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Found 10156 publications. Showing page 1 of 407:

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Year  
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Buried and forgotten: Plastic contamination in an ancient deep-sea fish lineage

Ferreira, Guilherme V.B.; Schmidt, Natascha; Justino, Anne K.S.; Fudge, Douglas S.; Lucena-Frédou, Flávia; Eduardo, Leandro N.; Mincarone, Michael M.

2026

An evaluation of the utility of blood concentration of somatic mutagens to inform germ cell mutagenic hazard

Godschalk, Roger; Brauwers, Bente; Chen, Connie L.; Corvi, Raffaella; Dearfield, Kerry L.; Douglas, George R.; Honarvar, Naveed; Kirkland, David; Curieux, Frank Le; Olsen, Ann-Karin Hardie; Pfuhler, Stefan; Stankowski, Leon F.; White, Paul; Benthem, Jan van; Marchetti, Francesco

2026

Evaluating the role of low-cost sensors in machine learning based European PM2.5 monitoring

Shetty, Shobitha; Hassani, Amirhossein; Hamer, Paul David; Stebel, Kerstin; Salamalikis, Vasileios; Berntsen, Terje Koren; Castell, Nuria; Schneider, Philipp

We evaluate the added value of integrating validated Low-Cost Sensor (LCS) data into a Machine Learning (ML) framework for providing surface PM2.5 estimates over Central Europe at 1 km spatial resolution. The synergistic ML-based S-MESH (Satellite and ML-based Estimation of Surface air quality at High resolution) approach is extended, to incorporate LCS data through two strategies: using validated LCS data as a target variable (LCST) and as an input feature via an inverse distance weighted spatial convolution layer (LCSI). Both strategies are implemented within a stacked XGBoost model that ingests satellite-derived aerosol optical depth, meteorological variables, and CAMS (Copernicus Atmospheric Monitoring Service) regional forecasts. Model performance for 2021–2022 is evaluated against a baseline trained on air quality monitoring stations without any form of LCS integration. Our results indicate that the LCSI approach consistently outperforms both the baseline and LCST models, particularly in urban areas, with RMSE reductions of up to 15–20 %. It also exhibits higher accuracy than the CAMS regional interim reanalysis with a lower annual mean absolute error (MAE) of 2.68 μg/m3 compared to 3.32 μg/m3. SHapley Additive exPlanations based analysis indicates that LCSI information improves both spatial and temporal representativeness, with the LCSI strategy better capturing localized pollution dynamics. However, the LCSI's dependency on the spatial LCS layer limits its ability to capture inter-urban pollution transport in regions with sparse or no LCS data. These findings highlight the value of large-scale sensor networks in addressing spatial coverage gaps in official air quality monitoring stations and advancing high-resolution air quality modeling.

2026

Application of the Comet Assay in Advanced In Vitro Models

Rundén-Pran, Elise; Yamani, Naouale El; Murugadoss, Sivakumar; Sengupta, Tanima; Longhin, Eleonora Marta; Olsen, Ann-Karin Hardie; Honza, Tatiana; Hudecova, Alexandra Misci; McFadden, Erin; Brochmann, Solveig; Ma, Xiaoxiong; Dusinska, Maria

2026

A regulatory perspective on the applicability of NAMs in genotoxicity and carcinogenicity assessment in EU: current practices and future directions

Bossa, Cecilia; Alivernini, Silvia; Andreoli, Cristina; Aquilina, Gabriele; Attias, Leonello; Benfenati, Emilio; Dusinska, Maria; Yamani, Naouale El; Louro, Henriqueta; Marcon, Francesca; Raitano, Giuseppa; Rundén-Pran, Elise; Russo, Maria Teresa; Silva, Maria João; Battistelli, Chiara Laura

New Approach Methodologies (NAMs) are gaining significant momentum globally to reduce animal testing and enhance the efficiency and human relevance of chemical safety assessment. Even with substantial EU commitment from regulatory agencies and the academic community, the full regulatory adoption of NAMs remains a distant prospect. This challenge is further complicated by the fact that the academic world, oriented toward NAMs development, and regulatory agencies, focused on practical application, frequently operate in separate spheres. Addressing this disconnect, the present paper, developed within the European Partnership for the Assessment of Risks from Chemicals (PARC), provides a clear overview of both the available non-animal tests and current evaluation practices for genotoxic and carcinogenic hazard assessment, while simultaneously highlighting existing regulatory needs, gaps, and challenges toward greater human health protection and the replacement of animal testing through NAMs adoption.

