Skip to main content

Because of a lapse in government funding, the information on this website may not be up to date, transactions submitted via the website may not be processed, and the agency may not be able to respond to inquiries until appropriations are enacted.

The NIH Clinical Center (the research hospital of NIH) is open. For more details about its operating status, please visit cc.nih.gov.

Updates regarding government operating status and resumption of normal operations can be found at opm.gov.

An official website of the United States government
Grant Details

Grant Number: 5R03CA179555-02 Interpret this number
Primary Investigator: Carlin, Bradley
Organization: University Of Minnesota
Project Title: Copula Models for Spatial Epidemiology of Cancer
Fiscal Year: 2015


Abstract

DESCRIPTION (provided by applicant): A relatively new approach to spatial modeling is the copula-based approach, which has thus far been applied only to geostatistical data, i.e., data observed over a continuous spatial domain. The chief advantage of copula-based modeling is modularity. The dependence structure and the marginal distributions can be modeled separately and then joined by way of the probability integral transform. This approach can, in principle, allow copula-based areal models to overcome many of the problems associated with the most commonly used areal models. Specifically, we expect copula-based areal models (1) to be flexible and intuitive, (2) to permit positive spatial dependence for all types of data, (3) to be ow dimensional, (4) to permit efficient computation (so that large datasets can be handled), and (5) to provide reliable spatial regression inference (because spatial confounding is impossible). In this project, we will develop various copula models for areal data, and we will develop approaches to frequentist and Bayesian inference for the models. The performance of the copula models will be compared to one another and to existing areal models by way of an extensive simulation study and application to current SEER data for HPV-related cancers. We will also implement R software for fitting the copula models to data. The new routines (and thorough documentation) will be added to existing R package ngspatial, which is freely available from the Comprehensive R Archive Network.



Publications

Error Notice

The database may currently be offline for maintenance and should be operational soon. If not, we have been notified of this error and will be reviewing it shortly.

We apologize for the inconvenience.
- The DCCPS Team.

Back to Top