Artificial augmented dataset for the enhancement of nano-QSARs models. A methodology based on topological projections

Nanotoxicology. 2023 Aug-Sep;17(6-7):529-544. doi: 10.1080/17435390.2023.2268163. Epub 2023 Dec 1.

Abstract

Nanoinformatics demands accurate predictive models to assess the potential hazards of nanomaterials (NMs). However, limited data availability and the diverse nature of NMs physicochemical properties and their interaction with biological media, hinder the development of robust nano-Quantitative Structure-Activity Relationship (QSAR) models. This article proposes an approach that combines artificially data generation techniques and topological projections to address the challenges of insufficient dataset sizes and their limited representativeness of the chemical space. By leveraging the rich information embedded in the topological features, this methodology enhances the representation of the chemical space, enabling a more an exploration of the structure-activity relationships. We demonstrate the efficacy of our approach through extensive experiments, employing various machine learning regression algorithms to validate the methodology. Finally, we compare two different resampling approaches based on different modeling scenarios. The results showcase a significant improved predictive performance of QSAR models demonstrating a promising strategy to overcome the limitations of small datasets in the field of nanoinformatics. The proposed approach offers noteworthy potential for advancing nanoinformatics research within the nanosafety domain by enabling the development of more accurate predictive models for assessing the potential hazards associated with NMs.

Keywords: QSAR; augmented datasets; machine learning; nanomaterials; nanotoxicology; topological projections.

MeSH terms

  • Algorithms
  • Machine Learning
  • Nanostructures* / toxicity
  • Quantitative Structure-Activity Relationship*