Detecting Spatial Health Disparities Using Disease Maps

09/05/2023
by   Luca Aiello, et al.
0

Epidemiologists commonly use regional aggregates of health outcomes to map mortality or incidence rates and identify geographic disparities. However, to detect health disparities across regions, it is necessary to identify "difference boundaries" that separate neighboring regions with significantly different spatial effects. This can be particularly challenging when dealing with multiple outcomes for each unit and accounting for dependence among diseases and across areal units. In this study, we address the issue of multivariate difference boundary detection for correlated diseases by formulating the problem in terms of Bayesian pairwise multiple comparisons by extending it through the introduction of adjacency modeling and disease graph dependencies. Specifically, we seek the posterior probabilities of neighboring spatial effects being different. To accomplish this, we adopt a class of multivariate areally referenced Dirichlet process models that accommodate spatial and interdisease dependence by endowing the spatial random effects with a discrete probability law. Our method is evaluated through simulation studies and applied to detect difference boundaries for multiple cancers using data from the Surveillance, Epidemiology, and End Results Program of the National Cancer Institute.

READ FULL TEXT
research
04/30/2022

Bayesian Models for Multivariate Difference Boundary Detection in Areal Data

Regional aggregates of health outcomes over delineated administrative un...
research
02/04/2021

Hierarchical Multivariate Directed Acyclic Graph Auto-Regressive (MDAGAR) models for spatial diseases mapping

Disease mapping is an important statistical tool used by epidemiologists...
research
11/26/2019

Spatial Modeling for Correlated Cancers Using Bivariate Directed Graphs

Disease maps are an important tool in cancer epidemiology used for the a...
research
03/23/2020

High-dimensional multivariate Geostatistics: A Bayesian Matrix-Normal Approach

Joint modeling of spatially-oriented dependent variables are commonplace...
research
10/26/2022

High-dimensional order-free multivariate spatial disease mapping

Despite the amount of research on disease mapping in recent years, the u...
research
10/21/2020

Improved inference for areal unit count data using graph-based optimisation

Spatial correlation in areal unit count data is typically modelled by a ...

Please sign up or login with your details

Forgot password? Click here to reset