Enhancing life cycle chemical exposure assessment through ontology modeling

Sci Total Environ. 2020 Apr 10:712:136263. doi: 10.1016/j.scitotenv.2019.136263. Epub 2019 Dec 27.

Abstract

In its 2014 report, A Framework Guide for the Selection of Chemical Alternatives, the National Academy of Sciences placed increased emphasis on comparative exposure assessment throughout the life cycle (i.e., from manufacturing to end-of-life) of a chemical. The inclusion of the full life cycle greatly increases the data demands for exposure assessments, including both the quantity and type of data. High throughput tools for exposure estimation add to this challenge by requiring rapid accessibility to data. In this work, ontology modeling was used to bridge the domains of exposure modeling and life cycle inventory modeling to facilitate data sharing and integration. The exposure ontology, ExO, is extended to describe human exposure to consumer products, while an inventory modeling ontology, LciO, is formulated to support automated data mining. The core ontology pieces are connected using a bridging ontology and discussed through a theoretical example to demonstrate how data from LCA can be leveraged to support rapid exposure modeling within a life cycle context.

Keywords: Consumer products; Data accessibility; Human exposure modeling; Life cycle assessment; Ontology modeling; p-Dichlorobenzene.

MeSH terms

  • Life Cycle Stages*
  • Risk Assessment