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Predicting Endocrine Disruption Using Conformal Prediction – A Prioritization Strategy to Identify Hazardous Chemicals with Confidence

Maria Sapounidou, Ulf Norinder, Patrik L. Andersson

2022Chemical Research in Toxicology20 citationsDOIOpen Access PDF

Abstract

predictive strategy for EA. First, 23 QSAR models for MIEs associated with EA were developed using high-throughput data for 14 receptors. To handle the data imbalance, five protocols were compared, and CP provided the most balanced class definition. Second, the developed QSAR models were applied to a large data set (∼55,000 chemicals), comprising chemicals representative of potential risk for human exposure. Using CP, it was possible to assess the uncertainty of the screening results and identify model strengths and out of domain chemicals. Last, two clustering methods, t-distributed stochastic neighbor embedding and Tanimoto similarity, were used to identify compounds with potential EA using known endocrine disruptors as reference. The cluster overlap between methods produced 23 chemicals with suspected or demonstrated EA potential. The presented models could be utilized for first-tier screening and identification of compounds with potential biological activity across the studied MIEs.

Topics & Concepts

Quantitative structure–activity relationshipApplicability domainComputer scienceIdentification (biology)Molecular descriptorPrioritizationIn silicoMachine learningSimilarity (geometry)Computational biologyData miningArtificial intelligenceChemistryBiologyManagement scienceBiochemistryEconomicsBotanyGeneImage (mathematics)Computational Drug Discovery Methods
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