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Open AccessJournal ArticleDOI

Filling the gaps: spatial interpolation of residential survey data in the estimation of neighborhood characteristics.

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TLDR
This work investigated whether interpolation of neighborhood survey data was aided by information on spatial dependencies and supplementary data, and compared 4 interpolation models using error statistics and Pearson correlation coefficients from repeated replications of cross-validations.
Abstract
The measurement of area-level attributes remains a major challenge in studies of neighborhood health effects. Even when neighborhood survey data are collected, they necessarily have incomplete spatial coverage. We investigated whether interpolation of neighborhood survey data was aided by information on spatial dependencies and supplementary data. Neighborhood "availability of healthy foods" was measured in a population-based survey of 5186 persons in Baltimore, New York, and Forsyth County (North Carolina). The following supplementary data were compiled from Census 2000 and InfoUSA, Inc.: distance to supermarkets, density of supermarkets and fruit and vegetable stores, housing density, distance to a high-income area, and percent of households that do not own a vehicle. We compared 4 interpolation models (ordinary least squares, residual kriging, spatial error regression, and thin-plate splines) using error statistics and Pearson correlation coefficients (r) from repeated replications of cross-validations. There was positive spatial autocorrelation in neighborhood availability of healthy foods (by site, Moran coefficient range = 0.10-0.28; all P<0.0001). Prediction performances were generally similar for the evaluated models (r approximately 0.35 for Baltimore and Forsyth; r approximately 0.54 for New York). Supplementary data accounted for much of the spatial autocorrelation and, thus, spatial modeling was only advantageous when spatial correlation was at least moderate. A variety of interpolation techniques will likely need to be utilized in order to increase the data available for examining health effects of residential environments. The most appropriate method will vary depending on the construct of interest, availability of relevant supplementary data, and types of observed spatial patterns.

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Journal ArticleDOI

Neighborhoods and health.

TL;DR: This chapter summarizes key work in this area with a particular focus on chronic disease outcomes (specifically obesity and related risk factors) and mental health ( specifically depression and depressive symptoms) and empirical work is classified into two main eras.
Journal ArticleDOI

Geographic Life Environments and Coronary Heart Disease: A Literature Review, Theoretical Contributions, Methodological Updates, and a Research Agenda

TL;DR: It is posited that neighborhood social interactions affect the wide set of affective, cognitive, and relational experiences individuals have in their neighborhoods, which in turn influence the psycho-cognitive antecedents of behavior and in the end shape health behavior.
Journal ArticleDOI

A Review of Spatial Methods in Epidemiology, 2000–2010

TL;DR: The huge growth in spatial epidemiology is documented, the tools that have been employed are summarized, and emerging areas that are likely to be important to future spatial analysis in public health are noted.
Journal ArticleDOI

A heterogeneity test for fine-scale genetic structure.

TL;DR: A general nonparametric heterogeneity test for fine‐scale genetic structure is developed, elaborating on standard autocorrelation methods for pairs of individuals, and it is shown that the autcorrelation pattern diverges somewhat between continuous and patchy habitat types.
References
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TL;DR: This article presents bootstrap methods for estimation, using simple arguments, with Minitab macros for implementing these methods, as well as some examples of how these methods could be used for estimation purposes.
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Applied Regression Analysis and Other Multivariable Methods

TL;DR: In this article, the authors compare two straight line regression models and conclude that the Straight Line Regression Equation does not measure the strength of the Straight-line Relationship, but instead is a measure of the relationship between two straight lines.
Journal ArticleDOI

An Introduction to Applied Geostatistics

Richard A. Bilonick
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TL;DR: In this paper, an Introduction to Applied Geostatistics is presented, with a focus on the application of applied geometrics in the area of geostatistic applications.
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An Introduction to Applied Geostatistics

TL;DR: In this paper, Krigeage and continuite spatiale were used for interpolation of a variogramme with anisotropic interpolation reference record created on 2005-06-20, modified on 2011-09-01.
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Geostatistics for natural resources evaluation

TL;DR: In this article, an advanced-level introduction to geostatistics and Geostatistical methodology is provided, including tools for description, quantitative modeling of spatial continuity, spatial prediction, and assessment of local uncertainty and stochastic simulation.
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