6533b873fe1ef96bd12d54fc

RESEARCH PRODUCT

Modelling and prediction of retention in high-performance liquid chromatography by using neural networks

Yu-long XieJose Ramon Torres-lapasioJuan José Baeza-baezaM.c. García-alvarez-coqueGuillermo Ramis-ramos

subject

Artificial neural networkChemistryOrganic ChemistryClinical BiochemistryEmpirical modellingAnalytical chemistryFunction (mathematics)BiochemistryHigh-performance liquid chromatographyAnalytical ChemistryNonlinear systemMicellar liquid chromatographyPhase compositionPhase (matter)Biological system

description

Multi-layer feed-forward neural networks trained with an error back-propagation algorithm have been used to model retention behaviour of liquid chromatography as a function of the composition of the mobile phases. Conventional hydro-organic and micellar mobile phases were considered. Accurate retention modelling and prediction have been achieved using mobile phases defined by two, three and four parameters. With micellar mobile phases, the parameters involved included the concentrations of surfactant and organic modifier, pH and temperature. It is shown that neural networks provide a competitive tool to model varied inherent nonlinear relationships of retention behaviour with respect to the mobile phase parameters. The soft models defined by the weights of the networks are capable of accommodating all types of linear and nonlinear relationships, neural networks being specially useful when the relationships between retention behaviour and the mobile phase parameters are unknown. However, to train neural networks more experimental points than with hard-modelling methods are required, hence the use of the networks is recommended only for those cases where adequate theoretical or empirical models do not exist.

https://doi.org/10.1007/bf02688065