It is the primary focus of this aim to broaden the definition of the survivor, density and hazard function to include spatial labeling by explicit modeling of the spatial dependency. This involves the direct derivation of (s,t), S(s,t), and h(s,t and their related marginal and conditional functions. The application of these novel derivations with standard geographically-augmented survival distributions will be examined. Spatially dependent censoring is also a focus as a sub- aim. We plan to model this aspect and evaluate the role of this in direct spatial and contextual survival models. Predictors in survival modeling can be individual (age, gender, race etc) or contextual (e. g. census tract demographics). They can also vary spatially in their linkage to survival risk. We propose to examine the development of models where predictor selection has a spatial label and where some regions do include and other exclude predictors in models. We plan to implement the modeling approaches above via the use of the Bayesian paradigm and will likely use McMC based packages or, if appropriate, INLA. Evaluation will be simulation based and we will use R and associated linked software (MCMCpack, BRugs, R2WinBUGS, R2OpenBUGS) for this purpose.

Public Health Relevance

This proposal focusses on the development and evaluation of novel methodology for the analysis of spatially referenced cancer survival. First we aim to broaden the definition of the survivor, density and hazard function to include spatial labeling by explicit modeling of the spatial dependency within these functions. As a sub-aim we also wish to explore models for spatially-dependent censoring. Second we aim to develop novel approaches to incorporation of predictor effects within different sub-regions of study areas. Finally, the simulation-based evaluation of the new methods and their computational implementation will be pursued.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Small Research Grants (R03)
Project #
5R03CA176702-02
Application #
8828611
Study Section
Special Emphasis Panel (ZCA1)
Program Officer
Zhu, Li
Project Start
2014-04-01
Project End
2016-03-31
Budget Start
2015-04-01
Budget End
2016-03-31
Support Year
2
Fiscal Year
2015
Total Cost
Indirect Cost
Name
Medical University of South Carolina
Department
Public Health & Prev Medicine
Type
Schools of Medicine
DUNS #
183710748
City
Charleston
State
SC
Country
United States
Zip Code
29403
Onicescu, Georgiana; Lawson, Andrew; Zhang, Jiajia et al. (2017) Bayesian accelerated failure time model for space-time dependency in a geographically augmented survival model. Stat Methods Med Res 26:2244-2256