| Literature DB >> 35880993 |
Waleed Almutiry1, Rob Deardon2,3.
Abstract
Infectious disease transmission between individuals in a heterogeneous population is often best modelled through a contact network. This contact network can be spatial in nature, with connections between individuals closer in space being more likely. However, contact network data are often unobserved. Here, we consider the fit of an individual level model containing a spatially-based contact network that is either entirely, or partially, unobserved within a Bayesian framework, using data augmented Markov chain Monte Carlo (MCMC). We also incorporate the uncertainty about event history in the disease data. We also examine the performance of the data augmented MCMC analysis in the presence or absence of contact network observational models based upon either knowledge about the degree distribution or the total number of connections in the network. We find that the latter tend to provide better estimates of the model parameters and the underlying contact network.Entities:
Keywords: contact network; data augmented Markov chain Monte Carlo; individual level model; infectious disease
Year: 2021 PMID: 35880993 PMCID: PMC8865399 DOI: 10.1515/scid-2019-0012
Source DB: PubMed Journal: Stat Commun Infect Dis