48 results on '"Lakes, T."'
Search Results
2. Environmental exposure assessment in the German National Cohort (NAKO)
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Wolf, K, primary, Schikowski, T, additional, Dallavalle, M, additional, Niedermayer, F, additional, Bolte, G, additional, Lakes, T, additional, Moebus, S, additional, Schneider, A, additional, Peters, A, additional, and Hoffmann, B, additional
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- 2023
- Full Text
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3. The impact of armed conflict and forced migration on urban expansion in Goma: Introduction to a simple method of satellite-imagery analysis as a complement to field research
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Pech, L. and Lakes, T.
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- 2017
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4. Factors that are perceived as supporting or hindering active school travel (AST): go-along interviews with primary school children and their parents
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Schicketanz, Juliane, Kabisch, Sigrun, Bagoly-Simó, P., Lakes, T., Schicketanz, Juliane, Kabisch, Sigrun, Bagoly-Simó, P., and Lakes, T.
- Abstract
Children’s school journeys can provide a daily source of physical activity, social interaction, and independence. Many studies focus on quantitative analyses of factors influencing active school travel (AST) from an adult-centric perspective. This study analyses children’s and adults’ perspectives on school travel behaviour and route perceptions using qualitative walking interviews. We conducted 14 go-along interviews with primary school children and their parents along different routes to school in Leipzig, Germany. We transcribed the interviews, analysed the factors perceived to support or hinder AST and mapped the route perceptions. The results of our study provide detailed insights into individual, family and route environment-related factors of AST. Perceived traffic safety along the routes was most relevant for all parents we interviewed. The other factors differed according to the mode of transport and accompaniment. Children who regularly walk to school report on numerous positively perceived places, e.g. associated with social interaction, play, and hiding activities. Our findings suggest that enabling children to gain positive experiences along their routes might be a chance to increase active and independent school travel.
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- 2023
5. Raum-zeitliche Exploration von COVID-19 Daten und lokalen Risikofaktoren in Berlin: am Beispiel des Bezirks Neukölln
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Butler, J, additional, Schmitz, T, additional, Lambio, C, additional, Manafa, G, additional, Savaskan, N, additional, and Lakes, T, additional
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- 2022
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6. How to derive spatial agents: A mixed-method approach to model an elderly population with scarce data
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Haacke, H.C., Enßle, F., Haase, Dagmar, Lakes, T., Haacke, H.C., Enßle, F., Haase, Dagmar, and Lakes, T.
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Information about the spatial patterns of residents is essential, especially when elderly people are involved, as their action range is confined to their residential location. Since knowledge about patterns of elderly people in cities is limited, this paper formulates steps for the initialisation of an agent-based model, combined with different data sources. The first step is to identify different types of elderly people using cluster analysis, and then the clusters are expanded into agent typologies with behaviour rules, which form the basis for an artificial population. The clusters are derived based on survey data and then analysed and modified using insights from census data and expert interviews. The agents' relocation behaviour is estimated based on literature research, expert interviews and a survey. The spatial information of the agents is added with a spatial microsimulation. The resulting artificial population presents the real population well and can be used in an empirically based data-driven agent-based model.
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- 2022
7. Uncovering land-use dynamics driven by human decision-making – A combined model approach using cellular automata and system dynamics
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Lauf, S., Haase, D., Hostert, P., Lakes, T., and Kleinschmit, B.
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- 2012
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8. On foot or by car: what determines children’s active school travel?
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Schicketanz, Juliane, Röder, Stefan, Herberth, Gunda, Kabisch, Sigrun, Lakes, T., Schicketanz, Juliane, Röder, Stefan, Herberth, Gunda, Kabisch, Sigrun, and Lakes, T.
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Children’s active school travel can provide a daily source of physical activity, yet the number of children walking or biking to school is decreasing worldwide. This study analyses children’s active school travel, its individual, family, socioeconomic and environmental determinants and spatial pattern in Leipzig, Germany. We evaluated the school travel behaviour of 217 eight-year-olds from a prospective birth cohort study called LINA (Lifestyle and Environmental Factors and their Influence on Newborns Allergy Risk). Variables from the LINA questionnaire were combined with data from administrative bodies. We applied logistic regressions to identify the determinants of active travel. Our results show that active school travel decreases from city centre to suburban areas, and that route length, perceived traffic and the residential environment have the greatest influence on which mode of travel is selected. Our findings enable us to suggest improvements in school district delineation in suburban areas that would facilitate active travel.
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- 2021
9. Are urban material gradients transferable between areas?
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Ji, C., Heiden, U., Lakes, T., Feilhauer, Hannes, Ji, C., Heiden, U., Lakes, T., and Feilhauer, Hannes
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Urban areas contain a complex mixture of surface materials resulting in mixed pixels that are challenging to handle with conventional mapping approaches. In particular, for spaceborne hyperspectral images (HSIs) with sufficient spectral resolution to differentiate urban surface materials, the spatial resolution of 30 m (e.g. EnMAP HSIs) makes it difficult to find the spectrally pure pixels required for detailed mapping of urban surface materials. Gradient analysis, which is commonly used in ecology to map natural vegetation consisting of a complex mixture of species, is therefore a promising and practical tool for pattern recognition of urban surface material mixtures. However, the gradients are determined in a data-driven manner, so analysis of their spatial transferability is urgently required. We selected two areas—the Ostbahnhof (Ost) area and the Nymphenburg (Nym) area in Munich, Germany—with simulated EnMAP HSIs and material maps, treating the Ost area as the target area and the Nym area as the well-known area. Three gradient analysis approaches were subsequently proposed for pattern recognition in the Ost area for the cases of (i) sufficient samples collected in the Ost area; (ii) some samples in the Ost area; and (iii) no samples in the Ost area. The Ost samples were used to generate an ordination space in case (i), while the Nym samples were used to create the ordination space to support the pattern recognition of the Ost area in cases (ii) and (iii). The Mantel statistical results show that the sample distributions in the two ordination spaces are similar, with high confidence (the Mantel statistics are 0.995 and 0.990, with a significance of 0.001 in 999 free permutations of the Ost and Nym samples). The results of the partial least square regression models and 10-fold cross-validation show a strong relationship (the calculation-validation values on the first gradient among the three approaches are 0.898, 0.892; 0.760, 0.743; and 0.860, 0.836, and those o
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- 2021
10. Solar photovoltaic module detection using laboratory and airborne imaging spectroscopy data
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Ji, C., Bachmann, M., Esch, T., Feilhauer, Hannes, Heiden, U., Heldens, W., Hueni, A., Lakes, T., Metz-Marconcini, A., Schroedter-Homscheidt, M., Weyand, S., Zeidler, J., Ji, C., Bachmann, M., Esch, T., Feilhauer, Hannes, Heiden, U., Heldens, W., Hueni, A., Lakes, T., Metz-Marconcini, A., Schroedter-Homscheidt, M., Weyand, S., and Zeidler, J.
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Over the past decades, solar panels have been widely used to harvest solar energy owing to the decreased cost of silicon-based photovoltaic (PV) modules, and therefore it is essential to remotely map and monitor the presence of solar PV modules. Many studies have explored on PV module detection based on color aerial photography and manual photo interpretation. Imaging spectroscopy data are capable of providing detailed spectral information to identify the spectral features of PV, and thus potentially become a promising resource for automated and operational PV detection. However, PV detection with imaging spectroscopy data must cope with the vast spectral diversity of surface materials, which is commonly divided into spectral intra-class variability and inter-class similarity. We have developed an approach to detect PV modules based on their physical absorption and reflection characteristics using airborne imaging spectroscopy data. A large database was implemented for training and validating the approach, including spectra-goniometric measurements of PV modules and other materials, a HyMap image spectral library containing 31 materials with 5627 spectra, and HySpex imaging spectroscopy data sets covering Oldenburg, Germany. By normalizing the widely used Hydrocarbon Index (HI), we solved the intra-class variability caused by different detection angles, and validated it against the spectra-goniometric measurements. Knowing that PV modules are composed of materials with different transparencies, we used a group of spectral indices and investigated their interdependencies for PV detection with implementing the image spectral library. Finally, six well-trained spectral indices were applied to HySpex data acquired in Oldenburg, Germany, yielding an overall PV map. Four subsets were selected for validation and achieved overall accuracies, producer's accuracies and user's accuracies, respectively. This physics-based approach was validated against a large database collecte
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- 2021
11. Nächtliche Verkehrslärmbelästigung in Deutschland: individuelle und regionale Unterschiede in der NAKO Gesundheitsstudie [Nighttime transportation noise annoyance in Germany: personal and regional differences in the German National Cohort Study
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Wolf, K., Kraus, U., Dzolan, M., Bolte, G., Lakes, T., Schikowski, T., Greiser, K., Kuß, O., Ahrens, W., Bamberg, F., Becher, H., Berger, K., Brenner, H., Castell, S., Damms-Machado, A., Fischer, B., Franzke, C., Gastell, S., Günther, K., Holleczek, B., Jaeschke, L., Kaaks, R., Keil, T., Kemmling, Y., Krist, L., Legath, N., Leitzmann, M., Lieb, W., Loeffler, M., Meinke-Franze, C., Michels, K.B., Mikolajczyk, R., Moebus, S., Mueller, U., Obi, N., Pischon, T., Rathmann, W., Schipf, S., Schmidt, B., Schulze, M., Thiele, I., Thierry, S., Waniek, S., Wigmann, C., Wirkner, K., Zschocke, J., Peters, A., and Schneider, A.
