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Found 10010 publications. Showing page 399 of 401:

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DNA damage in oral mucosal epithelial cells cultured in complex and xenobiotic-free media: a comparison study

Cabral, Joao Victor; Vodenkova, Sona; Tomasova, Kristyna; Vodickova, Ludmila; Yamani, Naouale El; Rundén-Pran, Elise; Dusinska, Maria; Safanda, Adam; Jirsova, Katerina

Abstract In this study, we evaluated the genomic stability of oral mucosal epithelial cells (OMECs) cultured in complex media (COM) and xenobiotic-free media (XF) to assess their potential clinical application for limbal stem cell deficiency (LSCD) treatments. OMECs serve as a promising autologous cell source for bilateral LSCD treatment, offering an alternative to limbal epithelial cells (LECs). However, genomic integrity is crucial to ensure the long-term success of transplanted cells. We performed micronucleus (MNi) tests and comet assays to compare DNA damage in OMECs cultured in both media types. The results indicated no significant differences in cell morphology, viability, or size between the two conditions. The MNi frequency was similar, with 5.67 and 6.17 MNi per 1,000 cells in COM and XF conditions, respectively. Comet assay results showed low levels of strand breaks (SBs) and oxidized DNA lesions in both media, with XF showing a slightly lower, albeit statistically insignificant, percentage of tail DNA for net Fpg-sensitive sites. Our findings suggest that OMECs can be effectively cultivated in either COM or XF media without inducing significant DNA damage, supporting the potential use of XF media in clinical settings to reduce contamination risks. This study underscores the importance of genomic stability in cultured cells for ocular surface transplantation, contributing valuable insights into optimizing culture conditions for safer and more effective clinical applications.

2025

Lufktvalitetsmålinger i omgivelsene til Hydro Årdal. Måling av svevestøv, arsen og nikkel i kalenderåret 2024

Hak, Claudia; Weydahl, Torleif; Amundsen, Filip; Uggerud, Hilde Thelle; Vadset, Marit; Andresen, Erik

NILU har på oppdrag fra Hydro Aluminium AS Årdal Metallverk utført målinger av svevestøv (PM2.5, PM10), arsen (As), nikkel (Ni) og gassformig fluorid (HF) i omgivelsesluft i Øvre Årdal. Målingene pågikk i perioden 12. januar 2024 – 2. januar 2025 ved Årdal VGS. Konsentrasjonene av de målte komponentene var under de individuelle grenseverdier, målsettingsverdier og luftkvalitetskriterier i måleperioden. Vurderinger rundt spredningsberegningene fra 2021 og måleresultatene fra 2024 viser godt samsvar mellom beregninger og målinger for As, mens beregnet Ni er overestimert sammenlignet med målingene. For svevestøv er beregningene i finfraksjonen PM2.5 litt underestimert sammenlignet med målingene, for PM10 samsvarer beregningene godt med hva som er målt.

NILU

2025

Lanternfish as bioindicator of microplastics in the deep sea: A spatiotemporal analysis using museum specimens

Ferreira, Guilherme V.B.; Justino, Anne K.S.; Martins, Júlia R.; Eduardo, Leandro Nolé; Schmidt, Natascha; Albignac, Magali; Braga, Adriana C.; Costa, Paulo A. S.; Fischer, Luciano Gomes; Halle, Alexandra ter; Bertrand, Arnaud; Lucena-Fredou, Flavia; Mincarone, Michael M.

2025

Datarapport: Analyse av gadolinium, Komp-540, ioheksol, jod og acetat i miljøprøver. DNV-prosjekt: Overvåking utenfor Ramslandsvågen 2024

Pfaffhuber, Katrine Aspmo; Skaar, Jøran Solnes; Davanger, Kirsten; Rostkowski, Pawel; Gundersen, Hans; Vadset, Marit; Bjørneby, Stine Marie

NILU

2025

Predicting the student's perceptions of multi-domain environmental factors in a Norwegian school building: Machine learning approach

Alam, Azimil Gani; Bartonova, Alena; Høiskar, Britt Ann Kåstad; Fredriksen, Mirjam; Sharma, Jivitesh; Mathisen, Hans Martin; Yang, Zhirong; Gustavsen, Kai; Hart, Kent; Fredriksen, Tore; Cao, Guangyu

