Tran Phoebe, Waller Lance
Department of Epidemiology, Harvard School of Public Health, Boston, MA, US.
Department of Bioinformatics and Biostatistics, Rollins School of Public Health, Atlanta, GA, US.
Environ Res. 2015 Jan;136:373-80. doi: 10.1016/j.envres.2014.08.041. Epub 2014 Nov 25.
Lyme disease has been the subject of many studies due to increasing incidence rates year after year and the severe complications that can arise in later stages of the disease. Negative binomial models have been used to model Lyme disease in the past with some success. However, there has been little focus on the reliability and consistency of these models when they are used to study Lyme disease at multiple spatial scales. This study seeks to explore how sensitive/consistent negative binomial models are when they are used to study Lyme disease at different spatial scales (at the regional and sub-regional levels). The study area includes the thirteen states in the Northeastern United States with the highest Lyme disease incidence during the 2002-2006 period. Lyme disease incidence at county level for the period of 2002-2006 was linked with several previously identified key landscape and climatic variables in a negative binomial regression model for the Northeastern region and two smaller sub-regions (the New England sub-region and the Mid-Atlantic sub-region). This study found that negative binomial models, indeed, were sensitive/inconsistent when used at different spatial scales. We discuss various plausible explanations for such behavior of negative binomial models. Further investigation of the inconsistency and sensitivity of negative binomial models when used at different spatial scales is important for not only future Lyme disease studies and Lyme disease risk assessment/management but any study that requires use of this model type in a spatial context.
莱姆病一直是许多研究的主题,这是由于其发病率逐年上升,以及在疾病后期可能出现的严重并发症。过去曾使用负二项式模型对莱姆病进行建模,并取得了一定的成功。然而,当这些模型用于在多个空间尺度上研究莱姆病时,很少有人关注它们的可靠性和一致性。本研究旨在探讨负二项式模型在用于研究不同空间尺度(区域和次区域层面)的莱姆病时的敏感程度/一致性。研究区域包括美国东北部在2002 - 2006年期间莱姆病发病率最高的13个州。在一个针对东北地区以及两个较小次区域(新英格兰次区域和中大西洋次区域)的负二项式回归模型中,将2002 - 2006年期间县级层面的莱姆病发病率与几个先前确定的关键景观和气候变量相关联。本研究发现,负二项式模型在用于不同空间尺度时确实敏感/不一致。我们讨论了负二项式模型出现这种行为的各种合理原因。进一步研究负二项式模型在不同空间尺度上使用时的不一致性和敏感性,不仅对未来的莱姆病研究以及莱姆病风险评估/管理很重要,而且对任何需要在空间背景下使用这种模型类型的研究都很重要。