Aim of this study is to assess the effect of smoothing a hospitalization rates map, based on the assumption that they may be influenced by the neighboring municipalities, the health service organization (HSO) and environmental risk factors. To smooth rates, two different Multilevel Multimembership Models were fitted: in the first the random effects were the municipality heterogeneity, the spatial dependence of the municipalities and the local HSO; in the second we replaced the local HSO effect by the environmental risk effect. The models were applied to show the spatial rates of hospitalization for lung cancer in Apulia in the year 2006. Maps shaded with the rates obtained at the end of the smoothing procedure seem to express a geographic d...
Achieving health equity has been identified as a major international challenge since the 1978 declar...
A method for modeling geographic processes using cencus-type data is introduced in an analysis of ma...
Abstract To discuss different trends of the geographical distribution of cancer mortality, progressi...
Abstract: Aim of this study is to assess the effect of smoothing, based on the assumption that hospi...
Background: If spatial representations of hospitalization rates are used, a problem of instability a...
International audienceBACKGROUND: Mapping a Cancer Atlas for the urban area of Grenoble revealed spa...
Disease mapping is used to identify high risk areas, inform resource allocation and generate hypothe...
Statistical models used to estimate the spatio-temporal pattern in disease risk from areal unit data...
Statistical models used to estimate the spatiotemporal pattern in disease risk from areal unit data ...
Multilevel modelling is used on problems arising from the analysis of spatially distributed health d...
The present study analyses the spatial distribution of cancer mortality rates in Campania (an Italia...
Kernel smoothing is a popular approach to estimating relative risk surface from data in the location...
A Bayesian hierarchical model was used to study the spatial variation in mortality risk from lung an...
To illustrate the ability of hierarchical Bayesian spatio-temporal models in capturing different geo...
Population-level disease risk varies between communities, and public health professionals are intere...
Achieving health equity has been identified as a major international challenge since the 1978 declar...
A method for modeling geographic processes using cencus-type data is introduced in an analysis of ma...
Abstract To discuss different trends of the geographical distribution of cancer mortality, progressi...
Abstract: Aim of this study is to assess the effect of smoothing, based on the assumption that hospi...
Background: If spatial representations of hospitalization rates are used, a problem of instability a...
International audienceBACKGROUND: Mapping a Cancer Atlas for the urban area of Grenoble revealed spa...
Disease mapping is used to identify high risk areas, inform resource allocation and generate hypothe...
Statistical models used to estimate the spatio-temporal pattern in disease risk from areal unit data...
Statistical models used to estimate the spatiotemporal pattern in disease risk from areal unit data ...
Multilevel modelling is used on problems arising from the analysis of spatially distributed health d...
The present study analyses the spatial distribution of cancer mortality rates in Campania (an Italia...
Kernel smoothing is a popular approach to estimating relative risk surface from data in the location...
A Bayesian hierarchical model was used to study the spatial variation in mortality risk from lung an...
To illustrate the ability of hierarchical Bayesian spatio-temporal models in capturing different geo...
Population-level disease risk varies between communities, and public health professionals are intere...
Achieving health equity has been identified as a major international challenge since the 1978 declar...
A method for modeling geographic processes using cencus-type data is introduced in an analysis of ma...
Abstract To discuss different trends of the geographical distribution of cancer mortality, progressi...