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Bayesian Spatial Analysis for the Evaluation of Breast Cancer Detection Methods
Authors:Jeff Ching‐Fu Hsieh  Susanna M Cramb  James M McGree  Peter D Baade  Nathan AM Dunn  Kerrie L Mengersen
Institution:1. Queensland University of Technology, (QUT), , Brisbane, QLD, 4001 Australia;2. Cancer Council Queensland, (CCQ), , PO Box 201, Spring Hill, QLD, 4004 Australia;3. BreastScreen Queensland, (BSQ), Preventive Health Unit, Department of Health, , PO Box 2368 Fortitude Valley BC, QLD, 4006 Australia
Abstract:This study investigated the impact of spatial location on the effectiveness of population‐based breast screening in reducing breast cancer mortality compared to other detection methods among Queensland women. The analysis was based on linked population‐based datasets from BreastScreen Queensland and the Queensland Cancer Registry for the period of 1997–2008 for women aged less than 90 years at diagnosis. A Bayesian hierarchical regression modelling approach was adopted and posterior estimation was performed using Markov Chain Monte Carlo techniques. This approach accommodated sparse data resulting from rare outcomes in small geographic areas, while allowing for spatial correlation and demographic influences to be included. A relative survival model was chosen to evaluate the relative excess risk for each breast cancer related factor. Several models were fitted to examine the influence of demographic information, cancer stage, geographic information and detection method on women's relative survival. Overall, the study demonstrated that including the detection method and geographic information when assessing the relative survival of breast cancer patients helped capture unexplained and spatial variability. The study also found evidence of better survival among women with breast cancer diagnosed in a screening program than those detected otherwise, as well as lower risk for those residing in a more urban or socio‐economically advantaged region, even after adjusting for tumour stage, environmental factors and demographics. However, no evidence of dependency between method of detection and geographic location was found. This project provides a sophisticated approach to examining the benefit of a screening program while considering the influence of geographic factors.
Keywords:Bayesian modelling  breast screening  Markov Chain Monte Carlo  relative excess risk  relative survival  spatial variability
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