Predicting the ecotoxicity of endocrine disruptive chemicals: Multitasking in silico approaches towards global models

Sci Total Environ. 2023 Sep 1:889:164337. doi: 10.1016/j.scitotenv.2023.164337. Epub 2023 May 19.

Abstract

Manufactured substances known as endocrine disrupting chemicals (EDCs) released in the environment, through the use of cosmetic products or pesticides, can cause severe eco and cytotoxicity that may induce trans-generational as well as long-term deleterious effects on several biological species at relatively low doses, unlike other classical toxins. As the need for effective, affordable and fast EDCs environmental risk assessment has become increasingly pressing, the present work introduces the first moving average-based multitasking quantitative structure-toxicity relationship (MA-mtk QSTR) modeling specifically developed for predicting the ecotoxicity of EDCs against 170 biological species belonging to six groups. Based on 2,301 data-points with high structural and experimental diversity, as well as on the usage of various advanced machine learning methods, the novel most predictive QSTR models display overall accuracies > 87% in both training and prediction sets. However, maximum external predictivity was achieved when a new multitasking consensus modeling approach was applied to these models. Additionally, the developed linear model provided means to investigate the determining factors for eliciting higher ecotoxicity by the EDCs towards different biological species, identifying several factors such as solvation, molecular mass and surface area as well as the number of specific molecular fragments (e.g.: aromatic hydroxy and aliphatic aldehyde). The resource to non-commercial open-access tools to develop the models is a useful step towards library screening to speed up regulatory decision on discovery of safe alternatives to reduce the hazards of EDCs.

Keywords: Consensus modeling; Endocrine disrupting chemicals; Machine learning; Multitasking models; QSTR.

MeSH terms

  • Endocrine Disruptors* / toxicity
  • Endocrine System
  • Machine Learning
  • Quantitative Structure-Activity Relationship*

Substances

  • Endocrine Disruptors