The tip of the iceberg: using AI to identify toxic chemicals
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Date
2025-08-26
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Abstract
This project was conducted to analyze the TRIDENT models described by Gustavsson et al. in the article Transformers enable accurate prediction of acute and chronic
chemical toxicity in aquatic organisms [1]. The aims were to investigate the predictions made by the models, the relationship between the model’s chemical space,
and the predictions they make. The methods used for the analyses were a combination of TRIDENT model predictions, modeling, and visualizations. The results
of which were that there is a relationship between how accurately the TRIDENT
models predict and the closeness the chemical has to the TRIDENT training data
as well as the density of close neighbors in the training data. We also found that
there are chemicals for which the TRIDENT models predict effective concentration
values that are inconsistent with the measured value (label), possibly warranting
further investigation of the chemical’s toxicity.
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Keywords
artificial intelligence, chemical space, embeddings, statistical analysis, toxicity, transformers, TRIDENT