Quantitative structure–retention relationships applied to development of liquid chromatography gradient-elution method for the separation of sartans
QSRR are mathematically derived relationships between the chromatographic parameters determined for a representative series of analytes in given separation systems and the molecular descriptors accounting for the structural differences among the investigated analytes. Artificial neural network is a...
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Veröffentlicht in: | Talanta (Oxford) 2016-04, Vol.150, p.190-197 |
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Zusammenfassung: | QSRR are mathematically derived relationships between the chromatographic parameters determined for a representative series of analytes in given separation systems and the molecular descriptors accounting for the structural differences among the investigated analytes. Artificial neural network is a technique of data analysis, which sets out to emulate the human brain's way of working. The aim of the present work was to optimize separation of six angiotensin receptor antagonists, so-called sartans: losartan, valsartan, irbesartan, telmisartan, candesartan cilexetil and eprosartan in a gradient-elution HPLC method. For this purpose, ANN as a mathematical tool was used for establishing a QSRR model based on molecular descriptors of sartans and varied instrumental conditions. The optimized model can be further used for prediction of an external congener of sartans and analysis of the influence of the analyte structure, represented through molecular descriptors, on retention behaviour. Molecular descriptors included in modelling were electrostatic, geometrical and quantum-chemical descriptors: connolly solvent excluded volume non-1,4 van der Waals energy, octanol/water distribution coefficient, polarizability, number of proton-donor sites and number of proton-acceptor sites. Varied instrumental conditions were gradient time, buffer pH and buffer molarity. High prediction ability of the optimized network enabled complete separation of the analytes within the run time of 15.5min under following conditions: gradient time of 12.5min, buffer pH of 3.95 and buffer molarity of 25mM. Applied methodology showed the potential to predict retention behaviour of an external analyte with the properties within the training space. Connolly solvent excluded volume, polarizability and number of proton-acceptor sites appeared to be most influential paramateres on retention behaviour of the sartans.
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•QSRR model for gradient-elution HPLC method by means of artificial neural networks.•Descriptor selection based on theory and previous published data.•Prediction of retention behaviour under various instrumental conditions.•Finding optimal conditions for separation of sartans and experimental confirmation.•Predicition of retention time of an external sartan. |
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ISSN: | 0039-9140 1873-3573 |
DOI: | 10.1016/j.talanta.2015.12.035 |