A Coupled Hidden Markov Model for Disease Interactions
FOS: Computer and information sciences
bartonella
algorithms
Statistics - Applications
01 natural sciences
510
Methodology (stat.ME)
adaptive Markov chain Monte Carlo sampling
Gibbs sampler
Applications (stat.AP)
0101 mathematics
random-walk metropolis
Statistics - Methodology
forward-backward algorithm
hidden Markov models
500
dynamics
QR Microbiology
Original Articles
zoonosis
populations
cowpox
QR
3. Good health
Anaplasma-phagocytophilum
chains
rodents
voles
DOI:
10.1111/rssc.12015
Publication Date:
2013-09-05T09:36:34Z
AUTHORS (4)
ABSTRACT
SummaryTo investigate interactions between parasite species in a host, a population of field voles was studied longitudinally, with presence or absence of six different parasites measured repeatedly. Although trapping sessions were regular, a different set of voles was caught at each session, leading to incomplete profiles for all subjects. We use a discrete time hidden Markov model for each disease with transition probabilities dependent on covariates via a set of logistic regressions. For each disease the hidden states for each of the other diseases at a given time point form part of the covariate set for the Markov transition probabilities from that time point. This allows us to gauge the influence of each parasite species on the transition probabilities for each of the other parasite species. Inference is performed via a Gibbs sampler, which cycles through each of the diseases, first using an adaptive Metropolis–Hastings step to sample from the conditional posterior of the covariate parameters for that particular disease given the hidden states for all other diseases and then sampling from the hidden states for that disease given the parameters. We find evidence for interactions between several pairs of parasites and of an acquired immune response for two of the parasites.
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CITATIONS (23)
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