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呼吸系统健康——香料香精行业中的暴露测量与建模

Respiratory Health - Exposure Measurements and Modeling in the Fragrance and Flavour Industry.

作者信息

Angelini Eric, Camerini Gerard, Diop Malick, Roche Patrice, Rodi Thomas, Schippa Christine, Thomas Thierry

机构信息

V. Mane Fils Sa, Le-Bar-Sur-Loup, France.

出版信息

PLoS One. 2016 Feb 10;11(2):e0148769. doi: 10.1371/journal.pone.0148769. eCollection 2016.

Abstract

Although the flavor and fragrance industry is about 150 years old, the use of synthetic materials started more than 100 years ago, and the awareness of the respiratory hazard presented by some flavoring substances emerged only recently. In 2001, the US National Institute of Occupational Safety and Health (NIOSH) identified for the first time inhalation exposure to flavoring substances in the workplace as a possible occupational hazard. As a consequence, manufacturers must comply with a variety of workplace safety requirements, and management has to ensure the improvement of health and safety of the employees exposed to hazardous volatile organic compounds. In this sensitive context, MANE opened its facilities to an intensive measuring campaign with the objective to better estimate the real level of hazardous respiratory exposure of workers. In this study, exposure to 27 hazardous volatile substances were measured during several types of handling operations (weighing-mixing, packaging, reconditioning-transferring), 430 measurement results were generated, and were exploited to propose an improved model derived from the well-known ECETOC-TRA model. The quantification of volatile substances in the working atmosphere involved three main steps: adsorption of the chemicals on a solid support, thermal desorption, followed by analysis by gas chromatography-mass spectrometry. Our approach was to examine experimental measures done in various manufacturing workplaces and to define correction factors to reflect more accurately working conditions and habits. Four correction factors were adjusted in the ECETOC-TRA to integrate important exposure variation factors: exposure duration, percentage of the substance in the composition, presence of collective protective equipment and wearing of personal protective equipment. Verification of the validity of the model is based on the comparison of the values obtained after adaptation of the ECETOC-TRA model, according to various exposure scenarios, with the experimental values measured under real conditions. After examination of the predicted results, 98% of the values obtained with the proposed new model were above the experimental values measured in real conditions. This must be compared with the results of the classical ECETOC-TRA system, which generates only 37% of overestimated values. As the values generated by the new model intended to help decision-makers of the industry to implement adapted protective action and information, and considering the high variability of the working environments, it was of the utmost importance to us not to underestimate the exposure level. The proposed correction factors have been designed to achieve this goal. We wish to propose the present method as an improved monitoring tool to improve respiratory health and safety in the flavor and fragrance manufacturing facilities.

摘要

尽管香精香料行业已有约150年历史,但合成材料的使用始于100多年前,而一些调味物质对呼吸系统的危害直到最近才被认识到。2001年,美国国家职业安全与健康研究所(NIOSH)首次将工作场所吸入调味物质确定为一种可能的职业危害。因此,制造商必须遵守各种工作场所安全要求,管理层必须确保改善接触有害挥发性有机化合物的员工的健康与安全。在这种敏感背景下,MANE开放其设施进行密集测量活动,目的是更好地估计工人有害呼吸道暴露的实际水平。在这项研究中,在几种类型的操作(称重混合、包装、修复转移)过程中测量了对27种有害挥发性物质的暴露,产生了430个测量结果,并利用这些结果提出了一个从著名的ECETOC-TRA模型衍生而来的改进模型。工作环境中挥发性物质的定量涉及三个主要步骤:化学物质在固体载体上的吸附、热解吸,然后通过气相色谱-质谱分析。我们的方法是检查在各种制造工作场所进行的实验测量,并定义校正因子以更准确地反映工作条件和习惯。在ECETOC-TRA中调整了四个校正因子,以纳入重要的暴露变化因素:暴露持续时间、成分中物质的百分比、集体防护设备的存在以及个人防护设备的佩戴情况。模型有效性的验证基于根据各种暴露场景对ECETOC-TRA模型进行调整后获得的值与实际条件下测量的实验值的比较。在检查预测结果后,所提出的新模型获得的值中有98%高于实际条件下测量的实验值。这必须与经典ECETOC-TRA系统的结果进行比较,该系统仅产生37%的高估值。由于新模型产生的值旨在帮助行业决策者实施适当的保护行动和信息,并且考虑到工作环境的高度变异性,对我们来说,不低估暴露水平至关重要。所提出的校正因子就是为实现这一目标而设计的。我们希望提出本方法作为一种改进的监测工具,以改善香精香料制造设施中的呼吸健康与安全。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a8fd/4749324/00dbb17d63ac/pone.0148769.g001.jpg

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