Physical Review Research (Oct 2020)

Poisson Kalman filter for disease surveillance

  • Donald Ebeigbe,
  • Tyrus Berry,
  • Steven J. Schiff,
  • Timothy Sauer

DOI
https://doi.org/10.1103/PhysRevResearch.2.043028
Journal volume & issue
Vol. 2, no. 4
p. 043028

Abstract

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An optimal filter for Poisson observations is developed as a variant of the traditional Kalman filter. Poisson distributions are characteristic of infectious diseases, which model the number of patients recorded as presenting each day to a health care system. We develop both a linear and a nonlinear (extended) filter. The methods are applied to a case study of neonatal sepsis and postinfectious hydrocephalus in Africa, using parameters estimated from publicly available data. Our approach is applicable to a broad range of disease dynamics, including both noncommunicable and the inherent nonlinearities of communicable infectious diseases and epidemics such as from COVID-19.