Poor Indoor Environmental Quality (IEQ) in schools significantly impacts students’ well-being, learning capabilities, and health. Perceived dissatisfaction rates (PD%) among students often remain high, even when indoor environmental variables appear well-controlled. This study aims to predict perceived dissatisfaction rates (PD%) across multi-domain environmental factors—thermal, acoustic, visual, and indoor air quality (IAQ)—using machine learning (ML) models. The research integrates sensor-based environmental measurements, outdoor weather data, building parameters, and 1437 student survey responses collected from three classrooms in a Norwegian school across multiple seasons. Statistical tests were used to pre-select relevant input variables, followed by the development and evaluation of multiple ML algorithms. Among the tested ML models, Random Forest (RF) demonstrated the highest predictive accuracy for PD%, outperforming multi-linear regression (MLR) and decision trees (DT), with R² values up to 0.91 for overall IEQ dissatisfaction (PDIEQ%). SHAP analysis revealed key predictors: CO₂ levels, VOCs, humidity, temperature, solar radiation, and room window orientation. IAQ, thermal comfort, and acoustic environment were the most influential factors affecting students' perceived well-being. Despite limitations as implementation in building level scale, the study demonstrates the feasibility of deploying predictive ML models under real-world constraints for improving IEQ monitoring system. The findings support practical strategies for adaptive indoor environmental management, particularly in educational settings, and provide a replicable framework for future research. Future research can expand to other climates, buildings, measurements, occupant levels, and ML training optimization.

2025

Let’s Investigate Methane for Climate Action

Houweling, Sander; Petrescu, Roxana; Zaidi, Mekky; Roeckmann, Thomas; Paris, Jean-Daniel; Sachs, Torsten; Aalto, Tuula; Gloor, Manuel; Boesch, Hartmut; Stohl, Andreas; Gon, Hugo Denier van der; Saunois, Marielle; Thompson, Rona Louise; Gromov, Sergey; Hoglund-Isaksson, Lena; Koffi, Ernest

2025

How idling and maneuvering affect air quality: Case study of school commutes

Grythe, Henrik; Nicińska, Anna; Drabicki, Arkadiusz; Santos, Gabriela Sousa

2025

Evolving trends in application of low-cost air quality sensor networks: challenges and future directions

Bagkis, Evangelos; Hassani, Amirhossein; Schneider, Philipp; DeSouza, Priyanka; Shetty, Shobitha; Kassandros, Theodosios; Salamalikis, Vasileios; Castell, Nuria; Karatzas, Kostas; Ahlawat, Ajit; Khan, Jibran

Abstract Low-cost air quality sensors (LCS) are increasingly used to complement traditional air quality monitoring yet concerns about their accuracy and fitness-for-purpose persist. This scoping review investigates topics, methods, and technologies in the application of LCS networks in recent years that are gaining momentum, focusing on LCS networks (LCSN) operation, drone-based and mobile monitoring, data fusion/assimilation, and community engagement. We identify several key challenges remaining. A major limitation is the absence of unified performance metrics and cross-validation methods to compare different LCSN calibration and imputation techniques and meta-analyses. LCSN still face challenges in effectively sharing and interpreting data due to a lack of common protocols and standardized definitions, which can hinder collaboration and data integration across different systems. In mobile monitoring, LCS siting, orientation, and platform speed are challenges to data consistency of different LCS types and limit the transferability of static calibration models to mobile settings. For drone-based monitoring, rotor downwash, LCS placement, flight pattern, and environmental variability complicate accurate measurements. In integrating LCS data with air quality models or data assimilation, realistic uncertainty quantification, ideally at the individual measurement level, remains a major obstacle. Finally, citizen science initiatives often encounter motivational, technological, economic, societal, and regulatory barriers that hinder their scalability and long-term impact.

2025

The role of the tropical carbon balance in determining the large atmospheric CO2 growth rate in 2023

Feng, Liang; Palmer, Paul I.; Smallman, Luke; Xiao, Jingfeng; Cristofanelli, Paolo; Hermansen, Ove; Lee, John; Labuschagne, Casper; Montaguti, Simonetta; Noe, Steffen M.; Platt, Stephen Matthew; Ren, Xinrong; Steinbacher, Martin; Xueref-Remy, Irène

Abstract. The global annual mean atmospheric CO2 growth rate in 2023 was one of the highest since records began in 1958, comparable to values recorded during previous major El Niño events. We do not fully understand this anomalous growth rate, although a recent study highlighted the role of boreal North American forest fires. We use a Bayesian inverse method to interpret global-scale atmospheric CO2 data from NASA's Orbiting Carbon Observatory (OCO-2). The resulting a posteriori CO2 flux estimates reveal that from 2022 to 2023, the biggest changes in CO2 fluxes of net biosphere exchange (NBE) – for which positive values denote a flux to the atmosphere – were over the land tropics. We find that the largest NBE increase is over eastern Brazil, with small increases over southern Africa and Southeast Asia. We also find significant increases over southeastern Australia, Alaska, and western Russia. A large NBE increase over boreal North America, due to fires, is driven by our a priori inventory, informed by independent data. The largest NBE reductions are over western Europe, the USA, and central Canada. Our NBE estimates are consistent with gross primary production estimates inferred from satellite observations of solar-induced fluorescence and from satellite observations of vegetation greenness. We find that warmer temperatures in 2023 explain most of the NBE change over eastern Brazil, with hydrological changes more important elsewhere across the tropics. Our results suggest that the ongoing environmental degradation of the Amazon is now playing a substantial role in increasing the global atmospheric CO2 growth rate.

