| Literature DB >> 30008171 |
Paula de Prado Bert1, Elisabet Mae Henderson Mercader1, Jesus Pujol2,3, Jordi Sunyer1,4,5,6, Marion Mortamais7,8,9.
Abstract
PURPOSE OF REVIEW: An emerging body of evidence has raised concern regarding the potentially harmful effects of inhaled pollutants on the central nervous system during the last decade. In the general population, traffic-related air pollution (TRAP) exposure has been associated with adverse effects on cognitive, behavior, and psychomotor development in children, and with cognitive decline and higher risk of dementia in the elderly. Recently, studies have interfaced environmental epidemiology with magnetic resonance imaging to investigate in vivo the effects of TRAP on the human brain. The aim of this systematic review was to describe and synthesize the findings from these studies. The bibliographic search was carried out in PubMed with ad hoc keywords. RECENTEntities:
Keywords: Air pollution; Brain; Cognition; Epidemiological studies; Neuroimaging
Mesh:
Substances:
Year: 2018 PMID: 30008171 PMCID: PMC6132565 DOI: 10.1007/s40572-018-0209-9
Source DB: PubMed Journal: Curr Environ Health Rep ISSN: 2196-5412
Fig. 1Selection process of the articles
Air pollution exposure and MRI-detected brain changes in humans and rats, ordered by year and author
| Author/year | Population | Study design | Air pollution exposure assessment | Neuroimaging data | Findings | |
|---|---|---|---|---|---|---|
| Sample size age (at MRI) cohort | MRI acquisition | Data processing/outcomes | ||||
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| [ | P | Lifetime residency in high-polluted area (Mexico City) for 23 children versus lifetime residency in low-polluted area (Polotitlán) for 13 children. | MRI 1.5 T | Lesions assessment | Prefrontal WMH in 56.5% of the Mexico City children (compared with 7.6% in Polotitlán children). | |
| 7–18 years | T2 and FLAIR | |||||
| WMH | ||||||
| WMH were persistent over time in 3 children followed up during 11 months. | ||||||
| Similar WMH found in 4 of 7 young Mexico City dogs scanned in this study. | ||||||
| [ | P | Lifetime residency in high-polluted area (Mexico City) for 20 children (10 with WMH, 10 without), versus lifetime residency in low-polluted area (Polotitlán) for 10 children. | MRI 1.5 T | Lesions assessment | Children from Polotitlán had significantly more WM volume in temporal and parietal areas than children from Mexico City. | |
| 7–8 years | T2 and FLAIR | |||||
| WMH | ||||||
| ROI-based analysis/volumetric measurements | HV, BG volumes, and amygdala were not significantly different across the three groups. | |||||
| WM, GM, CSF volumes in brain’s lobes, HV, BG, and amygdala volumes. | ||||||
| [ | L | PAHs | MRI 3 T | Whole-brain voxel-based analysis | No correlations between PAHs and measures of cortical thickness. | |
| 7–9 years | 1) Prenatal period (personal air monitoring of the mothers over a 48-h period in the 3rd trimester of pregnancy) | T1-weighted images | ||||
| Birth cohort, NYC | ||||||
| Powerful dose-response relationship between prenatal PAH exposure and subsequent reductions of the WM surface (entire surface of left hemisphere). | ||||||
| Surface morphological measures of GM and WM (index of local volumes). | ||||||
| Postnatal exposure correlated significantly with WM measures in dorsal prefrontal regions bilaterally (independently of prenatal exposure). | ||||||
| 2) Postnatal period (Urinary PAH Metabolites in children) | ||||||
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| [ | C | Weighted annual average of EC and NO2 (marker of road traffic). | MRI 1.5 T | Whole-brain voxel-based analysis | No evident effect on brain anatomy, structure, or membrane metabolism. | |
| 8–12 years | T1-weighted 3D sequence | |||||
| BREATHE study | GM and WM volumes and concentrations, FA, and fMRI signal during task. | However, traffic-related air pollution was related to functional brain changes: | ||||
| DTI | ||||||
| MRS | ||||||
| fMRI | ||||||
| Whole cortex vertex-based analysis | ||||||
| Real measurement of pollutants at the children’s school. | -Resting state | |||||
| Cortical thickness | ||||||
| -Task (ABABABAB block design alternating 4 30-s periods of rest with 4 30-s periods of visual–auditory stimulation) | ROI-based analysis | |||||
| fMRI signal at resting state in 4 functional connectivity maps (Seed regions: MFC, PCC, DFC, and SMA) | ||||||
|
| ||||||
| [ | Airborne copper | MRI 1.5 T | Whole-brain voxel-based analysis | Higher copper exposure is associated with | ||
| T1-weighted 3D sequence | ||||||
| 1) Altered structure of caudate nucleus, 2) delayed maturation of the WM pathways in the caudate nucleus region, and 3) reduction of functional connectivity between the caudate nucleus and the frontal cortex. | ||||||
| Annual level. Real measurement of pollutants at the primary school. | GM and WM volumes and concentrations, FA | |||||
| DTI | ||||||
| MRS | Whole cortex vertex-based analysis | |||||
| fMRI (Resting state) | ||||||
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| Cortical thickness | ||||||
| ROI-based analysis | ||||||
| fMRI signal at resting state in functional connectivity maps (Seed regions: MFC and caudate nucleus) | ||||||
| [ | C | PAHs | MRI 1.5 T | ROI-based analysis/volumetric measurements | Higher exposures to PAHs and BAP were associated with a reduction in the caudate nucleus size. TBV, putamen, and globus pallidum volumes did not differ by PAHs exposure. | |
