First multi-target QSAR model for predicting the cytotoxicity of acrylic acid-based dental monomers

Dent Mater. 2022 Feb;38(2):333-346. doi: 10.1016/j.dental.2021.12.014. Epub 2021 Dec 24.

Abstract

Objective: Acrylic acid derivatives are frequently used as dental monomers and their cytotoxicity towards various cell lines is well documented. This study aims to probe the structural and physicochemical attributes responsible for higher toxicity of dental monomers, using quantitative structure-activity relationships (QSAR) modeling approaches.

Methods: A regression-based linear single-target QSAR (st-QSAR) model was developed with a comparatively small dataset containing 39 compounds, the cytotoxicity of which has been assessed over the Hela S3 cell line. By contrast, a classification-based multi-target QSAR model was developed with 138 compounds, the cytotoxicity of which has been reported against 18 different cell lines. Both models were set up following rigorous validation protocols confirming their statistical significance and robustness.

Results: The performance of the linear mt-QSAR model, developed with various feature selection and post-selection similarity searching-based schemes, superseded that of all non-linear models produced with six machine learning methods by hyperparameter optimization. The final derived st-QSAR and mt-QSAR linear models are shown to be highly predictive, as well as revealing the crucial structural and physicochemical factors responsible for higher cytotoxicity of the dental monomers.

Significance: This study is the first attempt on unveiling the cytotoxicity of dental monomers over several cell lines by means of a single multi-target QSAR model. Further, such a model is ready to get widespread applicability in the screening of new monomers, judging from its almost accurate predictions over diverse experimental assay conditions.

Keywords: Cytotoxicity; Dental monomers; Machine learning; Multi-target QSAR models; Similarity searching.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Acrylates
  • Quantitative Structure-Activity Relationship*

Substances

  • Acrylates
  • acrylic acid