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Found 10021 publications. Showing page 398 of 401:

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Machine-Learning-Driven Reconstruction of Organic Aerosol Sources across Dense Monitoring Networks in Europe

Jouanny, Adrien; Upadhyay, Abhishek; Jiang, Jianhui; Vasilakos, Petros; Via, Marta; Cheng, Yun; Flueckiger, Benjamin; Uzu, Gaëlle; Jaffrezo, Jean-Luc; Voiron, Céline; Favez, Olivier; Chebaicheb, Hasna; Bourin, Aude; Font, Anna; Riffault, Véronique; Freney, Evelyn; Marchand, Nicolas; Chazeau, Benjamin; Conil, Sébastien; Petit, Jean-Eudes; Rosa, Jesús D. de la; Campa, Ana Sanchez de la; Navarro, Daniel Sanchez-Rodas; Castillo, Sonia; Alastuey, Andrés; Querol, Xavier; Reche, Cristina; Minguillón, María Cruz; Maasikmets, Marek; Keernik, Hannes; Giardi, Fabio; Colombi, Cristina; Cuccia, Eleonora; Gilardoni, Stefania; Rinaldi, Matteo; Paglione, Marco; Poluzzi, Vanes; Massabò, Dario; Belis, Claudio; Grange, Stuart; Hueglin, Christoph; Canonaco, Francesco; Tobler, Anna; Timonen, Hilkka J.; Aurela, Minna; Ehn, Mikael; Stavroulas, Iasonas; Bougiatioti, Aikaterini; Eleftheriadis, Konstantinos; Gini, Maria I.; Zografou, Olga; Manousakas, Manousos-Ioannis; Chen, Gang Ian; Green, David Christopher; Pokorná, Petra; Vodička, Petr; Lhotka, Radek; Schwarz, Jaroslav; Schemmel, Andrea; Atabakhsh, Samira; Herrmann, Hartmut; Poulain, Laurent; Flentje, Harald; Heikkinen, Liine; Kumar, Varun; Gon, Hugo Anne Denier van der; Aas, Wenche; Platt, Stephen Matthew; Yttri, Karl Espen; Salma, Imre; Vasanits, Anikó; Bergmans, Benjamin; Sosedova, Yulia; Necki, Jaroslaw; Ovadnevaite, Jurgita; Lin, Chunshui; Pauraite, Julija; Pikridas, Michael; Sciare, Jean; Vasilescu, Jeni; Belegante, Livio; Alves, Célia; Slowik, Jay G.; Probst-Hensch, Nicole; Vienneau, Danielle; Prévôt, André S. H.; Medbouhi, Aniss Aiman; Banos, Daniel Trejo; Hoogh, Kees de; Daellenbach, Kaspar R.; Krymova, Ekaterina; Haddad, Imad El

Fine particulate matter (PM) poses a major threat to public health, with organic aerosol (OA) being a key component. Major OA sources, hydrocarbon-like OA (HOA), biomass burning OA (BBOA), and oxygenated OA (OOA), have distinct health and environmental impacts. However, OA source apportionment via positive matrix factorization (PMF) applied to aerosol mass spectrometry (AMS) or aerosol chemical speciation monitoring (ACSM) data is costly and limited to a few supersites, leaving over 80% of OA data uncategorized in global monitoring networks. To address this gap, we trained machine learning models to predict HOA, BBOA, and OOA using limited OA source apportionment data and widely available organic carbon (OC) measurements across Europe (2010–2019). Our best performing model expanded the OA source data set 4-fold, yielding 85 000 daily apportionment values across 180 sites. Results show that HOA and BBOA peak in winter, particularly in urban areas, while OOA, consistently the dominant fraction, is more regionally distributed with less seasonal variability. This study provides a significantly expanded OA source data set, enabling better identification of pollution hotspots and supporting high-resolution exposure assessments.

2025

A pooled analysis of host factors that affect nucleotide excision repair in humans

Zheng, Congying; Shaposhnikov, Sergey; Collins, Andrew; Brunborg, Gunnar; Azqueta, Amaya; Langie, Sabine A.S.; Dusinska, Maria; Slyskova, Jana; Vodicka, Pavel; Schooten, Frederik-Jan van; Bonassi, Stefano; Milic, Mirta; Orlow, Irene; Godschalk, Roger

