| Literature DB >> 25400006 |
W Wei1, G Schüpbach2, L Held1.
Abstract
Campylobacteriosis has been the most common food-associated notifiable infectious disease in Switzerland since 1995. Contact with and ingestion of raw or undercooked broilers are considered the dominant risk factors for infection. In this study, we investigated the temporal relationship between the disease incidence in humans and the prevalence of Campylobacter in broilers in Switzerland from 2008 to 2012. We use a time-series approach to describe the pattern of the disease by incorporating seasonal effects and autocorrelation. The analysis shows that prevalence of Campylobacter in broilers, with a 2-week lag, has a significant impact on disease incidence in humans. Therefore Campylobacter cases in humans can be partly explained by contagion through broiler meat. We also found a strong autoregressive effect in human illness, and a significant increase of illness during Christmas and New Year's holidays. In a final analysis, we corrected for the sampling error of prevalence in broilers and the results gave similar conclusions.Entities:
Keywords: Incidence of Campylobacter in humans; prevalence of Campylobacter in broilers; time-series analysis
Mesh:
Year: 2014 PMID: 25400006 PMCID: PMC4456772 DOI: 10.1017/S0950268814002738
Source DB: PubMed Journal: Epidemiol Infect ISSN: 0950-2688 Impact factor: 2.451
Fig. 1.Weekly number of reported human campylobacteriosis cases in Switzerland, 2008–2012
Fig. 2.Prevalence in broilers. The observed prevalence is indicated by dots, the missing values by grey crosses at the x axis and the fitted values by light grey bars.
Analysis of imputation models on prevalence in broilers
| Log | AIC | ||
|---|---|---|---|
| 1. | 3 | 50·91 | −93·83 |
| 2 | 5 | 54·69 | −97·37 |
| 3 | 7 | 64·6 | −113·19 |
| 5 | 11 | 66·79 | −109·59 |
AIC, Akaike's Information Criterion.
The log-likelihood is denoted as log L, p is the number of parameters in the model, S is the number of sinusoidal waves, AIC = −2 log L + 2p.
Fig. 3.Observed and fitted number of cases, deviance residuals and autocorrelation function (ACF) in (a) the generalized linear model (GLM) and (b) the autoregression model.
Fig. 4.Estimated coefficient of the lagged prevalence in broilers (with 95% confidence intervals) in the endemic (model A) or epidemic (model B) component or generalized linear model (GLM) with seasonality (S = 2).
AIC values in models including the prevalence in broilers with different weeks of lag and seasonality S = 2
| Lag | Model A | Model B | GLM |
|---|---|---|---|
| −3 | 2407·32 | 2407·54 | 2482·39 |
| −2 | 2407·63 | 2407·42 | 2481·94 |
| −1 | 2407·42 | 2407·5 | 2481·8 |
| 0 | 2407·27 | 2407·23 | 2482·38 |
| 1 | 2404·52 | 2405·3 | 2479·6 |
| 2 | 2402·4 | 2475·48 | |
| 3 | 2407·68 | 2407·53 | 2480·17 |
AIC, Akaike's Information Criterion.
The model with smallest AIC value is given in bold face.
Model A is a model with the prevalence in broilers as endemic component, model B with the prevalence as epidemic component. GLM represents a generalized linear model including prevalence without an autoregressive component.
Fig. 5.Fitted number of disease cases in humans in models with (a) the prevalence in broilers and (b) the prevalence after correction for sampling error as explanatory variable.