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Cardiovascular and Metabolic Diseases ,human activities - Abstract
BACKGROUND: Noise annoyance is associated with adverse health-related conditions and reduced wellbeing. Thereby, subjective noise annoyance depends on the objective noise exposure and is modified by personal and regional factors. OBJECTIVE: How many participants of the German National Cohort Study (GNC; NAKO Gesundheitsstudie) were annoyed by transportation noise during nighttime and what factors were associated with noise annoyance? MATERIALS AND METHODS: This cross-sectional analysis included 86,080 participants from 18 study centers, examined from 2014 to 2017. We used multinomial logistic regression to investigate associations of personal and regional factors to noise annoyance (slightly/moderately or strongly/extremely annoyed vs. not annoyed) mutually adjusting for all factors in the model. RESULTS: Two thirds of participants were not annoyed by transportation noise during nighttime and one in ten reported strong/extreme annoyance with highest percentages for the study centers Berlin-Mitte and Leipzig. The strongest associations were seen for factors related to the individual housing situation like the bedroom being positioned towards a major road (OR of being slightly/moderately annoyed: 4.26 [95% CI: 4.01;4.52]; OR of being strongly/extremely annoyed: 13.36 [95% CI: 12.47;14.32]) compared to a garden/inner courtyard. Participants aged 40-60 years and those in low- and medium-income groups reported greater noise annoyance compared to younger or older ones and those in the high-income group. CONCLUSION: In this study from Germany, transportation noise annoyance during nighttime varied by personal and regional factors.
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- 2020
12. An index for assessing activity friendliness for children in urban environments of Berlin
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Schicketanz, Juliane, Grabenhenrich, L., Lakes, T., Schicketanz, Juliane, Grabenhenrich, L., and Lakes, T.
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The physical environment strongly influences physical activity in urban settings. While walkability is frequentlyassessed for adults, an approach for mapping the friendliness of urban environments focusing on children’sactivities is not available. The aim of the presented approach was to identify supporting and limiting factorsof activity friendliness in urban environments and incorporate them into a children’s physical activity index(CAI). We conducted qualitative guided interviews with nine- to ten-year-old children and parents of primaryschool children in Berlin to identify the factors and their importance for describing activity friendliness. Accessto activity and recreational destinations, land use, traffic and road safety, and the social environment were themost prominent factors identified for the activity friendliness for children. The newly developed CAI enables adifferentiation in the activity friendliness of urban neighborhoods for children.Die urbane Umwelt beeinflusst die körperliche Aktivität ihrer Bewohner. Zur Bewertung der Fußgängerfreundlichkeit wurde für Erwachsene das Konzept der Walkability entwickelt und vielfach angewandt. Eine Methode zur Messung der Bewegungsfreundlichkeit der urbanen Umwelt für Kinder existiert jedoch nicht. Ziel dieser Studie ist die Bestimmung bewegungsfördernder und -hemmender Faktoren im urbanen Raum und eine Zusammenführung dieser in dem children’s physical activity index (CAI). Es wurden qualitative leitfadengestützte Interviews mit neun- bis zehnjährigen Kindern und Eltern von Grundschulkindern in Berlin durchgeführt, um die Faktoren und ihre Gewichtung zur Beschreibung von Bewegungsfreundlichkeit zu identifizieren. Der Zugang zu Bewegungs- und Freizeitdestinationen, Landnutzung, Straßenverkehr und Verkehrssicherheit und die soziale Umwelt waren die wichtigsten Bewegungsfreundlichkeitsfaktoren. Der entwickelte CAI ermöglicht eine differenzierte räumliche Darstellung der Bewegungsfreundlichkeit der urbanen Umwelt für
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- 2018
13. The effect of multi-dimensional indicators on urban thermal conditions
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Alavipanah, S., Schreyer, J., Haase, Dagmar, Lakes, T., Qureshi, S., Alavipanah, S., Schreyer, J., Haase, Dagmar, Lakes, T., and Qureshi, S.
- Abstract
Urban heat island (UHI) studies have recognized ten factors as increasing the inner-city temperature compared with that of the surrounding suburbs. The UHI effect is a leading cause of heat-related diseases and mortality in many nations. However, there are still two main shortcomings. First, the effect of UHI is not well recognized in arid and semi-arid regions. Second, the association of multi-dimensional information with surface temperature in urban areas must be examined. This study focuses on the height-related aspects of urban geometry in an arid region. A range of multispectral and spatial vector data were used to derive the surface temperature and two-dimensional (2D) and three-dimensional (3D) information of the study area. All information was aggregated into a grid with common spatial resolution to create a homogeneous dataset. The machine learning statistical model of a boosted regression tree (BRT) was used to reflect the relative influence of 2D and 3D indicators with land surface temperature. Our results showed a cooler surface temperature in the city than in the surrounding area, leading to the question of whether the established UHI definition encompasses all types of cities. In addition, the thermal band was able to distinguish different spatial structures in the study area. The BRT analysis demonstrated that both multi-dimensional 2D and 3D indicators affect the surface temperature. In particular, the 3D indicators play a more important role than 2D indicators in shaping the surface temperature at different urban geometries of the study area. This new method can help urban planners identify the most influential 2D and 3D indicators that affect the surface temperature in different districts of a city.
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- 2017
14. A model-based assessment of the environmental impact of land-use change across scales in Southern Amazonia
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Schaldach, R., Meurer, Katharina, Jungkunst, H.F., Nendel, C., Lakes, T., Gollnow, F., Göpel, J., Boy, J., Guggenberger, G., Strey, R., Strey, S., Berger, T., Gerold, G., Schönenberg, R., Böhner, J., Schindewolf, M., Latynskiy, E., Hampf, A., Parker, P.S., Sentelhas, P.C., Schaldach, R., Meurer, Katharina, Jungkunst, H.F., Nendel, C., Lakes, T., Gollnow, F., Göpel, J., Boy, J., Guggenberger, G., Strey, R., Strey, S., Berger, T., Gerold, G., Schönenberg, R., Böhner, J., Schindewolf, M., Latynskiy, E., Hampf, A., Parker, P.S., and Sentelhas, P.C.
- Abstract
This article describes the design of a new model-based assessment framework to identify and analyse possible future trajectories of agricultural development and their environmental consequences within the states of Mato Grosso and Pará in Southern Amazonia, Brazil. The objective is to provide a tool for improving the information basis for scientists and policy makers regarding the effects of global change and national environmental policies on land-use change and the resulting impacts on the loss of natural vegetation, greenhouse gas emissions, hydrological processes, and soil erosion within the region. For this purpose, the framework combines the regional land-use models, LandSHIFT and alucR, the farm-level model, MPMAS, and the MONICA crop model, with a set of environmental impact models that are operating at the regional and watershed levels. As a first application of the framework, four scenarios with the time horizon 2030 were specified and analysed. Future land-use change will strongly depend on the interplay between the production of agricultural commodities, the agricultural intensification in terms of increasing crop yields and pasture biomass productivity, and the enforcement of environmental laws and policies. On the regional level, the scenarios with the highest increase in agricultural production in combination with weak law enforcement (Trend and Illegal Intensification) generated the highest losses in natural vegetation due to the expansion of agricultural area as well as the highest greenhouse gas emissions. Also, at the watershed level, these scenarios are characterised by the highest changes in river discharge and soil erosion that might lead to a further decline in soil fertility in the long term. Moreover, the analysis of the Sustainable Development scenario indicates that a shift in agricultural production patterns from livestock to crop cultivation, together with effective law enforcement, can effectively reduce land-use change and its negative
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- 2017
15. Experiences of inter- and transdisciplinary research – a trajectory of knowledge integration within a large research consortium
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Schönenberg, R., Boy, J., Hartberger, K., Schumann, C., Guggenberger, G., Siebold, M., Lakes, T., Lamparter, G., Schindewolf, M., Schaldach, R., Nendel, C., Hohnwald, S., Meurer, Katharina, Gerold, G., Klingler, M., Schönenberg, R., Boy, J., Hartberger, K., Schumann, C., Guggenberger, G., Siebold, M., Lakes, T., Lamparter, G., Schindewolf, M., Schaldach, R., Nendel, C., Hohnwald, S., Meurer, Katharina, Gerold, G., and Klingler, M.
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Although inter- and transdisciplinary research has found its way to the forefront of calls, funding and publications, interdisciplinary projects often start from scratch constructing their research environment. In this article we will point to the enormous potential, the learnings, as well as some of the difficulties and pitfalls frequently encountered in large interdisciplinary project consortia. With this in mind, we aim to transparently document and reflect upon our research process, reminding the readers that the authors are not academic specialists in the field of inter- and transdisciplinarity nor in the sociology of knowledge. To explain our motivation, we want to share valuable experiences and point to some learnings, especially regarding the interdependencies between inter- and transdisciplinarity. After a brief historical retrospective of the expectations towards science, the article describes the trajectory of knowledge production and integration of a rather large research consortium attempting to overcome typical communicative and conceptual hurdles while negotiating the strict preconceptions of the respective disciplines. During the process of knowledge integration, scientific recognition and time budgets remain the crucial challenges. Besides joint field research, the construction of four storylines and the continuous integration of data into the various and increasingly interlinked models that ultimately culminate in our future scenarios led to constant communication and disputes among the subprojects involved. During the course of the project, it became obvious that a new generation of young scientists is developing: scientists working in interdisciplinary and transdisciplinary thought communities with a grasp of both fundamental science and transdisciplinary practice, combined with the soft skills necessary to reconcile both worlds.Zusammenfassung: Obwohl inter- und transdisziplinäre Forschung in aller Munde ist, beginnen Forschungskonsortien in der
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- 2017
16. Integrating the third dimension into the concept of urban ecosystem services: A review
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Alavipanah, S., Haase, Dagmar, Lakes, T., Qureshi, S., Alavipanah, S., Haase, Dagmar, Lakes, T., and Qureshi, S.
