Babayani Nlingisisi D, van Wyk Jan A, Morgan Eric R
Department of Veterinary Tropical Diseases, Faculty of Veterinary Science, University of Pretoria, Private Bag X04, Onderstepoort, 0110, South Africa.
Department of Veterinary Tropical Diseases, Faculty of Veterinary Science, University of Pretoria, Private Bag X04, Onderstepoort, 0110, South Africa.
Prev Vet Med. 2016 Nov 1;134:160-169. doi: 10.1016/j.prevetmed.2016.10.016. Epub 2016 Oct 20.
Infection with the abomasal nematode Haemonchus contortus is responsible for considerable production loss in small ruminants globally, and especially in warm, summer-rainfall regions. Previous attempts to predict infection levels have followed the traditional framework for macroparasite models, i.e. tracking parasite population sizes as a function of host and climatic factors. Targeted treatment strategies, in which patho-physiological indices are used to identify the individuals most affected by parasites, could provide a foundation for alternative, incidence-based epidemiological models. In this paper, an elaboration of the classic susceptible-infected-recovered (SIR) model framework for microparasites was adapted to haemonchosis and used to predict disease in Merino sheep on a commercial farm in South Africa. Incidence was monitored over a single grazing season using the FAMACHA scoring system for conjunctival mucosal coloration, which indicates high burdens of H. contortus, and used to fit the model by estimating transmission parameters. The model predicted force of infection (FOI) between sequential FAMACHA monitoring events in groups of dry, pregnant and lactating ewes, and related FOI to factors including climate (temperature, rainfall and rainfall entropy), using a random effects model with reproductive status group as the cluster variable. Temperature and rainfall in the seven days prior to monitoring significantly predicted the interval FOI (p≤0.002), while rainfall entropy did not (p=0.289). Differences across the three groups accounted for approximately 90% of the variability in the interval FOI over the period of investigation. Maintained FOI during targeted treatment of cases of haemonchosis suggests strong underlying transmission from sub-clinically infected animals, and/or limited impact on pre-existing pasture contamination by removal of clinical worm burdens later in the grazing season. The model has the potential to contribute to the sustainable management of H. contortus by predicting periods of heightened risk, and hence to focus and optimise limited resources for monitoring and treatment. SIR-type model frameworks are an alternative to classic abundance-based compartmental models of macroparasite epidemiology, and could be useful where incidence data are available. Significant challenges remain, however, in the ability to calibrate such models to field data at spatial and temporal scales that are useful for decision support at farm level.
皱胃线虫捻转血矛线虫感染在全球范围内导致小型反刍动物出现相当大的生产损失,在温暖的夏雨地区尤其如此。以往预测感染水平的尝试遵循宏观寄生虫模型的传统框架,即追踪寄生虫种群数量作为宿主和气候因素的函数。靶向治疗策略利用病理生理指标来识别受寄生虫影响最严重的个体,可为基于发病率的替代流行病学模型奠定基础。在本文中,对经典的微寄生虫易感-感染-恢复(SIR)模型框架进行了拓展,将其应用于捻转血矛线虫病,并用于预测南非一个商业农场美利奴羊的疾病情况。在单个放牧季节,使用用于结膜黏膜着色的FAMACHA评分系统监测发病率,该系统表明捻转血矛线虫负担较重,并通过估计传播参数来拟合模型。该模型预测了干奶母羊、怀孕母羊和哺乳母羊组中连续FAMACHA监测事件之间的感染力(FOI),并使用以繁殖状态组为聚类变量的随机效应模型,将FOI与包括气候(温度、降雨量和降雨熵)在内的因素相关联。监测前七天的温度和降雨量显著预测了间隔期FOI(p≤0.002),而降雨熵则未显示显著影响(p = 0.289)。在调查期间,三组之间的差异约占间隔期FOI变异性的90%。在对捻转血矛线虫病病例进行靶向治疗期间维持的FOI表明,存在来自亚临床感染动物的强大潜在传播,和/或在放牧季节后期清除临床蠕虫负担对先前存在的牧场污染影响有限。该模型有潜力通过预测风险增加期来促进捻转血矛线虫的可持续管理,从而集中并优化有限的监测和治疗资源。SIR型模型框架是宏观寄生虫流行病学经典的基于丰度的 compartmental模型的替代方案,在有发病率数据的情况下可能会很有用。然而,要在对农场层面决策支持有用的空间和时间尺度上,将此类模型校准到实地数据,仍面临重大挑战。