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Deep learning-based pseudo-mass spectrometry imaging analysis for precision medicine

Xiaotao Shen, Wei Shao, Chuchu Wang, Liang Liang, Songjie Chen, Sai Zhang, Mirabela Rusu, M Snyder

2022Briefings in Bioinformatics19 citationsDOI

Abstract

Liquid chromatography-mass spectrometry (LC-MS)-based untargeted metabolomics provides systematic profiling of metabolic. Yet, its applications in precision medicine (disease diagnosis) have been limited by several challenges, including metabolite identification, information loss and low reproducibility. Here, we present the deep-learning-based Pseudo-Mass Spectrometry Imaging (deepPseudoMSI) project (https://www.deeppseudomsi.org/), which converts LC-MS raw data to pseudo-MS images and then processes them by deep learning for precision medicine, such as disease diagnosis. Extensive tests based on real data demonstrated the superiority of deepPseudoMSI over traditional approaches and the capacity of our method to achieve an accurate individualized diagnosis. Our framework lays the foundation for future metabolic-based precision medicine.

Topics & Concepts

MetabolomicsPrecision medicineMass spectrometryDeep learningProfiling (computer programming)Computer scienceReproducibilityArtificial intelligenceRaw dataLiquid chromatography–mass spectrometryChromatographyChemistryMedicinePathologyProgramming languageOperating systemMetabolomics and Mass Spectrometry StudiesMass Spectrometry Techniques and ApplicationsAdvanced Chemical Sensor Technologies
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