Article (Scientific journals)
A multi-target QSRR approach to model retention times of small molecules in RPLC.
Kumari, Priyanka; Van Laethem, Thomas; Duroux, Diane et al.
2023In Journal of Pharmaceutical and Biomedical Analysis, 236, p. 115690
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Keywords :
Algorithm adaptation; Molecular descriptors; Multi-target QSRR; Multitask learning; Problem transformation; Random Forest; Regression chain; Reverse Phase Liquid Chromatography; Clinical Biochemistry; Spectroscopy; Drug Discovery; Pharmaceutical Science; Analytical Chemistry
Abstract :
[en] Quantitative structure-retention relationship models (QSRR) have been utilized as an alternative to costly and time-consuming separation analyses and associated experiments for predicting retention time. However, achieving 100 % accuracy in retention prediction is unrealistic despite the existence of various tools and approaches. The limitations of vast data availability and time complexity hinder the use of most algorithms for retention prediction. Therefore, in this study, we examined and compared two approaches for modelling retention time using a dataset of small molecules with retention times obtained at multiple conditions, referred to as multi-targets (five pH levels: 2.7, 3.5, 5, 6.5, and 8 at gradient times of 20 min of mobile phase). The first approach involved developing separate models for predicting retention time at each condition (single-target approach), while the second approach aimed to learn a single model for predicting retention across all conditions simultaneously (multi-target approach). Our findings highlight the advantages of the multi-target approach over the single-target modelling approach. The multi-target models are more efficient in terms of size and learning speed compared to the single-target models. These retention prediction models offer two-fold benefits. Firstly, they enhance knowledge and understanding of retention times, identifying molecular descriptors that contribute to changes in retention behaviour under different pH conditions. Secondly, these approaches can be extended to address other multi-target property prediction problems, such as multi-quantitative structure Property(X) relationship studies (mt-QS(X)R).
Disciplines :
Pharmacy, pharmacology & toxicology
Author, co-author :
Kumari, Priyanka  ;  Université de Liège - ULiège > Unités de recherche interfacultaires > Centre Interdisciplinaire de Recherche sur le Médicament (CIRM)
Van Laethem, Thomas  ;  Université de Liège - ULiège > Unités de recherche interfacultaires > Centre Interdisciplinaire de Recherche sur le Médicament (CIRM)
Duroux, Diane  ;  Université de Liège - ULiège > GIGA > GIGA Medical Genomics - Biostatistics, biomedicine and bioinformatics ; ETH AI Center, OAT X11, Andreasstrasse 5, 8092 Zürich
Fillet, Marianne  ;  Université de Liège - ULiège > Département de pharmacie > Analyse des médicaments
Hubert, Phillipe;  Department of Pharmacy, Laboratory of Pharmaceutical Analytical Chemistry, University of Liège (ULiege), CIRM, Quartier Hopital (B36 Tower 4), Avenue Hippocrate, 4000 Liège, Belgium
Sacre, Pierre-Yves  ;  Université de Liège - ULiège > Département de pharmacie > Chimie analytique
Hubert, Cédric  ;  Université de Liège - ULiège > Département de pharmacie > Chimie analytique
Language :
English
Title :
A multi-target QSRR approach to model retention times of small molecules in RPLC.
Original title :
[en] A multi-target QSRR approach to model retention times of small molecules in RPLC
Publication date :
04 September 2023
Journal title :
Journal of Pharmaceutical and Biomedical Analysis
ISSN :
0731-7085
eISSN :
1873-264X
Publisher :
Elsevier BV, England
Volume :
236
Pages :
115690
Peer reviewed :
Peer Reviewed verified by ORBi
Funders :
F.R.S.-FNRS - Fonds de la Recherche Scientifique [BE]
FWO - Fonds Wetenschappelijk Onderzoek Vlaanderen [BE]
ULiège - University of Liège [BE]
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since 29 September 2023

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