Magalhães E S, Zhang D, Moura C A A, O'Connor Annette, Wang C, Holtkamp D J, Silva G S, Linhares D C L
Department of Animal Science, Iowa State University, Ames, IA, United States.
Department of Statistics, College of Liberal Arts and Sciences, Iowa State University, Ames, IA, United States.
Front Vet Sci. 2025 Apr 30;12:1545034. doi: 10.3389/fvets.2025.1545034. eCollection 2025.
Porcine reproductive and respiratory syndrome virus (PRRSV) remains a significant challenge to the swine industry, resulting in substantial productivity and, consequently, economic losses. This study aimed to quantify the impact of PRRSV outbreaks in sow farms on nursery mortality using causal inference methods. The study design followed a retrospective observational approach, where PRRSV epidemic status in source sow farms was the exposure, and nursery mortality (percentage of dead pigs in the first 60 days post-weaning) was the outcome. Causal inference techniques were employed to estimate the effect of the exposure (PRRSV epidemic status) on the outcome (nursery mortality). Data from a Midwestern US swine production system comprising 2,592 lots of pigs, representing approximately 5 million pigs marketed between January 2021 and December 2022, were analyzed. A causal diagram was constructed to visualize the relationship between PRRSV epidemic exposure and nursery mortality, while controlling for potential confounding factors including season, average parity at farrow, and sow farm status. Four analytical approaches were employed: univariate and multivariable regression models, propensity score matching, and a doubly robust method. The results indicated that PRRSV epidemic lots had higher nursery mortality compared to non-epidemic lots, regardless of the modeling approach used. The doubly robust method provided the most accurate estimates, offering lower mortality differences and narrower confidence intervals. This study demonstrated the application of causal inference methods on swine data to measure the impact of PRRSV on swine nursery mortality, which is an approach commonly used in other epidemiology areas but not well explored in veterinary epidemiology. The findings highlight the importance of employing causal inference models in veterinary epidemiology to improve the accuracy of disease impact assessments in field conditions, with potential applications in studying other pathogens or disease-related factors in livestock production.
猪繁殖与呼吸综合征病毒(PRRSV)仍然是养猪业面临的重大挑战,导致生产力大幅下降,进而造成经济损失。本研究旨在使用因果推断方法量化母猪场PRRSV疫情对保育猪死亡率的影响。该研究设计采用回顾性观察方法,其中源头母猪场的PRRSV流行状况为暴露因素,保育猪死亡率(断奶后前60天内死亡仔猪的百分比)为结果变量。采用因果推断技术来估计暴露因素(PRRSV流行状况)对结果变量(保育猪死亡率)的影响。分析了来自美国中西部一个养猪生产系统的数据,该系统包括2592批猪,代表了2021年1月至2022年12月期间上市的约500万头猪。构建了一个因果图,以直观显示PRRSV流行暴露与保育猪死亡率之间的关系,同时控制潜在的混杂因素,包括季节、产仔时的平均胎次和母猪场状况。采用了四种分析方法:单变量和多变量回归模型、倾向得分匹配和双重稳健方法。结果表明,无论使用何种建模方法,PRRSV流行批次的保育猪死亡率均高于非流行批次。双重稳健方法提供了最准确的估计,死亡率差异更低,置信区间更窄。本研究证明了因果推断方法在猪数据中的应用,以衡量PRRSV对猪保育猪死亡率的影响,这是其他流行病学领域常用的方法,但在兽医流行病学中尚未得到充分探索。研究结果强调了在兽医流行病学中采用因果推断模型以提高现场条件下疾病影响评估准确性的重要性,这在研究畜牧生产中的其他病原体或疾病相关因素方面具有潜在应用价值。