Literature DB >> 21132098

Combining Areal and Point Data in Geostatistical Interpolation: Applications to Soil Science and Medical Geography.

Pierre Goovaerts1.   

Abstract

A common issue in spatial interpolation is the combination of data measured over different spatial supports. For example, information available for mapping disease risk typically includes point data (e.g. patients' and controls' residence) and aggregated data (e.g. socio-demographic and economic attributes recorded at the census track level). Similarly, soil measurements at discrete locations in the field are often supplemented with choropleth maps (e.g. soil or geological maps) that model the spatial distribution of soil attributes as the juxtaposition of polygons (areas) with constant values. This paper presents a general formulation of kriging that allows the combination of both point and areal data through the use of area-to-area, area-to-point, and point-to-point covariances in the kriging system. The procedure is illustrated using two data sets: (1) geological map and heavy metal concentrations recorded in the topsoil of the Swiss Jura, and (2) incidence rates of late-stage breast cancer diagnosis per census tract and location of patient residences for three counties in Michigan. In the second case, the kriging system includes an error variance term derived according to the binomial distribution to account for varying degree of reliability of incidence rates depending on the total number of cases recorded in those tracts. Except under the binomial kriging framework, area-and-point (AAP) kriging ensures the coherence of the prediction so that the average of interpolated values within each mapping unit is equal to the original areal datum. The relationships between binomial kriging, Poisson kriging, and indicator kriging are discussed under different scenarios for the population size and spatial support. Sensitivity analysis demonstrates the smaller smoothing and greater prediction accuracy of the new procedure over ordinary and traditional residual kriging based on the assumption that the local mean is constant within each mapping unit.

Entities:  

Year:  2010        PMID: 21132098      PMCID: PMC2995922          DOI: 10.1007/s11004-010-9286-5

Source DB:  PubMed          Journal:  Math Geosci            Impact factor:   2.576


  12 in total

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3.  A coherent geostatistical approach for combining choropleth map and field data in the spatial interpolation of soil properties.

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5.  Spatiotemporal Imputation of MAIAC AOD Using Deep Learning with Downscaling.

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6.  From Natural Resources Evaluation to Spatial Epidemiology: 25 Years in the Making.

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7.  Disaggregation of legacy soil data using area to point kriging for mapping soil organic carbon at the regional scale.

Authors:  Ruth Kerry; Pierre Goovaerts; Barry G Rawlins; Ben P Marchant
Journal:  Geoderma       Date:  2012-01-15       Impact factor: 6.114

8.  Geospatial relationships of air pollution and acute asthma events across the Detroit-Windsor international border: study design and preliminary results.

Authors:  Lawrence D Lemke; Lois E Lamerato; Xiaohong Xu; Jason C Booza; John J Reiners; Delbert M Raymond Iii; Paul J Villeneuve; Eric Lavigne; Dana Larkin; Helene J Krouse
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