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The spatial configuration of urban environments and its impact on local and global ecological functions were the subject of recent urban ecosystem service (UES) research projects. The outcomes of these projects with respect to the data they used, however, mainly consisted of two dimensions (2D). Studies that assess aspects of the third dimension (3D) of UES – such as height, volume and shadowing effects – were absent. The objective of this paper is to contribute to a better understanding of the local ecological functions based on knowledge of three-dimensional UES. 298 articles were selected for in-depth critical analyses. The technical and computational approaches for extracting urban 3D structures and 3D structures of vegetation were the focus of the reviewed literature. Authors’ affiliations would be a better indicator for assessing the spatial distribution of articles. Uneven distribution of knowledge among countries is related to the technical and scientific advancement of countries. There was a shift in the sub-theme of reviewed publications discussing the concept of ecosystem services in the first few years, while later researchers’ interests moved towards UES and adaptation of cities to the changing climate. Further studies should progress in the development of both 3D data and results. Implementing 3D data and results helps to better understand the coupling of humans and their environs. It will be then a critically important step toward developing ecologically friendly cities.
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- 2016
17. A systematic approach to assess human wellbeing demonstrated for impacts of climate change
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Lissner, T., Reusser, D. E., Lakes, T., and Kropp, J. P.
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peer-reviewed ,ddc:550 - Published
- 2014
18. A review of multiple natural hazard risks in Germany
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Kreibich, H., Schröter, K., Bubeck, P., Parolai, S., Khazai, B., Daniell, J., Kunz, M., Mahlke, H., Lakes, T., 2.1 Physics of Earthquakes and Volcanoes, 2.0 Physics of the Earth, Departments, GFZ Publication Database, Deutsches GeoForschungsZentrum, and 2.6 Seismic Hazard and Stress Field, 2.0 Geophysics, Departments, GFZ Publication Database, Deutsches GeoForschungsZentrum
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550 - Earth sciences - Published
- 2013
19. Climate impacts on human livelihoods: where uncertainty matters in projections of water availability
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Lissner, T. K., primary, Reusser, D. E., additional, Schewe, J., additional, Lakes, T., additional, and Kropp, J. P., additional
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- 2014
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20. Mental health in the slums of Dhaka - a geo-epidemiological study
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Gruebner, O., Khan, M.M.H., Lautenbach, Sven, Müller, D., Krämer, A., Lakes, T., Hostert, P., Gruebner, O., Khan, M.M.H., Lautenbach, Sven, Müller, D., Krämer, A., Lakes, T., and Hostert, P.
- Abstract
Background Urban health is of global concern because the majority of the world's population live in urban areas. Although mental health problems (e.g. depression) in developing countries are highly prevalent, such issues are not yet adequately addressed in the rapidly urbanising megacities of these countries, where a growing number of residents live in slums. Little is known about the spectrum of mental well-being in urban slums and only poor knowledge exists on health promotive socio-physical environments in these areas. Using a geo-epidemiological approach, the present study identified factors that contribute to the mental well-being in the slums of Dhaka, which currently accommodates an estimated population of more than 14 million, including 3.4 million slum dwellers. Methods The baseline data of a cohort study conducted in early 2009 in nine slums of Dhaka were used. Data were collected from 1,938 adults (>=15 years). All respondents were geographically marked based on their households using global positioning systems (GPS). Very high-resolution land cover information was processed in a Geographic Information System (GIS) to obtain additional exposure information. We used a factor analysis to reduce the socio-physical explanatory variables to a fewer set of uncorrelated linear combinations of variables. We then regressed these factors on the WHO-5 Well-being Index that was used as a proxy for self-rated mental well-being. Results Mental well-being was significantly associated with various factors such as selected features of the natural environment, flood risk, sanitation, housing quality, sufficiency and durability. We further identified associations with population density, job satisfaction, and income generation while controlling for individual factors such as age, gender, and diseases. Conclusions Factors determining mental well-being were related to the socio-physical environment and individual level characteristics. Given that mental well-being is a
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- 2012
21. A spatial epidemiological analysis of self-rated mental health in the slums of Dhaka
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Gruebner, O., Khan, M.M.H., Lautenbach, Sven, Müller, D., Kraemer, A., Lakes, T., Hostert, P., Gruebner, O., Khan, M.M.H., Lautenbach, Sven, Müller, D., Kraemer, A., Lakes, T., and Hostert, P.
- Abstract
Background: The deprived physical environments present in slums are well-known to have adverse health effects on their residents. However, little is known about the health effects of the social environments in slums. Moreover, neighbourhood quantitative spatial analyses of the mental health status of slum residents are still rare. The aim of this paper is to study self-rated mental health data in several slums of Dhaka, Bangladesh, by accounting for neighbourhood social and physical associations using spatial statistics. We hypothesised that mental health would show a significant spatial pattern in different population groups, and that the spatial patterns would relate to spatially-correlated health-determining factors (HDF). Methods: We applied a spatial epidemiological approach, including non-spatial ANOVA/ANCOVA, as well as global and local univariate and bivariate Moran's I statistics. The WHO-5 Well-being Index was used as a measure of self-rated mental health. Results: We found that poor mental health (WHO-5 scores <13) among the adult population (age greater than or equal to 15) was prevalent in all slum settlements. We detected spatially autocorrelated WHO-5 scores (i.e., spatial clusters of poor and good mental health among different population groups). Further, we detected spatial associations between mental health and housing quality, sanitation, income generation, environmental health knowledge, education, age, gender, flood non-affectedness, and selected properties of the natural environment. Conclusions: Spatial patterns of mental health were detected and could be partly explained by spatially correlated HDF. We thereby showed that the socio-physical neighbourhood was significantly associated with health status, i.e., mental health at one location was spatially dependent on the mental health and HDF prevalent at neighbouring locations. Furthermore, the spatial patterns point to severe health disparities both within and between the slums. In addi
- Published
- 2011
22. Epidemiology of COVID-19 in Berlin-Neukölln nursing homes.
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Roth A, Gehre L, Gerke J, Lutz M, Manafa G, Schmitz T, Lambio C, Zhuang S, Butler J, Lakes T, and Savaskan N
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- Humans, Aged, Male, Female, Aged, 80 and over, Germany epidemiology, Berlin epidemiology, Middle Aged, COVID-19 Vaccines administration & dosage, Pandemics, Nursing Homes statistics & numerical data, COVID-19 epidemiology, COVID-19 mortality, SARS-CoV-2
- Abstract
Background: The COVID-19 pandemic has affected various urban population groups in different ways. Earlier studies have shown that severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) disproportionally impacts nursing home residents by increasing morbidity and mortality following viral exposure. However, little is known about the epidemiology of this disease in detail. Therefore, the objective of this study is to analyze the development of the COVID-19 pandemic in 14 nursing homes across Berlin-Neukölln, Germany, during pandemic waves 1 to 5 (Feb 2020 - May 2022)., Methods: Reporting data to the Neukölln Department of Public Health on COVID-19 cases in connection with nursing homes were extracted from the SORMAS database. The case fatality rates (CFRs) and odds ratios (ORs) of demographic parameters, prevalent variants of concern (VOCs) and vaccine availability were calculated. In addition, the temporal course in waves 1-5 in Neukölln and the relevant government measures were examined., Results: Data collected from nursing homes providing age-dependent physical care revealed that 1.9 % of the total 108,600 cases registered in Berlin-Neukölln during the study period were related one of the 14 facilities. Compared to the general population in Neukölln, nursing homes exhibited a 20-fold increase in the CFR. Notably, nursing homes with higher bed capacities displayed a greater CFR than did smaller nursing homes. Similarly, elderly residents living in nursing homes faced a much greater mortality rate than did their counterparts living outside of medical settings (OR = 3.5). The original wild-type SARS-CoV-2 strain had the most severe direct impact, with a CFR of 16.7 %, compared to the alpha (CFR = 6.9 %), delta (CFR = 10.2 %) and omicron (CFR = 2.8 %) variants in nursing homes. Interestingly, the number of infections increased following vaccination campaigns, but this trend was accompanied by a decrease in the number of deaths from 2.6 to 1.1 per week. As a result, the CFR significantly decreased from 18.4 to 5.5, while still exceeding the mean CFR compared to that of the general population of Neukölln., Conclusions: Our findings reveal the changing patterns of outbreak frequency and severity across the five pandemic waves. They highlight the crucial role of rapid vaccination programs for residents, staff, visitors, and third-party services in safeguarding nursing homes. Additionally, improvements in containment and cluster strategies are essential in prevaccination scenarios to prevent future infection traps for elderly individuals in long-term care facilities. The presented data highlight the importance of tailored protection measures for one of the most vulnerable populations in our society., Competing Interests: Declaration of Competing Interest The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper., (Copyright © 2024 The Author(s). Published by Elsevier Ltd.. All rights reserved.)
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- 2024
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23. [Health protection and climate change require ambitious limit values for air pollutants in Europe : Opinion on the revision of the Directive on Air Quality and Clean Air for Europe of the Environmental Public Health commission of the Robert Koch Institute and the Federal Environment Agency].
