评估化学混合物与人类健康:使用贝叶斯信念网分析法。

Journal of Environmental Protection Pub Date : 2012-06-01 Epub Date: 2012-06-11 DOI:10.4236/jep.2012.36056
Anindya Roy, Neil J Perkins, Germaine M Buck Louis
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引用次数: 0

摘要

背景:尽管人类暴露在复杂的化学混合物中,但现有的大部分研究仍侧重于单一化合物或代谢物,或与人类暴露性质不符的特定化合物亚群。如何对化学混合物进行最佳建模的不确定性以及分析方法的匮乏仍然是一个巨大的挑战,这也是研究的动力所在。 目标:确定多氯联苯利用新型图形建模技术,确定化学混合物中与子宫内膜异位症诊断最相关的多氯联苯 (PCB) 同系物。 方法:开发了贝叶斯信念网络 (BBN) 模型,并在由 84 名年龄在 18-40 岁之间、在 1999 年至 2000 年期间接受过腹腔镜检查或开腹手术的妇女组成的队列中进行了经验评估;79 名(94%)妇女的血清中 68 种多氯联苯同系物的浓度得到了量化。使用 BBN 模型估算了单个多氯联苯同系物导致子宫内膜异位症的调整赔率 (AOR)。 结果:PCB 同系物 #114(AOR = 3.01;95% CI = 2.25,3.77)和 #136(AOR = 1.79;95% CI = 1.03,2.55)与子宫内膜异位症诊断有关。包括多氯联苯 #114 在内的混合物组合都与较高的子宫内膜异位症几率相关,这突出表明了多氯联苯与子宫内膜异位症的潜在关系。 结论:BBN 模型确定多氯联苯同系物 114 是在 68 种同系物化学混合物中对子宫内膜异位症诊断几率影响最大的同系物。BBN 模型为研究人员提供了评估混合物中哪些化合物可能会对人类健康产生影响的机会。
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Assessing Chemical Mixtures and Human Health: Use of Bayesian Belief Net Analysis.

BACKGROUND: Despite humans being exposed to complex chemical mixtures, much of the available research continues to focus on a single compound or metabolite or a select subgroup of compounds inconsistent with the nature of human exposure. Uncertainty regarding how best to model chemical mixtures coupled with few analytic approaches remains a formidable challenge and served as the impetus for study. OBJECTIVES: To identify the polychlorinated biphenyl (PCB) congener(s) within a chemical mixture that was most associated with an endometriosis diagnosis using novel graphical modeling techniques. METHODS: Bayesian Belief Network (BBN) models were developed and empirically assessed in a cohort comprising 84 women aged 18-40 years who underwent a laparoscopy or laparotomy between 1999 and 2000; 79 (94%) women had serum concentrations for 68 PCB congeners quantified. Adjusted odds ratios (AOR) for endometriosis were estimated for individual PCB congeners using BBN models. RESULTS: PCB congeners #114 (AOR = 3.01; 95% CI = 2.25, 3.77) and #136 (AOR = 1.79; 95% CI = 1.03, 2.55) were associated with an endometriosis diagnosis. Combinations of mixtures inclusive of PCB #114 were all associated with higher odds of endometriosis, underscoring its potential relation with endometriosis. CONCLUSIONS: BBN models identified PCB congener 114 as the most influential congener for the odds of an endometriosis diagnosis in the context of a 68 congener chemical mixture. BBN models offer investigators the opportunity to assess which compounds within a mixture may drive a human health effect.

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