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Deep Learning-Assisted Peak Curation for Large-Scale LC-MS Metabolomics

Yoann Gloaguen, Jennifer Kirwan, Dieter Beule

2022Analytical Chemistry92 citationsDOIOpen Access PDF

Abstract

Available automated methods for peak detection in untargeted metabolomics suffer from poor precision. We present NeatMS, which uses machine learning based on a convoluted neural network to reduce the number and fraction of false peaks. NeatMS comes with a pre-trained model representing expert knowledge in the differentiation of true chemical signal from noise. Furthermore, it provides all necessary functions to easily train new models or improve existing ones by transfer learning. Thus, the tool improves peak curation and contributes to the robust and scalable analysis of large-scale experiments. We show how to integrate it into different liquid chromatography-mass spectrometry (LC-MS) analysis workflows, quantify its performance, and compare it to various other approaches. NeatMS software is available as open source on github under permissive MIT license and is also provided as easy-to-install PyPi and Bioconda packages.

Topics & Concepts

WorkflowScalabilityChemistryMetabolomicsComputer scienceSoftwareDeep learningArtificial intelligenceTransfer of learningNoise (video)Artificial neural networkMachine learningChromatographyDatabaseOperating systemImage (mathematics)Metabolomics and Mass Spectrometry StudiesAdvanced Chemical Sensor TechnologiesAnalytical Chemistry and Chromatography
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