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测试和验证多环芳烃职业暴露评估的半自动方法。

Testing and Validating Semi-automated Approaches to the Occupational Exposure Assessment of Polycyclic Aromatic Hydrocarbons.

机构信息

Centers for Disease Control and Prevention, National Institute for Occupational Safety and Health, Cincinnati, OH, USA.

Department of Environmental and Public Health Sciences, University of Cincinnati, Cincinnati, OH, USA.

出版信息

Ann Work Expo Health. 2021 Jul 3;65(6):682-693. doi: 10.1093/annweh/wxab002.

Abstract

INTRODUCTION

When it is not possible to capture direct measures of occupational exposure or conduct biomonitoring, retrospective exposure assessment methods are often used. Among the common retrospective assessment methods, assigning exposure estimates by multiple expert rater review of detailed job descriptions is typically the most valid, but also the most time-consuming and expensive. Development of screening protocols to prioritize a subset of jobs for expert rater review can reduce the exposure assessment cost and time requirement, but there is often little data with which to evaluate different screening approaches. We used existing job-by-job exposure assessment data (assigned by consensus between multiple expert raters) from a large, population-based study of women to create and test screening algorithms for polycyclic aromatic hydrocarbons (PAHs) that would be suitable for use in other population-based studies.

METHODS

We evaluated three approaches to creating a screening algorithm: a machine-learning algorithm, a set of a priori decision rules created by experts based on features (such as keywords) found in the job description, and a hybrid algorithm incorporating both sets of criteria. All coded jobs held by mothers of infants participating in National Birth Defects Prevention Study (NBDPS) (n = 35,424) were used in developing or testing the screening algorithms. The job narrative fields considered for all approaches included job title, type of product made by the company, main activities or duties, and chemicals or substances handled. Each screening approach was evaluated against the consensus rating of two or more expert raters.

RESULTS

The machine-learning algorithm considered over 30,000 keywords and industry/occupation codes (separate and in combination). Overall, the hybrid method had a similar sensitivity (87.1%) as the expert decision rules (85.5%) but was higher than the machine-learning algorithm (67.7%). Specificity was best in the machine-learning algorithm (98.1%), compared to the expert decision rules (89.2%) and hybrid approach (89.1%). Using different probability cutoffs in the hybrid approach resulted in improvements in sensitivity (24-30%), without the loss of much specificity (7-18%).

CONCLUSION

Both expert decision rules and the machine-learning algorithm performed reasonably well in identifying the majority of jobs with potential exposure to PAHs. The hybrid screening approach demonstrated that by reviewing approximately 20% of the total jobs, it could identify 87% of all jobs exposed to PAHs; sensitivity could be further increased, albeit with a decrease in specificity, by adjusting the algorithm. The resulting screening algorithm could be applied to other population-based studies of women. The process of developing the algorithm also provides a useful illustration of the strengths and potential pitfalls of these approaches to developing exposure assessment algorithms.

摘要

简介

当无法直接获取职业暴露的测量值或进行生物监测时,通常会使用回溯性暴露评估方法。在常见的回溯性评估方法中,由多名专家对详细的工作描述进行评估来分配暴露估计值通常是最有效的,但也是最耗时和昂贵的。开发筛选协议,以便对专家评估进行优先排序,可以减少暴露评估的成本和时间要求,但通常很少有数据可用于评估不同的筛选方法。我们使用了一项大型基于人群的女性研究中的现有逐工作评估暴露数据(由多名专家评估达成共识),为多环芳烃(PAHs)创建并测试了适合在其他基于人群的研究中使用的筛选算法。

方法

我们评估了创建筛选算法的三种方法:一种是机器学习算法,一种是由专家根据工作描述中发现的特征(如关键字)制定的一组先验决策规则,以及一种结合了这两组标准的混合算法。所有纳入参与国家出生缺陷预防研究(NBDPS)的婴儿母亲的工作(n=35424)都用于开发或测试筛选算法。考虑所有方法的工作描述字段包括工作名称、公司生产的产品类型、主要活动或职责以及处理的化学品或物质。每种筛选方法都与两名或更多名专家评估者的共识评估进行了比较。

结果

机器学习算法考虑了 30000 多个关键字和行业/职业代码(单独和组合)。总体而言,混合方法的敏感性(87.1%)与专家决策规则(85.5%)相似,但高于机器学习算法(67.7%)。与专家决策规则(89.2%)和混合方法(89.1%)相比,机器学习算法的特异性最好(98.1%)。在混合方法中使用不同的概率截止值可以提高敏感性(24-30%),而特异性损失不大(7-18%)。

结论

专家决策规则和机器学习算法在识别大多数可能接触 PAHs 的工作方面都表现得相当不错。混合筛选方法表明,通过审查大约 20%的总工作,可以识别出所有接触到 PAHs 的工作的 87%;通过调整算法,可以进一步提高敏感性,尽管特异性会略有下降。由此产生的筛选算法可以应用于其他基于人群的女性研究。开发算法的过程还提供了一个有用的示例,说明了这些开发暴露评估算法方法的优势和潜在缺陷。

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