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Peters A, Herr C, Bolte G, Heutelbeck A, Hornberg C, Kraus T, Lakes T, Matzarakis A, Novak D, Reifegerste D, Traidl-Hoffmann C, Zeeb H, Schneider A, and Hoffmann B
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- Climate Change, Nitrogen Dioxide, Public Health, Germany, Europe, Particulate Matter, Air Pollutants adverse effects, Air Pollution prevention & control
- Abstract
Based on scientific findings, the World Health Organization (WHO) has recommended stricter guideline values for air quality in 2021. Significant reductions in the annual mean values of particulate matter (particle size 2.5 µm or smaller, PM
2.5 ) and long-term exposure to nitrogen dioxide (NO2 ) and ozone (O3 ) were put forward. The risk of mortality already increases above the WHO guideline values, as shown in studies investigating low concentrations of air pollutants. In Germany, the 2021 WHO guideline values for PM2.5 and NO2 were clearly exceeded in 2022.In this position paper we give the following recommendations for the European Air Quality Directive: (1) set binding limit values according to WHO 2021, (2) apply the limit values to the whole of Europe, (3) continue and expand the established country-based monitoring networks, (4) expand air quality measurements for ultrafine particles and soot particles, and (5) link air pollution control and climate protection measures.Stricter limits for air pollutants require societal and political changes in areas such as mobility, energy use and generation, and urban and spatial planning. Implementation according to WHO 2021 would lead to a net economic benefit of 38 billion euros per year.Ambitious limit values for air pollutants also have an impact on climate change mitigation and its health impacts. The Environmental Public Health commission concludes that more ambitious limit values are crucial to enable effective health protection in Germany and calls for air pollutant limit values in line with the 2021 WHO recommendations to become binding in Europe., (© 2023. The Author(s).)- Published
- 2023
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24. Exploring the Spatial Relative Risk of COVID-19 in Berlin-Neukölln.
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Lambio C, Schmitz T, Elson R, Butler J, Roth A, Feller S, Savaskan N, and Lakes T
- Subjects
- Humans, Risk, Berlin epidemiology, Spatial Analysis, Geography, COVID-19 epidemiology
- Abstract
Identifying areas with high and low infection rates can provide important etiological clues. Usually, areas with high and low infection rates are identified by aggregating epidemiological data into geographical units, such as administrative areas. This assumes that the distribution of population numbers, infection rates, and resulting risks is constant across space. This assumption is, however, often false and is commonly known as the modifiable area unit problem. This article develops a spatial relative risk surface by using kernel density estimation to identify statistically significant areas of high risk by comparing the spatial distribution of address-level COVID-19 cases and the underlying population at risk in Berlin-Neukölln. Our findings show that there are varying areas of statistically significant high and low risk that straddle administrative boundaries. The findings of this exploratory analysis further highlight topics such as, e.g., Why were mostly affluent areas affected during the first wave? What lessons can be learned from areas with low infection rates? How important are built structures as drivers of COVID-19? How large is the effect of the socio-economic situation on COVID-19 infections? We conclude that it is of great importance to provide access to and analyse fine-resolution data to be able to understand the spread of the disease and address tailored health measures in urban settings.
- Published
- 2023
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25. Exploration of the COVID-19 pandemic at the neighborhood level in an intra-urban setting.
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Schmitz T, Lakes T, Manafa G, Lambio C, Butler J, Roth A, and Savaskan N
- Subjects
- Humans, Aged, Adolescent, Pandemics, Public Health, Germany epidemiology, Berlin, COVID-19 epidemiology
- Abstract
The COVID-19 pandemic represents a worldwide threat to health. Since its onset in 2019, the pandemic has proceeded in different phases, which have been shaped by a complex set of influencing factors, including public health and social measures, the emergence of new virus variants, and seasonality. Understanding the development of COVID-19 incidence and its spatiotemporal patterns at a neighborhood level is crucial for local health authorities to identify high-risk areas and develop tailored mitigation strategies. However, analyses at the neighborhood level are scarce and mostly limited to specific phases of the pandemic. The aim of this study was to explore the development of COVID-19 incidence and spatiotemporal patterns of incidence at a neighborhood scale in an intra-urban setting over several pandemic phases (March 2020-December 2021). We used reported COVID-19 case data from the health department of the district Berlin-Neukölln, Germany, additional socio-demographic data, and text documents and materials on implemented public health and social measures. We examined incidence over time in the context of the measures and other influencing factors, with a particular focus on age groups. We used incidence maps and spatial scan statistics to reveal changing spatiotemporal patterns. Our results show that several factors may have influenced the development of COVID-19 incidence. In particular, the far-reaching measures for contact reduction showed a substantial impact on incidence in Neukölln. We observed several age group-specific effects: school closures had an effect on incidence in the younger population (< 18 years), whereas the start of the vaccination campaign had an impact primarily on incidence among the elderly (> 65 years). The spatial analysis revealed that high-risk areas were heterogeneously distributed across the district. The location of high-risk areas also changed across the pandemic phases. In this study, existing intra-urban studies were supplemented by our investigation of the course of the pandemic and the underlying processes at a small scale over a long period of time. Our findings provide new insights for public health authorities, community planners, and policymakers about the spatiotemporal development of the COVID-19 pandemic at the neighborhood level. These insights are crucial for guiding decision-makers in implementing mitigation strategies., Competing Interests: The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest., (Copyright © 2023 Schmitz, Lakes, Manafa, Lambio, Butler, Roth and Savaskan.)
- Published
- 2023
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26. Health effects of shrinking hyper-saline lakes: spatiotemporal modeling of the Lake Urmia drought on the local population, case study of the Shabestar County.
- Author
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Feizizadeh B, Lakes T, Omarzadeh D, and Pourmoradian S
- Subjects
- Humans, Water, Dust, Saline Solution, Sodium Chloride, Sodium Chloride, Dietary, Environmental Monitoring methods, Lakes, Droughts
- Abstract
Climate change and its respective environmental impacts, such as dying lakes, is widely acknowledged. Studies on the impact of shrinking hyper-saline lakes suggest severe negative consequences for the health of the affected population. The primary aim was to investigate the relationship between changes in the water level of the hyper-saline Lake Urmia, along with the associated salt release, and the prevalence of hypertension and the general state of health of the local population in Shabestar County north of the lake. Moreover, we sought to map the vulnerability of the local population to the health risks associated with salt-dust scatter using multiple environmental and demographic characteristics. We applied a spatiotemporal analysis of the environmental parameters of Lake Urmia and the health of the local population. We analyzed health survey data from local health care centers and a national STEPS study in Shabestar County, Iran. We used a time-series of remote sensing images to monitor the trend of occurrence and extent of salt-dust storms between 2012 and 2020. To evaluate the impacts of lake drought on the health of the residences, we investigated the spatiotemporal correlation of the lake drought and the state of health of local residents. We applied a GIScience multiple decision analysis to identify areas affected by salt-dust particles and related these to the health status of the residents. According to our results, the lake drought has significantly contributed to the increasing cases of hypertension in local patients. The number of hypertensive patients has increased from 2.09% in 2012 to 19.5% in 2019 before decreasing slightly to 16.05% in 2020. Detailed results showed that adults, and particularly females, were affected most by the effects of the salt-dust scatter in the residential areas close to the lake. The results of this study provide critical insights into the environmental impacts of the Lake Urmia drought on the human health of the residents. Based on the results we suggest that detailed socioeconomic studies might be required for a comprehensive analysis of the human health issues in this area. Nonetheless, the proposed methods can be applied to monitor the environmental impacts of climate change on human health., (© 2023. The Author(s).)
- Published
- 2023
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27. Exploring Environmental Health Inequalities: A Scientometric Analysis of Global Research Trends (1970-2020).
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Zhuang S, Bolte G, and Lakes T
- Subjects
- Cluster Analysis, Knowledge, Environmental Health, Publications
- Abstract
Environmental health inequalities (EHI), understood as differences in environmental health factors and in health outcomes caused by environmental conditions, are studied by a wide range of disciplines. This results in challenges to both synthesizing key knowledge domains of the field. This study aims to uncover the global research status and trends in EHI research, and to derive a conceptual framework for the underlying mechanisms of EHI. In total, 12,320 EHI publications were compiled from the Web of Science core collection from 1970 to 2020. Scientometric analysis was adopted to characterize the research activity, distribution, focus, and trends. Content analysis was conducted for the highlight work identified from network analysis. Keyword co-occurrence and cluster analysis were applied to identify the knowledge domain and develop the EHI framework. The results show that there has been a steady increase in numbers of EHI publications, active journals, and involved disciplines, countries, and institutions since the 2000s, with marked differences between countries in the number of published articles and active institutions. In the recent decade, environment-related disciplines have gained importance in addition to social and health sciences. This study proposes a framework to conceptualize the multi-facetted issues in EHI research referring to existing key concepts.
- Published
- 2022
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28. QADI as a New Method and Alternative to Kappa for Accuracy Assessment of Remote Sensing-Based Image Classification.
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Feizizadeh B, Darabi S, Blaschke T, and Lakes T
- Subjects
- Reproducibility of Results, Software, Image Processing, Computer-Assisted methods, Remote Sensing Technology methods
- Abstract
Classification is a very common image processing task. The accuracy of the classified map is typically assessed through a comparison with real-world situations or with available reference data to estimate the reliability of the classification results. Common accuracy assessment approaches are based on an error matrix and provide a measure for the overall accuracy. A frequently used index is the Kappa index. As the Kappa index has increasingly been criticized, various alternative measures have been investigated with minimal success in practice. In this article, we introduce a novel index that overcomes the limitations. Unlike Kappa, it is not sensitive to asymmetric distributions. The quantity and allocation disagreement index (QADI) index computes the degree of disagreement between the classification results and reference maps by counting wrongly labeled pixels as A and quantifying the difference in the pixel count for each class between the classified map and reference data as Q. These values are then used to determine a quantitative QADI index value, which indicates the value of disagreement and difference between a classification result and training data. It can also be used to generate a graph that indicates the degree to which each factor contributes to the disagreement. The efficiency of Kappa and QADI were compared in six use cases. The results indicate that the QADI index generates more reliable classification accuracy assessments than the traditional Kappa can do. We also developed a toolbox in a GIS software environment.
