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Detection error influences both temporal seroprevalence predictions and risk factors associations in wildlife disease models

机译:检测误差影响野生动物疾病模型中的时间血管升迁预测和危险因素关联

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Understanding the prevalence of pathogens in invasive species is essential to guide efforts to prevent transmission to agricultural animals, wildlife, and humans. Pathogen prevalence can be difficult to estimate for wild species due to imperfect sampling and testing (pathogens may not be detected in infected individuals and erroneously detected in individuals that are not infected). The invasive wild pig ( Sus scrofa , also referred to as wild boar and feral swine) is one of the most widespread hosts of domestic animal and human pathogens in North America. We developed hierarchical Bayesian models that account for imperfect detection to estimate the seroprevalence of five pathogens (porcine reproductive and respiratory syndrome virus, pseudorabies virus, Influenza A virus in swine, Hepatitis E virus, and Brucella spp.) in wild pigs in the United States using a dataset of over 50,000 samples across nine years. To assess the effect of incorporating detection error in models, we also evaluated models that ignored detection error. Both sets of models included effects of demographic parameters on seroprevalence. We compared our predictions of seroprevalence to 40 published studies, only one of which accounted for imperfect detection. We found a range of seroprevalence among the pathogens with a high seroprevalence of pseudorabies virus, indicating significant risk to livestock and wildlife. Demographics had mostly weak effects, indicating that other variables may have greater effects in predicting seroprevalence. Models that ignored detection error led to different predictions of seroprevalence as well as different inferences on the effects of demographic parameters. Our results highlight the importance of incorporating detection error in models of seroprevalence and demonstrate that ignoring such error may lead to erroneous conclusions about the risk associated with pathogen transmission. When using opportunistic sampling data to model seroprevalence and evaluate risk factors, detection error should be included.
机译:了解侵袭性物种中病原体的患病率至关重要,以指导防止传播到农产动物,野生动物和人类的努力。由于不完美的取样和测试,野生物种难以估计病原体患病率(病原体可能在感染的个体中未检测到,并且在未感染的个体中错误地检测到)。侵入性野猪(SUS Scrofa,也称为野猪和野猪)是北美最广泛的家畜和人类病原体之一。我们开发了分层贝叶斯模型,该模型考虑了不完美的检测,以估算五种病原体(猪生殖和呼吸道综合征病毒,纯粹的猪,丙型肝炎病毒和Brucella SPP中的癫痫病毒,流感病毒。)在美国的野生猪中在九年内使用超过50,000个样本的数据集。为了评估在模型中掺入检测误差的效果,我们还评估了忽略检测误差的模型。两组模型都包括人口统计参数对Seroprevalence的影响。我们将我们的预测与40个公布的研究进行了比较,其中只有一个占缺乏无瑕疵的检测。我们发现了一系列的病原体中的血清透视,具有伪伪装病毒,表明牲畜和野生动物的风险很大。人口统计学主要弱势弱势,表明其他变量可能对预测Seroprevalence具有更大的影响。忽略检测误差的模型导致SEROPREVALING的不同预测以及对人口统计参数影响的不同推论。我们的结果突出了在Seroprevalence模型中纳入检测误差的重要性,并证明忽略这种错误可能导致关于与病原体传输相关的风险的错误结论。当使用机会采样数据来模拟SEROPREVALING和评估风险因素时,应包括检测误差。

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