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Dynamic survival analysis for non-Markovian epidemic models.

Francesco Di LauroWasiur R KhudaBukhshIstván Z KissEben KenahMax JensenGrzegorz A Rempała
Published in: Journal of the Royal Society, Interface (2022)
We present a new method for analysing stochastic epidemic models under minimal assumptions. The method, dubbed dynamic survival analysis (DSA), is based on a simple yet powerful observation, namely that population-level mean-field trajectories described by a system of partial differential equations may also approximate individual-level times of infection and recovery. This idea gives rise to a certain non-Markovian agent-based model and provides an agent-level likelihood function for a random sample of infection and/or recovery times. Extensive numerical analyses on both synthetic and real epidemic data from foot-and-mouth disease in the UK (2001) and COVID-19 in India (2020) show good accuracy and confirm the method's versatility in likelihood-based parameter estimation. The accompanying software package gives prospective users a practical tool for modelling, analysing and interpreting epidemic data with the help of the DSA approach.
Keyphrases
  • coronavirus disease
  • electronic health record
  • sars cov
  • data analysis
  • machine learning
  • free survival
  • deep learning