Morgan E R, Cavill L, Curry G E, Wood R M, Mitchell E S E
School of Biological Sciences, University of Bristol, Woodland Road, Bristol BS8 1UG, UK.
Vet Parasitol. 2005 Jul 15;131(1-2):79-87. doi: 10.1016/j.vetpar.2005.04.021.
Composite faecal egg counts (FEC) are increasingly used to support strategic anthelmintic treatment decisions in grazing livestock. However, their accuracy as estimators of group mean FEC is affected by the number of individual samples included, how thoroughly they are mixed, and the underlying degree of parasite aggregation between individual hosts. This paper uses a Negative Binomial model for parasite aggregation, and a Poisson model for egg distribution within faecal suspensions, in order to optimise composite FEC protocol for commercial sheep flocks. Our results suggest that faecal egg density in a well-mixed composite sample from 10 sheep (3g of faeces from each), estimated by examination of four independently filled McMaster chambers, is likely to provide an adequate estimate of group mean FEC in the majority of situations. However, extra care is needed in groups of sheep for which high levels of FEC aggregation might be expected. The implications of statistical error in FEC estimates depend on how they are used. The simulation-based approach presented here is a powerful tool for investigating the risks of error in FEC-driven treatment decisions in different situations, as well as for the statistical analysis of parasitological data in general.
综合粪便虫卵计数(FEC)越来越多地用于支持放牧家畜的战略驱虫治疗决策。然而,它们作为群体平均FEC估计值的准确性受到所包含个体样本数量、混合程度以及个体宿主之间寄生虫聚集程度的影响。本文使用负二项式模型来描述寄生虫聚集情况,并用泊松模型来描述粪便悬浮液中虫卵的分布情况,以优化商业羊群的综合FEC方案。我们的结果表明,通过检查四个独立填充的麦克马斯特计数板估计,从10只绵羊(每只3克粪便)中获得的充分混合的综合样本中的粪便虫卵密度,在大多数情况下可能足以估计群体平均FEC。然而,对于预计FEC聚集水平较高的羊群,需要格外小心。FEC估计中的统计误差的影响取决于其使用方式。本文提出的基于模拟的方法是一种强大的工具,可用于研究不同情况下FEC驱动的治疗决策中的误差风险,以及一般寄生虫学数据的统计分析。