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Background: Land Use Regression (LUR) is a popular method to explain and predict spatial contrasts in air pollution concentrations, but LUR models for ultrafine particles, such as particle number concentration (PNC) are especially scarce. Moreover, no models have been previously presented for the lung deposited surface area (LDSA) of ultrafine particles. The additional value of ultrafine particle metrics has not been well investigated due to lack of exposure measurements and models.
Methods: Air pollution measurements were performed in 2011 and 2012 in the eight areas of the Swiss SAPALDIA study at up to 40 sites per area for NO2 and at 20 sites in four areas for markers of particulate air pollution. We developed multi-area LUR models for biannual average concentrations of PM2.5, PM2.5 absorbance, PM10, PMcoarse, PNC and LDSA, as well as alpine, non-alpine and study area specific models for NO2, using predictor variables which were available at a national level. Models were validated using leave-one-out cross-validation, as well as independent external validation with routine monitoring data.
Results: Model explained variance (R(2)) was moderate for the various PM mass fractions PM2.5 (0.57), PM10 (0.63) and PMcoarse (0.45), and was high for PM2.5 absorbance (0.81), PNC (0.87) and LDSA (0.91). Study-area specific LUR models for NO2 (R(2) range 0.52-0.89) outperformed combined-area alpine (R (2) = 0.53) and non-alpine (R (2) = 0.65) models in terms of both cross-validation and independent external validation, and were better able to account for between-area variability. Predictor variables related to traffic and national dispersion model estimates were important predictors.
Conclusions: LUR models for all pollutants captured spatial variability of long-term average concentrations, performed adequately in validation, and could be successfully applied to the SAPALDIA cohort. Dispersion model predictions or area indicators served well to capture the between area variance. For NO2, applying study-area specific models was preferable over applying combined-area alpine/non-alpine models. Correlations between pollutants were higher in the model predictions than in the measurements, so it will remain challenging to disentangle their health effects.
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http://dx.doi.org/10.1186/s12940-016-0137-9 | DOI Listing |
Environ Res
September 2025
Department of Occupational Safety and Health, College of Public Health, China Medical University, Taichung, Taiwan. Electronic address:
Limited research has examined the relationships of co-exposure to air pollutants, temperature, and road traffic noise with chronic kidney disease (CKD) incidence and the interaction between PM and temperature. To address this gap, the present study explored these associations and interactions in Taiwan. A cohort of 3,041 older individuals (aged ≥55 years) was recruited in 2009 and followed until 2019.
View Article and Find Full Text PDFUnlabelled: Repeated exposure to stress disrupts cognitive processes, including attention and working memory. A key mechanism supporting these functions is the ability of neurons to sustain action potential firing, even after a stimulus is no longer present. How stress impacts this persistent neuronal activity is currently unknown.
View Article and Find Full Text PDFVaccine
August 2025
Hipra Scientific, S.L.U. R&D Department, Avda. La Selva 135, 17170 Amer (Girona), Spain.
Avian metapneumovirus (aMPV) infects turkeys and chickens. It replicates primarily in the upper respiratory tract, causing respiratory disease. Animals may also exhibit lower feed and water consumption and weight loss.
View Article and Find Full Text PDFEnviron Sci Technol
August 2025
Department of Civil & Mineral Engineering, University of Toronto, 35 St George Street, Toronto, Ontario M5S 1A4, Canada.
Land use regression (LUR) models assess air pollution exposure but often struggle with transferability (predicting concentrations in areas without measurements) and generalizability (capturing spatial patterns across neighborhoods). This study evaluated transferability and generalizability of Toronto City LUR models for black carbon (BC) and ultrafine particles (UFP) using mobile monitoring data. Models were developed using multiple linear regression (MLR) and XGBoost under three spatial configurations: Toronto City (TC), Toronto City minus a neighborhood (TCM-NB), and neighborhood-specific (NB).
View Article and Find Full Text PDFRapid Commun Mass Spectrom
December 2025
Tarsadia Institute of Chemical Science, Uka Tarsadia University, Bardoli, Gujarat, India.
Rationale: Nitrosamine impurities, such as N-nitroso diethylamine (NDEA), N-nitroso dimethylamine (NDMA), and 1-nitroso piperazine (1-NP), have raised serious health concerns due to their carcinogenic and mutagenic properties. The pharmaceutical industry faces increasing regulatory pressure to monitor these compounds at trace levels. This study addresses the need for a robust analytical method to ensure the safety of lurasidone hydrochloride (LUR), an antipsychotic drug.
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