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Computational Insights into Reproductive Toxicity: Clustering, Mechanism Analysis, and Predictive Models. | LitMetric

Computational Insights into Reproductive Toxicity: Clustering, Mechanism Analysis, and Predictive Models.

Int J Mol Sci

Key Laboratory for Molecular Enzymology and Engineering of Ministry of Education, School of Life Sciences, Jilin University, Changchun 130012, China.

Published: July 2024

AI Article Synopsis

  • Reproductive toxicity can greatly affect fertility and the health of offspring, making it vital to identify these risks in pharmaceutical compounds.
  • The study examined different reproductive toxic molecules, categorizing them into three types and employing advanced analysis methods to uncover complex toxicity mechanisms.
  • Utilizing machine learning techniques, including Support Vector Machines and deep learning models, the research achieved high accuracy in predicting reproductive toxicity, emphasizing the effectiveness of computational methods for assessing pharmaceutical safety.

Article Abstract

Reproductive toxicity poses significant risks to fertility and progeny health, making its identification in pharmaceutical compounds crucial. In this study, we conducted a comprehensive in silico investigation of reproductive toxic molecules, identifying three distinct categories represented by Dimethylhydantoin, Phenol, and Dicyclohexyl phthalate. Our analysis included physicochemical properties, target prediction, and KEGG and GO pathway analyses, revealing diverse and complex mechanisms of toxicity. Given the complexity of these mechanisms, traditional molecule-target research approaches proved insufficient. Support Vector Machines (SVMs) combined with molecular descriptors achieved an accuracy of 0.85 in the test dataset, while our custom deep learning model, integrating molecular SMILES and graphs, achieved an accuracy of 0.88 in the test dataset. These models effectively predicted reproductive toxicity, highlighting the potential of computational methods in pharmaceutical safety evaluation. Our study provides a robust framework for utilizing computational methods to enhance the safety evaluation of potential pharmaceutical compounds.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11277225PMC
http://dx.doi.org/10.3390/ijms25147978DOI Listing

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