- Published
- 2022
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29. Scenario-based analysis of the impacts of lake drying on food production in the Lake Urmia Basin of Northern Iran.
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Feizizadeh B, Lakes T, Omarzadeh D, Sharifi A, Blaschke T, and Karimzadeh S
- Subjects
- Climate Change, Iran, Water, Water Supply, Environmental Monitoring, Lakes
- Abstract
In many parts of the world, lake drying is caused by water management failures, while the phenomenon is exacerbated by climate change. Lake Urmia in Northern Iran is drying up at such an alarming rate that it is considered to be a dying lake, which has dire consequences for the whole region. While salinization caused by a dying lake is well understood and known to influence the local and regional food production, other potential impacts by dying lakes are as yet unknown. The food production in the Urmia region is predominantly regional and relies on local water sources. To explore the current and projected impacts of the dying lake on food production, we investigated changes in the climatic conditions, land use, and land degradation for the period 1990-2020. We examined the environmental impacts of lake drought on food production using an integrated scenario-based geoinformation framework. The results show that the lake drought has significantly affected and reduced food production over the past three decades. Based on a combination of cellular automaton and Markov modeling, we project the food production for the next 30 years and predict it will reduce further. The results of this study emphasize the critical environmental impacts of the Urmia Lake drought on food production in the region. We hope that the results will encourage authorities and environmental planners to counteract these issues and take steps to support food production. As our proposed integrated geoinformation approach considers both the extensive impacts of global climate change and the factors associated with dying lakes, we consider it to be suitable to investigate the relationships between environmental degradation and scenario-based food production in other regions with dying lakes around the world., (© 2022. The Author(s).)
- Published
- 2022
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30. Predicting traffic noise using land-use regression-a scalable approach.
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Staab J, Schady A, Weigand M, Lakes T, and Taubenböck H
- Subjects
- Environmental Exposure, Europe, Humans, Noise, Transportation
- Abstract
Background: In modern societies, noise is ubiquitous. It is an annoyance and can have a negative impact on human health as well as on the environment. Despite increasing evidence of its negative impacts, spatial knowledge about noise distribution remains limited. Up to now, noise mapping is frequently inhibited by the necessary resources and therefore limited to selected areas., Objective: Based on the assumption, that prevalent noise is determined by the arrangement of sources and the surrounding environment in which the sound propagates, we build a geostatistical model representing these parameters. Aiming for a large-scale noise mapping approach, we utilize publicly available data, context-aware feature engineering and a linear land-use regression (LUR) model., Methods: Compliant to the European Noise Directive 2002/49/EG, we work at a high spatial granularity of 10 × 10-m resolution. As reference, we use the day-evening-night noise level indicator L
den . Therewith, we carry out 2000 virtual field campaigns simulating different sampling schemes and introduce spatial cross-validation concepts to test the transferability to new areas., Results: The experimental results suggest the necessity for more than 500 samples stratified over the different noise levels to produce a representative model. Eventually, using 21 selected variables, our model was able to explain large proportions of the yearly averaged road noise (Lden ) variability (R2 = 0.702) with a mean absolute error of 4.24 dB(A), 3.84 dB(A) for build-up areas, respectively. In applying this best performing model for an area-wide prediction, we spatially close the blank spots in existing noise maps with continuous noise levels for the entire range from 24 to 106 dB(A)., Significance: This data is new, particular for small communities that have not been mapped sufficiently in Europe so far. In conjunction, our findings also supplement conventionally sampled studies using physical microphones and spatially blocked cross-validations., (© 2021. The Author(s).)- Published
- 2022
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31. Solar photovoltaic module detection using laboratory and airborne imaging spectroscopy data.
- Author
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Ji C, Bachmann M, Esch T, Feilhauer H, Heiden U, Heldens W, Hueni A, Lakes T, Metz-Marconcini A, Schroedter-Homscheidt M, Weyand S, and Zeidler J
- Abstract
Over the past decades, solar panels have been widely used to harvest solar energy owing to the decreased cost of silicon-based photovoltaic (PV) modules, and therefore it is essential to remotely map and monitor the presence of solar PV modules. Many studies have explored on PV module detection based on color aerial photography and manual photo interpretation. Imaging spectroscopy data are capable of providing detailed spectral information to identify the spectral features of PV, and thus potentially become a promising resource for automated and operational PV detection. However, PV detection with imaging spectroscopy data must cope with the vast spectral diversity of surface materials, which is commonly divided into spectral intra-class variability and inter-class similarity. We have developed an approach to detect PV modules based on their physical absorption and reflection characteristics using airborne imaging spectroscopy data. A large database was implemented for training and validating the approach, including spectra-goniometric measurements of PV modules and other materials, a HyMap image spectral library containing 31 materials with 5627 spectra, and HySpex imaging spectroscopy data sets covering Oldenburg, Germany. By normalizing the widely used Hydrocarbon Index (HI), we solved the intra-class variability caused by different detection angles, and validated it against the spectra-goniometric measurements. Knowing that PV modules are composed of materials with different transparencies, we used a group of spectral indices and investigated their interdependencies for PV detection with implementing the image spectral library. Finally, six well-trained spectral indices were applied to HySpex data acquired in Oldenburg, Germany, yielding an overall PV map. Four subsets were selected for validation and achieved overall accuracies, producer's accuracies and user's accuracies, respectively. This physics-based approach was validated against a large database collected from multiple platforms (laboratory measurements, airborne imaging spectroscopy data), thus providing a robust, transferable and applicable way to detect PV modules using imaging spectroscopy data. We aim to create greater awareness of the potential importance and applicability of airborne and spaceborne imaging spectroscopy data for PV modules identification., Competing Interests: The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper., (© 2021 The Authors. Published by Elsevier Inc.)
- Published
- 2021
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32. A scenario-based approach for urban water management in the context of the COVID-19 pandemic and a case study for the Tabriz metropolitan area, Iran.
- Author
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Feizizadeh B, Omarzadeh D, Ronagh Z, Sharifi A, Blaschke T, and Lakes T
- Subjects
- Humans, Iran epidemiology, SARS-CoV-2, Water, Water Supply, COVID-19, Pandemics
- Abstract
The world's poorest countries were hit hardest by COVID-19 due to their limited capacities to combat the pandemic. The urban water supply and water consumption are affected by the pandemic because it intensified the existing deficits in the urban water supply and sanitation services. In this study, we develop an integrated spatial analysis approach to investigate the impacts of COVID-19 on multi-dimensional Urban Water Consumption Patterns (UWCPs) with the aim of forecasting the water demand. We selected the Tabriz metropolitan area as a case study area and applied an integrated approach of GIS spatial analysis and regression-based autocorrelation assessment to develop the UWCPs for 2018, 2019 and 2020. We then employed GIS-based multi-criteria decision analysis and a CA-Markov model to analyze the water demand under the impacts of COVID-19 and to forecast the UWCPs for 2021, 2022 and 2023. In addition, we tested the spatial uncertainty of the prediction maps using the Dempster Shafer Theory. The results show that the domestic water consumption increased by 17.57% during the year 2020 as a result of the COVID-19 pandemic. The maximum increase in water consumption was observed in spring 2020 (April-June) when strict quarantine regulations were in place. Based on our results, the annual water deficit in Tabriz has increased from ~18% to about 30% in 2020. In addition, our projections show that this may further increase to about 40-45% in 2021. Relevant stakeholders can use the findings to develop evidence-informed strategies for sustainable water resource management in the post-COVID era. This research also makes other significant contributions. From the environmental perspective, since COVID-19 has affected resource management in many parts of the world, the proposed method can be applied to similar contexts to mitigate the adverse impacts and developed better informed recovery plans., Competing Interests: Declaration of competing interest The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported entitled:, (Copyright © 2021 Elsevier B.V. All rights reserved.)
- Published
- 2021
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33. An automated deep learning convolutional neural network algorithm applied for soil salinity distribution mapping in Lake Urmia, Iran.
- Author
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Garajeh MK, Malakyar F, Weng Q, Feizizadeh B, Blaschke T, and Lakes T
- Abstract
Traditional soil salinity studies are time-consuming and expensive, especially over large areas. This study proposed an innovative deep learning convolutional neural network (DL-CNN) data-driven approach for SSD mapping. Multi-spectral remote sensing data encompassing Landsat series images provide the possibility for frequent assessment of SSD in various regions of the world. Therefore, Landsat 7 ETM+ and 8 OLI images were acquired for years 2005, 2010, 2015 and 2019. Totally, 704 sample points collected from the top 20 cm of the soil surface, which 70% was used to train the network and the remains (30%) were utilized to validate the network. Accordingly, DL-CNN model trained using remote sensing (RS)-derived variables (land surface temperature (LST), Soil moisture (SM) and evapotranspiration) and geospatial data such as NDVI and landuse. To train the CNN, ReLu, Cross-entropy and ADAM were employed respectively as activation, loss/cost functions and optimizer. The results indicated the high confidence of OA 0.94.02, 0.93.99, 0.94.87 and 0.95.0 respectively for years 2005, 2010, 2015 and 2019. These accuracies demonstrated the best performance of automated DL-CNN for SSD mapping compared to RS soil salinity indexes. Furthermore, the FR and WOE models applied in order to generate a geospatial assessment of the DL-CNN classification results. According to the FR model, landuse, LST, LST and NDVI with the frequency ratio of 0.98.25, 0.94.03, 0.97.23 and 0.96.36 selected respectively as more effective factors for SSD in the study area for years 2005, 2010, 2015 and 2019. Also based on the WOE model, landuse, LST, landuse and NDVI with the WOE of 0.88.25, 0.91.88, 0.87.43 and 0.89.02 were ranked respectively for years 2005, 2010, 2015 and 2019 as efficient variables for SSD. In sum, our introduced method can be recommended for SDD spatial modelling in other favored areas with similar environmental conditions., Competing Interests: Declaration of competing interest The authors declared that there is no conflict of interest., (Copyright © 2021 Elsevier B.V. All rights reserved.)
