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Reducing bias in ecological studies: an evaluation of different methodologies
Authors:Gillian A Lancaster  Mick Green  Steven Lane
Institution:University of Liverpool, UK; Lancaster University, UK; University of Liverpool, UK
Abstract:Summary.  Statistical methods of ecological analysis that attempt to reduce ecological bias are empirically evaluated to determine in which circumstances each method might be practicable. The method that is most successful at reducing ecological bias is stratified ecological regression. It allows individual level covariate information to be incorporated into a stratified ecological analysis, as well as the combination of disease and risk factor information from two separate data sources, e.g. outcomes from a cancer registry and risk factor information from the census sample of anonymized records data set. The aggregated individual level model compares favourably with this model but has convergence problems. In addition, it is shown that the large areas that are covered by local authority districts seem to reduce between-area variability and may therefore not be as informative as conducting a ward level analysis. This has policy implications because access to ward level data is restricted.
Keywords:Aggregated compound multinomial model  Aggregated individual level model  Binomial model  Ecological regression  Stratified ecological analysis
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