scholarly journals Spatial variability of COVID-19 and its risk factors in Nigeria: A spatial regression method

2022 ◽  
Vol 138 ◽  
pp. 102621
Author(s):  
Taye Bayode ◽  
Ayobami Popoola ◽  
Olawale Akogun ◽  
Alexander Siegmund ◽  
Hangwelani Magidimisha-Chipungu ◽  
...  
2008 ◽  
Vol 69 (1) ◽  
pp. 125-140 ◽  
Author(s):  
V. A. Moltchanov ◽  
A. I. Mikhal’skii

2015 ◽  
Vol 10 (1) ◽  
Author(s):  
Victor M. Mukonka ◽  
Emmanuel Chanda ◽  
Mulakwa Kamuliwo ◽  
Maha A. Elbadry ◽  
Pauline K. Wamulume ◽  
...  

Malaria is an important health burden in Zambia with proper diagnosis remaining as one of the biggest challenges. The need for reliable diagnostics is being addressed through the introduction of rapid diagnostic tests (RDTs). However, without sufficient laboratory amenities in many parts of the country, diagnosis often still relies on non-specific, clinical symptoms. In this study, geographical information systems were used to both visualize and analyze the spatial distribution and the risk factors related to the diagnosis of malaria. The monthly reported, district-level number of malaria cases from January 2009 to December 2014 were collected from the National Malaria Control Center (NMCC). Spatial statistics were used to reveal cluster tendencies that were subsequently linked to possible risk factors, using a non-spatial regression model. Significant, spatio-temporal clusters of malaria were spotted while the introduction of RDTs made the number of clinically diagnosed malaria cases decrease by 33% from 2009 to 2014. The limited access to road network(s) was found to be associated with higher levels of malaria, which can be traced by the expansion of health promotion interventions by the NMCC, indicating enhanced diagnostic capability. The capacity of health facilities has been strengthened with the increased availability of proper diagnostic tools and through retraining of community health workers. To further enhance spatial decision support systems, a multifaceted approach is required to ensure mobilization and availability of human, infrastructural and technological resources. Surveillance based on standardized geospatial or other analytical methods should be used by program managers to design, target, monitor and assess the spatio-temporal dynamics of malaria diagnostic resources country-wide.


2021 ◽  
pp. 009385482110342
Author(s):  
Gregory D. Breetzke ◽  
Sophie Curtis-Ham ◽  
Jarrod Gilbert ◽  
Che Tibby

In this exploratory study, we identify the spatial risk factors associated with gang membership and gang crime in New Zealand using social disorganization as a theoretical framework. Gang membership data from the Gang Intelligence Center and gang crime data from New Zealand Police are included in spatial regression models to identify risk factors. Overall marginal support was found for the use of social disorganization constructs to explain gang membership and gang crime in New Zealand. Higher deprivation and higher diversity were both found to be associated with gang membership and gang crime, respectively. Some similarities and notable differences were observed between our results and the mainly U.S.-centric results of past spatial gang research. This study allows for a greater understanding of the generalizability of the social disorganization theory to explain gang membership and gang crime in areas with markedly different cultural perspectives and ethnocentricities to the United States.


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