Levine Michael, Moore George E
Department of Statistics, College of Science, Purdue University, West Lafayette, IN 47907, USA.
BMC Vet Res. 2009 Apr 15;5:12. doi: 10.1186/1746-6148-5-12.
Gastric dilatation-volvulus (GDV) is a life-threatening condition of mammals, with increased risk in large breed dogs. The study of its etiological factors is difficult due to the variety of possible living conditions. The association between meteorological events and the occurrence of GDV has been postulated but remains unclear. This study introduces the binary time series approach to the investigation of the possible meteorological risk factors for GDV. The data collected in a population of high-risk working dogs in Texas was used.
Minimum and maximum daily atmospheric pressure on the day of GDV event and the maximum daily atmospheric pressure on the day before the GDV event were positively associated with the probability of GDV. All of the odds/multiplicative factors of a day being GDV day were interpreted conditionally on the past GDV occurrences. There was minimal difference between the binary and Poisson general linear models.
Time series modeling provided a novel method for evaluating the association between meteorological variables and GDV in a large population of dogs. Appropriate application of this method was enhanced by a common environment for the dogs and availability of meteorological data. The potential interaction between weather changes and patient risk factors for GDV deserves further investigation.
胃扩张-扭转(GDV)是一种危及哺乳动物生命的病症,大型犬患病风险更高。由于可能的生活条件多种多样,对其病因的研究颇具难度。气象事件与GDV发生之间的关联虽已被提出,但仍不明确。本研究采用二元时间序列方法来调查GDV可能的气象风险因素。使用了在德克萨斯州高危工作犬群体中收集的数据。
GDV事件当天的每日最低和最高大气压力以及GDV事件前一天的每日最高大气压力与GDV发生概率呈正相关。一天为GDV日的所有比值比/倍增因子均根据过去的GDV发生情况进行条件解释。二元和泊松广义线性模型之间差异极小。
时间序列建模为评估大量犬类群体中气象变量与GDV之间的关联提供了一种新方法。犬类的共同环境以及气象数据的可得性增强了该方法的适当应用。天气变化与GDV患者风险因素之间的潜在相互作用值得进一步研究。