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Bayesian data assimilation for estimating instantaneous reproduction numbers during epidemics: Applications to COVID-19.

Xian YangShuo WangYuting XingLing LiRichard Yi Da XuKarl John FristonYike Guo
Published in: PLoS computational biology (2022)
Estimating the changes of epidemiological parameters, such as instantaneous reproduction number, Rt, is important for understanding the transmission dynamics of infectious diseases. Current estimates of time-varying epidemiological parameters often face problems such as lagging observations, averaging inference, and improper quantification of uncertainties. To address these problems, we propose a Bayesian data assimilation framework for time-varying parameter estimation. Specifically, this framework is applied to estimate the instantaneous reproduction number Rt during emerging epidemics, resulting in the state-of-the-art 'DARt' system. With DARt, time misalignment caused by lagging observations is tackled by incorporating observation delays into the joint inference of infections and Rt; the drawback of averaging is overcome by instantaneously updating upon new observations and developing a model selection mechanism that captures abrupt changes; the uncertainty is quantified and reduced by employing Bayesian smoothing. We validate the performance of DARt and demonstrate its power in describing the transmission dynamics of COVID-19. The proposed approach provides a promising solution for making accurate and timely estimation for transmission dynamics based on reported data.
Keyphrases
  • infectious diseases
  • coronavirus disease
  • electronic health record
  • sars cov
  • mental health
  • big data
  • single cell
  • working memory
  • high resolution
  • machine learning
  • data analysis
  • mass spectrometry
  • artificial intelligence