Birch Colin P D, Chikukwa Ambrose C, Hyder Kieran, Del Rio Vilas Victor J
Veterinary Laboratories Agency - Weybridge, New Haw, Addlestone, Surrey, UK.
BMC Vet Res. 2009 Jul 16;5:23. doi: 10.1186/1746-6148-5-23.
This paper explores the spatial distribution of sampling within the active surveillance of sheep scrapie in Great Britain. We investigated the geographic distribution of the birth holdings of sheep sampled for scrapie during 2002 - 2005, including samples taken in abattoir surveys (c. 83,100) and from sheep that died in the field ("fallen stock", c. 14,600). We mapped the birth holdings by county and calculated the sampling rate, defined as the proportion of the holdings in each county sampled by the surveys. The Moran index was used to estimate the global spatial autocorrelation across Great Britain. The contributions of each county to the global Moran index were analysed by a local indicator of spatial autocorrelation (LISA).
The sampling rate differed among counties in both surveys, which affected the distribution of detected cases of scrapie. Within each survey, the county sampling rates in different years were positively correlated during 2002-2005, with the abattoir survey being more strongly autocorrelated through time than the fallen stock survey. In the abattoir survey, spatial indices indicated that sampling rates in neighbouring counties tended to be similar, with few significant contrasts. Sampling rates were strongly correlated with sheep density, being highest in Wales, Southwest England and Northern England. This relationship with sheep density accounted for over 80% of the variation in sampling rate among counties. In the fallen stock survey, sampling rates in neighbouring counties tended to be different, with more statistically significant contrasts. The fallen stock survey also included a larger proportion of holdings providing many samples.
Sampling will continue to be uneven unless action is taken to make it more uniform, if more uniform sampling becomes a target. Alternatively, analyses of scrapie occurrence in these datasets can take account of the distribution of sampling. Combining the surveys only partially reduces uneven sampling. Adjusting the distribution of sampling between abattoirs to reduce the bias in favour of regions with high sheep densities could probably achieve more even sampling. However, any adjustment of sampling should take account of the current understanding of the distribution of scrapie cases, which will be improved by further analysis of this dataset.
本文探讨了英国绵羊痒病主动监测中采样的空间分布情况。我们调查了2002 - 2005年期间采样用于痒病检测的绵羊出生养殖场的地理分布,包括在屠宰场调查中采集的样本(约83,100份)以及在野外死亡的绵羊(“死亡牲畜”,约14,600份)。我们按郡绘制了出生养殖场的地图,并计算了采样率,采样率定义为各郡在调查中被采样的养殖场比例。使用莫兰指数来估计英国的全局空间自相关。通过局部空间自相关指标(LISA)分析了每个郡对全局莫兰指数的贡献。
在两项调查中,各郡的采样率均有所不同,这影响了检测到的痒病病例的分布。在每项调查中,2002 - 2005年不同年份的郡采样率呈正相关,屠宰场调查随时间的自相关性比死亡牲畜调查更强。在屠宰场调查中,空间指标表明相邻郡的采样率往往相似,很少有显著差异。采样率与绵羊密度密切相关,在威尔士、英格兰西南部和英格兰北部最高。这种与绵羊密度的关系解释了各郡采样率变化的80%以上。在死亡牲畜调查中,相邻郡的采样率往往不同,有更多具有统计学意义的差异。死亡牲畜调查还包括提供许多样本的养殖场的更大比例。
除非采取行动使其更加均匀,否则采样将继续不均衡,如果更均匀的采样成为目标的话。或者,对这些数据集中痒病发生情况的分析可以考虑采样分布。仅将两项调查结合起来只能部分减少采样不均衡的情况。调整屠宰场之间的采样分布以减少对绵羊密度高的地区的偏向可能会实现更均匀的采样。然而,采样的任何调整都应考虑到目前对痒病病例分布的了解,通过对该数据集的进一步分析,这一了解将会得到改善。