4.8 Article

Quantitative Adverse Outcome Pathways and Their Application to Predictive Toxicology

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ENVIRONMENTAL SCIENCE & TECHNOLOGY
卷 51, 期 8, 页码 4661-4672

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AMER CHEMICAL SOC
DOI: 10.1021/acs.est.6b06230

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  1. Intramural EPA [EPA999999] Funding Source: Medline

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A quantitative adverse outcome pathway (qAOP) consists of one or more biologically based, computational models describing key event relationships linking a molecular initiating event (MIE) to an adverse outcome. A qAOP provides quantitative, dose response, and time-course predictions that can support regulatory decision-making: Herein we describe several facets of qAOPs, including (a) motivation for development, (b) technical considerations, (c) evaluation of confidence, and (d) potential applications. The qAOP used as an illustrative example for these points describe the linkage between inhibition of cytochrome P450 19A aromatase (the MIE) and population-level decreases in the fathead minnow (FHM; Pimephales promelas). The qAOP consists of three linked computational models for the following: (a) the hypothalamic-pitutitary-gonadal axis in female FHMs, where aromatase inhibition decreases the conversion of testosterone to 17 beta-esttadiol (E2), thereby reducing E2-dependent vitellogenin (VTG; egg yolk protein precursor) synthesis, (b) VTG-dependent egg development and spawning (fecundity), and (c) fecundity-dependent population trajectory. While development of the example qAQP was based on experiments with FHMs exposed to the aromatase inhibitor fadrozole, we also show how a toxic equivalence (TEQ) calculation allows use of the qAOP to predict effects of another, untested aromatase inhibitor, iprodione. While qAOP development can be resource-intensive, the quantitative predictions obtained, and TEQ-based application-to multiple chemicals, may be sufficient to justify the cost for some, applications in regulatory decision-making.

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