| Literature DB >> 34750260 |
Zhi Li1, Hao Yan2,3,4, Xiao Zhang2,3,4, Shefali Shah1, Guang Yang1, Qiang Chen1, Shizhong Han1,5, Dai Zhang2,3,4,6,7, Daniel R Weinberger1,5,8,9, Weihua Yue2,3,4,7, Hao Yang Tan10,5.
Abstract
Air pollution is a reversible cause of significant global mortality and morbidity. Epidemiological evidence suggests associations between air pollution exposure and impaired cognition and increased risk for major depressive disorders. However, the neural bases of these associations have been unclear. Here, in healthy human subjects exposed to relatively high air pollution and controlling for socioeconomic, genomic, and other confounders, we examine across multiple levels of brain network function the extent to which particulate matter (PM2.5) exposure influences putative genetic risk mechanisms associated with depression. Increased ambient PM2.5 exposure was associated with poorer reasoning and problem solving and higher-trait anxiety/depression. Working memory and stress-related information transfer (effective connectivity) across cortical and subcortical brain networks were influenced by PM2.5 exposure to differing extents depending on the polygenic risk for depression in gene-by-environment interactions. Effective connectivity patterns from individuals with higher polygenic risk for depression and higher exposures with PM2.5, but not from those with lower genetic risk or lower exposures, correlated spatially with the coexpression of depression-associated genes across corresponding brain regions in the Allen Brain Atlas. These converging data suggest that PM2.5 exposure affects brain network functions implicated in the genetic mechanisms of depression.Entities:
Keywords: PM2.5; fine particulate matter; gene–environment interaction; major depressive disorder; polygenic risk
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Year: 2021 PMID: 34750260 PMCID: PMC8609632 DOI: 10.1073/pnas.2109310118
Source DB: PubMed Journal: Proc Natl Acad Sci U S A ISSN: 0027-8424 Impact factor: 11.205