Department of Statistics, Brigham Young University, Provo, Utah.
Department of Health Science, Brigham Young University, Provo, Utah.
Stat Med. 2019 May 20;38(11):1991-2001. doi: 10.1002/sim.8081. Epub 2019 Jan 13.
RSV bronchiolitis (an acute lower respiratory tract viral infection in infants) is the most common cause of infant hospitalizations in the United States (US). The only preventive intervention currently available is monthly injections of immunoprophylaxis. However, this treatment is expensive and needs to be administered simultaneously with seasonal bronchiolitis cycles in order to be effective. To increase our understanding of bronchiolitis timing, this research focuses on identifying seasonal bronchiolitis cycles (start times, peaks, and declinations) throughout the continental US using data on infant bronchiolitis cases from the US Military Health System Data Repository. Because this data involved highly personal information, the bronchiolitis dates in the dataset were "jittered" in the sense that the recorded dates were randomized within a time window of the true date. Hence, we develop a statistical change point model that estimates spatially varying seasonal bronchiolitis cycles while accounting for the purposefully introduced jittering in the data. Additionally, by including temperature and humidity data as regressors, we identify a relationship between bronchiolitis seasonality and climate. We found that, in general, bronchiolitis seasons begin earlier and are longer in the southeastern states compared to the western states with peak times lasting approximately 1 month nationwide.
RSV 细支气管炎(婴儿急性下呼吸道病毒感染)是美国婴儿住院的最常见原因。目前唯一可用的预防干预措施是每月注射免疫预防。然而,这种治疗方法昂贵,需要与季节性细支气管炎周期同时进行才能有效。为了更深入地了解细支气管炎的发病时间,本研究使用美国军事医疗系统数据存储库中婴儿细支气管炎病例的数据,重点在美国大陆识别季节性细支气管炎周期(开始时间、高峰期和下降期)。由于这些数据涉及高度个人信息,因此数据集内的细支气管炎日期进行了“抖动”处理,即记录的日期在真实日期的时间窗口内随机化。因此,我们开发了一种统计变化点模型,该模型可以在考虑到数据中有意引入的抖动的情况下,估计空间变化的季节性细支气管炎周期。此外,通过将温度和湿度数据作为回归量,我们确定了细支气管炎季节性与气候之间的关系。我们发现,一般来说,与西部各州相比,东南部各州的细支气管炎季节开始得更早,持续时间更长,高峰期持续时间约为全国范围内 1 个月。