Artificial neural network prediction of multilinear gradient retention in reversed-phase HPLC: comprehensive QSRR-based models combining categorical or structural solute descriptors and gradient profile parameters

被引:29
作者
D'Archivio, Angelo Antonio [1 ]
Maggi, Maria Anna [2 ]
Ruggieri, Fabrizio [1 ]
机构
[1] Univ Aquila, Dipartimento Sci Fis & Chim, I-67010 Laquila, Italy
[2] Hortus Novus, I-67100 Laquila, Italy
关键词
Reversed-phase liquid chromatography; Multilinear gradient elution; Retention prediction; Artificial neural network; Quantitative structure-retention relationship; PERFORMANCE LIQUID-CHROMATOGRAPHY; OPTIMIZATION; ELUTION; SEPARATION; COMBINATION;
D O I
10.1007/s00216-014-8317-3
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
A multilayer artificial neural network (ANN) is used to model the reversed-phase liquid chromatography retention times of 16 selected compounds, including purines, pyrimidines and nucleosides. The analysed data, taken from literature, were collected in acetonitrile-water eluents under the application of 16 different multilinear gradients. The parameters describing the gradient profile together with solute descriptors are considered as the independent variables of an ANN-based model providing the retention time as response. Categorical variables or, alternatively, a selected set of molecular descriptors of computational origin are adopted to represent the solutes. Network training, validation and testing are performed preliminarily using data of 12, 2 and 4 gradients, respectively and successively, to investigate model performance under more severe calibration conditions, with data of 9, 2 and 7 gradients. The proposed approach allows a quite accurate prediction of retention times of the target analytes in external multilinear gradients. Categorical variables can successfully represent the target solutes when the model is called to transfer retention data from calibration to external gradients. In particular, using a five-dimensional bit string to represent the analytes, mean errors on retention times are 2 and 3 % under the most and less favourable calibration conditions, respectively. A comparable performance is observed if the categorical variables are replaced by five molecular descriptors, selected by a genetic algorithm within a large set of structural variables of computational origin.
引用
收藏
页码:1181 / 1190
页数:10
相关论文
共 33 条
[1]  
[Anonymous], 2003, DATA HANDLING SCI TE
[2]  
Baczek T, 2002, J CHROMATOGR A, V962, P41
[3]   Response surface methodology (RSM) as a tool for optimization in analytical chemistry [J].
Bezerra, Marcos Almeida ;
Santelli, Ricardo Erthal ;
Oliveira, Eliane Padua ;
Villar, Leonardo Silveira ;
Escaleira, Luciane Amlia .
TALANTA, 2008, 76 (05) :965-977
[4]   Investigation of retention behaviour of non-steroidal anti-inflammatory drugs in high-performance liquid chromatography by using quantitative structure-retention relationships [J].
Carlucci, Giuseppe ;
D'Archivio, Angelo Antonio ;
Maggi, Maria Anna ;
Mazzeo, Pietro ;
Ruggieri, Fabrizio .
ANALYTICA CHIMICA ACTA, 2007, 601 (01) :68-76
[5]   Quantitative structure-retention relationships applied to liquid chromatography gradient elution method for the determination of carbonyl-2,4-dinitrophenylhydrazone compounds [J].
Cirera-Domenech, Elisenda ;
Estrada-Tejedor, Roger ;
Broto-Puig, Francesc ;
Teixido, Jordi ;
Gassiot-Matas, Miquel ;
Comellas, Lluis ;
Lluis Lliberia, Josep ;
Mendez, Alberto ;
Paz-Estivill, Susanna ;
Rosa Delgado-Ortiz, Maria .
JOURNAL OF CHROMATOGRAPHY A, 2013, 1276 :65-77
[6]   Limits of multi-linear gradient optimisation in reversed-phase liquid chromatography [J].
Concha-Herrera, V ;
Vivó-Truyols, G ;
Torres-Lapasió, JR ;
García-Alvarez-Coque, MC .
JOURNAL OF CHROMATOGRAPHY A, 2005, 1063 (1-2) :79-88
[7]   Prediction of the retention of s-triazines in reversed-phase high-performance liquid chromatography under linear gradient-elution conditions [J].
D'Archivio, Angelo Antonio ;
Maggi, Maria Anna ;
Ruggieri, Fabrizio .
JOURNAL OF SEPARATION SCIENCE, 2014, 37 (15) :1930-1936
[8]   Cross-column retention prediction in reversed-phase high-performance liquid chromatography by artificial neural network modelling [J].
D'Archivio, Angelo Antonio ;
Giannitto, Andrea ;
Maggi, Maria Anna ;
Ruggieri, Fabrizio .
ANALYTICA CHIMICA ACTA, 2012, 717 :52-60
[9]   Multi-variable retention modelling in reversed-phase high-performance liquid chromatography based on the solvation method: A comparison between curvilinear and artificial neural network regression [J].
D'Archivio, Angelo Antonio ;
Maggi, Maria Anna ;
Ruggieri, Fabrizio .
ANALYTICA CHIMICA ACTA, 2011, 690 (01) :35-46
[10]   Stationary-Phase Optimized Selectivity Liquid Chromatography: Development of a Linear Gradient Prediction Algorithm [J].
De Beer, Maarten ;
Lynen, Frederic ;
Chen, Kai ;
Ferguson, Paul ;
Hanna-Brown, Melissa ;
Sandra, Pat .
ANALYTICAL CHEMISTRY, 2010, 82 (05) :1733-1743