- Published
- 2021
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34. [Nighttime transportation noise annoyance in Germany: personal and regional differences in the German National Cohort Study].
- Author
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Wolf K, Kraus U, Dzolan M, Bolte G, Lakes T, Schikowski T, Greiser KH, Kuß O, Ahrens W, Bamberg F, Becher H, Berger K, Brenner H, Castell S, Damms-Machado A, Fischer B, Franzke CW, Gastell S, Günther K, Holleczek B, Jaeschke L, Kaaks R, Keil T, Kemmling Y, Krist L, Legath N, Leitzmann M, Lieb W, Loeffler M, Meinke-Franze C, Michels KB, Mikolajczyk R, Moebus S, Mueller U, Obi N, Pischon T, Rathmann W, Schipf S, Schmidt B, Schulze M, Thiele I, Thierry S, Waniek S, Wigmann C, Wirkner K, Zschocke J, Peters A, and Schneider A
- Subjects
- Berlin, Cohort Studies, Cross-Sectional Studies, Germany, Surveys and Questionnaires, Environmental Exposure, Noise, Transportation
- Abstract
Background: Noise annoyance is associated with adverse health-related conditions and reduced wellbeing. Thereby, subjective noise annoyance depends on the objective noise exposure and is modified by personal and regional factors., Objective: How many participants of the German National Cohort Study (GNC; NAKO Gesundheitsstudie) were annoyed by transportation noise during nighttime and what factors were associated with noise annoyance?, Materials and Methods: This cross-sectional analysis included 86,080 participants from 18 study centers, examined from 2014 to 2017. We used multinomial logistic regression to investigate associations of personal and regional factors to noise annoyance (slightly/moderately or strongly/extremely annoyed vs. not annoyed) mutually adjusting for all factors in the model., Results: Two thirds of participants were not annoyed by transportation noise during nighttime and one in ten reported strong/extreme annoyance with highest percentages for the study centers Berlin-Mitte and Leipzig. The strongest associations were seen for factors related to the individual housing situation like the bedroom being positioned towards a major road (OR of being slightly/moderately annoyed: 4.26 [95% CI: 4.01;4.52]; OR of being strongly/extremely annoyed: 13.36 [95% CI: 12.47;14.32]) compared to a garden/inner courtyard. Participants aged 40-60 years and those in low- and medium-income groups reported greater noise annoyance compared to younger or older ones and those in the high-income group., Conclusion: In this study from Germany, transportation noise annoyance during nighttime varied by personal and regional factors.
- Published
- 2020
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35. Modeling the spatially varying risk factors of dengue fever in Jhapa district, Nepal, using the semi-parametric geographically weighted regression model.
- Author
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Acharya BK, Cao C, Lakes T, Chen W, Naeem S, and Pandit S
- Subjects
- Humans, Incidence, Nepal epidemiology, Risk Factors, Spatial Regression, Urban Population, Dengue epidemiology, Population Density
- Abstract
Dengue fever is expanding rapidly in many tropical and subtropical countries since the last few decades. However, due to limited research, little is known about the spatial patterns and associated risk factors on a local scale particularly in the newly emerged areas. In this study, we explored spatial patterns and evaluated associated potential environmental and socioeconomic risk factors in the distribution of dengue fever incidence in Jhapa district, Nepal. Global and local Moran's I were used to assess global and local clustering patterns of the disease. The ordinary least square (OLS), geographically weighted regression (GWR), and semi-parametric geographically weighted regression (s-GWR) models were compared to describe spatial relationship of potential environmental and socioeconomic risk factors with dengue incidence. Our result revealed heterogeneous and highly clustered distribution of dengue incidence in Jhapa district during the study period. The s-GWR model best explained the spatial association of potential risk factors with dengue incidence and was used to produce the predictive map. The statistical relationship between dengue incidence and proportion of urban area, proximity to road, and population density varied significantly among the wards while the associations of land surface temperature (LST) and normalized difference vegetation index (NDVI) remained constant spatially showing importance of mixed geographical modeling approach (s-GWR) in the spatial distribution of dengue fever. This finding could be used in the formulation and execution of evidence-based dengue control and management program to allocate scare resources locally.
- Published
- 2018
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36. Modeling and mapping the burden of disease in Kenya.
- Author
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Frings M, Lakes T, Müller D, Khan MMH, Epprecht M, Kipruto S, Galea S, and Gruebner O
- Subjects
- Cause of Death, Cross-Sectional Studies, Female, Humans, Incidence, Kenya epidemiology, Male, Middle Aged, Prognosis, Risk Factors, Survival Rate, Life Expectancy, Malaria epidemiology, Malaria mortality, Models, Statistical
- Abstract
Precision public health approaches are crucial for targeting health policies to regions most affected by disease. We present the first sub-national and spatially explicit burden of disease study in Africa. We used a cross-sectional study design and assessed data from the Kenya population and housing census of 2009 for calculating YLLs (years of life lost) due to premature mortality at the division level (N = 612). We conducted spatial autocorrelation analysis to identify spatial clusters of YLLs and applied boosted regression trees to find statistical associations between locational risk factors and YLLs. We found statistically significant spatial clusters of high numbers of YLLs at the division level in western, northwestern, and northeastern areas of Kenya. Ethnicity and household crowding were the most important and significant risk factors for YLL. Further positive and significantly associated variables were malaria endemicity, northern geographic location, and higher YLL in neighboring divisions. In contrast, higher rates of married people and more precipitation in a division were significantly associated with less YLL. We provide an evidence base and a transferable approach that can guide health policy and intervention in sub-national regions afflicted by disease burden in Kenya and other areas of comparable settings.
- Published
- 2018
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37. [A spatially explicit analysis of traffic accidents involving pedestrians and cyclists in Berlin].
- Author
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Lakes T
- Subjects
- Berlin, Causality, Cross-Sectional Studies, Humans, Urban Renewal statistics & numerical data, Accidents, Traffic statistics & numerical data, Bicycling statistics & numerical data, Pedestrians statistics & numerical data, Small-Area Analysis, Urban Population statistics & numerical data
- Abstract
Background: In many German cities and counties, sustainable mobility concepts that strengthen pedestrian and cyclist traffic are promoted. From the perspectives of urban development, traffic planning and public healthcare, a spatially differentiated analysis of traffic accident data is decisive., Objectives: 1) The identification of spatial and temporal patterns of the distribution of accidents involving cyclists and pedestrians, 2) the identification of hotspots and exploration of possible underlying causes and 3) the critical discussion of benefits and challenges of the results and the derivation of conclusions., Material and Methods: Spatio-temporal distributions of data from accident statistics in Berlin involving pedestrians and cyclists from 2011 to 2015 were analysed with geographic information systems (GIS)., Results: While the total number of accidents remains relatively stable for pedestrian and cyclist accidents, the spatial distribution analysis shows, however, that there are significant spatial clusters (hotspots) of traffic accidents with a strong concentration in the inner city area., Conclusions: In a critical discussion, the benefits of geographic concepts are identified, such as spatially explicit health data (in this case traffic accident data), the importance of the integration of other data sources for the evaluation of the health impact of areas (traffic accident statistics of the police), and the possibilities and limitations of spatial-temporal data analysis (spatial point-density analyses) for the derivation of decision-supported recommendations and for the evaluation of policy measures of health prevention and of health-relevant urban development.
- Published
- 2017
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38. High resolution remote sensing for reducing uncertainties in urban forest carbon offset life cycle assessments.
- Author
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Tigges J and Lakes T
- Abstract
Background: Urban forests reduce greenhouse gas emissions by storing and sequestering considerable amounts of carbon. However, few studies have considered the local scale of urban forests to effectively evaluate their potential long-term carbon offset. The lack of precise, consistent and up-to-date forest details is challenging for long-term prognoses. Therefore, this review aims to identify uncertainties in urban forest carbon offset assessment and discuss the extent to which such uncertainties can be reduced by recent progress in high resolution remote sensing. We do this by performing an extensive literature review and a case study combining remote sensing and life cycle assessment of urban forest carbon offset in Berlin, Germany., Main Text: Recent progress in high resolution remote sensing and methods is adequate for delivering more precise details on the urban tree canopy, individual tree metrics, species, and age structures compared to conventional land use/cover class approaches. These area-wide consistent details can update life cycle inventories for more precise future prognoses. Additional improvements in classification accuracy can be achieved by a higher number of features derived from remote sensing data of increasing resolution, but first studies on this subject indicated that a smart selection of features already provides sufficient data that avoids redundancies and enables more efficient data processing. Our case study from Berlin could use remotely sensed individual tree species as consistent inventory of a life cycle assessment. However, a lack of growth, mortality and planting data forced us to make assumptions, therefore creating uncertainty in the long-term prognoses. Regarding temporal changes and reliable long-term estimates, more attention is required to detect changes of gradual growth, pruning and abrupt changes in tree planting and mortality. As such, precise long-term urban ecological monitoring using high resolution remote sensing should be intensified, especially due to increasing climate change effects. This is important for calibrating and validating recent prognoses of urban forest carbon offset, which have so far scarcely addressed longer timeframes. Additionally, higher resolution remote sensing of urban forest carbon estimates can improve upscaling approaches, which should be extended to reach a more precise global estimate for the first time., Conclusions: Urban forest carbon offset can be made more relevant by making more standardized assessments available for science and professional practitioners, and the increasing availability of high resolution remote sensing data and the progress in data processing allows for precisely that.