| 8–12 years | Annual level. Real measurement of pollutants at the primary school. | T1-weighted 3D sequence | ||||
| BREATHE Study | ||||||
| TBV and BG volume (putamen, caudate nucleus, and globus pallidus volumes) | ||||||
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| [ | P | PM 2.5 | MRI 1.5 T | ROI-based analysis/volumetric measurements | Higher PM2.5 was associated with smaller WM volumes (in the total brain, association areas, and CC) even in full adjusted models. | |
| Spatiotemporal model to estimate cumulative PM2.5 exposure (based on air monitoring data, and on participants’ residential addresses) over the 6–7 years preceding MRI. | Standard T1, T2 weighted and FLAIR | |||||
| ≥ 65 years | ||||||
| WHIM Study | TBV, ventricle, GM, and WM volumes (total and in the 4 lobes), CC, HV, and BG volumes | |||||
| GM, ventricular sizes, HV, and BG did not differ by PM2.5 exposures. | ||||||
|
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| [ | C | PM 2.5 | MRI 1 T | Lesions assessment | Higher PM2.5 was associated with smaller TCBV and higher odds of CBI. | |
| ≥ 60 years | Spatiotemporal model to estimate average PM2.5 levels (participants’ residential addresses) over 1 year. | T2 weighted double spin-echo coronal sequences | ||||
| WMH and CBI | No clear pattern of association between PM2.5 and HV, WMH. | |||||
| Framingham Offspring Study | ROI-based analysis/volumetric measurements | |||||
| Associations were no longer significant when adjusted for vascular risk factors (homocysteine, sBP, diabetes mellitus, CVD, history of atrial fibrillation, HT medications, and obesity), but for CBI. | ||||||
| HV and TCBV | ||||||
|
| ||||||
| Near roadway exposure | ||||||
| [ | P | PM 2.5 | MRI 1.5 T | Whole-brain voxel-based analysis | Increased PM2.5 exposure were associated with smaller volumes in both cortical GM (the bilateral superior, middle, and medial frontal gyri) and subcortical WM areas (the largest clusters were in the frontal lobe, with smaller clusters in the temporal, parietal, and occipital lobes). | |
| Spatiotemporal model to estimate cumulative PM2.5 exposure (based on and air monitoring data, and on participants’ residential addresses) over the 3 years preceding MRI. | Standard T1, T2 weighted and FLAIR | |||||
| 71–89 years | GM and WM volumes | |||||
| WHIM Study | ||||||
| No statistically significant associations between PM2.5 exposure and HV or CC. | ||||||
| Larger volumes (thalamus, putamen, globus pallidus, and the posterior insula) were associated with increased PM2.5 exposures | ||||||
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| [ | C | PM 2.5 | MRI 1.5 T/3.0 T | Lesions assessment | No pattern of association between residential proximity to major roads or average PM2.5 and greater burden of small vessel disease or neurodegeneration. | |
| Spatiotemporal model to estimate average PM2.5 levels (participants’ residential addresses) over 1 year. | ||||||
| WMH, cerebral microbleeds | ||||||
| T1, T2 weighted, and FLAIR | ||||||
| ROI-based analysis/volumetric measurements | ||||||
|
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| 74 (12) years | ||||||
| MADRC | BPF | |||||
| Near roadway exposure | ||||||
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| [ | L | PM (collected in Lahore, Pakistan). | MRI 4.7 T | Visual inspection | No changes in the hyperintense signal nor any cortical atrophy of brain hemisphere detectable with MRI (even in the group treated with high PM concentrations that showed obvious selective neuronal loss in the cortical areas and glial activations histopathologically). | |
| 4.5 months | T2 weighted RARE sequence | |||||
| Experimental study | Rats were provided with drinking water containing different concentrations of PM. | |||||
| 3–4 months of exposure before histopathological assessment and MRI | ||||||
| Histopathological assessment: ROIs-based (39 cytoarchitectonally distinct cortical ROIs, 4 caudate/putamen ROIs, and 1 thalamus ROI) | ||||||
Abbreviations: BAP benzo[a]pyrene, BG basal ganglia, BMU body mass index, BPF brain parenchymal fraction, BREATHE Brain Development and Air Pollution Ultrafine Particles in School Children, C cross-sectional, CBI covert brain infarct, CC corpus callosum, CDR Clinical Dementia Rating, CVD cardiovascular disease, DFC dorso frontal cortex, DMN Default Mode Network, DTI Diffusion Tensor imaging, FA fractional anisotropy, FLAIR fluid-attenuated inversion recovery, EC elemental carbon, FU follow-up, GM gray matter, ICV intracranial volume, HV hippocampal volume, HT hypertension, L longitudinal, MADRC Massachusetts Alzheimer’s Disease Research Center, MFC medial frontal cortex, MRI magnetic resonance imaging, MRS magnetic resonance spectroscopy, NO nitrogen dioxide, NYC New York City, P prospective, PAHs polycyclic aromatic hydrocarbons, PCC posterior cingulate cortex, PM particulate matter, ROI region of interest, sBP systolic blood pressure, SMA supplementary motor area, T tesla, TBV total brain volume, TCBV total cerebral brain volume (ratio of brain parenchymal volume/total cranial volume), WM white matter, WMH white matter hyperintensities, WHIM Women’s Health Initiative Memory
Fig. 2Understanding the link between air pollution and cognition: the central role of studies interfacing environmental epidemiology and neuroimaging in humans