The paper introduces new methods for inference with count data registered on a set of aggregation units. Such data are omnipresent in epidemiology because of confidentiality issues: it is much more common to know the county in which an individual resides, say, than to know their exact location in space. Inference for aggregated data has traditionally made use of models for discrete spatial variation, e.g. conditional auto-regressive models. We argue that such discrete models can be improved from both a scientific and an inferential perspective by using spatiotemporally continuous models to model the aggregated counts directly. We introduce methods for delivering (limiting) continuous inference with spatiotemporal aggregated count data in wh...
This dissertation focuses on prediction and inference problems for complex spatiotemporal systems. I...
One of the main classes of spatial epidemiological studies is disease mapping, where the main aim is...
Many physical quantities around us vary across space or space-time. An example of a spatial quantity...
Spatially aggregated epidemiological data is nowadays increasingly common because of ethical concern...
Epidemic data often possess certain characteristics, such as the presence of many zeros, the spatial...
We propose a novel alternative to case-control sampling for the estimation of individual-level risk ...
In this paper we provide critical reviews of methods suggested for the analysis of aggregate count d...
In this paper, we develop a computationally efficient discrete approximation to log‐Gaussian Cox pro...
Spatial aggregation with respect to a population distribution involves estimating aggregate quantiti...
This paper deals with the development of statistical methodology for timely detection of incident di...
Diagnosis is often based on the exceedance or not of continuous health indicators of a predefined cu...
In this paper we first describe the class of log-Gaussian Cox processes (LGCPs) as models for spatia...
The main goal of disease mapping is to estimate disease risk and identify high-risk areas. Such anal...
Ideally, the data used for robust spatial prediction of disease distribution should be both high-res...
A spatial point process is a stochastic model determining the locations of events in some region A ⊂...
This dissertation focuses on prediction and inference problems for complex spatiotemporal systems. I...
One of the main classes of spatial epidemiological studies is disease mapping, where the main aim is...
Many physical quantities around us vary across space or space-time. An example of a spatial quantity...
Spatially aggregated epidemiological data is nowadays increasingly common because of ethical concern...
Epidemic data often possess certain characteristics, such as the presence of many zeros, the spatial...
We propose a novel alternative to case-control sampling for the estimation of individual-level risk ...
In this paper we provide critical reviews of methods suggested for the analysis of aggregate count d...
In this paper, we develop a computationally efficient discrete approximation to log‐Gaussian Cox pro...
Spatial aggregation with respect to a population distribution involves estimating aggregate quantiti...
This paper deals with the development of statistical methodology for timely detection of incident di...
Diagnosis is often based on the exceedance or not of continuous health indicators of a predefined cu...
In this paper we first describe the class of log-Gaussian Cox processes (LGCPs) as models for spatia...
The main goal of disease mapping is to estimate disease risk and identify high-risk areas. Such anal...
Ideally, the data used for robust spatial prediction of disease distribution should be both high-res...
A spatial point process is a stochastic model determining the locations of events in some region A ⊂...
This dissertation focuses on prediction and inference problems for complex spatiotemporal systems. I...
One of the main classes of spatial epidemiological studies is disease mapping, where the main aim is...
Many physical quantities around us vary across space or space-time. An example of a spatial quantity...