| Literature DB >> 30176863 |
Colin P D Birch1, Ashley Goddard2, Oliver Tearne2.
Abstract
BACKGROUND: Bovine tuberculosis (bTB) is a zoonotic disease of cattle caused by Mycobacterium bovis, widespread in England and Wales. It has high incidence towards the South West of England and Wales, with much lower incidence to the East and North. A stochastic simulation model was developed to simulate M. bovis transmission among cattle, transfer by cattle movements and transmission from environmental reservoirs (often wildlife and especially badgers). It distinguishes five surveillance streams, including herd tests, pre-movement testing and slaughter surveillance. The model thereby simulates interventions in bTB surveillance and control, and generates outputs directly comparable to detailed disease records. An anonymized version of the executable model with its input data has been released. The model was fitted to cattle bTB records for 2008-2010 in a cross-sectional comparison, and its projection was compared with records from 2010 to 2016 for validation.Entities:
Keywords: Bovine tuberculosis; Cattle movements; Mycobacterium bovis; Stochastic simulation model; Surveillance streams; Wildlife reservoir
Mesh:
Year: 2018 PMID: 30176863 PMCID: PMC6122770 DOI: 10.1186/s12917-018-1595-9
Source DB: PubMed Journal: BMC Vet Res ISSN: 1746-6148 Impact factor: 2.741
Fig. 1Distribution of infectious environmental reservoirs after fitting the model to bTB breakdowns in 2010. Background shades in red indicate the smoothed fitted local probabilities that environmental reservoirs were infectious. Vertical bars in light and dark blue indicate the numbers of modelled and observed breakdowns in counties or contiguous groups of counties. The pair of bars farthest East indicate numbers for the whole Low Risk Area
Fig. 2Comparison of model outputs with observed numbers of breakdowns. a The High Risk Area and Wales; b The Low Risk Area and the Edge region. Error bars indicate standard deviations among 10 simulations
Fig. 3Annual incidence of herd breakdowns in England and Wales during 2014. a As observed; b As the average of ten outputs from the model. In both cases incidence is calculated for herds included in the model and breakdowns at those herds
Fig. 4Relationship between the observed and modelled incidence of breakdowns by county in 2016. a The observed incidence compared with the model for 2016 (average of 10 outputs); b The observed incidence in 2016 compared with the observed incidence in 2010
Fig. 5Relationship between the observed and modelled incidence of breakdowns by county during 2010–2015
Fig. 6Fitting parameters of transmission of M. bovis from environmental sources. The figure shows the dependence of model fit on the number of holdings exposed to M. bovis in environmental reservoirs and the rate of transmission of M. bovis from an environmental reservoir to local cattle. All other parameters were kept at their baseline values. Low values of the measure of fit indicate combinations of the parameter values at which the model matches observations relatively closely. Measures of fit are based on 10 simulations per point. The horizontal, transmission rate axis is plotted on a log scale but labelled with back transformed values
Main epidemiological parameters with baseline estimates and ranges
| Parameter definition | Symbol | Estimate (Range) | Source / Derivation |
|---|---|---|---|
| Initial number of undetected infected herds |
| 4400 (1850–5050) | Fitted so that simulation matched the total number of breakdowns in 2008 within 100, i.e. between 4849 and 5049. |
| Number of holdings in England and Wales with infectious environmental reservoirs. |
| 7840 (SD ± 73) (5500–14,000) | Determined by the regional probabilities that individual holdings will have infectious environmental reservoirs ( |
| Probability that individual holdings have infectious environmental reservoirs, dependent on a classification based on county and TB history. |
| 0–0.828 | The probabilities are fitted to local breakdown frequencies, see Fig. |
| Environment to cattle transmission rate per head of cattle at holdings with an infectious environmental reservoir. |
| 0.0006 (0.0004–0.004) mth− 1 | See Fig. |
| Cattle to cattle transmission rate (per month) per infected animal in a herd of 200 cattle. |
| 0.113 (0.10–0.14) mth− 1 | Fitted to observed numbers of reactor animals at disclosing tests in HRA and LRA. Close to a previously published estimate [ |
| Power law determining degree of density dependence of cattle-cattle transmission. (0 matches density dependence, while a value of 1 matches frequency dependence.) |
| 0.5 (0.3–1.0) | Partial density dependence was demonstrated previously [ |
| Probability of a persistent infection at the end of a breakdown in herds > 300 cattle, given that infected cattle remained after the disclosing test or there was at least 1 additional reactor. |
| 0.6 (0.3–0.9) | Fitted to the observed number of breakdowns detected by post breakdown tests, especially in the Edge and Low Risk regions. Probability was lower in smaller herds, see Additional file |
‘Symbol’ is the symbol used in formulae. ‘Estimate (Range)’ indicates the baseline value, with a range indicating the potential uncertainty of the estimate, or a range dependent on location. Parameter values outside the stated ranges are likely to be associated with substantially worse model fit, or an infringement of reasonable constraints
Fig. 7Flow diagram summarising surveillance and disease transmission in the model. The relationship between the transfer and detection of TB through daily livestock movements (blue arrows) and epidemiology and detection resolved monthly at holding level (black). The pre-movement test and slaughter surveillance streams are distinguished from herd tests. Symbols in the transmission equations are: N = number of cattle in herd, I = number of infected cattle, S = number of susceptible cattle, β = cattle to cattle transmission parameter, q = power law for cattle to cattle transmission and h = environment to cattle transmission parameter
Main surveillance parameters with current estimates
| Parameter definition | Symbol | Estimate (Range) | S-T range | Source / Derivation |
|---|---|---|---|---|
| Maximum probability of detecting one infected animal in a herd test using the SICCT skin test |
| 0.48 | 0.45–0.53 | In literature [ |
| Maximum probability of detecting one infected animal when it is moved from a holding within an area where pre-movement testing is applied. |
| 0.32 | N | Detection reduced by exemptions from pre-movement testing. The recorded number of pre-movement skin tests was about ½ the number of movements from areas with pre-movement testing. Detection > 0.48/2 because infected cattle were more likely to be in movements without exemptions. |
| Infection duration until SICCT reaches maximum sensitivity |
| 35 (20–200) d | N | Experimental evidence [ |
| Specificity of an individual SICCT skin test. |
| 0.9998 | N | The estimate of Goodchild et al. [ |
| Proportion of age class |
| 0 | 0 | Fitted to observed numbers of regular herd tests. |
| Frequency of generic herd tests on infected herds |
| Location dependent | 0.020–0.09 mth−1 | Fitted to observed numbers of breakdowns detected by generic herd tests. |
| Frequency of generic herd tests on uninfected herds |
| Location dependent | 0.0012–0.04 mth−1 | Fitted to observed numbers of generic herd tests. |
| Maximum probability of detecting an infected animal at slaughterhouse surveillance. |
| 0.875 | 0.557–0.875 | Estimate may be high because of factors and practices absent from the model, including approved finishing units and age effects [ |
| Maximum probability of confirming an infected reactor. |
| 0.40 | N | Fitted to number of OTFW (confirmed) breakdowns. This value underestimates the number of OTFW animals. (OTFW animals are unevenly distributed among breakdowns.) |
| Time required for lesions to reach maximum detectability. |
| 35 d | N | This and other models seem to fit using a wide range of values for related parameters [ |
See legend for Table 1. ‘S-T range’, i.e. ‘Spatial-temporal range’ indicates the actual range of values for the parameter used for the baseline fitted model in England and Wales during 2008–2010. ‘N’ indicates that only a single value was used for the parameter