Aniko Kende*, David E. Cowie and Richard A. Currie,
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Mechanistic Interpretation of Toxicology Metabolomics Data
The toxicological interpretation of metabolomics data remains challenging, mainly due to the lack of relational knowledge of metabolic pathway perturbations and adverse outcomes. Here we propose an approach focused on the associative events defined by the adverse outcome pathway (AOP) concept to derive adverse effect predictions from toxicology metabolomics data sets by combining knowledge-driven hypothesis generation and data-driven hypothesis testing. By assessing the associative key events in an AOP, a list of plausible metabolite perturbations can be created, aiding the interpretation of the list of observed metabolite perturbations or differentially abundant metabolites (DAMs). We describe the critical steps of the interpretation and certainty assessment of the effect prediction using protoporphyrinogen oxidase (PPO) inhibition as an example. The approach could serve as a stepping stone toward creating a database of validated, toxicologically meaningful associative event signatures that can be deployed both in (early stage) research of chemical product development and in regulatory chemical safety assessment for hazard identification.
期刊介绍:
Chemical Research in Toxicology publishes Articles, Rapid Reports, Chemical Profiles, Reviews, Perspectives, Letters to the Editor, and ToxWatch on a wide range of topics in Toxicology that inform a chemical and molecular understanding and capacity to predict biological outcomes on the basis of structures and processes. The overarching goal of activities reported in the Journal are to provide knowledge and innovative approaches needed to promote intelligent solutions for human safety and ecosystem preservation. The journal emphasizes insight concerning mechanisms of toxicity over phenomenological observations. It upholds rigorous chemical, physical and mathematical standards for characterization and application of modern techniques.