Molecules (Feb 2023)

A KNIME Workflow to Assist the Analogue Identification for Read-Across, Applied to Aromatase Activity

  • Ana Yisel Caballero Alfonso,
  • Chayawan Chayawan,
  • Domenico Gadaleta,
  • Alessandra Roncaglioni,
  • Emilio Benfenati

DOI
https://doi.org/10.3390/molecules28041832
Journal volume & issue
Vol. 28, no. 4
p. 1832

Abstract

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The reduction and replacement of in vivo tests have become crucial in terms of resources and animal benefits. The read-across approach reduces the number of substances to be tested, exploiting existing experimental data to predict the properties of untested substances. Currently, several tools have been developed to perform read-across, but other approaches, such as computational workflows, can offer a more flexible and less prescriptive approach. In this paper, we are introducing a workflow to support analogue identification for read-across. The implementation of the workflow was performed using a database of azole chemicals with in vitro toxicity data for human aromatase enzymes. The workflow identified analogues based on three similarities: structural similarity (StrS), metabolic similarity (MtS), and mechanistic similarity (McS). Our results showed how multiple similarity metrics can be combined within a read-across assessment. The use of the similarity based on metabolism and toxicological mechanism improved the predictions in particular for sensitivity. Beyond the results predicting a large population of substances, practical examples illustrate the advantages of the proposed approach.

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