The analysis reveals a complex landscape: while the EU is deeply committed to developing and adopting NAMs, as outlined in its Chemical Strategy for Sustainability and supported by initiatives like PARC, prescriptive regulations such as Classification, Labelling and Packaging (CLP) and Registration, Evaluation, Authorisation and Restriction of Chemicals (REACH) still heavily mandate in vivo animal data for hazard classification, particularly for germ cell mutagenicity and carcinogenicity. This reliance creates a “too-short-blanket-problem,” where efforts to reduce animal testing may impact human health protection because of the current in vivo-based classification criteria. In contrast, sectors such as cosmetics and certain European Food Safety Authority (EFSA)-regulated products demonstrate greater flexibility toward progressive integration of NAMs. While the deep mechanistic understanding of genotoxicity and carcinogenicity has significantly advanced the integration of alternatives to animal tests into regulatory chemical hazard assessment, their broader and full implementation faces considerable challenges due to both scientific complexities (i.e., the development and validation of fit-for-purpose NAMs) and existing legislative provisions.

2026

Highly accurate and autonomous programmable platform for providing air pollution data services to drivers and the public – Polish case study

Grochala, Dominik; Paleczek, Anna; Gruszczyński, Sławomir; Wójcikowski, Marek; Pankiewicz, Bogdan; Pietrenko-Dąbrowska, Anna; Kozieł, Sławomir; Cao, Tuan-Vu; Rydosz, Artur

Nitrogen dioxide (NO2) is a well-known air pollutant, mostly elevated by car traffic in cities. To date, small, reliable, cost-efficient multipollutant sensors with sufficient power and accuracy for community-based atmospheric studies are still lacking. The HAPADS (highly accurate and autonomous programmable platforms for providing air pollution data services) platforms, developed and tested in real conditions, can be a possible approach to solving this issue. The developed HAPADS platforms are equipped with three different NO2 sensors (7E4-NO2–5, SGX-7NO2, MICS-2711 MOS) and a combined ambient air temperature, humidity, and pressure sensor (BME280). The platforms were tested during the driving test, which was conducted across various roads, including highways, expressways, and national and regional routes, as well as major cities and the countryside, to analyse the environmental conditions as much as possible (Poland, 2024). The correlation coefficient r was more than 0.8, and RMSE (root mean squared error) was in the 3.3–4.3 μg/m3 range during the calibration process. The results obtained during the driving tests showed R2 of 0.9–1.0, which proves the ability of HAPADS platforms to work in the hard environmental conditions (including high rain and snow, as well as sun and a wide range of temperatures and humidity).

2026

Quantifying the Potential of Digital Innovations to Advance Circular Economy in Consumer and Industrial Goods

Boero, Riccardo; Hernandez, Miguel Las Heras; Bouman, Evert; Guerreiro, Cristina

2025

INQUIRE: Advancing Exposomics through Indoor Environment Research in European Homes, 2025

Nipen, Maja; Froment, Jean Francois; Rostkowski, Pawel; Håland, Alexander; Bohlin-Nizzetto, Pernilla

2025

Low concentrations of cyclic volatile methyl siloxanes in Antarctica

Durham, Jeremy; McNett, Debra; Plotzke, Kathy; Xu, Shihe; Seston, Rita; Nipen, Maja; Bohlin-Nizzetto, Pernilla; Gerhards, Reinhard; Bialik, Robert; Fudala, Katarzyna; Mateev, Dragomir; Dykyi, Evgen

2025

cVMS in the Arctic terrestrial and aquatic environment

Nipen, Maja; Hartz, William Frederik; Schulze, Dorothea; Christensen, Guttorm; Løge, Oda Siebke; Nikiforov, Vladimir; Bohlin-Nizzetto, Pernilla

2025

Miljøeksponering for KMR-stoffer

Nipen, Maja; Bohlin-Nizzetto, Pernilla; Rostkowski, Pawel; Lysberg, Ingeborg Antonsen

2025

cVMS in the Arctic terrestrial and aquatic environment

Nipen, Maja; Hartz, William Frederik; Schulze, Dorothea; Christensen, Guttorm; Løge, Oda Siebke; Nikiforov, Vladimir; Bohlin-Nizzetto, Pernilla

2025

EMEP-CCC: Progress of work

Aas, Wenche; Tørseth, Kjetil

2025

Data produced and management

Murberg, Lise Eder; Aas, Wenche; Fiebig, Markus; Myhre, Cathrine Lund

2025

Preliminary Analysis of Aerosol Size Distribution at Col Margherita

Rossetti, Claudia; Favaro, Eleonora; Barbaro, Elena; Feltracco, Matteo; Gambaro, Andrea; Giovannini, Lorenzo; Doglioni, Giorgio; Cassiani, Massimo; Paolantiono, Marco Di; Rajput, Akanksha; Zardi, Dino; Cairns, Warren Lee Raymond

2025

Black carbon source apportionment and air mass transport effects in urban areas across warm and cold seasons

Hey, Moritz; Minderyte, Agne; Evangeliou, Nikolaos; Byčenkienė, Steigvilė; Stachlewska, Iwona S.

