In this paper we introduce a new R package, PrevMap, for the analysis of spatially referenced prevalence data, including both classical maximum likelihood and Bayesian approaches to parameter estimation and plug-in or Bayesian prediction. More specifically, the new package implements fitting of geostatistical models for binomial data, based on two distinct approaches. The first approach uses a generalized linear mixed model with logistic link function, binomial error distribution and a Gaussian spatial process as a stochastic component in the linear predictor. A simpler, but approximate, alternative approach consists of fitting a linear Gaussian model to empirical-logit-transformed data. The package also includes implementations of convolut...
We present a state-of-the-art application of smoothing for dependent bivariate binomial spatial data...
Model-based Geostatistics for Global Public Health: Methods and Applications provides an introductor...
Maps of the geographical variation in prevalence play an important role in large-scale programs for ...
In this paper we introduce a new R package, PrevMap, for the analysis of spatially referenced preval...
It provides functions for both likelihood-based and Bayesian analysis of spatially referenced preval...
In this paper, we set out general principles and develop geostatistical methods for the analysis of ...
In low-resource settings, prevalence mapping relies on empirical prevalence data from a finite, ofte...
This paper provides statistical guidance on the development and application of model-based geostatis...
This paper provides statistical guidance on the development and application of model-based geostatis...
Geostatistical methods are increasingly used in low-resource settings where disease registries are e...
We present a state-of-the-art application of smoothing for dependent bivariate binomial spatial data...
When fitting a binomial geostatistical model to data obtained by spatially discrete sampling, techni...
We describe the R package geoCount for the analysis of geostatistical count data. The package perfor...
In epidemiologic studies, researchers are commonly interested in quantifying geospatial effects on t...
This paper briefly describes geostatistical models for Gaussian and non-Gaussian data and demonstrat...
We present a state-of-the-art application of smoothing for dependent bivariate binomial spatial data...
Model-based Geostatistics for Global Public Health: Methods and Applications provides an introductor...
Maps of the geographical variation in prevalence play an important role in large-scale programs for ...
In this paper we introduce a new R package, PrevMap, for the analysis of spatially referenced preval...
It provides functions for both likelihood-based and Bayesian analysis of spatially referenced preval...
In this paper, we set out general principles and develop geostatistical methods for the analysis of ...
In low-resource settings, prevalence mapping relies on empirical prevalence data from a finite, ofte...
This paper provides statistical guidance on the development and application of model-based geostatis...
This paper provides statistical guidance on the development and application of model-based geostatis...
Geostatistical methods are increasingly used in low-resource settings where disease registries are e...
We present a state-of-the-art application of smoothing for dependent bivariate binomial spatial data...
When fitting a binomial geostatistical model to data obtained by spatially discrete sampling, techni...
We describe the R package geoCount for the analysis of geostatistical count data. The package perfor...
In epidemiologic studies, researchers are commonly interested in quantifying geospatial effects on t...
This paper briefly describes geostatistical models for Gaussian and non-Gaussian data and demonstrat...
We present a state-of-the-art application of smoothing for dependent bivariate binomial spatial data...
Model-based Geostatistics for Global Public Health: Methods and Applications provides an introductor...
Maps of the geographical variation in prevalence play an important role in large-scale programs for ...