Ann Epidemiol. 2012 Feb;22(2):126-41. doi: 10.1016/j.annepidem.2011.11.004.
Air pollution constitutes a major public health concern because of its ubiquity and of its potential health impact. Because individuals are exposed to many air pollutants at once that are highly correlated with each other, there is a need to consider the multi-pollutant exposure phenomenon. The characteristics of multiple pollutants that make statistical analysis of health-related effects of air pollution complex include the high correlation between pollutants prevents the use of standard statistical methods, the potential existence of interaction between pollutants, the common measurement errors, the importance of the number of pollutants to consider, and the potential nonlinear relationship between exposure and health.
We made a review of statistical methods either used in the literature to study the effect of multiple pollutants or identified as potentially applicable to this problem. We reported the results of investigations that applied such methods.
Eighteen publications have investigated the multi-pollutant effects, 5 on indoor pollution, 10 on outdoor pollution, and 3 on statistical methodology with application on outdoor pollution. Some other publications have only addressed statistical methodology.
The use of Hierarchical Bayesian approach, dimension reduction methods, clustering, recursive partitioning, and logic regression are some potential methods described. Methods that provide figures for risk assessments should be put forward in public health decisions.
由于空气污染的普遍性及其潜在的健康影响,它构成了一个主要的公共卫生关注点。由于个体同时暴露于许多高度相关的空气污染物中,因此需要考虑多污染物暴露现象。使空气污染与健康相关的影响的统计分析变得复杂的多种污染物的特征包括:污染物之间的高度相关性,这使得标准统计方法的使用变得困难;污染物之间可能存在相互作用;共同的测量误差;需要考虑的污染物数量的重要性;以及暴露与健康之间潜在的非线性关系。
我们对文献中用于研究多种污染物影响的统计方法或被认为可能适用于该问题的方法进行了综述。我们报告了应用这些方法的研究结果。
有 18 篇出版物调查了多污染物的影响,其中 5 篇涉及室内污染,10 篇涉及室外污染,3 篇涉及具有室外污染应用的统计方法学。其他一些出版物仅涉及统计方法学。
描述了一些潜在的方法,如分层贝叶斯方法、降维方法、聚类、递归分区和逻辑回归。应在公共卫生决策中提出用于风险评估的方法。