The Spatial Clustering of Child Maltreatment: Are Micro-Social Environments Involved?

Author(s):  
Tony Vinson ◽  
Eileen Baldry
2019 ◽  
Vol 25 (1) ◽  
pp. 70-84 ◽  
Author(s):  
Gia Elise Barboza-Salerno

The present research examines child maltreatment allegations (CMAs) in San Diego County, California, exploring spatial patterns of Child Protective Services involvement and multiple, multidimensional measures of neighborhood social vulnerability. Results showed significant patterns of spatial clustering (i.e., hot and cold spots) of CMAs across the county (Moran’s I = .316, p < .001). A geographically weighted regression (GWR) was implemented to examine the relationship between CMAs and social vulnerability at the census-tract level, thereby overcoming the deficiencies of global models. Nonstationarity was detected across four indices of vulnerability (socioeconomic status, race/ethnicity, household composition, and health vulnerability) as well as proximity to on-premise alcohol outlets, percentage of residents in each census tract affected by food deserts, and population density, in some cases showing countervailing effects depending on spatial location. A hierarchical clustering was performed on the GWR coefficients to identify spatial regimes, or clusters, across the county. The results yielded six spatial regimes of social vulnerability differentially related to CMA rates. The present study demonstrates the novelty of GWR in combination with a hierarchical cluster analysis for exploring how local contextual processes influence child maltreatment reporting rates across the county.


Author(s):  
Badrinath Roysam ◽  
Hakan Ancin ◽  
Douglas E. Becker ◽  
Robert W. Mackin ◽  
Matthew M. Chestnut ◽  
...  

This paper summarizes recent advances made by this group in the automated three-dimensional (3-D) image analysis of cytological specimens that are much thicker than the depth of field, and much wider than the field of view of the microscope. The imaging of thick samples is motivated by the need to sample large volumes of tissue rapidly, make more accurate measurements than possible with 2-D sampling, and also to perform analysis in a manner that preserves the relative locations and 3-D structures of the cells. The motivation to study specimens much wider than the field of view arises when measurements and insights at the tissue, rather than the cell level are needed.The term “analysis” indicates a activities ranging from cell counting, neuron tracing, cell morphometry, measurement of tracers, through characterization of large populations of cells with regard to higher-level tissue organization by detecting patterns such as 3-D spatial clustering, the presence of subpopulations, and their relationships to each other. Of even more interest are changes in these parameters as a function of development, and as a reaction to external stimuli. There is a widespread need to measure structural changes in tissue caused by toxins, physiologic states, biochemicals, aging, development, and electrochemical or physical stimuli. These agents could affect the number of cells per unit volume of tissue, cell volume and shape, and cause structural changes in individual cells, inter-connections, or subtle changes in higher-level tissue architecture. It is important to process large intact volumes of tissue to achieve adequate sampling and sensitivity to subtle changes. It is desirable to perform such studies rapidly, with utmost automation, and at minimal cost. Automated 3-D image analysis methods offer unique advantages and opportunities, without making simplifying assumptions of tissue uniformity, unlike random sampling methods such as stereology.12 Although stereological methods are known to be statistically unbiased, they may not be statistically efficient. Another disadvantage of sampling methods is the lack of full visual confirmation - an attractive feature of image analysis based methods.


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