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Exploring the chemical subspace of RPLC: A data driven approach

Denice van Herwerden, Alexandros Nikolopoulos, Leon Barron, Jake O’Brien, Bob W.J. Pirok, Kevin V. Thomas, Saer Samanipour

2024Analytica Chimica Acta14 citationsDOIOpen Access PDF

Abstract

BACKGROUND: The chemical space is comprised of a vast number of possible structures, of which an unknown portion comprises the human and environmental exposome. Such samples are frequently analyzed using non-targeted analysis via liquid chromatography (LC) coupled to high-resolution mass spectrometry often employing a reversed phase (RP) column. However, prior to analysis, the contents of these samples are unknown and could be comprised of thousands of known and unknown chemical constituents. Moreover, it is unknown which part of the chemical space is sufficiently retained and eluted using RPLC. RESULTS: We present a generic framework that uses a data driven approach to predict whether molecules fall 'inside', 'maybe' inside, or 'outside' of the RPLC subspace. Firstly, three retention index random forest (RF) regression models were constructed that showed that molecular fingerprints are able to predict RPLC retention behavior. Secondly, these models were used to set up the dataset for building an RPLC RF classification model. The RPLC classification model was able to correctly predict whether a chemical belonged to the RPLC subspace with an accuracy of 92% for the testing set. Finally, applying this model to the 91 737 small molecules (i.e., ≤1 000 Da) in NORMAN SusDat showed that 19.1% fall 'outside' of the RPLC subspace. SIGNIFICANCE AND NOVELTY: The RPLC chemical space model provides a major step towards mapping the chemical space and is able to assess whether chemicals can potentially be measured with an RPLC method (i.e., not every RPLC method) or if a different selectivity should be considered. Moreover, knowing which chemicals are outside of the RPLC subspace can assist in reducing potential candidates for library searching and avoid screening for chemicals that will not be present in RPLC data.

Topics & Concepts

ChemistrySubspace topologyChemical spaceChromatographyReversed-phase chromatographyChemometricsSet (abstract data type)Biological systemData setElutionResolution (logic)Pattern recognition (psychology)High-performance liquid chromatographyStatisticsArtificial intelligenceMathematicsComputer scienceDrug discoveryBiologyProgramming languageBiochemistryMetabolomics and Mass Spectrometry StudiesComputational Drug Discovery MethodsAdvanced Chemical Sensor Technologies
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