1. Performance comparison of nonlinear and linear regression algorithms coupled with different attribute selection methods for quantitative structure - retention relationships modelling in micellar liquid chromatography
- Author
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Krmar, Jovana, Krmar, Jovana, Vukićević, Milan, Kovačević, Ana, Protić, Ana, Zečević, Mira, Otašević, Biljana, Krmar, Jovana, Krmar, Jovana, Vukićević, Milan, Kovačević, Ana, Protić, Ana, Zečević, Mira, and Otašević, Biljana
- Abstract
In micellar liquid chromatography (MLC), the addition of a surfactant to the mobile phase in excess is accompanied by an alteration of its solubilising capacity and a change in the stationary phase’s properties. As an implication, the prediction of the analytes’ retention in MLC mode becomes a challenging task. Mixed Quantitative Structure –Retention Relationships (QSRR) modelling represents a powerful tool for estimating the analytes’ retention. This study compares 48 successfully developed mixed QSRR models with respect to their ability to predict retention of aripiprazole and its five impurities from molecular structures and factors that de- scribe the Brij - acetonitrile system. The development of the models was based on an automatic com- bining of six attribute (feature) selection methods with eight predictive algorithms and the optimiza- tion of hyper-parameters. The feature selection methods included Principal Component Analysis (PCA), Non-negative Matrix Factorization (NMF), ReliefF, Multiple Linear Regression (MLR), Mutual Info and F- Regression. The series of investigated predictive algorithms comprised Linear Regressions (LR), Ridge Re- gression, Lasso Regression, Artificial Neural Networks (ANN), Support Vector Regression (SVR), Random Forest (RF), Gradient Boosted Trees (GBT) and K-Nearest neighbourhood (k-NN). A sufficient amount of data for building the model (78 cases in total) was provided by conducting 13 experiments for each of the 6 analytes and collecting the target responses afterwards. Different experi- mental settings were established by varying the values of the concentration of Brij L23, pH of the aqueous phase and acetonitrile content in the mobile phase according to the Box-Behnken design. In addition to the chromatographic parameters, the pool of independent variables was expanded by 27 molecular de- scriptors from all major groups (physicochemical, quantum chemical, topological and spatial structural descriptors). The best model was cho
- Published
- 2020