AI Article Synopsis

  • A molecular initiating event (MIE) is the first step in a sequence that can lead to harmful effects from chemical exposure, and in silico models help predict these MIEs for better chemical risk assessment.
  • Researchers developed structural alert-based models and Random Forest models to analyze 90 key human biological targets, achieving high accuracy rates (92% and 93% correct predictions, respectively).
  • Combining these models into a consensus model enhances prediction performance to 94% and increases confidence in predicting chemical toxicity using these innovative approaches.

Article Abstract

A molecular initiating event (MIE) is the gateway to an adverse outcome pathway (AOP), a sequence of events ending in an adverse effect. In silico predictions of MIEs are a vital tool in a modern, mechanism-focused approach to chemical risk assessment. For 90 biological targets representing important human MIEs, structural alert-based models have been constructed with an automated procedure that uses Bayesian statistics to iteratively select substructures. These models give impressive average performance statistics (an average of 92% correct predictions across targets), significantly improving on previous models. Random Forest models have been constructed from physicochemical features for the same targets, giving similarly impressive performance statistics (93% correct predictions). A key difference between the models is interpretation of predictions-the structural alert models are transparent and easy to interpret, while Random Forest models can only identify the most important physicochemical features for making predictions. The two complementary models have been combined in a consensus model, improving performance compared to each individual model (94% correct predictions) and increasing confidence in predictions. Variation in model performance has been explained by calculating a modelability index (MODI), using Tanimoto coefficient between Morgan fingerprints to identify nearest neighbor chemicals. This work is an important step toward building confidence in the use of in silico tools for assessment of toxicity.

Download full-text PDF

Source
http://dx.doi.org/10.1021/acs.chemrestox.9b00325DOI Listing

Publication Analysis

Top Keywords

random forest
12
forest models
12
correct predictions
12
models
9
molecular initiating
8
models constructed
8
performance statistics
8
physicochemical features
8
predictions
6
structural alerts
4

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!