Establishing short-term occupational exposure limits (STELs) for sensory irritants using predictive and in silico respiratory rate depression (RD50) models.

IF 2 4区 医学 Q4 TOXICOLOGY Inhalation Toxicology Pub Date : 2024-01-01 Epub Date: 2024-01-22 DOI:10.1080/08958378.2023.2299867
Anthony J Russell, Melissa Vincent, Amanda N Buerger, Scott Dotson, Jason Lotter, Andrew Maier
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Abstract

Sensory irritation is a health endpoint that serves as the critical effect basis for many occupational exposure limits (OELs). Schaper 1993 described a significant relationship with high correlation between the measured exposure concentration producing a 50% respiratory rate decrease (RD50) in a standard rodent assay and the American Conference of Governmental Industrial Hygienists (ACGIH®) Threshold Limit Values (TLVs®) as time-weighted averages (TWAs) for airborne chemical irritants. The results demonstrated the potential use of the RD50 values for deriving full-shift TWA OELs protective of irritant responses. However, there remains a need to develop a similar predictive model for deriving workplace short-term exposure limits (STELs) for sensory irritants. The aim of our study was to establish a model capable of correlating the relationship between RD50 values and published STELs to prospectively derive short-term exposure OELs for sensory irritants. A National Toxicology Program (NTP) database that included chemicals with both an RD50 and established STELs was used to fit several linear regression models. A strong correlation between RD50s and STELs was identified, with a predictive equation of ln (STEL) (ppm) = 0.86 * ln (RD50) (ppm) - 2.42 and an R2 value of 0.75. This model supports the use of RD50s to derive STELs for chemicals without existing exposure recommendations. Further, for data-poor sensory irritants, predicted RD50 values from in silico quantitative structure activity relationship (QSAR) models can be used to derive STELs. Hence, in silico methods and statistical modeling can present a path forward for establishing reliable OELs and improving worker safety and health.

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利用预测模型和硅学呼吸抑制率 (RD50) 模型确定感官刺激物的短期职业接触限值 (STEL)。
感官刺激是一种健康终点,是许多职业接触限值(OEL)的关键影响基础。Schaper 1993 年描述了在标准啮齿类动物实验中产生 50% 呼吸率下降的测量暴露浓度 (RD50) 与作为空气传播化学刺激物时间加权平均值 (TWA) 的美国政府工业卫生学家会议 (ACGIH®) 阈限值 (TLVs®) 之间的重要关系和高度相关性。结果表明,RD50 值有可能用于推导保护刺激性反应的全班 TWA OEL。不过,仍有必要开发一个类似的预测模型,用于推导工作场所刺激性物质的短期接触限值(STEL)。我们研究的目的是建立一个能够将 RD50 值与已公布的 STEL 值之间的关系联系起来的模型,以便前瞻性地推导出短期接触刺激性物质的 OEL 值。美国国家毒理学计划(NTP)数据库中包含了既有 RD50 值又有已确定 STEL 的化学物质,我们利用该数据库拟合了几个线性回归模型。结果表明,RD50 和 STEL 之间存在很强的相关性,预测方程为 ln (STEL) (ppm) = 0.86 * ln (RD50) (ppm) - 2.42,R2 值为 0.75。该模型支持使用 RD50 来推导没有现有暴露建议的化学品的 STEL。此外,对于数据贫乏的感官刺激物,可使用硅学定量结构活性关系 (QSAR) 模型预测的 RD50 值来推导 STEL。因此,硅学方法和统计建模可以为制定可靠的 OEL 和改善工人安全与健康提供一条前进之路。
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来源期刊
Inhalation Toxicology
Inhalation Toxicology 医学-毒理学
CiteScore
4.10
自引率
4.80%
发文量
38
审稿时长
6-12 weeks
期刊介绍: Inhalation Toxicology is a peer-reviewed publication providing a key forum for the latest accomplishments and advancements in concepts, approaches, and procedures presently being used to evaluate the health risk associated with airborne chemicals. The journal publishes original research, reviews, symposia, and workshop topics involving the respiratory system’s functions in health and disease, the pathogenesis and mechanism of injury, the extrapolation of animal data to humans, the effects of inhaled substances on extra-pulmonary systems, as well as reliable and innovative models for predicting human disease.
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