scholarly journals The Association Between Urban Tree Cover and Gun Assault: A Case-Control and Case-Crossover Study

2017 ◽  
Vol 186 (3) ◽  
pp. 289-296 ◽  
Author(s):  
Michelle C. Kondo ◽  
Eugenia C. South ◽  
Charles C. Branas ◽  
Therese S. Richmond ◽  
Douglas J. Wiebe
Author(s):  
Michelle Kondo ◽  
Eugenia South ◽  
Charles Branas ◽  
Therese Richmond ◽  
Douglas Wiebe

2012 ◽  
Vol 49 (3) ◽  
pp. 428-449 ◽  
Author(s):  
Zoltan Szantoi ◽  
Francisco Escobedo ◽  
John Wagner ◽  
Joysee M. Rodriguez ◽  
Scot Smith

2020 ◽  
Vol 12 (18) ◽  
pp. 3017
Author(s):  
Shirisa Timilsina ◽  
Jagannath Aryal ◽  
Jamie B. Kirkpatrick

Urban trees provide social, economic, environmental and ecosystem services benefits that improve the liveability of cities and contribute to individual and community wellbeing. There is thus a need for effective mapping, monitoring and maintenance of urban trees. Remote sensing technologies can effectively map and monitor urban tree coverage and changes over time as an efficient and low-cost alternative to field-based measurements, which are time consuming and costly. Automatic extraction of urban land cover features with high accuracy is a challenging task, and it demands object based artificial intelligence workflows for efficiency and thematic accuracy. The aim of this research is to effectively map urban tree cover changes and model the relationship of such changes with socioeconomic variables. The object-based convolutional neural network (CNN) method is illustrated by mapping urban tree cover changes between 2005 and 2015/16 using satellite, Google Earth imageries and Light Detection and Ranging (LiDAR) datasets. The training sample for CNN model was generated by Object Based Image Analysis (OBIA) using thresholds in a Canopy Height Model (CHM) and the Normalised Difference Vegetation Index (NDVI). The tree heatmap produced from the CNN model was further refined using OBIA. Tree cover loss, gain and persistence was extracted, and multiple regression analysis was applied to model the relationship with socioeconomic variables. The overall accuracy and kappa coefficient of tree cover extraction was 96% and 0.77 for 2005 images and 98% and 0.93 for 2015/16 images, indicating that the object-based CNN technique can be effectively implemented for urban tree coverage mapping and monitoring. There was a decline in tree coverage in all suburbs. Mean parcel size and median household income were significantly related to tree cover loss (R2 = 58.5%). Tree cover gain and persistence had positive relationship with tertiary education, parcel size and ownership change (gain: R2 = 67.8% and persistence: R2 = 75.3%). The research findings demonstrated that remote sensing data with intelligent processing can contribute to the development of policy input for management of tree coverage in cities.


2021 ◽  
Vol 449 ◽  
pp. 109553
Author(s):  
Paramita Sinha ◽  
Robert C. Coville ◽  
Satoshi Hirabayashi ◽  
Brian Lim ◽  
Theodore A. Endreny ◽  
...  

2020 ◽  
Vol 25 (20) ◽  
Author(s):  
Marino Faccini ◽  
Antonio Giampiero Russo ◽  
Maira Bonini ◽  
Sara Tunesi ◽  
Rossella Murtas ◽  
...  

In July 2018, a large outbreak of Legionnaires’ disease (LD) caused by Legionella pneumophila serogroup 1 (Lp1) occurred in Bresso, Italy. Fifty-two cases were diagnosed, including five deaths. We performed an epidemiological investigation and prepared a map of the places cases visited during the incubation period. All sites identified as potential sources were investigated and sampled. Association between heavy rainfall and LD cases was evaluated in a case-crossover study. We also performed a case–control study and an aerosol dispersion investigation model. Lp1 was isolated from 22 of 598 analysed water samples; four clinical isolates were typed using monoclonal antibodies and sequence-based typing. Four Lp1 human strains were ST23, of which two were Philadelphia and two were France-Allentown subgroup. Lp1 ST23 France-Allentown was isolated only from a public fountain. In the case-crossover study, extreme precipitation 5–6 days before symptom onset was associated with increased LD risk. The aerosol dispersion model showed that the fountain matched the case distribution best. The case–control study demonstrated a significant eightfold increase in risk for cases residing near the public fountain. The three studies and the matching of clinical and environmental Lp1 strains identified the fountain as the source responsible for the epidemic.


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