Maps are frequently used to display spatial distributions of parameters of interest, such as cancer rates or average pollutant concentrations by county. It's well known that plotting observed rates can have serious drawbacks when sample sizes vary by area, since very high (and low) observed rates are found disproportionately in poorly-sampled areas. Unfortunately, adjusting the observed rates to account for the effects of small-sample noise can introduce an opposite effect, in which the highest adjusted rates tend to be found disproportionately in wellsampled areas. In either case, the maps can be difficult to interpret because the display of spatial variation in the underlying parameters of interest is confounded with spatial variatio...
© 2018, The Author(s). Disease mapping applications generally assume homogeneous regression effects ...
The increase in Bayesian models available for disease mapping at a small area level can pose challen...
<p>Estimates of demographic and spatial expansion model parameters and raggedness indices based on m...
Abstract Background Disease maps of crude rates from routinely collected health data indexed at a sm...
Spatial smoothing is one of the spatial operations in GIS. It makes spatial information vague and am...
The classical likelihood ratio spatial scan statistics has been widely used in spatial epidemiology ...
In many ecological problems spatial data are collected to satisfy the requirement that the populatio...
The geographic distribution of lung cancer rates tends to vary across a geographic landscape, and co...
Disease maps are powerful tools for depicting spatial variations in disease risk and its underlying ...
In epidemiologic studies, researchers are commonly interested in quantifying geospatial effects on t...
<p>Map of spatial random effects. Red, orange, and yellow colors indicate areas where unknown, spati...
Governments and statistical agencies often make available area-level data on a number of topics (mor...
<p>Choropleth representation has been the most widely applied method to represent rates in disease m...
Abstract: Choropleth maps are frequently used to analyse spatial variations in the risk of a disease...
Thesis (Ph.D.)--University of Washington, 2014Air pollution epidemiology cohort studies often implem...
© 2018, The Author(s). Disease mapping applications generally assume homogeneous regression effects ...
The increase in Bayesian models available for disease mapping at a small area level can pose challen...
<p>Estimates of demographic and spatial expansion model parameters and raggedness indices based on m...
Abstract Background Disease maps of crude rates from routinely collected health data indexed at a sm...
Spatial smoothing is one of the spatial operations in GIS. It makes spatial information vague and am...
The classical likelihood ratio spatial scan statistics has been widely used in spatial epidemiology ...
In many ecological problems spatial data are collected to satisfy the requirement that the populatio...
The geographic distribution of lung cancer rates tends to vary across a geographic landscape, and co...
Disease maps are powerful tools for depicting spatial variations in disease risk and its underlying ...
In epidemiologic studies, researchers are commonly interested in quantifying geospatial effects on t...
<p>Map of spatial random effects. Red, orange, and yellow colors indicate areas where unknown, spati...
Governments and statistical agencies often make available area-level data on a number of topics (mor...
<p>Choropleth representation has been the most widely applied method to represent rates in disease m...
Abstract: Choropleth maps are frequently used to analyse spatial variations in the risk of a disease...
Thesis (Ph.D.)--University of Washington, 2014Air pollution epidemiology cohort studies often implem...
© 2018, The Author(s). Disease mapping applications generally assume homogeneous regression effects ...
The increase in Bayesian models available for disease mapping at a small area level can pose challen...
<p>Estimates of demographic and spatial expansion model parameters and raggedness indices based on m...