The signal is not flushed away: Inferring the effective reproduction number from wastewater data in small populations
Isaac H. Goldstein, Daniel M. Parker, Sunny Jiang, Aiswarya Rani Pappu, Volodymyr M. Minin

TL;DR
This paper introduces a computationally efficient stochastic model to estimate the effective reproduction number of infectious diseases from wastewater data, especially useful in small populations, demonstrated with SARS-CoV-2 data from college campuses.
Contribution
The paper proposes the EI model, a tractable approximation to Markov Jump Processes, enabling effective reproduction number estimation from wastewater data in small populations.
Findings
Stochastic EI model outperforms deterministic models in estimating R effective.
Application to SARS-CoV-2 wastewater data shows accurate detection of epidemic changes.
Model provides a practical tool for real-time epidemic monitoring in small communities.
Abstract
The effective reproduction number is an important descriptor of an infectious disease epidemic. In small populations, ideally we would estimate the effective reproduction number using a Markov Jump Process (MJP) model of the spread of infectious disease, but in practice this is computationally challenging. We propose a computationally tractable approximation to an MJP which tracks only latent and infectious individuals, the EI model, an MJP where the time-varying immigration rate into the E compartment is equal to the product of the proportion of susceptibles in the population and the transmission rate. We use an analogue of the central limit theorem for MJPs to approximate transition densities as normal, which makes Bayesian computation tractable. Using simulated pathogen RNA concentrations collected from wastewater data, we demonstrate the advantages of our stochastic model over its…
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