Author
Listed:
- Scott L Nuismer
- Christopher H Remien
- Andrew J Basinski
- Tanner Varrelman
- Nathan Layman
- Kyle Rosenke
- Brian Bird
- Michael Jarvis
- Peter Barry
- Patrick W Hanley
- Elisabeth Fichet-Calvet
Abstract
Lassa virus is a significant burden on human health throughout its endemic region in West Africa, with most human infections the result of spillover from the primary rodent reservoir of the virus, the natal multimammate mouse, M. natalensis. Here we develop a Bayesian methodology for estimating epidemiological parameters of Lassa virus within its rodent reservoir and for generating probabilistic predictions for the efficacy of rodent vaccination programs. Our approach uses Approximate Bayesian Computation (ABC) to integrate mechanistic mathematical models, remotely-sensed precipitation data, and Lassa virus surveillance data from rodent populations. Using simulated data, we show that our method accurately estimates key model parameters, even when surveillance data are available from only a relatively small number of points in space and time. Applying our method to previously published data from two villages in Guinea estimates the time-averaged R0 of Lassa virus to be 1.74 and 1.54 for rodent populations in the villages of Bantou and Tanganya, respectively. Using the posterior distribution for model parameters derived from these Guinean populations, we evaluate the likely efficacy of vaccination programs relying on distribution of vaccine-laced baits. Our results demonstrate that effective and durable reductions in the risk of Lassa virus spillover into the human population will require repeated distribution of large quantities of vaccine.Author summary: Lassa virus is a chronic source of illness throughout West Africa, and is considered to be a threat for widespread emergence. Because most human infections result from contact with infected rodents, interventions that reduce the number of rodents infected with Lassa virus represent promising opportunities for reducing the public health burden of this disease. Evaluating how well alternative interventions are likely to perform is complicated by our relatively poor understanding of viral epidemiology within the reservoir population. Here we develop a novel statistical approach that couples mathematical models and viral surveillance data from rodent populations to robustly estimate key epidemiological parameters. Applying our method to existing data from Guinea yields well-resolved parameter estimates and allows us to simulate a variety of rodent vaccination programs. Together, our results demonstrate that rodent vaccination alone is unlikely to be an effective tool for reducing the public health burden of Lassa fever within West Africa.
Suggested Citation
Scott L Nuismer & Christopher H Remien & Andrew J Basinski & Tanner Varrelman & Nathan Layman & Kyle Rosenke & Brian Bird & Michael Jarvis & Peter Barry & Patrick W Hanley & Elisabeth Fichet-Calvet, 2020.
"Bayesian estimation of Lassa virus epidemiological parameters: Implications for spillover prevention using wildlife vaccination,"
PLOS Neglected Tropical Diseases, Public Library of Science, vol. 14(9), pages 1-20, September.
Handle:
RePEc:plo:pntd00:0007920
DOI: 10.1371/journal.pntd.0007920
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