| Literature DB >> 19890400 |
Camille Szmaragd1, Anthony J Wilson, Simon Carpenter, James L N Wood, Philip S Mellor, Simon Gubbins.
Abstract
BACKGROUND: Recently much attention has been given to developing national-scale micro-simulation models for livestock diseases that can be used to predict spread and assess the impact of control measures. The focus of these models has been on directly transmitted infections with little attention given to vector-borne diseases such as bluetongue, a viral disease of ruminants transmitted by Culicoides biting midges. Yet BT has emerged over the past decade as one of the most important diseases of livestock. METHODOLOGY/PRINCIPALEntities:
Mesh:
Year: 2009 PMID: 19890400 PMCID: PMC2767512 DOI: 10.1371/journal.pone.0007741
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Figure 1Schematic diagram of the model for the transmission dynamics of BTV within a farm.
The populations of infected hosts and vectors are subdivided into a number of stages to allow for more general distributions for the duration of viraemia and the extrinsic incubation period, respectively. A solid line indicates a flow from one compartment to another; a dotted line indicates that a compartment has an influence on a rate of transfer. Lines shown in red indicate a temperature-dependent rate.
Transitions, probabilities, and population sizes in the model for the transmission of BTV within farms†.
| description | transition | probability | population size |
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| infection |
| λ |
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| completion of infection stage |
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| disease-associated mortality ( |
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| recovery |
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| Recruitment |
| see | – |
| Infection |
| λ |
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| completion of EIP stage |
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| vector mortality ( |
| μδ |
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| completion of EIP |
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| vector mortality |
| μδ |
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Parameters are defined in equations (1)–(3) and Table 2.
Parameters in the model for the within-farm transmission of BTV.
| description | symbol | estimate or range | comments | references |
| probability of transmission from vector to host |
| 0.8–1.0 | – |
|
| probability of transmission from host to vector | β | 0.001–0.15 | – |
|
| biting rate on species |
| – | can be decomposed so that | – |
| reciprocal of the time interval between blood meals |
| 0–0.5 | depends on temperature θ: |
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| vector preference for cattle compared to sheep | σ | 0–1 | vectors feed preferentially on cattle based on data for |
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| number of cattle on holding |
| – | obtained from the 2006 June agricultural survey for each holding | – |
| number of sheep on holding |
| – | obtained from the 2006 June agricultural survey for each holding | – |
| duration of viraemia (cattle) - mean | 1/ | 20.6 | duration of viraemia based on natural infection and virus isolation in embryonated chicken eggs; |
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| duration of viraemia (cattle) - no. stages |
| 5 | parameters estimated by fitting a gamma distribution to data presented in paper cited in right-hand column |
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| disease-induced mortality rate (cattle) |
| 0–0.0001 | cattle seldom succumb to severe disease; upper limit derived from the BT outbreak in northern Europe in 2006 and 2007 where mortalities of up to 0.2% were observed |
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| probability of overt clinical signs (cattle) |
| 0.0078–0.067 | – |
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| duration of viraemia (sheep) - mean | 1/ | 16.4 | duration of viraemia based on experimental infection and virus isolation in embryonated chicken eggs; |
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| duration of viraemia (sheep) - no. stages |
| 14 | parameters estimated by fitting a gamma distribution to data presented in papers cited in right-hand column |
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| disease-induced mortality rate (sheep) |
| 0.001–0.01 | derived from observed mortality in sheep ranging from 3.9% to 14.4% |
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| probability of overt clinical signs (sheep) |
| 0.027–0.080 | – |
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| vector recruitment rate | ρ | – | for simplicity assumed to be equal to the vector mortality rate | – |
| vector population size |
| see comments | based on a maximum host biting rate ( |
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| extrinsic incubation period (EIP) - mean | 1/ν | – | depends on temperature θ:ν(θ) = max(0,0.0003θ(θ−10.4)) |
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| extrinsic incubation period (EIP) - no. stages |
| 1–100 | – | [44, 55, 56 |
| vector mortality rate | μ | – | depends on temperature: μ(θ) = 0.009exp(0.16θ) |
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10 and n(1-q)>10, an approximating normal variate with mean nq and variance nq(1-q) was used, while if q<0.1 and nq<10, an approximating Poisson variate with mean nq was used [18]. Those probabilities which include temperature-dependent parameters (see Table 2) were computed using hourly temperature data for the farm.
