Merging Counter-Propagation and Back-Propagation Algorithms: Overcoming the Limitations of Counter-Propagation Neural Network Models

Int J Mol Sci. 2024 Apr 9;25(8):4156. doi: 10.3390/ijms25084156.

Abstract

Artificial neural networks (ANNs) are nowadays applied as the most efficient methods in the majority of machine learning approaches, including data-driven modeling for assessment of the toxicity of chemicals. We developed a combined neural network methodology that can be used in the scope of new approach methodologies (NAMs) assessing chemical or drug toxicity. Here, we present QSAR models for predicting the physical and biochemical properties of molecules of three different datasets: aqueous solubility, acute fish toxicity toward fat head minnow, and bio-concentration factors. A novel neural network modeling method is developed by combining two neural network algorithms, namely, the counter-propagation modeling strategy (CP-ANN) with the back-propagation-of-errors algorithm (BPE-ANN). The advantage is a short training time, robustness, and good interpretability through the initial CP-ANN part, while the extension with BPE-ANN improves the precision of predictions in the range between minimal and maximal property values of the training data, regardless of the number of neurons in both neural networks, either CP-ANN or BPE-ANN.

Keywords: QSAR model; acute fish toxicity; back-propagation-error BPE-ANN; bio-concentration factor; cheminformatics tool; counter-propagation CP-ANN; drug design; machine learning; water solubility.

MeSH terms

  • Algorithms*
  • Animals
  • Machine Learning
  • Neural Networks, Computer*
  • Quantitative Structure-Activity Relationship