- Published
- 2017
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39. Spatial variations and determinants of infant and under-five mortality in Bangladesh.
- Author
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Gruebner O, Khan M, Burkart K, Lautenbach S, Lakes T, Krämer A, Subramanian SV, and Galea S
- Subjects
- Bangladesh, Child, Preschool, Humans, Infant, Infant, Newborn, Malaria, Public Health, Socioeconomic Factors, Child Mortality trends, Environment, Infant Mortality trends
- Abstract
Reducing child mortality is a Sustainable Development Goal yet to be achieved by many low-income countries. We applied a subnational and spatial approach based on publicly available datasets and identified permanent insolvency, urbanicity, and malaria endemicity as factors associated with child mortality. We further detected spatial clusters in the east of Bangladesh and noted Sylhet and Jamalpur as those districts that need immediate attention to reduce child mortality. Our approach is transferable to other regions in comparable settings worldwide and may guide future studies to identify subnational regions in need for public health attention. Our study adds to our understanding where we may intervene to more effectively improve health, particularly among disadvantaged populations., (Copyright © 2017 Elsevier Ltd. All rights reserved.)
- Published
- 2017
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40. Spatiotemporal analysis of dengue fever in Nepal from 2010 to 2014.
- Author
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Acharya BK, Cao C, Lakes T, Chen W, and Naeem S
- Subjects
- Cluster Analysis, Female, Humans, Incidence, Male, Nepal epidemiology, Software, Spatio-Temporal Analysis, Dengue epidemiology, Disease Notification statistics & numerical data, Public Health
- Abstract
Background: Due to recent emergence, dengue is becoming one of the major public health problems in Nepal. The numbers of reported dengue cases in general and the area with reported dengue cases are both continuously increasing in recent years. However, spatiotemporal patterns and clusters of dengue have not been investigated yet. This study aims to fill this gap by analyzing spatiotemporal patterns based on monthly surveillance data aggregated at district., Methods: Dengue cases from 2010 to 2014 at district level were collected from the Nepal government's health and mapping agencies respectively. GeoDa software was used to map crude incidence, excess hazard and spatially smoothed incidence. Cluster analysis was performed in SaTScan software to explore spatiotemporal clusters of dengue during the above-mentioned time period., Results: Spatiotemporal distribution of dengue fever in Nepal from 2010 to 2014 was mapped at district level in terms of crude incidence, excess risk and spatially smoothed incidence. Results show that the distribution of dengue fever was not random but clustered in space and time. Chitwan district was identified as the most likely cluster and Jhapa district was the first secondary cluster in both spatial and spatiotemporal scan. July to September of 2010 was identified as a significant temporal cluster., Conclusion: This study assessed and mapped for the first time the spatiotemporal pattern of dengue fever in Nepal. Two districts namely Chitwan and Jhapa were found highly affected by dengue fever. The current study also demonstrated the importance of geospatial approach in epidemiological research. The initial result on dengue patterns and risk of this study may assist institutions and policy makers to develop better preventive strategies.
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- 2016
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41. Childhood overweight in Berlin: intra-urban differences and underlying influencing factors.
- Author
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Lakes T and Burkart K
- Subjects
- Berlin epidemiology, Child, Child, Preschool, Female, Humans, Male, Overweight diagnosis, Risk Factors, Socioeconomic Factors, Environment Design statistics & numerical data, Overweight economics, Overweight epidemiology, Residence Characteristics statistics & numerical data, Urban Population statistics & numerical data
- Abstract
Background: In recent years, childhood overweight and obesity have become an increasing and challenging phenomenon in Western cities. A lot of studies have focused on the analysis of factors such as individual dispositions and nutrition balances, among others. However, little is known about the intra-urban spatial patterns of childhood overweight and its associations with influencing factors that stretch from an individual to a neighbourhood level. The aim of this paper is to analyse the spatial patterns of childhood obesity in Berlin, and also to explore and test for associations with a complex set of risk factors at the individual, household and neighbourhood levels., Methods: We use data from a survey of 5-6 year-olds that includes health status, height, and weight, as well as several socioeconomic and other risk variables. In addition, we use a set of neighbourhood variables, such as distance, and density measures of parks or fast food restaurants. Our outcome variable is the percentage of children of 5-6 years who were reported overweight or obese in 2012. The aggregated data is available for 60 areas in Berlin. We first analyse the outcome and risk factor data descriptively, and subsequently apply a set of regression analyses to test for associations between reported overweight and obesity, and also individual, household and neighbourhood characteristics., Results: Our analysis returned a distinct spatial distribution of childhood overweight in Berlin with highest shares in the city centre. Moreover, we were able to identify significant effects regarding the social index, and the percentage of non-German children being obese or overweight; additionally, we identified fast food restaurant density as a possible influencing factor. For the other variables, including the neighbourhood variables, we could not identify a significant association on this aggregated level of analysis., Conclusions: Our findings confirm the results of earlier studies, in which the social status and percentage of non-German children is very important in terms of the association with childhood overweight and obesity. Unlike many studies conducted in North America, this study did not reveal an influence of neighbourhood variables. We argue that European urban structures differ from North American structures and highlight the need for a more detailed analysis of the association between the neighbourhood environment and the physical activity of children in urban setting.
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- 2016
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42. Spatial Patterns of Heat-Related Cardiovascular Mortality in the Czech Republic.
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Urban A, Burkart K, Kyselý J, Schuster C, Plavcová E, Hanzlíková H, Štěpánek P, and Lakes T
- Subjects
- Adult, Aged, Aged, 80 and over, Cardiovascular Diseases epidemiology, Czech Republic epidemiology, Demography, Female, Geography, Heat Stress Disorders epidemiology, Humans, Male, Middle Aged, Seasons, Socioeconomic Factors, Cardiovascular Diseases mortality, Heat Stress Disorders mortality, Hot Temperature adverse effects, Rural Population statistics & numerical data, Urban Population statistics & numerical data
- Abstract
The study examines spatial patterns of effects of high temperature extremes on cardiovascular mortality in the Czech Republic at a district level during 1994-2009. Daily baseline mortality for each district was determined using a single location-stratified generalized additive model. Mean relative deviations of mortality from the baseline were calculated on days exceeding the 90th percentile of mean daily temperature in summer, and they were correlated with selected demographic, socioeconomic, and physical-environmental variables for the districts. Groups of districts with similar characteristics were identified according to socioeconomic status and urbanization level in order to provide a more general picture than possible on the district level. We evaluated lagged patterns of excess mortality after hot spell occurrences in: (i) urban areas vs. predominantly rural areas; and (ii) regions with different overall socioeconomic level. Our findings suggest that climatic conditions, altitude, and urbanization generally affect the spatial distribution of districts with the highest excess cardiovascular mortality, while socioeconomic status did not show a significant effect in the analysis across the Czech Republic as a whole. Only within deprived populations, socioeconomic status played a relevant role as well. After taking into account lagged effects of temperature on excess mortality, we found that the effect of hot spells was significant in highly urbanized regions, while most excess deaths in rural districts may be attributed to harvesting effects.
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- 2016
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43. Spatio-temporal patterns of dengue in Malaysia: combining address and sub-district level.
- Author
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Ling CY, Gruebner O, Krämer A, and Lakes T
- Subjects
- Aedes physiology, Aedes virology, Animals, Cluster Analysis, Dengue etiology, Dengue prevention & control, Geographic Mapping, Humans, Insect Vectors physiology, Insect Vectors virology, Malaysia epidemiology, Risk Factors, Spatio-Temporal Analysis, Dengue epidemiology
- Abstract
Spatio-temporal patterns of dengue risk in Malaysia were studied both at the address and the sub-district level in the province of Selangor and the Federal Territory of Kuala Lumpur. We geocoded laboratory-confirmed dengue cases from the years 2008 to 2010 at the address level and further aggregated the cases in proportion to the population at risk at the sub-district level. Kulldorff's spatial scan statistic was applied for the investigation that identified changing spatial patterns of dengue cases at both levels. At the address level, spatio-temporal clusters of dengue cases were concentrated at the central and south-eastern part of the study area in the early part of the years studied. Analyses at the sub-district level revealed a consistent spatial clustering of a high number of cases proportional to the population at risk. Linking both levels assisted in the identification of differences and confirmed the presence of areas at high risk for dengue infection. Our results suggest that the observed dengue cases had both a spatial and a temporal epidemiological component, which needs to be acknowledged and addressed to develop efficient control measures, including spatially explicit vector control. Our findings highlight the importance of detailed geographical analysis of disease cases in heterogeneous environments with a focus on clustered populations at different spatial and temporal scales. We conclude that bringing together information on the spatio-temporal distribution of dengue cases with a deeper insight of linkages between dengue risk, climate factors and land use constitutes an important step towards the development of an effective risk management strategy.
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- 2014
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44. Assessment of land use factors associated with dengue cases in Malaysia using Boosted Regression Trees.