Summary of demographic factors included in models for the probability of transmission of BTV between farms.
| model | probability of acquisition | probability of transmission | ||
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| 1 |
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| 2 |
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| No |
| 3 |
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| no |
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| 4 |
| no |
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| 5 | no |
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| 6 |
| no |
| no |
| 7 | no |
| no |
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| 8 |
| no | no |
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| 9 | no |
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| no |
| 10 |
| no | no | no |
| 11 | no |
| no | no |
| 12 | no | no |
| no |
| 13 | no | no | no |
|
| 14 | no | no | no | no |
Figure 2Models for the probability of transmission between farms.
(A) Comparison of model fit for different transmission kernels and demographic models (defined in Table 3) based on the Akaike information criterion (AIC). The cyan line indicates a difference of two in AIC between a model and that with the lowest AIC (i.e. Gaussian kernel and demographic model presented in Table 4), taken to represent a significant difference in model fit. (B) Transmission kernels, (8), using the maximum-likelihood estimates obtained by fitting the models to outbreak data from northern Europe in 2006 (Table 4). The FMD kernel is that estimated by Chis Ster and Ferguson [24] from the outbreak of foot-and-mouth disease (FMD) in the UK during 2001.
Maximum-likelihood estimates for the probability of transmission between farms when fitted to data on the spread of BTV in northern Europe during 2006.
| parameter | kernel | ||
| Gaussian | exponential | fat-tailed | |
| transmission kernel | 0.034 | 0.056 | 0.161 |
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| intercept | 0.562 | −0.516 | 1.268 |
| presence of sheep on farm | −1.330 | −0.958 | −1.755 |
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| intercept | −2.149 | −2.031 | −1.499 |
| presence of sheep on farm | 30.095 | 30.24 | 31.126 |
| Akaike information criterion (AIC) | 743.11 | 744.00 | 745.73 |
Figure 3Temporal dynamics of BTV-8 in GB during 2007.
(A) Observed and expected number of farms reporting clinical disease each week. The figure shows the observed number of newly-identified holdings with confirmed clinical cases (bars) and the median (symbols) and 10th and 90th percentiles (error bars) for the simulated outbreaks. (B) Expected cumulative number of affected holdings over time. The figure shows the median (solid red line), 25th and 75th percentiles (red dashed lines), and 10th and 90th percentiles (dashed blue lines). Each figure shows the results for the simulated epidemics assuming a Gaussian transmission kernel and demographic model presented in Table 4 (i.e. the best-fit model to the northern European data), based on the results of 50 simulated outbreaks which took off (see Methods).
Figure 4Spatial dynamics of BTV-8 in GB during 2007.
Predicted spatial distribution of affected farms as of 31 December 2007 assuming: (A,B) a Gaussian kernel; (C,D) an exponential kernel; (E,F) a fat-tailed kernel; or (G,H) the FMD kernel. Transmission between farms is either (A,C,E,G) unrestricted or (B,D,F,H) restricted to the 2007 PZ. Each map shows the cumulative risk (see colour bars) expressed as the proportion of simulated outbreaks (out of 50 which took off; see Methods) for which at least one farm was affected by BTV within each 5 km grid square.
Figure 5Sensitivity of temporal dynamics of BTV-8 to different transmission kernels.
Comparison of (A) the median number of newly-identified holdings with confirmed clinical cases and (B) the cumulative number of affected holdings over time for different transmission kernels, where transmission between farms is either unrestricted or restricted to the 2007 protection zone. The figures are based on the results of 50 simulated outbreaks which took off (see Methods).