Fernández-Fontelo Amanda, Lasierra-Morales María Teresa, Carmona Marta, Sibila Marina, Garza-Moreno Laura
Departament de Matemàtiques, Universitat Autònoma de Barcelona, Bellaterra, Barcelona, Spain.
CEVA Salud Animal, Barcelona, Spain.
Prev Vet Med. 2025 Jun;239:106525. doi: 10.1016/j.prevetmed.2025.106525. Epub 2025 Mar 29.
Respiratory diseases are considered one of the most important problems in swine production worldwide due to the significant economic losses associated. Lung lesion evaluation at slaughterhouses by different scoring systems is commonly used to monitor respiratory diseases in swine. Concretely, cranioventral pulmonary consolidation lesions are associated with enzootic pneumonia (EP) caused by Mycoplasma hyopneumoniae (Mhyo); whereas haemorrhagic necrotizing pneumonia, mainly in the dorso-caudal lung lobes, and chronic pleuritis (CP) are associated with Actinobacillus pleuropneumoniae (App). Despite the recent consideration of several statistical methods for modelling the temporal dynamics of diseases and the construction of monitoring systems, none have been applied to lung lesions data collected at slaughterhouses. Thus, this work aimed (1) to describe the temporal patterns of EP and CP-like lesions in Spain using time series methods to model the collected data on lung lesions at slaughterhouses; and (2) to construct and evaluate in quasi-real time a surveillance system for early detection of outbreaks and abnormal trends potentially related to both pathogens. In total, 16 time series were analysed including 3947 audits from 474 Spanish farms associated with 302 companies between 2016 and 2019. The monthly time series of the EP index between 2016 and 2019 in Spain (point estimate for Spain was -0.088 with an associated p = 0.073) and different Spanish subregions showed decreasing trend patterns (point estimates for Aragon was -0.028 with an associated p = 0.000 and for Catalonia was -0.064 with an associated p = 0.092), whereas the monthly time series of the CP index increased (point estimate for Spain was 0.004 with an associated p = 0.045 and for Aragon was 0.007 with an associated p = 0.000) over the same period. Additionally, the predictive performance of the estimated models was evaluated at quasi-real time using the data between 2020 and 2021. Results from this evaluation showed that overall, the selected models predicted the evolution of both the EP and CP indices in a reasonable manner being between 90 % prediction intervals. Therefore, time series models constructed in this work could be used to prevent and shorten the response time in implementing of control strategies against these respiratory pathogens minimizing their economic impact associated.
由于相关的重大经济损失,呼吸道疾病被认为是全球养猪生产中最重要的问题之一。在屠宰场通过不同评分系统对肺部病变进行评估,通常用于监测猪的呼吸道疾病。具体而言,颅腹侧肺实变病变与猪肺炎支原体(Mhyo)引起的地方流行性肺炎(EP)相关;而主要位于背尾侧肺叶的出血性坏死性肺炎和慢性胸膜炎(CP)与胸膜肺炎放线杆菌(App)相关。尽管最近考虑了几种用于模拟疾病时间动态和构建监测系统的统计方法,但尚未应用于在屠宰场收集的肺部病变数据。因此,这项工作旨在:(1)使用时间序列方法对在屠宰场收集的肺部病变数据进行建模,以描述西班牙EP和CP样病变的时间模式;(2)构建并在准实时状态下评估一个监测系统,用于早期检测可能与这两种病原体相关的疫情爆发和异常趋势。总共分析了16个时间序列,包括2016年至2019年期间来自与302家公司相关的474个西班牙农场的3947次审计。2016年至2019年西班牙EP指数的月度时间序列(西班牙的点估计值为 -0.088,相关p值 = 0.073)以及不同的西班牙次区域显示出下降趋势模式(阿拉贡的点估计值为 -0.028,相关p值 = 0.000,加泰罗尼亚的点估计值为 -0.064,相关p值 = 0.092),而同期CP指数的月度时间序列有所上升(西班牙的点估计值为0.004,相关p值 = 0.045,阿拉贡的点估计值为0.007,相关p值 = 0.000)。此外,使用2020年至2021年的数据在准实时状态下评估了估计模型的预测性能。该评估结果表明,总体而言,所选模型以合理的方式预测了EP和CP指数的演变,预测区间在90%之间。因此,这项工作中构建的时间序列模型可用于预防和缩短针对这些呼吸道病原体实施控制策略的响应时间,将其相关经济影响降至最低。