Nucleotide excision repair (NER) is crucial for repairing bulky lesions and crosslinks in DNA caused by exogenous and endogenous genotoxins. The number of studies that have considered DNA repair as a biomarker is limited, and therefore one of the primary objectives of the European COST Action hCOMET (CA15132) was to assemble and analyse a pooled database of studies with data on NER activity. The database comprised 738 individuals, gathered from 5 laboratories that ran population studies using the comet-based in vitro DNA repair assay. NER activity data in peripheral blood mononuclear cells were normalized and correlated with various host-related factors, including sex, age, body mass index (BMI), and smoking habits. This multifaceted analysis uncovered significantly higher NER activity in female participants compared to males (1.08 ± 0.74 vs. 0.92 ± 0.71; P = .002). Higher NER activity was seen in older subjects (>30 years), and the effect of age was most pronounced in the oldest females, particularly those over 70 years (P = .001). Females with a normal BMI (<25 kg/m2) exhibited the highest levels of NER, whereas the lowest NER was observed in overweight males (BMI ≥ 25 kg/m2). No independent effect of smoking was found. After stratification by sex and BMI, higher NER was observed in smoking males (P = .017). The biological implication of higher or lower repair capacity remains unclear; the inclusion of DNA repair as a biomarker in molecular epidemiological trials should elucidate the link between health and disease status.

2025

Ny forskning viser at duftvoks kan være helseskadelig

Håland, Alexander; Platt, Stephen Matthew (interview subjects); Johansen, Emil (journalist)

2025

Microplastic pellets in Arctic marine sediments: a common source or a common process?

Collard, France; Hallanger, Ingeborg G.; Philipp, Carolin; Herzke, Dorte; Schmidt, Natascha; Hotvedt, Ådne; Galtung, Kristin; Rydningen, Tom Arne; Litti, Lucio; Gentili, Giulia; Husum, Katrine

Plastic consumption is increasing, and millions of tonnes of plastic are released into the oceans every year. Plastic materials are accumulating in the marine environment, especially on the seafloor. The Arctic is contaminated with plastics, including microplastics (MPs, <5 mm) but occurrences, concentrations and fate are largely unknown. This study aimed at assessing whether MPs accumulate at greater water depths in the Barents Sea, and close to the Longyearbyen settlement, and at understanding the ubiquity and source of a specific type of collected pellets. Surface sediments were collected at seven stations around Svalbard with a box-corer, and three replicates were taken at each station. MPs were extracted through density separation with saturated saltwater. Many pellets were found, and their composition was assessed by pyrolysis-GC/MS. Procedural blanks were performed using field blanks as samples to assess the overall contamination. The composition of all extracted particles was then analysed by μRaman spectroscopy. On average, 3.61 ± 1.45 MPs/100 g (dw) were found. The sea ice station, after blank correction, was more contaminated and displaying a different profile than the other stations, and the deepest station did not show the highest MP concentrations but rather the opposite. Sediments close to Longyearbyen were not more contaminated than the other stations either. Dark pellets of similar aspect were found at all stations, raising the question about a possible common source or process. These pellets were made of several plastic polymers which varied in proportion for each pellet, suggesting a common process was at the origin of those pellets, potentially marine snow formation.

2025

UV-stråling

Fjæraa, Ann Mari (interview subject); Sire, Jonas Ørbeck (journalist)

2025

Thermodynamic and electron paramagnetic resonance descriptors of TiO2 nanoforms interaction with plasma albumin: The interplay between energetic parameters and nanomaterial's toxicity

Gheorghe, Daniela; Precupas, Aurica; Botea-Petcu, Alina; Sandu, Romica; Teodorescu, Florina; Leonties, Anca Ruxandra; Popa, Vlad Tudor; Matei, Iulia; Ionita, Gabriela; Yamani, Naouale El; Ostermann, Melanie; Sauter, Alexander; Jensen, Keld Alstrup; Cimpan, Mihaela Roxana; Rundén-Pran, Elise; Dusinska, Maria; Tanasescu, Speranta

2025

Designing an ethical and explainable automatic coaching (eCoach) system for community based, persuasive recommendations

Chatterjee, Ayan; Riegler, Michael; Halvorsen, Pål

Abstract This study introduces a community-focused eCoach recommendation system aimed at enhancing physical activity by leveraging demographic data, wearable sensor inputs, and machine learning algorithms to generate both individual and community-based activity recommendations using advice-based collaborative filtering. Existing eCoaching systems largely focus on personalized feedback without incorporating social reinforcement or group-level motivation, creating a gap in leveraging community influence for sustained health behaviors. Our system combines real-time activity tracking through wearable sensors and advice-based collaborative filtering to deliver adaptive recommendations. We collected data from 31 participants (16 using MOX2-5 sensors and 15 from a public Fitbit-based dataset), targeting daily activity levels to generate actionable guidance. Through decision tree classification and SHAP-based interpretability, we achieved a model accuracy of 99.8%, with F1, precision, recall, and MCC metrics confirming robustness across both balanced and imbalanced datasets. Ethical considerations, including privacy, bias mitigation, and informed consent, were integral to our design and implementation. Limitations include potential biases due to sample size and data imbalances, suggesting the need for future validation on independent datasets. This system demonstrates the potential to integrate with real-world healthcare initiatives, offering trust, transparency, and user engagement opportunities to meet public health objectives.

