This paper describes the use of Bayesian latent variable models in the context of studies investigating the short-term effects of air pollution on health. Traditional Poisson or quasi-likelihood regression models used in this area assume that consecutive outcomes are independent (although the latter allows for overdispersion), which in many studies may be an untenable assumption as temporal correlation is to be expected. We compare this traditional approach with two Bayesian latent process models, which acknowledge the possibility of short-term autocorrelation. These include an autoregressive model that has previously been used in air pollution studies and an alternative based on a moving average structure that we describe here. A simulatio...
Polluted air contains a complex mixture of particles with a range of physical and chemi-cal properti...
The link between pollution and health is commonly explored by trying to identify the dominant cause ...
A number of time series studies provide evidence that air pollution levels are associated with daily...
The relationship between short-term exposure to air pollution and mortality or morbidity has been th...
AbstractThe long-term impact of air pollution on human health can be estimated from small-area ecolo...
Epidemiology 16, 225–237) studied the association between the daily number of visits to emergency de...
A binary latent variable is constructed to account for the correlation between multiple binary outco...
The long-term impact of air pollution on human health can be estimated from small-area ecological st...
In this article a time-varying coefficient model is developed to examine the relationship between ad...
In this work we propose a Bayesian ecological analysis in which a latent variable summarizes data on...
Summary. Estimation of the long-term health effects of air pollution is a challenging task, especial...
Estimation of the long-term health effects of air pollution is a challenging task, especially when m...
AbstractGeneralized Additive Models (GAMs) with natural cubic splines (NS) as smoothing functions ha...
Objective: To demonstrate an application of Bayesian model averaging (BMA) with generalised additive...
Estimating the long-term health impact of air pollution using an ecological spatio-temporal study de...
Polluted air contains a complex mixture of particles with a range of physical and chemi-cal properti...
The link between pollution and health is commonly explored by trying to identify the dominant cause ...
A number of time series studies provide evidence that air pollution levels are associated with daily...
The relationship between short-term exposure to air pollution and mortality or morbidity has been th...
AbstractThe long-term impact of air pollution on human health can be estimated from small-area ecolo...
Epidemiology 16, 225–237) studied the association between the daily number of visits to emergency de...
A binary latent variable is constructed to account for the correlation between multiple binary outco...
The long-term impact of air pollution on human health can be estimated from small-area ecological st...
In this article a time-varying coefficient model is developed to examine the relationship between ad...
In this work we propose a Bayesian ecological analysis in which a latent variable summarizes data on...
Summary. Estimation of the long-term health effects of air pollution is a challenging task, especial...
Estimation of the long-term health effects of air pollution is a challenging task, especially when m...
AbstractGeneralized Additive Models (GAMs) with natural cubic splines (NS) as smoothing functions ha...
Objective: To demonstrate an application of Bayesian model averaging (BMA) with generalised additive...
Estimating the long-term health impact of air pollution using an ecological spatio-temporal study de...
Polluted air contains a complex mixture of particles with a range of physical and chemi-cal properti...
The link between pollution and health is commonly explored by trying to identify the dominant cause ...
A number of time series studies provide evidence that air pollution levels are associated with daily...