2025

Burning of woody debris dominates fire emissions in the Amazon and Cerrado

Forkel, Matthias; Wessollek, Christine; Huijnen, Vincent; Andela, Niels; Laat, Adrianus de; Kinalczyk, Daniel; Marrs, Christopher; Wees, Dave van; Bastos, Ana; Ciais, Philippe; Fawcett, Dominic; Kaiser, Johannes; Klauberg, Carine; Kutchartt, Erico; Leite, Rodrigo V.; Li, Wei; Silva, Carlos; Sitch, Stephen; Souza, Jefferson Goncalves De; Zaehle, Sönke; Plummer, Stephen

2025

Critical review of the atmospheric composition observing capabilities for monitoring and forecasting

Eckman, Richard S.; Tanimoto, Hiroshi; Petropavlovskikh, Irina; Simpson, Isobel; Kazadzis, Stelios; Tørseth, Kjetil; Oda, Tomohiro; Lambert, Jean-Christopher; Houweling, Sander; Lakkala, Kaisa; Geddes, Jeffrey; Walker, John; Cooper, Owen R.; Weele, Michiel Van; Moreno, Sergi; Dulguerov, Leilani; Cui, Yuyan; Tarasova, Oksana; Turnbull, John; Thompson, Rona Louise; Zhou, Lihang

WMO

2025

Climate change rivals fertilizer use in driving soil nitrous oxide emissions in the northern high latitudes: Insights from terrestrial biosphere models

Pan, Naiqing; Tian, Hanqin; Shi, Hao; Pan, Shufen; Canadell, Josep G.; Chang, Jinfeng; Ciais, Philippe; Davidson, Eric A.; Hugelius, Gustaf; Ito, Akihiko; Jackson, Robert B.; Joos, Fortunat; Lienert, Sebastian; Millet, Dylan B.; Olin, Stefan; Patra, Prabir K.; Thompson, Rona Louise; Vuichard, Nicolas; Wells, Kelley C.; Wilson, Chris; You, Yongfa; Zaehle, Sönke

Nitrous oxide (N2O) is the most important stratospheric ozone-depleting agent based on current emissions and the third largest contributor to increased net radiative forcing. Increases in atmospheric N2O have been attributed primarily to enhanced soil N2O emissions. Critically, contributions from soils in the Northern High Latitudes (NHL, >50°N) remain poorly quantified despite their exposure to rapid rates of regional warming and changing hydrology due to climate change. In this study, we used an ensemble of six process-based terrestrial biosphere models (TBMs) from the Global Nitrogen/Nitrous Oxide Model Intercomparison Project (NMIP) to quantify soil N2​O emissions across the NHL during 1861–2016. Factorial simulations were conducted to disentangle the contributions of key driving factors, including climate change, nitrogen inputs, land use change, and rising atmospheric CO2 concentration​, to the trends in emissions. The NMIP models suggests NHL soil N2O emissions doubled from 1861 to 2016, increasing on average by 2.0 ± 1.0 Gg N/yr (p

2025

Investigating climate change impacts on PCB-153 exposure in Arctic food webs using the Nested Exposure Model

Krogseth, Ingjerd Sunde; Routti, Heli; Breivik, Knut; Eckhardt, Sabine; Eulaers, Igor; Dietze, Jörn Lukas Franz; Decristoforo, Gregor; Harju, Mikael; Wania, Frank

2025

UV-degradation is a key driver of the fate and impacts of marine plastics. How can laboratory experiments be designed to effectively inform risk assessment?