2025

Fant ulovlig stoff – trekkes ikke fra markedet

Bohlin-Nizzetto, Pernilla (interview subject); Tronstad, Live (journalist)

2025

Overview of GeoMIP for CMIP7

Muri, Helene Østlie

2025

Modelling the influence of suburban sprawl vs. compact city development upon road network performance and traffic emissions

Drabicki, Arkadiusz; Grythe, Henrik; Lopez-Aparicio, Susana; Górska, Lidia; Gzylo, Cyryl; Pyzik, Michal

Road traffic externalities are an important consequence of land-use and transport interactions and may be especially induced by their inefficient combinations. In this study, we integrate land-use, transport and emission modelling tools (the LUTEm framework) to assess how suburban expansion vs. inward densification scenarios influence journey parameters, road network performance and traffic emissions. Case-study simulations for Warsaw (Poland) underscore the negative consequences of suburban sprawl development, which are hardly mitigated by additional land-use or transport interventions, such as rebalancing of population-workplace distribution or road capacity reductions. On the other side, compact city development lowers global traffic congestion and emissions, but can also raise the risks of traffic externalities in central city area unless complemented with further interventions such as improved public transport attractiveness. This study aims to enrich the understanding of how integrating the land-use development and transport interventions can ultimately influence travel parameters and reduce urban road traffic externalities.

2025

Er glassflasker tryggere for helsa?

Skaar, Jøran Solnes (interview subject); Kjørstad, Elise (journalist)

2025

Biomass burning emission estimation in the MODIS era: State-of-the-art and future directions

Parrington, Mark; Whaley, Cynthia H.; French, Nancy H. F.; Buchholz, Rebecca R.; Pan, Xiaohua; Wiedinmyer, Christine; Hyer, Edward J.; Kondragunta, Shobha; Kaiser, Johannes; Tomaso, Enza Di; Werf, Guido R. van der; Sofiev, Mikhail; Barsanti, Kelley C.; Silva, Arlindo M. da; Darmenov, Anton S.; Tang, Wenfu; Griffin, Debora; Desservettaz, Maximilien; Carter, Therese (Tess); Paton-Walsh, Clare; Liu, Tianjia; Uppstu, Andreas; Palamarchuk, Julia

Accurate estimates of biomass burning (BB) emissions are of great importance worldwide due to the impacts of these emissions on human health, ecosystems, air quality, and climate. Atmospheric modeling efforts to represent these impacts require BB emissions as a key input. This paper is presented by the Biomass Burning Uncertainty: Reactions, Emissions and Dynamics (BBURNED) activity of the International Global Atmospheric Chemistry project and largely based on a workshop held in November 2023. The paper reviews 9 of the BB emissions datasets widely used by the atmospheric chemistry community, all of which rely heavily on Moderate Resolution Imaging Spectroradiometer (MODIS) satellite observations of fires scheduled to be discontinued at the end of 2025. In this time of transition away from MODIS to new fire observations, such as those from the Visible Infrared Imaging Radiometer Suite (VIIRS) satellite instruments, we summarize the contemporary status of BB emissions estimation and provide recommendations on future developments. Development of global BB emissions datasets depends on vegetation datasets, emission factors, and assumptions of fire persistence and phase, all of which are highly uncertain with high degrees of variability and complexity and are continually evolving areas of research. As a result, BB emissions datasets can have differences on the order of factor 2–3, and no single dataset stands out as the best for all regions, species, and times. We summarize the methodologies and differences between BB emissions datasets. The workshop identified 5 key recommendations for future research directions for estimating BB emissions and quantifying the associated uncertainties: development and uptake of satellite burned area products from VIIRS and other instruments; mapping of fine scale heterogeneity in fuel type and condition; identification of spurious signal detections and information gaps in satellite fire radiative power products; regional modeling studies and comparison against existing datasets; and representation of the diurnal cycle and plume rise in BB emissions.