2025

Real-time monitoring of transport-related air and noise pollution in European cities (Net4Cities): Monitoring plan and approach

Poppel, Martine Van; Peters, Jan; Schmitz, Sean; Wegener, Robert; Adam, Max; Pajunoja, Aki; Dusseldorp, Saskia Drossaert van; Pikridas, Michael; Soares, Joana; Pozo, Roberto Sanz; Vanherle, Kris; Schneidemesser, Erika von

2025

Atmospheric microplastics modelling and quantification using Gibbs sampler

Tichy, Ondřej; Evangeliou, Nikolaos; Košík, Václav; Smidl, Václav

2025

Decreasing or increasing pollution in the Mediterranean atmosphere? 16 years of black carbon observations at the Monte Cimone GAW Global Station integrated with FLEXPART and COPERNICUS products

Zanatta, Marco; Bonasoni, Paolo; Cristofanelli, Paolo; Eckhardt, Sabine; Evangeliou, Nikolaos; Magnani, Cecilia; Putero, Davide; Renzi, Laura; Vogel, Franziska

2025

Saharan dust transport event characterization in the Mediterreanean atmosphere using 21 years of in-situ observations

Vogel, F.; Putero, D.; Bonasoni, P.; Cristofanelli, P.; Eckhardt, Sabine; Evangeliou, Nikolaos; Zwaaftink, Christine Groot; Zanatta, M.; Marinoni, A.

2025

Air quality maps of EEA member and cooperating countries for 2023. PM10, PM2.5, O3, NO2, NOx and BaP spatial estimates and their uncertainties

Horálek, Jan; Vlasáková, Leona; Schreiberová, Markéta; Benešová, Nina; Schneider, Philipp; Kurfürst, Pavel; Tognet, Frédéric; Vlček, Ondřej; Školoudová, Lucie

The report provides the annual update of the European air quality concentration maps and population and vegetation exposure estimates for human health related indicators of pollutants PM10 (annual average, 90.4 percentile of daily means), PM2.5 (annual average), ozone (93.2 percentile of maximum daily 8-hour means, peak season average of maximum daily 8-hour means, SOMO35, SOMO10), NO2 (annual average) and benzo(a)pyrene (annual average), and vegetation related ozone indicators (AOT40 for vegetation and for forests) for the year 2023. The report contains also maps of Phytotoxic ozone dose (PODY) for selected crops (wheat, potato and tomato) and trees (spruce and beech) and NOx annual average map for the same year 2023. The trends in exposure estimates in the period 2005-2023 are summarized. The analysis for 2023 is based on the interpolation of the annual statistics of the 2023 observational data reported by the EEA member and cooperating countries and other voluntary reporting countries and stored in the Air Quality e-reporting database, complemented, when needed, with measurements from additional sources. The mapping method is the Regression – Interpolation – Merging Mapping (RIMM). It combines monitoring data, chemical transport model results and other supplementary data using linear regression model followed by kriging of its residuals (residual kriging). The report presents the mapping results and gives an uncertainty analysis of the interpolated maps. It also presents concentration change in 2023 in comparison to the 5-year average 2018-2022 using the difference maps and exposure estimates.

European Topic Centre on Human Health and the Environment (ETC HE)

2025

Interim air quality maps of EEA member and cooperating countries for 2024. PM, O3 and NO2 spatial estimates

Horálek, Jan; Vlasáková, Leona; Schreiberová, Markéta; Schneider, Philipp; Benešová, Nina; Vlček, Ondřej

The report presents interim 2024 maps for PM10 annual average, PM2.5 annual average, O3 indicator peak season average of maximum daily 8-hour means, and NO2 annual average. The maps have been produced based on the 2024 non-validated E2a (UTD) data of the AQ e-reporting database, the CAMS Ensemble Forecast modelling data and other supplementary data. Together with the concentration maps, the inter-annual differences between 5-year average 2019-2023 and 2024 are presented (using the 2019-2023 regular and the 2024 interim maps), as well as basic exposure estimates based on the interim maps.

European Topic Centre on Human Health and the Environment (ETC HE)

2025

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