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1.
Anal Chem ; 95(25): 9397-9403, 2023 06 27.
Artículo en Inglés | MEDLINE | ID: covidwho-20243247

RESUMEN

Peak-detection algorithms currently used to process untargeted metabolomics data were designed to maximize sensitivity at the sacrifice of selectively. Peak lists returned by conventional software tools therefore contain a high density of artifacts that do not represent real chemical analytes, which, in turn, hinder downstream analyses. Although some innovative approaches to remove artifacts have recently been introduced, they involve extensive user intervention due to the diversity of peak shapes present within and across metabolomics data sets. To address this bottleneck in metabolomics data processing, we developed a semisupervised deep learning-based approach, PeakDetective, for classification of detected peaks as artifacts or true peaks. Our approach utilizes two techniques for artifact removal. First, an unsupervised autoencoder is used to extract a low-dimensional, latent representation of each peak. Second, a classifier is trained with active learning to discriminate between artifacts and true peaks. Through active learning, the classifier is trained with less than 100 user-labeled peaks in a matter of minutes. Given the speed of its training, PeakDetective can be rapidly tailored to specific LC/MS methods and sample types to maximize performance on each type of data set. In addition to curation, the trained models can also be utilized for peak detection to immediately detect peaks with both high sensitivity and selectivity. We validated PeakDetective on five diverse LC/MS data sets, where PeakDetective showed greater accuracy compared to current approaches. When applied to a SARS-CoV-2 data set, PeakDetective enabled more statistically significant metabolites to be detected. PeakDetective is open source and available as a Python package at https://github.com/pattilab/PeakDetective.


Asunto(s)
COVID-19 , Aprendizaje Profundo , Humanos , SARS-CoV-2 , Programas Informáticos , Metabolómica/métodos
2.
Cell Rep Med ; 2(8): 100369, 2021 08 17.
Artículo en Inglés | MEDLINE | ID: covidwho-1322391

RESUMEN

There is an urgent need to identify which COVID-19 patients will develop life-threatening illness so that medical resources can be optimally allocated and rapid treatment can be administered early in the disease course, when clinical management is most effective. To aid in the prognostic classification of disease severity, we perform untargeted metabolomics on plasma from 339 patients, with samples collected at six longitudinal time points. Using the temporal metabolic profiles and machine learning, we build a predictive model of disease severity. We discover that a panel of metabolites measured at the time of study entry successfully determines disease severity. Through analysis of longitudinal samples, we confirm that most of these markers are directly related to disease progression and that their levels return to baseline upon disease recovery. Finally, we validate that these metabolites are also altered in a hamster model of COVID-19.


Asunto(s)
COVID-19/metabolismo , Plasma/metabolismo , SARS-CoV-2/metabolismo , Adulto , Biomarcadores/sangre , Femenino , Humanos , Estudios Longitudinales , Aprendizaje Automático , Masculino , Metaboloma , Metabolómica/métodos , Persona de Mediana Edad , Gravedad del Paciente , Plasma/química , Pronóstico , Índice de Severidad de la Enfermedad
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