5 exposure as high/low groups, based on a median split, and the predicted outcomes from the fully adjusted (i.e., covariates and other pollutants) linear mixed-effect models (i.e., Fischer z-transformed rsFC values). The shaded area represents the confidence limits of the predicted outcomes.
FIG. 3.
FIG. 3.
(A) Significant PM2.5 × time interaction on between-network resting-state functional connectivity (rsFC) of the cingulo-opercular network (CON) and the ventral attention network (VAN). For ease of interpretation, the graph depicts PM2.5 exposure as high/low groups, based on a median split. (B) Significant main effect of PM2.5 on between-network rsFC of the CON and VAN. Both A and B display the predicted outcomes (i.e., Fischer z-transformed rsFC values), from the fully adjusted (i.e., covariates and other pollutants) linear mixed-effect models. The shaded area represents the confidence limits of the predicted outcomes.

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