Title of article :
Novel consensus quantitative structure-retention relationship method in prediction of pesticides retention time in nano-LC
Author/Authors :
Pahlavan Yali ، Zahra Chemometrics Laboratory - Faculty of Chemistry - University of Mazandaran , Fatemi ، Mohammad Hossein Chemometrics Laboratory - Faculty of Chemistry - University of Mazandaran
Abstract :
In this study, quantitative structureretention relationship (QSRR) methodology employed for modeling of the retention times of 16 banned pesticides in nanoliquid chromatography (nanoLC) column. Genetic algorithmmultiple linear regression (GAMLR) method employed for developing global and consensus QSRR models. The best global GAMLR model was established by adjusting GA parameters. Three descriptors of SpMax2_Bhp, Mor31u and, MATS6c appeared in this model. Consensus QSRR models developed as an average consensus model (ACM) and weighted consensus model (WCM) by a combination of a subset of the GAMLR models. Comparison of statistical parameters of developed models indicated that an ACM which is combining of the best global QSRR model with fourdescriptor submodel can be selected as the best consensus QSRR model. CrippenLogP, RDF070m, Lop, and HASA1 descriptors appeared in fourdescriptor submodel. In ACM, the square of correlation coefficients (R2) was 0.973 and 0.939, and the SE was 0.49 and 0.40, for the training and test sets, respectively. The ACM was assessed by leave one out crossvalidation (Q² cv = 0.935) as well as internal validation. Descriptors which appeared in this model suggest electrostatic, steric and hydrophobic interactions play the main role in the chromatographic retention of studied pesticides in nano-LC conditions.
Keywords :
Average Consensus Model , Genetic Algorithm , Multiple , Linear Regression , Nano , LC Retention Time , Pesticides , Quantitative Structure , Retention Relationship
Journal title :
Nanochemistry Research (NCR)
Journal title :
Nanochemistry Research (NCR)