Cavallari Jennifer M, Simcox Nancy J, Wakai Sara, Lu Chensheng, Garza Jennifer L, Cherniack Martin
UConn Health, Division of Occupational and Environmental Medicine, 263 Farmington Ave, Farmington, CT 06030-8077, USA; Department of Environmental Health, Harvard T.H. Chan School of Public Health, 677 Huntington Ave, Boston, MA, USA;
Department of Environmental and Occupational Health Sciences, University of Washington, DEOHS Continuing Education Programs, 4225 Roosevelt Way, NE, suite 100, Seattle, WA, USA;
Ann Occup Hyg. 2015 Oct;59(8):982-99. doi: 10.1093/annhyg/mev050. Epub 2015 Aug 2.
Phthalates, a ubiquitous class of chemicals found in consumer, personal care, and cleaning products, have been linked to adverse health effects. Our goal was to characterize urinary phthalate metabolite concentrations and to identify work and nonwork sources among custodians using traditional cleaning chemicals and 'green' or environmentally preferable products (EPP). Sixty-eight custodians provided four urine samples on a workday (first void, before shift, end of shift, and before bedtime) and trained observers recorded cleaning tasks and types of products used (traditional, EPP, or disinfectant) hourly over the work shifts. Questionnaires were used to assess personal care product use. Four different phthalate metabolites [monoethyl phthalate (MEP), monomethyl phthalate (MMP), mono (2-ethylhexyl) phthalate (MEHP), and monobenzyl phthalate (MBzP)] were quantified using liquid chromatography mass spectrometry. Geometric means (GM) and 95% confidence intervals (95% CI) were calculated for creatinine-adjusted urinary phthalate concentrations. Mixed effects univariate and multivariate modeling, using a random intercept for each individual, was performed to identify predictors of phthalate metabolites including demographics, workplace factors, and personal care product use. Creatinine-adjusted urinary concentrations [GM (95% CI)] of MEP, MMP, MEHP, and MBzP were 107 (91.0-126), 2.69 (2.18-3.30), 6.93 (6.00-7.99), 8.79 (7.84-9.86) µg g(-1), respectively. An increasing trend in phthalate concentrations from before to after shift was not observed. Creatinine-adjusted urinary MEP was significantly associated with frequency of traditional cleaning chemical intensity in the multivariate model after adjusting for potential confounding by demographics, workplace factors, and personal care product use. While numerous demographics, workplace factors, and personal care products were statistically significant univariate predictors of MMP, MEHP, and MBzP, few associations persisted in multivariate models. In summary, among this population of custodians, we identified both occupational and nonoccupational predictors of phthalate exposures. Identification of phthalates as ingredients in cleaning chemicals and consumer products would allow workers and consumers to avoid phthalate exposure.
邻苯二甲酸盐是一类在消费品、个人护理产品和清洁产品中普遍存在的化学物质,已被证明与不良健康影响有关。我们的目标是描述尿中邻苯二甲酸酯代谢物的浓度,并确定使用传统清洁化学品以及“绿色”或环境友好型产品(EPP)的 custodians 工作和非工作来源。68 名 custodians 在工作日提供了 4 份尿液样本(晨尿、轮班前、轮班结束时和就寝前),经过培训的观察员每小时记录清洁任务和使用的产品类型(传统产品、EPP 或消毒剂)。通过问卷调查来评估个人护理产品的使用情况。使用液相色谱质谱法对四种不同的邻苯二甲酸酯代谢物[单乙基邻苯二甲酸酯(MEP)、单甲基邻苯二甲酸酯(MMP)、单(2-乙基己基)邻苯二甲酸酯(MEHP)和单苄基邻苯二甲酸酯(MBzP)]进行定量。计算肌酐校正后的尿邻苯二甲酸酯浓度的几何均值(GM)和 95%置信区间(95%CI)。使用针对每个个体的随机截距进行混合效应单变量和多变量建模,以确定邻苯二甲酸酯代谢物的预测因素,包括人口统计学特征、工作场所因素和个人护理产品的使用情况。MEP、MMP、MEHP 和 MBzP 的肌酐校正尿浓度[GM(95%CI)]分别为 107(91.0 - 126)、2.69(2.18 - 3.30)、6.93(6.00 - 7.99)、8.79(7.84 - 9.86)μg g(-1)。未观察到轮班前后邻苯二甲酸酯浓度的上升趋势。在调整了人口统计学特征、工作场所因素和个人护理产品使用情况等潜在混杂因素后,肌酐校正后的尿 MEP 在多变量模型中与传统清洁化学品强度的频率显著相关。虽然许多人口统计学特征、工作场所因素和个人护理产品在单变量模型中是 MMP、MEHP 和 MBzP 的统计学显著预测因素,但在多变量模型中几乎没有关联持续存在。总之,在这群 custodians 中,我们确定了邻苯二甲酸酯暴露的职业和非职业预测因素。将邻苯二甲酸盐鉴定为清洁化学品和消费品中的成分,将使工人和消费者能够避免邻苯二甲酸盐暴露。