| Literature DB >> 32066511 |
H Lee1, C Perkins1, H Gray2, S Hajat1,3, M Friel2, R P Smith4, S Williamson5, P Edwards1, L M Collins2.
Abstract
The prevalence of many diseases in pigs displays seasonal distributions. Despite growing concerns about the impacts of climate change, we do not yet have a good understanding of the role that weather factors play in explaining such seasonal patterns. In this study, national and county-level aggregated abattoir inspection data were assessed for England and Wales during 2010-2015. Seasonally-adjusted relationships were characterised between weekly ambient maximum temperature and the prevalence of both respiratory conditions and tail biting detected at slaughter. The prevalence of respiratory conditions showed cyclical annual patterns with peaks in the summer months and troughs in the winter months each year. However, there were no obvious associations with either high or low temperatures. The prevalence of tail biting generally increased as temperatures decreased, but associations were not supported by statistical evidence: across all counties there was a relative risk of 1.028 (95% CI 0.776-1.363) for every 1 °C fall in temperature. Whilst the seasonal patterns observed in this study are similar to those reported in previous studies, the lack of statistical evidence for an explicit association with ambient temperature may possibly be explained by the lack of information on date of disease onset. There is also the possibility that other time-varying factors not investigated here may be driving some of the seasonal patterns.Entities:
Keywords: Climate; epidemiology; estimating; impact of; prevalence of disease; respiratory infections; veterinary epidemiology
Year: 2020 PMID: 32066511 PMCID: PMC7026902 DOI: 10.1017/S0950268819002085
Source DB: PubMed Journal: Epidemiol Infect ISSN: 0950-2688 Impact factor: 2.451
Summary of the CCIR dataset from January 2010 to December 2015 (n = 4 916 898; no missing data)
| Mean | Standard deviation | Minimum, maximum | |
|---|---|---|---|
| Prevalence of respiratory conditions per week | 19.55% | 1.60 | 15.55, 24.61 |
| Total number of cases of respiratory conditions per week | 28 823.80 | 19 432.27 | 10 819, 234 389 |
| Prevalence of tail biting per week | 0.65% | 0.20 | 0.24, 1.36 |
| The total number of cases of tail biting per week | 987.96 | 872.83 | 232, 10920 |
Fig. 1.Weekly prevalence of respiratory and tail biting conditions in the CCIR dataset at the national level and maximum ambient temperature from January 2010 to December 2015.
Fig. 2.Modelling lagged association between maximum temperature and respiratory conditions. Graphs lag 0 to lag 5 show a single lag at a time (the unit of lag is weeks). The last graph (averaged lag 0–5) is fitted lags from week 0 to week 5 together. RR (95% CI) of respiratory conditions (y-axis) by maximum temperature (°C; x-axis).
Fig. 3.Seasonally-adjusted relationship between temperature (using the distributed lag model between 0–5 weeks) and prevalence of respiratory disease in 50 counties in England and Wales, January 2010 to December 2015 (except Dyfed from January 2011 to December 2015): RR of respiratory conditions per one-degree decrease below cold thresholds (left) and one-degree increase above heat thresholds (right). White areas are excluded counties (Mid Glamorgan, Tyne & Wear, Bristol, Rutland and Merseyside).
Fig. 4.Modelling lagged association between maximum temperature and tail biting. Graphs from lag 0 to lag 6 have been fitted with a single lag at a time. The last graph (averaged lag 0–6) is fitted lags from week 0 to week 6 together. The unit of lag is in weeks. RR (95% CI) of tail biting conditions (y-axis) by maximum temperature (°C; x-axis).
Fig. 5.RR of tail biting conditions with one-degree decrease after adjusting for seasonality (using distributed lag between 0–6 weeks) and prevalence of tail biting in 52 counties in England and Wales, January 2010 to December 2015 (except Dyfed from January 2011 to December 2015): White is excluded counties (Mid Glamorgan, West Glamorgan and Tyne & Wear).