| Literature DB >> 31892104 |
Andrea Marcon1, Annik Linden2, Petr Satran3, Vincenzo Gervasi1, Alain Licoppe4, Vittorio Guberti1.
Abstract
African swine fever (ASF) is a contagious haemorrhagic fever that affects both domesticated and wild pigs. Since ASF reached Europe wild boar populations have been a reservoir for the virus. Collecting reliable data on infected individuals in wild populations is challenging, and this makes it difficult to deploy an effective eradication strategy. However, for diseases with high lethality rate, infected carcasses can be used as a proxy for the number of infected individuals at a certain time. Then R0 parameter can be used to estimate the time distribution of the number of newly infected individuals for the outbreak. We estimated R0 for two ASF outbreaks in wild boar, in Czech Republic and Belgium, using the exponential growth method. This allowed us to estimate both R0 and the doubling time (Td) for those infections. The results are R0 = 1.95, Td = 4.39 for Czech Republic and R0 = 1.65, Td = 6.43 for Belgium. We suggest that, if estimated as early as possible, R0 and Td can provide an expected course for the infection against which to compare the actual data collected in the field. This would help to assess if passive surveillance is properly implemented and hence to verify the efficacy of the applied control measures.Entities:
Keywords: African swine fever; Europe; R0; doubling time; eradication strategies; wild boar
Year: 2019 PMID: 31892104 PMCID: PMC7157672 DOI: 10.3390/vetsci7010002
Source DB: PubMed Journal: Vet Sci ISSN: 2306-7381
Figure 1Data sets: (A) number of carcasses found in Czech Republic, Zlin area; (B) cumulated number of carcasses found in Czech Republic, Zlin area; (C) number of carcasses found in Belgium, Virton Forest; (D) cumulated number of carcasses found in Belgium, Virton Forest.
Figure 2Gaussian Mixed Models on Belgium data set, where we already removed the first 60 days.
Figure 3Selected subset for Czech Republic data.
Figure 4Adjusted R-square and residual sum of squares (RSS) values returned by the iterative procedure applied to Czech Republic data. The red line indicates the values for the selected subset. Numbers on the x-axis are the iteration IDs.
Figure 5Model fitting for the selected subset for Czech Republic data.
Figure 6Selected subset for Belgium data.
Figure 7Adjusted R-squared and residual sum of squares (RSS) values for Belgium data. The red line indicates the values returned by the selected subset. Numbers on the x-axis are the iteration IDs.
Figure 8Model fitting for the selected subset for Belgium data.
Exponential equations, doubling time values, and R0 values for Czech Republic and Belgium epidemics.
| Equation | Doubling Time | R0 | |
|---|---|---|---|
| Czech Rep. | y = ex*0.158 | 4.39 | 1.95 |
| Belgium | y = e3.206 + x*0.108 | 6.43 | 1.65 |