Predicting emerging chemical content in consumer products using machine learning.

Sci Total Environ

Duke University, Department of Civil and Environmental Engineering, 121 Hudson Hall, Durham, NC 27708, USA; Center for the Environmental Implications of NanoTechnology (CEINT), USA.

Published: August 2022

AI Article Synopsis

  • Consumer products contain constantly changing chemicals, but manufacturers rarely provide detailed data on their concentrations, known as weight fractions, which are essential for assessing exposure risks.
  • This study developed two machine learning frameworks to predict weight fractions: one for data-poor scenarios with engineered nanomaterials and the other for data-rich scenarios with bulk organic chemicals, using chemical properties and functional use categories as key factors.
  • Results showed that including functional use data improved prediction accuracy, achieving a balanced accuracy of 73% for nanomaterials, and indicated that larger datasets could enhance machine learning model performance in predicting chemical weight fractions.

Article Abstract

Chemical ingredients in consumer products are continually changing. To understand our exposure to chemicals and their consequent risk, we need to know their concentrations in products, or chemical weight fractions. Unfortunately, manufacturers rarely report comprehensive weight fraction data on product labels. The goal of this study was to evaluate the utility of machine learning strategies for predicting weight fractions when chemical constituent data are limited. A "data-poor" framework was developed and tested using a small dataset on consumer products containing engineered nanomaterials to represent emerging substances. A second, more traditional framework was applied to a "data-rich" product dataset comprised of bulk-scale organic chemicals for comparison purposes. Feature variables included chemical properties, functional use categories (e.g., antimicrobial), product categories (e.g., makeup), product matrix categories, and whether weight fractions were manufacturer-reported or experimentally obtained. Classification into three weight fraction bins was done using a random forest or nonlinear support vector classifier. An ablation study revealed that functional use data improved predictive performance when included alongside chemical property data, suggesting the utility of functional use categories in evaluating the safety and sustainability of emerging chemicals. Models could roughly stratify material-product observations into order of magnitude weight fractions with moderate success; the best of these achieved an average balanced accuracy of 73% on the nanomaterials product data. Framework comparisons also revealed a positive trend in sample size versus average balanced accuracy, suggesting great promise for machine learning approaches with continued investment in chemical data collection.

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Source
http://dx.doi.org/10.1016/j.scitotenv.2022.154849DOI Listing

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