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Quantifying the Benefits of Imputation over QSAR Methods in Toxicology Data Modeling

Thomas M. Whitehead, Joel Strickland, G. J. Conduit, Alexandre Borrel, Dániel Mucs, Irene Abraham

2023Journal of Chemical Information and Modeling13 citationsDOI

Abstract

data obtained from the OECD QSAR Toolbox. By leveraging the relationships between different toxicological end points, imputation extracts more valuable information from each data point compared to well-established single end point methods, such as ML-based Quantitative Structure Activity Relationship (QSAR) approaches, providing a final improvement of up to around 0.2 in the coefficient of determination. A significant aspect of this methodology is its resilience to the inclusion of extraneous chemical or experimental data. While additional data typically introduces a considerable level of noise and can hinder performance of single end point QSAR modeling, imputation models remain unaffected. This implies a reduction in the need for laborious manual preprocessing tasks such as feature selection, thereby making data preparation for ML analysis more efficient. This successful test, conducted on open-source data, validates the efficacy of imputation approaches in toxicity data analysis. This work opens the way for applying similar methods to other types of sparse toxicological data matrices, and so we discuss the development of regulatory authority guidelines to accept imputation models, a key aspect for the wider adoption of these methods.

Topics & Concepts

Imputation (statistics)Quantitative structure–activity relationshipComputer scienceData miningToolboxApplicability domainMachine learningArtificial intelligenceMissing dataProgramming languageComputational Drug Discovery MethodsAnimal testing and alternativesStatistical Methods in Clinical Trials
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