Røislien Jo, Lossius Hans Morten, Kristiansen Thomas
Department of Health Sciences, University of Stavanger, Stavanger, Norway Department of Biostatistics, Institute of Basic Medical Sciences, University of Oslo, Oslo, Norway.
Department of Health Sciences, University of Stavanger, Stavanger, Norway Department of Research, Norwegian Air Ambulance Foundation, Drøbak, Norway.
Inj Prev. 2015 Dec;21(6):367-73. doi: 10.1136/injuryprev-2014-041473. Epub 2015 May 13.
Trauma is a leading global cause of death. Trauma mortality rates are higher in rural areas, constituting a challenge for quality and equality in trauma care. The aim of the study was to explore population density and transport time to hospital care as possible predictors of geographical differences in mortality rates, and to what extent choice of statistical method might affect the analytical results and accompanying clinical conclusions.
Using data from the Norwegian Cause of Death registry, deaths from external causes 1998-2007 were analysed. Norway consists of 434 municipalities, and municipality population density and travel time to hospital care were entered as predictors of municipality mortality rates in univariate and multiple regression models of increasing model complexity. We fitted linear regression models with continuous and categorised predictors, as well as piecewise linear and generalised additive models (GAMs). Models were compared using Akaike's information criterion (AIC).
Population density was an independent predictor of trauma mortality rates, while the contribution of transport time to hospital care was highly dependent on choice of statistical model. A multiple GAM or piecewise linear model was superior, and similar, in terms of AIC. However, while transport time was statistically significant in multiple models with piecewise linear or categorised predictors, it was not in GAM or standard linear regression.
Population density is an independent predictor of trauma mortality rates. The added explanatory value of transport time to hospital care is marginal and model-dependent, highlighting the importance of exploring several statistical models when studying complex associations in observational data.
创伤是全球主要的死亡原因。农村地区的创伤死亡率更高,这对创伤护理的质量和平等性构成了挑战。本研究的目的是探讨人口密度和到医院接受治疗的运输时间,作为死亡率地理差异的可能预测因素,以及统计方法的选择在多大程度上可能影响分析结果和随之而来的临床结论。
利用挪威死亡原因登记处的数据,分析了1998 - 2007年外部原因导致的死亡情况。挪威由434个自治市组成,在模型复杂度不断增加的单变量和多元回归模型中,将自治市人口密度和到医院接受治疗的旅行时间作为自治市死亡率的预测因素。我们拟合了具有连续和分类预测因素的线性回归模型,以及分段线性和广义相加模型(GAM)。使用赤池信息准则(AIC)对模型进行比较。
人口密度是创伤死亡率的独立预测因素,而到医院接受治疗的运输时间的影响高度依赖于统计模型的选择。在AIC方面,多元GAM或分段线性模型更优且相似。然而,虽然在具有分段线性或分类预测因素的多个模型中运输时间具有统计学意义,但在GAM或标准线性回归中并非如此。
人口密度是创伤死亡率的独立预测因素。到医院接受治疗的运输时间的额外解释价值很小且依赖于模型,这突出了在研究观察性数据中的复杂关联时探索多种统计模型的重要性。