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Cheong YL, Leitão PJ, and Lakes T
- Subjects
- Communicable Disease Control, Dengue prevention & control, Humans, Malaysia epidemiology, Population Density, ROC Curve, Dengue epidemiology, Models, Statistical, Spatial Analysis
- Abstract
The transmission of dengue disease is influenced by complex interactions among vector, host and virus. Land use such as water bodies or certain agricultural practices have been identified as likely risk factors for dengue because of the provision of suitable habitats for the vector. Many studies have focused on the land use factors of dengue vector abundance in small areas but have not yet studied the relationship between land use factors and dengue cases for large regions. This study aims to clarify if land use factors other than human settlements, e.g. different types of agricultural land use, water bodies and forest are associated with reported dengue cases from 2008 to 2010 in the state of Selangor, Malaysia. From the correlative relationship, we aim to generate a prediction risk map. We used Boosted Regression Trees (BRT) to account for nonlinearities and interactions between the factors with high predictive accuracies. Our model with a cross-validated performance score (Area Under the Receiver Operator Characteristic Curve, ROC AUC) of 0.81 showed that the most important land use factors are human settlements (model importance of 39.2%), followed by water bodies (16.1%), mixed horticulture (8.7%), open land (7.5%) and neglected grassland (6.7%). A risk map after 100 model runs with a cross-validated ROC AUC mean of 0.81 (±0.001 s.d.) is presented. Our findings may be an important asset for improving surveillance and control interventions for dengue., (Copyright © 2014 The Authors. Published by Elsevier Ltd.. All rights reserved.)
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- 2014
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45. Assessing weather effects on dengue disease in Malaysia.
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Cheong YL, Burkart K, Leitão PJ, and Lakes T
- Subjects
- Dengue virology, Humans, Malaysia, Nonlinear Dynamics, Poisson Distribution, Seasons, Dengue epidemiology, Dengue Virus physiology, Weather
- Abstract
The number of dengue cases has been increasing on a global level in recent years, and particularly so in Malaysia, yet little is known about the effects of weather for identifying the short-term risk of dengue for the population. The aim of this paper is to estimate the weather effects on dengue disease accounting for non-linear temporal effects in Selangor, Kuala Lumpur and Putrajaya, Malaysia, from 2008 to 2010. We selected the weather parameters with a Poisson generalized additive model, and then assessed the effects of minimum temperature, bi-weekly accumulated rainfall and wind speed on dengue cases using a distributed non-linear lag model while adjusting for trend, day-of-week and week of the year. We found that the relative risk of dengue cases is positively associated with increased minimum temperature at a cumulative percentage change of 11.92% (95% CI: 4.41-32.19), from 25.4 °C to 26.5 °C, with the highest effect delayed by 51 days. Increasing bi-weekly accumulated rainfall had a positively strong effect on dengue cases at a cumulative percentage change of 21.45% (95% CI: 8.96, 51.37), from 215 mm to 302 mm, with the highest effect delayed by 26-28 days. The wind speed is negatively associated with dengue cases. The estimated lagged effects can be adapted in the dengue early warning system to assist in vector control and prevention plan.
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- 2013
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46. Mapping urban malaria and diarrhea mortality in Accra, Ghana: evidence of vulnerabilities and implications for urban health policy.
- Author
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Fobil JN, Levers C, Lakes T, Loag W, Kraemer A, and May J
- Subjects
- Cluster Analysis, Death Certificates, Geographic Information Systems, Ghana epidemiology, Humans, Risk Assessment, Socioeconomic Factors, Diarrhea mortality, Geographic Mapping, Malaria mortality, Urban Population statistics & numerical data
- Abstract
Historic increase in urban population numbers in the face of shrinking urban economies and declining social services has meant that a large proportion of the urban population lives in precarious urban conditions, which provide the grounds for high urban health risks in low income countries. This study aims to identify, investigate, and contrast the spatial patterns of vulnerability and risk of two major causes of mortality, viz malaria and diarrhea mortalities, in order to optimize resource allocation for effective urban environmental management and improvement in urban health. A spatial cluster analysis of the observed urban malaria and diarrhea mortalities for the whole city of Accra was conducted. We obtained routinely reported mortality data for the period 1998-2002 from the Ghana Vital Registration System (VRS), computed the fraction of deaths due to malaria and diarrhea at the census cluster level, and analyzed and visualized the data with Geographic Information System (GIS, ArcMap 9.3.1). Regions of identified hotspots, cold spots, and excess mortalities were observed to be associated with some socioeconomic and neighborhood urban environmental conditions, suggesting uneven distribution of risk factors for both urban malaria and diarrhea in areas of rapid urban transformation. Case-control and/or longitudinal studies seeking to understand the individual level factors which mediate socioenvironmental conditions in explaining the observed excess urban mortalities and to establish the full range of risk factors might benefit from initial vulnerability mapping and excess risk analysis using geostatistical approaches. This is key to evidence-based urban health policy reforms in rapidly urbanizing areas in low income economies.
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- 2012
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47. Mental health in the slums of Dhaka - a geoepidemiological study.
- Author
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Gruebner O, Khan MM, Lautenbach S, Müller D, Krämer A, Lakes T, and Hostert P
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- Adolescent, Adult, Aged, Aged, 80 and over, Bangladesh epidemiology, Cohort Studies, Epidemiologic Studies, Female, Health Knowledge, Attitudes, Practice, Humans, Interviews as Topic, Male, Mental Disorders complications, Mental Disorders psychology, Middle Aged, Models, Statistical, Residence Characteristics statistics & numerical data, Socioeconomic Factors, Geographic Information Systems, Mental Disorders epidemiology, Mental Health statistics & numerical data, Poverty Areas, Social Environment, Urban Population statistics & numerical data
- Abstract
Background: Urban health is of global concern because the majority of the world's population lives in urban areas. Although mental health problems (e.g. depression) in developing countries are highly prevalent, such issues are not yet adequately addressed in the rapidly urbanising megacities of these countries, where a growing number of residents live in slums. Little is known about the spectrum of mental well-being in urban slums and only poor knowledge exists on health promotive socio-physical environments in these areas. Using a geo-epidemiological approach, the present study identified factors that contribute to the mental well-being in the slums of Dhaka, which currently accommodates an estimated population of more than 14 million, including 3.4 million slum dwellers., Methods: The baseline data of a cohort study conducted in early 2009 in nine slums of Dhaka were used. Data were collected from 1,938 adults (≥ 15 years). All respondents were geographically marked based on their households using global positioning systems (GPS). Very high-resolution land cover information was processed in a Geographic Information System (GIS) to obtain additional exposure information. We used a factor analysis to reduce the socio-physical explanatory variables to a fewer set of uncorrelated linear combinations of variables. We then regressed these factors on the WHO-5 Well-being Index that was used as a proxy for self-rated mental well-being., Results: Mental well-being was significantly associated with various factors such as selected features of the natural environment, flood risk, sanitation, housing quality, sufficiency and durability. We further identified associations with population density, job satisfaction, and income generation while controlling for individual factors such as age, gender, and diseases., Conclusions: Factors determining mental well-being were related to the socio-physical environment and individual level characteristics. Given that mental well-being is associated with physiological well-being, our study may provide crucial information for developing better health care and disease prevention programmes in slums of Dhaka and other comparable settings.
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- 2012
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48. A spatial epidemiological analysis of self-rated mental health in the slums of Dhaka.
- Author
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Gruebner O, Khan MM, Lautenbach S, Müller D, Kraemer A, Lakes T, and Hostert P
- Subjects
- Adolescent, Adult, Aged, Aged, 80 and over, Bangladesh epidemiology, Cohort Studies, Female, Humans, Male, Mental Disorders psychology, Mental Disorders therapy, Middle Aged, Socioeconomic Factors, Urban Population, Young Adult, Demography methods, Healthcare Disparities, Mental Disorders epidemiology, Mental Health, Poverty Areas, Self Report, Statistics as Topic methods
- Abstract
Background: The deprived physical environments present in slums are well-known to have adverse health effects on their residents. However, little is known about the health effects of the social environments in slums. Moreover, neighbourhood quantitative spatial analyses of the mental health status of slum residents are still rare. The aim of this paper is to study self-rated mental health data in several slums of Dhaka, Bangladesh, by accounting for neighbourhood social and physical associations using spatial statistics. We hypothesised that mental health would show a significant spatial pattern in different population groups, and that the spatial patterns would relate to spatially-correlated health-determining factors (HDF)., Methods: We applied a spatial epidemiological approach, including non-spatial ANOVA/ANCOVA, as well as global and local univariate and bivariate Moran's I statistics. The WHO-5 Well-being Index was used as a measure of self-rated mental health., Results: We found that poor mental health (WHO-5 scores < 13) among the adult population (age ≥15) was prevalent in all slum settlements. We detected spatially autocorrelated WHO-5 scores (i.e., spatial clusters of poor and good mental health among different population groups). Further, we detected spatial associations between mental health and housing quality, sanitation, income generation, environmental health knowledge, education, age, gender, flood non-affectedness, and selected properties of the natural environment., Conclusions: Spatial patterns of mental health were detected and could be partly explained by spatially correlated HDF. We thereby showed that the socio-physical neighbourhood was significantly associated with health status, i.e., mental health at one location was spatially dependent on the mental health and HDF prevalent at neighbouring locations. Furthermore, the spatial patterns point to severe health disparities both within and between the slums. In addition to examining health outcomes, the methodology used here is also applicable to residuals of regression models, such as helping to avoid violating the assumption of data independence that underlies many statistical approaches. We assume that similar spatial structures can be found in other studies focussing on neighbourhood effects on health, and therefore argue for a more widespread incorporation of spatial statistics in epidemiological studies.
- Published
- 2011
- Full Text
- View/download PDF
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