Division of Surveillance, Hazard Evaluations, and Field Studies, National Institute for Occupational Safety and Health, Cincinnati, OH, USA.
Ann Work Expo Health. 2019 Feb 16;63(2):158-172. doi: 10.1093/annweh/wxy102.
Recent cross-sectional epidemiologic studies have examined the association between human health effects and carbon nanotube and nanofiber (CNT/F) workplace exposures. However, due to the latency of many health effects of interest, cohort studies with sufficient follow-up will likely be needed. The objective of this study was to identify workplace determinants that contribute to exposure and develop predictive models to estimate CNT/F exposures for future use in epidemiologic studies.
Exposure measurements were compiled from 15 unique facilities for the metrics of elemental carbon (EC) mass at both the respirable and inhalable aerosol size fractions as well as a quantitative analysis performed by transmission electron microscopy (TEM). These metrics served as the dependent variables in model development. Repeated personal samples were collected from most of the 127 CNT/F worker participants for 252 total observations. Determinants were categorized as company-level or worker-level and used to describe the exposure relationship within the dependent variables. The influence of determinants on variance components was explored using mixed linear models that utilized a backwards stepwise selection process with a lowering of the AIC for model determinant selection. Additional ridge regression models were created that examined predictive performance with and without all two-way interactions. Cross-validation was performed on each model to evaluate the generalizability of its predictive capabilities while predictive performance was evaluated according to the corresponding R2 value and root mean square error (RMSE).
Determinants at the company-level that increased exposure included an inadequate or semi-adequate engineering control rating, increasing average CNT/F diameter/length, daily quantities of material handled from 101 g to >1 kg and >1 kg, the use of CNF materials, the industry type of hybrid producer/user, and the expert assessment of a high exposure potential. Worker-level determinants associated with higher exposure included handling the dry-powdered form of CNT/F, handling daily quantities of material >1 kg, direct/indirect exposure, having the job title of engineer, using a respirator, using a ventilated or unventilated enclosure, and the job task of powder handling. The mixed linear models explained >60% of the total variance when using all company- and worker-level determinants to create the three exposure models. The cross-validated RMSE values for each of the three mixed models ranged from 2.50 to 4.23. Meanwhile, the ridge regression models, without all two-way interactions, estimated cross-validated RMSE values of 2.85, 2.23, and 2.76 for the predictive models of inhalable EC, respirable EC, and TEM, respectively.
The ridge regression models demonstrated the best performance for predicting exposures to CNT/F for each exposure metric, although they only provided a modest predictive capability. Therefore, it was concluded that the models alone would not be adequate in predicting workplace exposures and would need to be integrated with other methods.
最近的横断面流行病学研究已经研究了人类健康效应与碳纳米管和纳米纤维(CNT/F)工作场所暴露之间的关系。然而,由于许多感兴趣的健康效应潜伏期较长,因此可能需要进行具有足够随访的队列研究。本研究的目的是确定有助于暴露的工作场所决定因素,并开发预测模型,以估计未来在流行病学研究中使用的 CNT/F 暴露情况。
从 15 个独特的设施中收集了暴露测量数据,这些设施的度量值包括可吸入和呼吸性气溶胶大小分数的元素碳(EC)质量,以及透射电子显微镜(TEM)进行的定量分析。这些指标作为模型开发的因变量。127 名 CNT/F 工人中的大多数人都收集了重复的个人样本,总共进行了 252 次观察。决定因素分为公司层面或工人层面,并用于描述因变量内的暴露关系。利用混合线性模型探索了决定因素对方差分量的影响,该模型利用向后逐步选择过程,降低了 AIC 以选择模型决定因素。还创建了其他岭回归模型,以检查是否包含所有双向交互作用时的预测性能。对每个模型进行交叉验证,以评估其预测能力的通用性,同时根据相应的 R2 值和均方根误差(RMSE)评估预测性能。
与暴露增加相关的公司层面决定因素包括工程控制评级不足或半不足、平均 CNT/F 直径/长度增加、每天处理的材料量从 101 克增加到>1 千克和>1 千克、使用 CNF 材料、混合生产者/使用者的行业类型以及对高暴露潜力的专家评估。与较高暴露相关的工人层面决定因素包括处理 CNT/F 的干粉形式、处理每天>1 千克的材料量、直接/间接暴露、具有工程师职称、使用呼吸器、使用通风或未通风的外壳,以及粉末处理工作任务。当使用所有公司和工人层面的决定因素创建三个暴露模型时,混合线性模型解释了>60%的总方差。三个混合模型的交叉验证 RMSE 值范围为 2.50 到 4.23。同时,没有所有双向交互作用的岭回归模型分别为可吸入性 EC、呼吸性 EC 和 TEM 的预测模型估计出的交叉验证 RMSE 值为 2.85、2.23 和 2.76。
尽管岭回归模型仅提供了适度的预测能力,但它们在预测 CNT/F 暴露方面表现出最佳性能。因此,可以得出结论,仅使用模型不足以预测工作场所暴露,需要将其与其他方法集成。