2025

Record levels of greenhouse gases in the atmosphere. Actions needed now, Greenpeace says

Platt, Stephen Matthew (interview subject); Vereykina, Elizaveta (journalist)

2025

Indian Land Carbon Sink Estimated from Surface and GOSAT Observations

Nayagam, Lorna Raja; Maksyutov, Shamil; Janardanan, Rajesh; Oda, Tomohiro; Tiwari, Yogesh K.; Sreenivas, Gaddamidi; Datye, Amey; Jain, Chaithanya D.; Ratnam, Madineni Venkat; Sinha, Vinayak; Hakkim, Haseeb; Terao, Yukio; Naja, Manish; Ahmed, Md. Kawser; Mukai, Hitoshi; Zeng, Jiye; Kaiser, Johannes; Someya, Yu; Yoshida, Yukio

The carbon sink over land plays a key role in the mitigation of climate change by removing carbon dioxide (CO2) from the atmosphere. Accurately assessing the land sink capacity across regions should contribute to better future climate projections and help guide the mitigation of global emissions towards the Paris Agreement. This study estimates terrestrial CO2 fluxes over India using a high-resolution global inverse model that assimilates surface observations from the global observation network and the Indian subcontinent, airborne sampling from Brazil, and data from the Greenhouse gas Observing SATellite (GOSAT) satellite. The inverse model optimizes terrestrial biosphere fluxes and ocean-atmosphere CO2 exchanges independently, and it obtains CO2 fluxes over large land and ocean regions that are comparable to a multi-model estimate from a previous model intercomparison study. The sensitivity of optimized fluxes to the weights of the GOSAT satellite data and regional surface station data in the inverse calculations is also examined. It was found that the carbon sink over the South Asian region is reduced when the weight of the GOSAT data is reduced along with a stricter data filtering. Over India, our result shows a carbon sink of 0.040 ± 0.133 PgC yr−1 using both GOSAT and global surface data, while the sink increases to 0.147 ± 0.094 PgC yr−1 by adding data from the Indian subcontinent. This demonstrates that surface observations from the Indian subcontinent provide a significant additional constraint on the flux estimates, suggesting an increased sink over the region. Thus, this study highlights the importance of Indian sub-continental measurements in estimating the terrestrial CO2 fluxes over India. Additionally, the findings suggest that obtaining robust estimates solely using the GOSAT satellite data could be challenging since the GOSAT satellite data yield significantly varies over seasons, particularly with increased rain and cloud frequency.

2025

Revisjon av indikatorer for tilstandsvurdering av miljø og økosystem i norske havområder — Gruppen for overvåking av de marine økosystemene

Skern-Mauritzen, Mette; Andersson, Ingvild; Arneberg, Per; Sanchez-Borque, Jorge; Christensen, Kai Håkon; Danielsen, Ida Kristin; Ersvik, Mihaela; Frantzen, Sylvia; Frie, Anne Kirstine Højholt; Frigstad, Helene; Grøsvik, Bjørn Einar; Gundersen, Kjell; Hanssen, Sveinn Are; Heimstad, Eldbjørg Sofie; Husa, Vivian; Jensen, Henning; Jensen, Louise Kiel; Johansson, Josefina; Johnsen, Hanne; Leiknes, Øystein; Lindeman, Ingunn Hoel; Lorentsen, Svein-Håkon; Meeren, Gro Ingleid van der; Moe, Øyvind Grøner; Mørk, Herdis Langøy; Nesse, Steinar; Anker-Nilsen, Tycho; Bohlin-Nizzetto, Pernilla; Nordgård, Ida Kessel; Pettersson, Lasse; Roland, Rune; Schøyen, Merete; Skjerdal, Hilde Kristin; Stene, Kristine Orset; Thorsnes, Terje; Vee, Ida; Wasbotten, Ingar

Havforskningsinstituttet

2025

Hazard characterization of the mycotoxins enniatins and beauvericin to identify data gaps and improve risk assessment for human health

Behr, Anne-Cathrin; Fæste, Christiane Kruse; Azqueta, Amaya; Tavares, Ana M.; Spyropoulou, Anastasia; Solhaug, Anita; Olsen, Ann-Karin Hardie; Vettorazzi, Ariane; Mertens, Birgit; Zegura, Bojana; Streel, Camille; Ndiaye, Dieynaba; Spilioti, Eliana; Dubreil, Estelle; Buratti, Franca Maria; Crudo, Francesco; Eriksen, Gunnar Sundstøl; Snapkov, Igor; Teixeira, João Paulo; Rasinger, Josef; Sanders, Julie; Machera, Kyriaki; Ivanova, Lada; Gaté, Laurent; Hegarat, Ludovic Le; Novak, Matjaz; Smith, Nicola Margareta; Tait, Sabrina; Fraga, Sónia; Hager, Sonja; Marko, Doris; Braeuning, Albert; Louro, Henriqueta; Silva, Maria João; Dirven, Hubert; Dietrich, Jessica

