Approximate inference for disease mapping with sparse Gaussian processes

Stat Med. 2010 Jul 10;29(15):1580-607. doi: 10.1002/sim.3895.

Abstract

Gaussian process (GP) models are widely used in disease mapping as they provide a natural framework for modeling spatial correlations. Their challenges, however, lie in computational burden and memory requirements. In disease mapping models, the other difficulty is inference, which is analytically intractable due to the non-Gaussian observation model. In this paper, we address both these challenges. We show how to efficiently build fully and partially independent conditional (FIC/PIC) sparse approximations for the GP in two-dimensional surface, and how to conduct approximate inference using expectation propagation (EP) algorithm and Laplace approximation (LA). We also propose to combine FIC with a compactly supported covariance function to construct a computationally efficient additive model that can model long and short length-scale spatial correlations simultaneously. The benefit of these approximations is computational. The sparse GPs speed up the computations and reduce the memory requirements. The posterior inference via EP and Laplace approximation is much faster and is practically as accurate as via Markov chain Monte Carlo.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Alcohol-Related Disorders / mortality
  • Algorithms
  • Computer Simulation
  • Disease*
  • Epidemiologic Studies*
  • Finland / epidemiology
  • Humans
  • Likelihood Functions
  • Markov Chains
  • Models, Statistical*
  • Monte Carlo Method
  • Normal Distribution
  • Poisson Distribution
  • Risk
  • Stochastic Processes