论文标题
2003年荷兰高度致病禽流感的贝叶斯非参数分析
A Bayesian Nonparametric Analysis of the 2003 Outbreak of Highly Pathogenic Avian Influenza in the Netherlands
论文作者
论文摘要
农场的传染病构成了公共和动物健康的风险,因此了解它们在农场之间如何传播对于制定疾病控制策略以防止未来爆发至关重要。我们开发了新型的贝叶斯非参数方法,以拟合空间随机传播模型,其中任何两个农场之间的感染率是取决于它们之间距离的函数,但不假设指定的参数形式。在这种情况下,进行非参数推断是具有挑战性的,因为观察到的数据的可能性功能是棘手的,因为基础传输过程未观察到。我们通过将转换的高斯过程的先验分布分配到感染率函数,然后开发有效的数据增强型马尔可夫链蒙特卡洛算法来执行贝叶斯推断,从而采用了完全贝叶斯的方法。我们使用后验预测分布来模拟不同疾病控制方法的影响及其经济影响。我们分析了荷兰的大量禽流感爆发,并推断农场感染率,以及预先抢购的农场的未知感染状况。我们利用结果来分析环敲击策略,并得出结论,尽管有效,环曲线在高密度区域的影响有限。
Infectious diseases on farms pose both public and animal health risks, so understanding how they spread between farms is crucial for developing disease control strategies to prevent future outbreaks. We develop novel Bayesian nonparametric methodology to fit spatial stochastic transmission models in which the infection rate between any two farms is a function that depends on the distance between them, but without assuming a specified parametric form. Making nonparametric inference in this context is challenging since the likelihood function of the observed data is intractable because the underlying transmission process is unobserved. We adopt a fully Bayesian approach by assigning a transformed Gaussian Process prior distribution to the infection rate function, and then develop an efficient data augmentation Markov Chain Monte Carlo algorithm to perform Bayesian inference. We use the posterior predictive distribution to simulate the effect of different disease control methods and their economic impact. We analyse a large outbreak of Avian Influenza in the Netherlands and infer the between-farm infection rate, as well as the unknown infection status of farms which were pre-emptively culled. We use our results to analyse ring-culling strategies, and conclude that although effective, ring-culling has limited impact in high density areas.