Primary Care Trust (PCT) estimates of survival lack robustness as there are small numbers of deaths per year in each area, even when incidence is high. We assess PCT-level spatial variation in prostate cancer survival using Bayesian spatial models of excess mortality. We extracted data on men diagnosed with prostate cancer between 1990 and 1999 from the Northern and Yorkshire Cancer Registry and Information Service database. Models were adjusted for age at diagnosis, period of diagnosis and deprivation. All covariates had a significant association with excess mortality; men from more deprived areas, older age at diagnosis and diagnosed in 1990–1994 had higher excess mortality. The unadjusted relative excess risks (RER) of death by PCT range...
Objective: To improve estimation of regional variation in cancer survival and identify cancers to wh...
Background: Prostate cancer incidence, treatment, and survival rates vary throughout the UK, but lit...
Reliable modelling of the dynamics of cancer morbidity risk is important, not least due to its signi...
Primary Care Trust (PCT) estimates of survival lack robustness as there are small numbers of deaths ...
BackgroundProstate cancer (PC) primarily affects elderly men. However, the specific features of case...
Prostate cancer (PC) primarily affects elderly men. However, the specific features of cases diagnose...
Interpreting changes over time in small-area variation in cancer survival, in light of changes in ca...
Objectives: To determine whether the previously reported urban–rural differential in prostate cancer...
Based on the example of data on breast cancer survival in a specific area in France, this paper desc...
Most of the few published models used to obtain small-area estimates of relative survival are based ...
Most of the few published models used to obtain small-area estimates of relative survival are based ...
Background Multilevel and spatial models are being increasingly used to obtain substantive informati...
Abstract Background As part of a long-term initiative to improve cancer surveillance in New York Sta...
BACKGROUND: Cancer survival in Spearhead Primary Care trusts (PCTs) is lower than in the rest of Eng...
A Bayesian hierarchical model was used to study the spatial variation in mortality risk from lung an...
Objective: To improve estimation of regional variation in cancer survival and identify cancers to wh...
Background: Prostate cancer incidence, treatment, and survival rates vary throughout the UK, but lit...
Reliable modelling of the dynamics of cancer morbidity risk is important, not least due to its signi...
Primary Care Trust (PCT) estimates of survival lack robustness as there are small numbers of deaths ...
BackgroundProstate cancer (PC) primarily affects elderly men. However, the specific features of case...
Prostate cancer (PC) primarily affects elderly men. However, the specific features of cases diagnose...
Interpreting changes over time in small-area variation in cancer survival, in light of changes in ca...
Objectives: To determine whether the previously reported urban–rural differential in prostate cancer...
Based on the example of data on breast cancer survival in a specific area in France, this paper desc...
Most of the few published models used to obtain small-area estimates of relative survival are based ...
Most of the few published models used to obtain small-area estimates of relative survival are based ...
Background Multilevel and spatial models are being increasingly used to obtain substantive informati...
Abstract Background As part of a long-term initiative to improve cancer surveillance in New York Sta...
BACKGROUND: Cancer survival in Spearhead Primary Care trusts (PCTs) is lower than in the rest of Eng...
A Bayesian hierarchical model was used to study the spatial variation in mortality risk from lung an...
Objective: To improve estimation of regional variation in cancer survival and identify cancers to wh...
Background: Prostate cancer incidence, treatment, and survival rates vary throughout the UK, but lit...
Reliable modelling of the dynamics of cancer morbidity risk is important, not least due to its signi...