In this article, we aim at assessing hierarchical Bayesian modeling for the analysis of multiple exposures and highly correlated effects in a multilevel setting. We exploit an artificial data set to apply our method and show the gains in the final estimates of the crucial parameters. As a motivating example to simulate data, we consider a real prospective cohort study designed to investigate the association of dietary exposures with the occurrence of colon-rectum cancer in a multilevel framework, where, e.g., individuals have been enrolled from different countries or cities. We rely on the presence of some additional information suitable to mediate the final effects of the exposures and to be arranged in a level-2 regression to model simila...
Intervention studies often rely on microcoded data of social interactions to pro-vide evidence of ch...
Hierarchical relationships between risk factors are seldom taken into account in epidemiological stu...
BACKGROUND: Bayesian hierarchical models have been proposed to combine evidence from different types...
In this article, we aim at assessing hierarchical Bayesian modeling for the analysis of multiple exp...
In this paper, we aim at assessing hierarchical Bayesian modeling for the analysis of multiple expos...
The paper deals with the analysis of multiple exposures on the occurrence of a disease. We consider ...
The paper deals with the analysis of the effects of multiple exposures on the occurrence of a diseas...
Bayesian data analysis involves describing data by meaningful mathematical models, and allocating cr...
This dissertation attempts to gather the main research topics I engaged during the past four years, ...
Background: Bayesian hierarchical models have been proposed to combine evidence from different types...
Hierarchical models play three important roles in modeling causal effects: (i) accounting for data c...
OBJECTIVE: Large health care datasets normally have a hierarchical structure, in terms of levels, as...
In spatial epidemiology, a scaling effect due to an aggre-gation of data from a finer to a coarser l...
Across the sciences, social sciences and engineering, applied statisticians seek to build understand...
In disease mapping, a scale effect due to an aggregation of data from a finer resolution level to a ...
Intervention studies often rely on microcoded data of social interactions to pro-vide evidence of ch...
Hierarchical relationships between risk factors are seldom taken into account in epidemiological stu...
BACKGROUND: Bayesian hierarchical models have been proposed to combine evidence from different types...
In this article, we aim at assessing hierarchical Bayesian modeling for the analysis of multiple exp...
In this paper, we aim at assessing hierarchical Bayesian modeling for the analysis of multiple expos...
The paper deals with the analysis of multiple exposures on the occurrence of a disease. We consider ...
The paper deals with the analysis of the effects of multiple exposures on the occurrence of a diseas...
Bayesian data analysis involves describing data by meaningful mathematical models, and allocating cr...
This dissertation attempts to gather the main research topics I engaged during the past four years, ...
Background: Bayesian hierarchical models have been proposed to combine evidence from different types...
Hierarchical models play three important roles in modeling causal effects: (i) accounting for data c...
OBJECTIVE: Large health care datasets normally have a hierarchical structure, in terms of levels, as...
In spatial epidemiology, a scaling effect due to an aggre-gation of data from a finer to a coarser l...
Across the sciences, social sciences and engineering, applied statisticians seek to build understand...
In disease mapping, a scale effect due to an aggregation of data from a finer resolution level to a ...
Intervention studies often rely on microcoded data of social interactions to pro-vide evidence of ch...
Hierarchical relationships between risk factors are seldom taken into account in epidemiological stu...
BACKGROUND: Bayesian hierarchical models have been proposed to combine evidence from different types...