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Data sharing in PredRet for accurate prediction of retention time: Application to plant food bioactive compounds. | LitMetric

AI Article Synopsis

  • The study evaluates the tool PredRet for predicting retention times (RTs) of plant food bioactive metabolites across various chromatographic systems (CSs) in untargeted metabolomics.
  • It involved a shared dataset of 467 compounds from 30 different families, and found that PredRet achieved a median prediction error ranging from 0.03 to 0.76 minutes, demonstrating high accuracy in external validation tests.
  • The results suggest that successful RT prediction is influenced by the type of liquid chromatography gradient and the number of compounds measured, while encouraging the metabolomics community to contribute RT data to enhance PredRet’s effectiveness as an open-access tool.

Article Abstract

Prediction of retention times (RTs) is increasingly considered in untargeted metabolomics to complement MS/MS matching for annotation of unidentified peaks. We tested the performance of PredRet (http://predret.org/) to predict RTs for plant food bioactive metabolites in a data sharing initiative containing entry sets of 29-103 compounds (totalling 467 compounds, >30 families) across 24 chromatographic systems (CSs). Between 27 and 667 predictions were obtained with a median prediction error of 0.03-0.76 min and interval width of 0.33-8.78 min. An external validation test of eight CSs showed high prediction accuracy. RT prediction was dependent on shape and type of LC gradient, and number of commonly measured compounds. Our study highlights PredRet's accuracy and ability to transpose RT data acquired from one CS to another CS. We recommend extensive RT data sharing in PredRet by the community interested in plant food bioactive metabolites to achieve a powerful community-driven open-access tool for metabolomics annotation.

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Source
http://dx.doi.org/10.1016/j.foodchem.2021.129757DOI Listing

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