| Literature DB >> 22545151 |
Arianna Comin1, Arjan Stegeman, Stefano Marangon, Don Klinkenberg.
Abstract
In recent years, the early detection of low pathogenicity avian influenza (LPAI) viruses in poultry has become increasingly important, given their potential to mutate into highly pathogenic viruses. However, evaluations of LPAI surveillance have mainly focused on prevalence and not on the ability to act as an early warning system. We used a simulation model based on data from Italian LPAI epidemics in turkeys to evaluate different surveillance strategies in terms of their performance as early warning systems. The strategies differed in terms of sample size, sampling frequency, diagnostic tests, and whether or not active surveillance (i.e., routine laboratory testing of farms) was performed, and were also tested under different epidemiological scenarios. We compared surveillance strategies by simulating within-farm outbreaks. The output measures were the proportion of infected farms that are detected and the farm reproduction number (R(h)). The first one provides an indication of the sensitivity of the surveillance system to detect within-farm infections, whereas R(h) reflects the effectiveness of outbreak detection (i.e., if detection occurs soon enough to bring an epidemic under control). Increasing the sampling frequency was the most effective means of improving the timeliness of detection (i.e., it occurs earlier), whereas increasing the sample size increased the likelihood of detection. Surveillance was only effective in preventing an epidemic if actions were taken within two days of sampling. The strategies were not affected by the quality of the diagnostic test, although performing both serological and virological assays increased the sensitivity of active surveillance. Early detection of LPAI outbreaks in turkeys can be achieved by increasing the sampling frequency for active surveillance, though very frequent sampling may not be sustainable in the long term. We suggest that, when no LPAI virus is circulating yet and there is a low risk of virus introduction, a less frequent sampling approach might be admitted, provided that the surveillance is intensified as soon as the first outbreak is detected.Entities:
Mesh:
Year: 2012 PMID: 22545151 PMCID: PMC3335804 DOI: 10.1371/journal.pone.0035956
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Parameters used in the within-farm transmission model (from Comin et al [10]).
| value in the baseline model | parameters' value | |
| time step | 0.02 days | - |
| simulation period | 130 days | - |
| farm size | 10,000 turkeys | - |
| day of virus introduction | ∼uniform(a; b) | a = 0; b = 130 |
| farm-specific basic reproduction number | ∼gamma(s; r) | s = 2.73; r = 0.49 |
| bird-specific duration of latent period | ∼gamma(sL; rL) | sL = 17.41; rL = 5.95 |
| bird-specific duration of infectious period | ∼gamma(sI; rI) | sI = 4.64; rI = 0.57 |
Footnote:
s = shape parameter; r = rate parameter.
Figure 1Area under the prevalence curve (AUC, shaded area).
(a) AUC assuming that the infectivity is efficiently stopped at day of outbreak detection. (b) AUC in the whole infectious period.
Descriptive statistics of the farm characteristics and surveillance schemes in the 96 turkey farms selected to estimate the detection threshold for passive surveillance.
| mean | SD | 5th percentile | 95th percentile | |
| number of birds per farm | 14 000 | 7856 | 5075 | 26 825 |
| number of flocks per farm | 2.2 | 1.5 | 1 | 5 |
| number of birds per flock | 8139 | 6496 | 2317 | 18 050 |
| duration of the production cycle (days) | 138 | 22 | 98 | 163 |
| day of first sampling | 65.1 | 22.6 | 29.0 | 103.0 |
| day of detection | 109 | 23 | 65 | 141 |
| number of sampling events per farm | 3.2 | 1.2 | 2.0 | 5.3 |
| average sampling interval per farm | 23.5 | 12.1 | 10.2 | 49.5 |
| average number of samples collected per flock | 6.2 | 3.3 | 2.3 | 10 |
Summary of the investigated surveillance strategies.
| Surveillance strategy: | sampling days | surveillance components | # samples per sampling | tests |
|
| 60–90–120 | AS+PS | 10 | ST+VT |
|
| 30–60–90–120 | AS+PS | 10 | ST+VT |
|
| 60–75–90–105–120 | AS+PS | 10 | ST+VT |
|
| 60–120 | AS+PS | 10 | ST+VT |
| 30 | 60–90–120 | AS+PS | 30 | ST+VT |
|
| 60–90–120 | AS+PS | 10 | ST only |
|
| - | only PS | - | - |
Footnote:
AS = active surveillance; PS = passive surveillance.
ST = serological testing; VT = virological testing.
Summary of the alternative scenarios investigated in the sensitivity analysis.
| Reference settings | mean R0 | mean generation time (days) | farm size (turkeys) | serological test Se | virological test Se | mean virus introduction (days) |
| 5.55 | 7.90 | 10000 | 100% | 100% | 54.71 | |
| Lower serological test sensitivity | Sensitivity of serological test = | |||||
| Lower virological test sensitivity | Sensitivity of virological test = | |||||
| Larger farm size |
| |||||
| Smaller farm size |
| |||||
| Earlier virus introduction | Virus introduction: on average | |||||
| Later virus introduction | Virus introduction: on average | |||||
| Longer generation time | Mean generation time: | |||||
| Shorter generation time | Mean generation time: | |||||
| Higher R0 | Mean basic reproduction number: | |||||
| Lower R0 | Mean basic reproduction number: | |||||
values derived from Comin et al. [10].
values based on van der Goot et al. [13].
Footnote: values of parameters a, b, sL, rL, sI, rI, s and r are those previously reported in Table 1.
Detection ability towards LPAI infections in absence of control measures (reference scenario).
| Surveillance model | proportion of outbreaks that are detected | proportion of outbreaks that are detected by active surveillance | mean detection time since virus introduction (days) | mean prevalence in the farm at detection | Rh at detection [95%CI] |
|
| 73.4% | 53.6% | 34.9 | 31.3% | 0.80 [0.75–0.85] |
|
| 73.5% | 55.4% | 34.5 | 30.6% | 0.77 [0.72–0.82] |
|
| 74.0% | 58.5% | 30.8 | 27.7% | 0.53 [0.49–0.57] |
|
| 65.2% | 48.2% | 43.2 | 27.6% | 1.21 [1.14–1.28] |
| 30 | 81.3% | 63.5% | 34.9 | 26.5% | 0.62 [0.57–0.66] |
|
| 68.3% | 44.9% | 36.5 | 34.5% | 1.05 [0.99–1.11] |
|
| 26.1% | – | 22.4 | 59.2% | 1.48 [1.41–1.55] |
Results of 1000 simulated outbreaks applying different surveillance strategies.
Figure 2Percentages of outbreaks detected by active and passive surveillance.
(a) Various surveillance schemes under the reference scenario. (b) Reference surveillance scheme under different scenarios (i.e., sensitivity analysis). Footnote: Se = sensitivity.
Figure 3Effectiveness of outbreak detection.
Grey-scale plot indicating the maximum number of days after positive sampling to efficiently stop the infection (i.e. last day at which Rh<1) for alternative surveillance strategies under different scenarios. Footnote: The number reported in each cell represents the last day at which Rh<1 for that specific combination of surveillance and scenario (light = better, dark = worse).