Figueiras A, Cadarso-Suárez C
Department of Preventive Medicine and Public Health, Faculty of Medicine, University of Santiago de Compostela, Santiago de Compostela, Spain.
Am J Epidemiol. 2001 Aug 1;154(3):264-75. doi: 10.1093/aje/154.3.264.
Calculating odds ratios and corresponding confidence intervals for exposures that have been measured using a continuous scale presents important limitations in the traditional practice of analytical epidemiology. Approximations based on linear models require making arbitrary assumptions about the shape of the relation curve or about its breakpoints. Categorical analyses generally have low statistical efficiency, and cutpoints for the categories are in most cases arbitrary and/or opportunistic. The use of logistic generalized additive models to calculate odds ratios does not require these assumptions and allows great flexibility and adequate statistical efficiency. Based on the asymptotic normality of the logarithm of the odds ratio, the authors propose the use of an approximate analytical expression for the corresponding covariance matrix, which will allow the construction of confidence intervals for odds ratios that can be interpreted as in the classical parametric context. The authors illustrate this procedure by examining the relation between glycemia and risk of postoperative infection, using data obtained from a cohort study of patients undergoing surgery in Santiago, Spain (January 1996--March 1997). The authors found that glycemia values below 75 mg/dl and above 130 mg/dl were associated with increased risk of postoperative infection.
对于使用连续尺度测量的暴露因素,计算比值比及相应的置信区间在传统的分析性流行病学实践中存在重要局限性。基于线性模型的近似方法需要对关系曲线的形状或其断点做出任意假设。分类分析通常统计效率较低,而且在大多数情况下,分类的切点是任意的和/或基于机会确定的。使用逻辑广义相加模型来计算比值比不需要这些假设,并且具有很大的灵活性和足够的统计效率。基于比值比对数的渐近正态性,作者提出使用相应协方差矩阵的近似解析表达式,这将允许构建可在经典参数背景下进行解释的比值比置信区间。作者通过研究血糖与术后感染风险之间的关系来说明这一过程,使用的数据来自西班牙圣地亚哥对接受手术患者的队列研究(1996年1月 - 1997年3月)。作者发现血糖值低于75mg/dl和高于130mg/dl与术后感染风险增加相关。