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Generating geochemical and mineralogy distributions of soil in the conterminous United States using Bayesian hierarchical spatial models

February 19, 2026

Characterizing geochemical and mineralogical soil distributions across large spatial extents is essential for understanding mineral resources, ecosystem processes, and environmental risks. Rasters of soil geochemical distributions for the conterminous United States, however, are limited. We present a Bayesian modeling workflow and tool for generating predictive geochemical and mineralogy distribution maps for the conterminous United States using integrated nested Laplace approximation (INLA) with the stochastic partial differential equation approach. By modeling soil geostatistical data with environmental covariates (soil properties, topography, climate, and land cover), we generate predictive distributions of soil geochemistry that can be mapped or extracted for further analyses. As an example, we model the spatial distribution of trace elements in soil relevant to vertebrate health (cobalt, copper, iron, manganese, selenium, and zinc) and provide a workflow that can be used to generate and visualize predictive distributions of 39 other major and trace elements and 21 minerals of the soil survey, supporting a variety of ecological, environmental, and agricultural applications.

Publication Year 2026
Title Generating geochemical and mineralogy distributions of soil in the conterminous United States using Bayesian hierarchical spatial models
DOI 10.1016/j.mex.2026.103836
Authors Kristin J. Bondo, Tiffany M. Wolf, W. David Walter
Publication Type Article
Publication Subtype Journal Article
Series Title MethodsX
Index ID 70274651
Record Source USGS Publications Warehouse
USGS Organization Coop Res Unit Leetown
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