Hernandez, Laura M.; Howarth-Forster, Lucy; Sørensen, Lisbet; Booth, Andy; Vidal, Alice; Tufenkji, Nathalie; Sempéré, Richard; Schmidt, Natascha

Marine plastic litter is subject to different abiotic and biotic forces that lead to its degradation, the main driver being UV-induced photodegradation. Since UV-exposure leads to both physical and chemical degradation of plastic, leading to a release of micro- and nanoplastics as well as leaching of chemicals and degradation products – it is expected to have radical impacts on plastics fate and effects in the marine environment. The number of laboratory studies investigating the mechanisms of plastic UV-degradation in seawater has increased significantly in the past 10 years, but are the exposures designed in a manner that allow observations to be extrapolated to environmental fate? Most studies to date focus on quantifying plastic fragmentation and surface changes, but is this relevant for impact assessments? Here, we provide a review of the current scientific literature on UV-degradation of plastic under marine conditions. Plastic fragmentation processes and surface changes as well as implications of UV-degradation of plastics on additive leaching and the toxicity of UV-weathered versus non-weathered plastics are highlighted. Furthermore, experimental set-ups are critically inspected and recommendations for future studies are issued.

Elsevier

2025

Are ingredients of personal care products likely to undergo long-range transport to remote regions?

Vecchiato, Marco; Breivik, Knut

Personal care products (PCPs) contain contaminants of emerging concern. Despite increasing reports of their presence in polar regions, the behavior of PCP ingredients under cold environmental conditions remains poorly understood. Snow collected around Villum Research Station at Station Nord, Greenland, between December 2018 and June 2019 was extracted in a stainless steel clean-room and analyzed for seven fragrance materials, four organic UV-filters and an antioxidant using gas chromatography-tandem mass spectrometry. All twelve target PCPs were detected, with elevated concentrations during two sampling events potentially tied to air mass transport from northern Europe and the northern coasts of Russia. To contextualize the presence of these PCP chemicals in high Arctic snow, we estimated their (i) partitioning properties as a function of temperature, (ii) equilibrium phase distribution and dominant deposition processes in the atmosphere at temperatures above and below freezing, and (iii) potential for long-range environmental transport (LRET). Even though most PCPs are deemed to be gas phase chemicals predominantly deposited as vapors, rapid atmospheric degradation is expected to limit their LRET. On the other hand, the less volatile octocrylene is expected to be sorbed to atmospheric particles, removed via wet and dry particle deposition, and possibly exhibit a higher potential for LRET by being protected from attack by photooxidants. The contrast between consistent detection of PCP chemicals in high Arctic snow and relatively low estimated LRET potential emphasizes the need for further research on their real-world atmospheric behavior under cold conditions.

2025

Forecasting and analysing wildfire plumes in the European atmosphere, demonstrated by the case of Canadian wildfire plumes in June 2025

Eckhardt, Sabine; Evangeliou, Nikolaos; Sollum, Espen; Stebel, Kerstin; Kaiser, Johannes; Myhre, Cathrine Lund; Murberg, Lise Eder; Janicka, Lucja; Stachlewska, Ivona

2025

Methane emissions from the Nord Stream subsea pipeline leaks

Harris, Stephen; Schwietzke, Stefan; France, James L.; Salinas, Nataly Velandia; Fernandez, Tania Meixus; Randles, Cynthia; Guanter, Luis; Irakulis-Loitxate, Itziar; Calcan, Andreea; Aben, Ilse; Abrahamsson, Katarina; Balcombe, Paul; Berchet, Antoine; Biddle, Louise C.; Bittig, Henry C.; Böttcher, Christian; Bouvard, Timo; Broström, Göran; Bruch, Valentin; Cassiani, Massimo; Chipperfield, Martyn P.; Ciais, Philippe; Damm, Ellen; Dammers, Enrico; Gon, Hugo Denier van der; Dogniaux, Matthieu; O'Dowd, Emily; Dupouy, François; Eckhardt, Sabine; Evangeliou, Nikolaos; Feng, Wuhu; Jia, Mengwei; Jiang, Fei; Kaiser-weiss, Andrea; Kamoun, Ines; Kerridge, Brian J.; Lampert, Astrid; Lana, José; Li, Fei; Maasakkers, Joannes D.; Maclean, Jean-Philippe W.; Mamtimin, Buhalqem; Marshall, Julia; Mauger, Gédéon; Mekkas, Anouar; Mielke, Christian; Mohrmann, Martin; Moore, David P.; Nanni, Ricardo; Pätzold, Falk; Pison, Isabelle; Pisso, Ignacio; Platt, Stephen Matthew; Préa, Raphaël; Queste, Bastien Y.; Ramonet, Michel; Rehder, Gregor; Remedios, John J; Reum, Friedemann; Roiger, Anke; Schmidbauer, Norbert; Siddans, Richard; Sunkisala, Anusha; Thompson, Rona Louise; Varon, Daniel J.; Ventres, Lucy J.; Chris, Wilson; Zhang, Yuzhong

