Wang Jiajia, Harrigan Ryan J, Schoenberg Frederic P
Department of Statistics, University of California, Los Angeles, CA 92521, USA.
Center for Tropical Research, Institute of the Environment and Sustainability, University of California, Los Angeles, CA 92521, USA.
Infect Dis Rep. 2021 Jun 16;13(2):558-570. doi: 10.3390/idr13020052.
Coccidioidomycosis is an infectious disease of humans and other mammals that has seen a recent increase in occurrence in the southwestern United States, particularly in California. A rise in cases and risk to public health can serve as the impetus to apply newly developed methods that can quickly and accurately predict future caseloads. The recursive and Hawkes point process models with various triggering functions were fit to the data and their goodness of fit evaluated and compared. Although the point process models were largely similar in their fit to the data, the recursive point process model offered a slightly superior fit. We explored forecasting the spread of coccidioidomycosis in California from December 2002 to December 2017 using this recursive model, and we separated the training and testing portions of the data and achieved a root mean squared error of just 3.62 cases/week.
球孢子菌病是一种人类和其他哺乳动物的传染病,最近在美国西南部,尤其是加利福尼亚州,其发病率有所上升。病例数的增加和对公众健康的风险可以促使人们应用新开发的方法,这些方法能够快速、准确地预测未来的病例数。将具有各种触发函数的递归和霍克斯点过程模型拟合到数据中,并对它们的拟合优度进行评估和比较。尽管点过程模型在拟合数据方面大体相似,但递归点过程模型的拟合效果略优。我们使用这个递归模型探索了对2002年12月至2017年12月加利福尼亚州球孢子菌病传播情况的预测,我们将数据分为训练和测试部分,得到的均方根误差仅为每周3.62例。