Literature DB >> 35347353

Statistical analysis of isocratic chromatographic data using Bayesian modeling.

Agnieszka Kamedulska1, Łukasz Kubik1, Paweł Wiczling2.   

Abstract

Chromatographic retention times are usually modeled considering only one analyte at a time. However, it has certain limitations as no information is shared between the analytes, and consequently the model predictions poorly generalize to out-of-sample analytes. In this work, a publicly available dataset was used to illustrate the benefits of pooling the individual data and analyzing them simultaneously utilizing Bayesian hierarchical approach. Statistical analysis was carried out using the Stan program coupled with R, which enables full Bayesian inference with Markov chain Monte Carlo sampling. This methodology allows (i) incorporating prior knowledge about the likely values of model parameters, (ii) considering the between-analyte variability and the correlation between the model parameters, (iii) explaining the between-analyte variability by available predictors, and (iv) sharing information across the analytes. The latter is especially valuable when only limited information is available in the data about certain model parameters. The results are obtained in the form of posterior probability distribution, which quantifies uncertainty about the model parameters and predictions. Posterior probability is also directly relevant for decision-making. In this work, we used the Neue model to describe the relationship between retention factor and acetonitrile content in the mobile phase for 1026 analytes. The model was parametrized in terms of retention factor in 100% water, retention factor in 100% acetonitrile, and curvature coefficient, and considered log P and pKa as predictors. From this analysis, we discovered that the analytes formed two clusters with different retention depending on the degree of analyte dissociation. The final model turned out to be well calibrated with the data. It gives insight into the behavior of analytes in the chromatographic column and can be used to make predictions for a structurally diverse set of analytes if their log P and pKa values are known.
© 2022. Springer-Verlag GmbH Germany, part of Springer Nature.

Entities:  

Keywords:  Bayesian inference; Method development; Multilevel model; Retention modeling

Mesh:

Substances:

Year:  2022        PMID: 35347353     DOI: 10.1007/s00216-022-03968-x

Source DB:  PubMed          Journal:  Anal Bioanal Chem        ISSN: 1618-2642            Impact factor:   4.478


  13 in total

1.  Dependence of reversed-phase retention of ionizable analytes on pH, concentration of organic solvent and silanol activity.

Authors:  U D Neue; C H Phoebe; K Tran; Y F Cheng; Z Lu
Journal:  J Chromatogr A       Date:  2001-08-03       Impact factor: 4.759

Review 2.  Retention models for isocratic and gradient elution in reversed-phase liquid chromatography.

Authors:  P Nikitas; A Pappa-Louisi
Journal:  J Chromatogr A       Date:  2008-09-19       Impact factor: 4.759

3.  Easy and accurate high-performance liquid chromatography retention prediction with different gradients, flow rates, and instruments by back-calculation of gradient and flow rate profiles.

Authors:  Paul G Boswell; Jonathan R Schellenberg; Peter W Carr; Jerry D Cohen; Adrian D Hegeman
Journal:  J Chromatogr A       Date:  2011-07-30       Impact factor: 4.759

4.  A study on retention "projection" as a supplementary means for compound identification by liquid chromatography-mass spectrometry capable of predicting retention with different gradients, flow rates, and instruments.

Authors:  Paul G Boswell; Jonathan R Schellenberg; Peter W Carr; Jerry D Cohen; Adrian D Hegeman
Journal:  J Chromatogr A       Date:  2011-08-06       Impact factor: 4.759

5.  Analysis of Isocratic-Chromatographic-Retention Data using Bayesian Multilevel Modeling.

Authors:  Łukasz Kubik; Roman Kaliszan; Paweł Wiczling
Journal:  Anal Chem       Date:  2018-10-30       Impact factor: 6.986

6.  Prediction of Analyte Retention Time in Liquid Chromatography.

Authors:  Paul R Haddad; Maryam Taraji; Roman Szücs
Journal:  Anal Chem       Date:  2020-10-21       Impact factor: 6.986

7.  Analyzing chromatographic data using multilevel modeling.

Authors:  Paweł Wiczling
Journal:  Anal Bioanal Chem       Date:  2018-04-21       Impact factor: 4.142

8.  Prediction and decision making using Bayesian hierarchical models.

Authors:  D K Stangl
Journal:  Stat Med       Date:  1995-10-30       Impact factor: 2.373

9.  DeepLC can predict retention times for peptides that carry as-yet unseen modifications.

Authors:  Robbin Bouwmeester; Ralf Gabriels; Niels Hulstaert; Lennart Martens; Sven Degroeve
Journal:  Nat Methods       Date:  2021-10-28       Impact factor: 28.547

10.  Retention time prediction using neural networks increases identifications in crosslinking mass spectrometry.

Authors:  Sven H Giese; Ludwig R Sinn; Fritz Wegner; Juri Rappsilber
Journal:  Nat Commun       Date:  2021-05-28       Impact factor: 17.694

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