📚 Volume 32, Issue 4 📋 ID: yjekxxo

Authors

Masashi Torres, Aisha Schulz , Aisha Schulz

Department of Chemical Engineering, Osaka University, Osaka, Japan

Keywords

QSRR Nanoparticles Genetic Algorithm PLS Artificial Neural Network Capacity Factor

Abstract

Genetic algorithm and partial least square (GA-PLS), kernel PLS (GA-KPLS) and Levenberg-Marquardt artificial neural network (L-M ANN) techniques were used to investigate the correlation between capacity factor (k') and descriptors for 40 nanoparticle compounds which obtained by comprehensive two-dimensional gas chromatography (GC×GC) stationary phases consisting of thin films of gold-centered monolayer protected nanoparticles (MPNs) system. The applied internal (leave-group-out cross validation (LGO-CV)) and external (test set) validation methods were used for the predictive power of models. The correlation coefficient LGO-CV (Q2) between experimental and predicted k' for training set by GA-PLS, GA-KPLS and L-M ANN was 0.872, 0.931 and 0.981, respectively. This indicates that L-M ANN can be used as an alternative modeling tool for quantitative structure–retention relationship (QSRR) studies.
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📝 How to Cite

Masashi Torres, Aisha Schulz , Aisha Schulz (2025). "Robust QSRR Models Development in Capacity Factor of Nanoparticle Compounds Based on Genetic Algorithm Optimization". Wulfenia, 32(4).