The amount of methane released to the atmosphere from the Nord Stream subsea pipeline leaks remains uncertain, as reflected in a wide range of estimates1,2,3,4,5,6,7,8,9,10,11,12,13,14,15,16,17,18. A lack of information regarding the temporal variation in atmospheric emissions has made it challenging to reconcile pipeline volumetric (bottom-up) estimates1,2,3,4,5,6,7,8 with measurement-based (top-down) estimates8,9,10,11,12,13,14,15,16,17,18. Here we simulate pipeline rupture emission rates and integrate these with methane dissolution and sea-surface outgassing estimates9,10 to model the evolution of atmospheric emissions from the leaks. We verify our modelled atmospheric emissions by comparing them with top-down point-in-time emission-rate estimates and cumulative emission estimates derived from airborne11, satellite8,12,13,14 and tall tower data. We obtain consistency between our modelled atmospheric emissions and top-down estimates and find that 465 ± 20 thousand metric tons of methane were emitted to the atmosphere. Although, to our knowledge, this represents the largest recorded amount of methane released from a single transient event, it is equivalent to 0.1% of anthropogenic methane emissions for 2022. The impact of the leaks on the global atmospheric methane budget brings into focus the numerous other anthropogenic methane sources that require mitigation globally. Our analysis demonstrates that diverse, complementary measurement approaches are needed to quantify methane emissions in support of the Global Methane Pledge19.

2025

Environmental sustainability of urban expansion: Implications for transport emissions, air pollution, and city growth

Lopez-Aparicio, Susana; Grythe, Henrik; Drabicki, Arkadiusz; Chwastek, Konrad; Tobola, Kamila; Górska-Niemas, Lidia; Kierpiec, Urszula; Markelj, Miha; Strużewska, Joanna; Kud, Bartosz; Santos, Gabriela Sousa

This study examines the environmental impacts of urban growth in Warsaw since 2006 and models the implications of future urban development for traffic pollutant emissions and pollution levels. Our findings demonstrate that, over the past two decades, urban sprawl has resulted in decreases in accessibility to public transport, social services, and natural areas. We analyse CO2 traffic emissions, NO2 concentrations, and population exposure across urban areas in future scenarios of further sprawling or alternative compacting land-use development. Results indicate that a compact future scenario reduces transport CO2 emissions and urban NO2 levels, though increases in population density raise exposure to air pollution. A sprawl future scenario increases CO2 and NOx emissions due to longer commutes and congestion, and NO2 levels increase up to 25% in parts of the city. Several traffic abatement strategies were simulated, and in all simulations a compact city consistently yields the largest reductions in CO2 emissions and NO2 levels, implying that the best abatement strategy for combating negative consequences of sprawl is to reduce sprawling. In both city layouts, network-wide improvements of public transport travel times gave significantly reduced emissions. Combined, our findings highlight the importance of co-beneficial urban planning strategies to balance CO2 emissions reduction, and air pollution exposure in expanding cities.

2025

Utslipp til luft ved Miljø Norge AS. Målinger av PFAS og støv

Halvorsen, Helene Lunder; Celentano, Samuel; Hanssen, Linda; Hartz, William Frederik; Berglen, Tore Flatlandsmo

NILU

2025

Det svarte fotballparadokset

Herzke, Dorte (interview subject); Larsen, Christiane Jordheim (journalist)

2025

Potato plant disease detection: leveraging hybrid deep learning models

Sinamenye, Jackson Herbert; Chatterjee, Ayan; Shrestha, Raju

Agriculture, a crucial sector for global economic development and sustainable food production, faces significant challenges in detecting and managing crop diseases. These diseases can greatly impact yield and productivity, making early and accurate detection vital, especially in staple crops like potatoes. Traditional manual methods, as well as some existing machine learning and deep learning techniques, often lack accuracy and generalizability due to factors such as variability in real-world conditions. This study proposes a novel approach to improve potato plant disease detection and identification using a hybrid deep-learning model, EfficientNetV2B3+ViT. This model combines the strengths of a Convolutional Neural Network - EfficientNetV2B3 and a Vision Transformer (ViT). It has been trained on a diverse potato leaf image dataset, the “Potato Leaf Disease Dataset”, which reflects real-world agricultural conditions. The proposed model achieved an accuracy of 85.06, representing an 11.43 improvement over the results of the previous study. These results highlight the effectiveness of the hybrid model in complex agricultural settings and its potential to improve potato plant disease detection and identification.

2025

Non-Target Screening of Chemicals of Emerging Concern in Marine Mammals in the Nordic Environment

Zhu, Linyan; Rehnstam, Svante; Ahrens, Lutz; Harju, Mikael; Rostkowski, Pawel; Søndergaard, Jens; Vorkamp, Katrin

2025

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