Swartz Michael D, Cai Yi, Chan Wenyaw, Symanski Elaine, Mitchell Laura E, Danysh Heather E, Langlois Peter H, Lupo Philip J
Division of Biostatistics, University of Texas School of Public Health, Houston, TX, USA.
Division of Epidemiology, Human Genetics and Environmental Sciences, University of Texas School of Public Health, Houston, TX, USA.
Environ Health. 2015 Feb 9;14:16. doi: 10.1186/1476-069X-14-16.
While there is evidence that maternal exposure to benzene is associated with spina bifida in offspring, to our knowledge there have been no assessments to evaluate the role of multiple hazardous air pollutants (HAPs) simultaneously on the risk of this relatively common birth defect. In the current study, we evaluated the association between maternal exposure to HAPs identified by the United States Environmental Protection Agency (U.S. EPA) and spina bifida in offspring using hierarchical Bayesian modeling that includes Stochastic Search Variable Selection (SSVS).
The Texas Birth Defects Registry provided data on spina bifida cases delivered between 1999 and 2004. The control group was a random sample of unaffected live births, frequency matched to cases on year of birth. Census tract-level estimates of annual HAP levels were obtained from the U.S. EPA's 1999 Assessment System for Population Exposure Nationwide. Using the distribution among controls, exposure was categorized as high exposure (>95(th) percentile), medium exposure (5(th)-95(th) percentile), and low exposure (<5(th) percentile, reference). We used hierarchical Bayesian logistic regression models with SSVS to evaluate the association between HAPs and spina bifida by computing an odds ratio (OR) for each HAP using the posterior mean, and a 95% credible interval (CI) using the 2.5(th) and 97.5(th) quantiles of the posterior samples. Based on previous assessments, any pollutant with a Bayes factor greater than 1 was selected for inclusion in a final model.
Twenty-five HAPs were selected in the final analysis to represent "bins" of highly correlated HAPs (ρ > 0.80). We identified two out of 25 HAPs with a Bayes factor greater than 1: quinoline (ORhigh = 2.06, 95% CI: 1.11-3.87, Bayes factor = 1.01) and trichloroethylene (ORmedium = 2.00, 95% CI: 1.14-3.61, Bayes factor = 3.79).
Overall there is evidence that quinoline and trichloroethylene may be significant contributors to the risk of spina bifida. Additionally, the use of Bayesian hierarchical models with SSVS is an alternative approach in the evaluation of multiple environmental pollutants on disease risk. This approach can be easily extended to environmental exposures, where novel approaches are needed in the context of multi-pollutant modeling.
虽然有证据表明母亲接触苯与后代脊柱裂有关,但据我们所知,尚未有评估同时考量多种有害空气污染物(HAPs)对这种相对常见出生缺陷风险的作用。在本研究中,我们使用包含随机搜索变量选择(SSVS)的分层贝叶斯模型,评估了母亲接触美国环境保护局(U.S. EPA)认定的HAPs与后代脊柱裂之间的关联。
德克萨斯州出生缺陷登记处提供了1999年至2004年间分娩的脊柱裂病例数据。对照组是未受影响活产儿的随机样本,按出生年份与病例进行频率匹配。从美国环境保护局1999年全国人口暴露评估系统中获取人口普查区层面的年度HAP水平估计值。根据对照组中的分布情况,将暴露分为高暴露(>第95百分位数)、中暴露(第5 - 95百分位数)和低暴露(<第5百分位数,作为参照)。我们使用带有SSVS的分层贝叶斯逻辑回归模型,通过使用后验均值计算每个HAP的比值比(OR)以及使用后验样本的第2.5和第97.5百分位数计算95%可信区间(CI),来评估HAPs与脊柱裂之间的关联。基于先前的评估,选择贝叶斯因子大于1的任何污染物纳入最终模型。
在最终分析中选择了25种HAPs来代表高度相关的HAPs“类别”(ρ > 0.80)。我们在25种HAPs中确定了两种贝叶斯因子大于1的物质:喹啉(OR高 = 2.06,95% CI:1.11 - 3.87,贝叶斯因子 = 1.01)和三氯乙烯(OR中 = 2.00,95% CI:1.14 - 3.61,贝叶斯因子 = 3.79)。
总体而言,有证据表明喹啉和三氯乙烯可能是脊柱裂风险的重要促成因素。此外,使用带有SSVS的贝叶斯分层模型是评估多种环境污染物对疾病风险影响的一种替代方法。这种方法可以轻松扩展到环境暴露研究中,在多污染物建模的背景下,需要新的方法。