posted on 2016-12-13, 15:14authored byS. M. Cramb, K. L. Mengersen, Paul C. Lambert, L. M. Ryan, P. D. Baade
Most of the few published models used to obtain small-area estimates of relative survival are based on a generalized linear model with piecewise constant hazards under a Bayesian formulation. Limitations of these models include the need to artificially split the time scale, restricted ability to include continuous covariates, and limited predictive capacity. Here, an alternative Bayesian approach is proposed: a spatial flexible parametric relative survival model. This overcomes previous limitations by combining the benefits of flexible parametric models: the smooth, well-fitting baseline hazard functions and predictive ability, with the Bayesian benefits of robust and reliable small-area estimates. Both spatially structured and unstructured frailty components are included. Spatial smoothing is conducted using the intrinsic conditional autoregressive prior. The model was applied to breast, colorectal, and lung cancer data from the Queensland Cancer Registry across 478 geographical areas. Advantages of this approach include the ease of including more realistic complexity, the feasibility of using individual-level input data, and the capacity to conduct overall, cause-specific, and relative survival analysis within the same framework. Spatial flexible parametric survival models have great potential for exploring small-area survival inequalities, and we hope to stimulate further use of these models within wider contexts.
Funding
PDB was supported by an Australian National Health and Medical
Research Council Career Development Fellowship (#1005334). KLM acknowledges support
from the Cooperative Research Centre for Spatial Information, whose activities are funded by
the Australian Commonwealth's Cooperative Research Centres Programme. LMR and KLM
acknowledge support from the ARC Centre of Excellence in Mathematical and Statistical
Frontiers.
History
Citation
Statistics in Medicine, 2016, 35 (29), pp. 5448-5463
Author affiliation
/Organisation/COLLEGE OF MEDICINE, BIOLOGICAL SCIENCES AND PSYCHOLOGY/School of Medicine/Department of Health Sciences