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GIS and the Built Environment: An Overview Phil Hurvitz UW-CAUP-Urban Form Lab GIS and the Geography of Obesity Workshop August 3, 2005
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Overview Introduction to GIS and its role in epidemiology Comparing aggregated and individualistic data within GIS (parcel-level data) GIS data sets available to support built environment research in epidemiology Capturing environmental data in a GIS Example of 2 applications for GIS in public health
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What is GIS? A method for Capture, Storage, Manipulation, Analysis, and Display of spatially referenced data
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What is GIS? Any object or phenomenon that is or can be placed on a map can be stored, managed, and analyzed in a GIS. Built environment features Households Individuals Ground surface elevation or slope Movement of objects through time and/or space
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What is GIS? GIS stores feature geometries: representation of anything that exists in space points (houses, bus stops) lines (roads, trails, walking pathways) polygons (parcels, blocks, census boundaries) surfaces (slope, elevation, continuous distance) feature attributes: information about those objects house square footage, bus ridership, number of lanes, land use, population, health status
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The Role of GIS in Epidemiology Epidemiology and public health are interested in population-wide effects Population-wide effects can only be ascertained from individual-level measurements GIS allows the measurement of individual characteristics within an explicitly spatial context If location is an important factor in a public health issue, GIS should be incorporated as a data management and analysis tool
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Comparing Units of Spatial Data Capture, Storage, and Analysis (Parcels) Parcel-level data are inherently disaggregated Variation at the household-unit population level is maintained and can be used for analytical purposes
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Comparing Units of Spatial Data Capture, Storage, and Analysis (Parcels)
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Comparing Units of Spatial Data Capture, Storage, and Analysis (Census Tracts) Census data are inherently aggregated Within-tract variation is lost as geometries become larger and more aggregated Census data are inherently aggregated Within-tract variation is lost as geometries become larger and more aggregated
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Unit of Data Capture & Analysis Affects Quantitative Output
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Data Sets Available for Representing & Quantifying the Built Environment Polygon data models Census Zoning, Comprehensive Plan, UGB Parcels Parks Blocks Neighborhood Centers
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Data Sets Available for Representing & Quantifying the Built Environment Point data models Crosswalks Light signals Bus stops Households Businesses Groceries Restaurants
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Data Sets Available for Representing & Quantifying the Built Environment Line data models Streets, highways Bus lines Bike lanes Walking/cycling trails
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GIS Software Available to Analyze Environmental Data Basic methods use analytical tools within the GIS, typically run within a graphical user interface
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GIS Software Available to Analyze Environmental Data: Customization GIS has a robust application programming interface Allows the automation of measurement methods
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Example Application: The WBC Analyst Automates several measurement methods Buffer measures: built environment characteristics near the home location Land use proportions Count/length/area of features, e.g., groceries, restaurants, bus stops, streets, sidewalks Proximity measures: airline and network distance from the home location to various other locations, land uses, etc
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WBC Analyst: Proximity and Buffer Measures > 200 different land use metrics within 3 km of home location
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WBC Analyst: Neighborhood Center Analysis Automates several measurement methods Neighborhood Center (NC) measures: identifying and quantifying “clusters” of related land uses, e.g., cluster of [grocery + restaurant + tavern + theater] or [church + school] Buffer and proximity measures also calculated for NCs
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WBC Analyst: Neighborhood Center Analysis
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Example Application: Fast Food Location Analysis Analysis of location of fast food restaurants Where are they with respect to demographics? How do the densities of these restaurants vary through space?
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Fast Food Location Analysis Fast food restaurant addresses are available online (Qwest – dexonline.com) Online telephone directories have regular structure that can be extracted with customized scripts
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Fast Food Location Analysis
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Asset mapping: address geocoding places fast food restaurants in common spatial framework
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Fast Food Location Analysis Analysis of locations Kernel interpolation method Calculates density of fast food restaurants at all locations across study area Parameters are easily controlled area classification values
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Fast Food Location Analysis “Service areas” by allocation analysis network allocation costdistance allocation Voronoi allocation
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Fast Food Location Analysis Sociodemographic pattern? Density of fast food restaurants may be higher in census tracts with greater poverty levels Pearson’s correlation = 0.49, p < 0.005
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