A Data-Driven Approach to Estimating Occupational Inhalation Exposure Using Workplace Compliance Data

Environ Sci Technol. 2023 Apr 11;57(14):5947-5956. doi: 10.1021/acs.est.2c08234. Epub 2023 Mar 30.

Abstract

A growing list of chemicals are approved for production and use in the United States and elsewhere, and new approaches are needed to rapidly assess the potential exposure and health hazard posed by these substances. Here, we present a high-throughput, data-driven approach that will aid in estimating occupational exposure using a database of over 1.5 million observations of chemical concentrations in U.S. workplace air samples. We fit a Bayesian hierarchical model that uses industry type and the physicochemical properties of a substance to predict the distribution of workplace air concentrations. This model substantially outperforms a null model when predicting whether a substance will be detected in an air sample, and if so at what concentration, with 75.9% classification accuracy and a root-mean-square error (RMSE) of 1.00 log10 mg m-3 when applied to a held-out test set of substances. This modeling framework can be used to predict air concentration distributions for new substances, which we demonstrate by making predictions for 5587 new substance-by-workplace-type pairs reported in the US EPA's Toxic Substances Control Act (TSCA) Chemical Data Reporting (CDR) industrial use database. It also allows for improved consideration of occupational exposure within the context of high-throughput, risk-based chemical prioritization efforts.

Keywords: Bayesian; air monitoring; hierarchical model; high-throughput; occupational exposure; screening.

MeSH terms

  • Air Pollutants, Occupational*
  • Bayes Theorem
  • Industry
  • Inhalation Exposure* / statistics & numerical data
  • Occupational Exposure* / statistics & numerical data
  • United States
  • Workplace

Substances

  • Air Pollutants, Occupational