Although much progress has been made in the United States, childhood lead
poisoning remains a critical environmental health problem. Lead causes many problems
such as learning disabilities, coma, and even death. Many studies have focused on these
problems in the last three decades, but Geographic Information System (GIS) technology
has only been employed since the 1990s. In addition, no research has examined the
differences among the models based on the different geographic locations and size of
cities. In this study, screening results of childhood lead levels in Indiana are evaluated
based on a census tract geography. The relationship between the number of children less
than six years old with elevated Blood Lead Levels (BLLs) and social-economic factors
such as percentage of children in poverty and age of housing stock are examined for
selected urban areas in Indiana. Stepwise and backward elimination are used to choose
the independent variables and least squares regression methods are used to build
evaluation models according to the location and size of urban areas in Indiana. Finally, a
comparison is made among these models to examine whether there is any difference
according to city size and location, and whether a state level model would be suitable for
the selected urban areas. The results show that backward elimination is a better way to
select the independent variables in most of the models. The census tracts with high value
of residuals are located in the outer periphery of most urban areas. For some models, the
residuals are lower in the census tracts with a high ratio of children screened. The results
also manifest that some of the same parameters exist in the models of the same urban size
or location in Indiana and geographic factors could be potential elements in building
model for children’s EBLLs. None of the models have exactly the same parameters. In
addition, the comparison shows that the state model is not as accurate as the urban area
models. How to balance the weakness of both state model and urban area model could be
an extension for further study. / Department of Geography
Identifer | oai:union.ndltd.org:BSU/oai:cardinalscholar.bsu.edu:123456789/193513 |
Date | January 2009 |
Creators | Zhao, Yunzhong. |
Contributors | Turcotte, Kevin M. |
Source Sets | Ball State University |
Detected Language | English |
Format | xi, 106 p. : digital, PDF file, ill. (some col.), col. maps. |
Source | CardinalScholar 1.0 |
Coverage | n-us-in |
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