Enniatins (ENNs) and beauvericin (BEA) are cyclic hexadepsipeptide fungal metabolites which have demonstrated antibiotic, antimycotic, and insecticidal activities. The substantial toxic potentials of these mycotoxins are associated with their ionophoric molecular properties and relatively high lipophilicities. ENNs occur extensively in grain and grain-derived products and are considered a food safety issue by the European Food Safety Authority (EFSA). The tolerable daily intake and maximum levels for ENNs in humans and animals remain unestablished due to key toxicological and toxicokinetic data gaps, preventing full risk assessment. Aiming to find critical data gaps impeding hazard characterization and risk evaluation, this review presents a comprehensive summary of the existing information from in vitro and in vivo studies on toxicokinetic characteristics and cytotoxic, genotoxic, immunotoxic, endocrine, reproductive and developmental effects of the most prevalent ENN analogues (ENN A, A1, B, B1) and BEA. The missing information identified showed that additional studies on ENNs and BEA have to be performed before sufficient data for an in-depth hazard characterisation of these mycotoxins become available.

2025

Evaluation of fire emissions for HTAP3 with CAMS GFAS and IFS-COMPO

Kaiser, Johannes; Huijnen, Vincent; Remy, Samuel; Ytre-Eide, Martin Album; Jong, Marc C. de; Zheng, Bo; Wiedinmyer, Christine

2025

Gravity Wave-Induced Perturbations in Lidar Backscatter Profiles above La Réunion (21°S, 55°E)

Ming, Fabrice Chane; Tremoulu, Samuel; Gantois, Dominique; Payen, Guillaume; Sicard, Michael; Khaykin, Sergey; Hauchecorne, Alain; Keckhut, Philippe; Duflot, Valentin

2025

Air Quality and Healthy Ageing: Predictive Modelling of Pollutants using CNN Quantum-LSTM

Naz, Fareena; Fahim, Muhammad; Cheema, Adnan Ahmad; McNiven, Bradley D. E.; Cao, Tuan-Vu; Hunter, Ruth; Duong, Trung Q.

The concept of healthy ageing is emerging and becoming a norm to achieve a high quality of life, reducing healthcare costs and promoting longevity. Rapid growth in global population and urbanisation requires substantial efforts to ensure healthy and supportive environments to improve the quality of life, closely aligned with the principles of healthy ageing. Access to fundamental resources which include quality healthcare services, clean air, green and blue spaces plays a pivotal role in achieving this goal. Air quality, in particular, is a critical factor in achieving healthy ageing targets. However, it necessitates a global effort to develop and implement policies aimed at reducing air pollution, which has severe implications for human health including cognitive impairment and neurodegenerative diseases, while promoting healthier environments such as high quality green and blue spaces for all age groups. Such actions inevitably depend on the current status of air pollution and better predictive models to mitigate the harmful impact of emissions on planetary health and public health. In this work, we proposed a hybrid model referred as AirVCQnet, which combines the variational mode decomposition (VMD) method with a convolutional neural network (CNN) and a quantum long short-term memory (QLSTM) network for the prediction of air pollutants. The performance of the proposed model is analysed on five key pollutants including fine Particulate Matter PM2.5, Nitrogen Dioxide (NO2), Ozone (O3), PM10, and Sulphur Dioxide (SO2), sourced from air quality monitoring station in Northern Ireland, UK. The effectiveness of the proposed model is evaluated by comparing its performance with its equivalent classical counterpart using root mean square error (RMSE), mean absolute error (MAE), and R-squared (R2). The results demonstrate the superiority of the proposed model, achieving a performance gain of up to 14% and validating its robustness, efficiency and reliability by leveraging t.

2025

A framework for advancing independent air quality sensor measurements via transparent data generating process classification

Diez, Sebastiàn; Bannan, Thomas J.; Chacón-Mateos, Miriam; Edwards, Pete M.; Ferracci, Valerio; Kilic, Dogushan; Lewis, Alastair C.; Malings, Carl; Martin, Nicholas A.; Popoola, Olalekan; Rosales, Colleen Marciel F.; Schmitz, Sean; Schneider, Philipp; Schneidemesser, Erika von

We propose operational definitions and a classification framework for air quality sensor-derived data, thereby aiding users in interpreting and selecting suitable data products for their applications. We focus on differentiating independent sensor measurements (ISM) from other data products, emphasizing transparency and traceability. Recommendations are provided for manufacturers, academia, and standardization bodies to adopt these definitions, fostering data product differentiation and incentivizing the development of more robust, reliable sensor hardware.

2025

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