2024
DOI: 10.1126/sciadv.adk6669
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Transformers enable accurate prediction of acute and chronic chemical toxicity in aquatic organisms

Mikael Gustavsson,
Styrbjörn Käll,
Patrik Svedberg
et al.

Abstract: Environmental hazard assessments are reliant on toxicity data that cover multiple organism groups. Generating experimental toxicity data is, however, resource-intensive and time-consuming. Computational methods are fast and cost-efficient alternatives, but the low accuracy and narrow applicability domains have made their adaptation slow. Here, we present a AI-based model for predicting chemical toxicity. The model uses transformers to capture toxicity-specific features directly from the chemical structures and… Show more

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