ICAR- National Institute of Veterinary Epidemiology and Disease Informatics (NIVEDI), Yelahanka, Bengaluru 560064, Karnataka, India.
ICAR- National Institute of Veterinary Epidemiology and Disease Informatics (NIVEDI), Yelahanka, Bengaluru 560064, Karnataka, India.
Acta Trop. 2022 Sep;233:106542. doi: 10.1016/j.actatropica.2022.106542. Epub 2022 May 25.
Globally haemonchosis in sheep is a known devastating disease imposing considerable economic loss. Understanding the environmental risk factors and their role is essentially required to manage the disease successfully. In this study, 14 years' disease data was analysed to predict the risk factors responsible for the occurrence of the disease. Season-wise analysis revealed high incidence during monsoon and post-monsoon and least in winter and summer seasons. The linear discriminant analysis (LDA) revealed the significant environmental and remote sensing risk factors contributing to haemonchosis incidence as enhanced vegetation index, leaf area index, potential evapotranspiration and specific humidity. Further, significant ecological and environmental risk factors identified using LDA were subjected to the climate-disease modelling and risk maps were generated. Basic reproduction number (R) was estimated and was ranged from 0.76 to 2.08 for >1000 egg per gram of faeces (EPG) in four districts whereas R values of 1.09-1.69 for >2000 EPG in three districts indicating the severity of the infection. The random forest and adaptive boosting models emerged out as best fitted models for both the EPG groups. The results of the study will help to focus on high-risk areas of haemonchosis in sheep to implement the available control strategies and better animal production globally.
全球绵羊血矛线虫病是一种已知的破坏性疾病,会造成巨大的经济损失。了解环境风险因素及其作用对于成功管理该病至关重要。本研究分析了 14 年的疾病数据,以预测导致该病发生的风险因素。按季节分析显示,季风期和后季风期发病率较高,冬季和夏季发病率较低。线性判别分析(LDA)揭示了导致血矛线虫病发病率的重要环境和遥感风险因素,如增强植被指数、叶面积指数、潜在蒸散量和比湿度。此外,使用 LDA 确定的重要生态和环境风险因素被用于气候疾病建模,并生成风险图。基本繁殖数(R)估计值在四个地区的粪便每克 1000 个卵以上(EPG)的范围为 0.76 至 2.08,而在三个地区的 EPG 大于 2000 的 R 值为 1.09-1.69,表明感染的严重程度。随机森林和自适应提升模型是两个 EPG 组的最佳拟合模型。本研究的结果将有助于关注绵羊血矛线虫病的高风险地区,以实施现有的控制策略,在全球范围内实现更好的动物生产。