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Deep Neural Networks for Classification of LC-MS Spectral Peaks.

Citation
Kantz, E. D., et al. “Deep Neural Networks For Classification Of Lc-Ms Spectral Peaks.”. Analytical Chemistry, pp. 12407-12413.
Center UCSD-UCLA
Author Edward D Kantz, Saumya Tiwari, Jeramie D Watrous, Susan Cheng, Mohit Jain
Abstract

Liquid chromatography-mass spectrometry (LC-MS)-based metabolomics has emerged as a valuable tool for biological discovery, capable of assaying thousands of diverse chemical entities in a single biospecimen. Processing of nontargeted LC-MS spectral data requires identification and isolation of true spectral features from the random, false noise peaks that comprise a significant portion of total signals, using inexact peak selection algorithms and time-consuming visual inspection of data. To increase the fidelity and speed of data processing, herein we establish, optimize, and evaluate a machine learning pipeline employing deep neural networks as well as a simpler multiple logistic regression model for classification of spectral features from nontargeted LC-MS metabolomics data. Machine learning-based approaches were found to remove up to 90% of false peaks from complex nontargeted LC-MS data sets without reducing true positive signals and exhibit excellent reproducibility across multiple data sets. Application of machine learning for nontargeted LC-MS-based peak selection provides for robust and scalable peak classification and data filtering, enabling handling and processing of large scale, complex metabolomics data sets.

Year of Publication
2019
Journal
Analytical chemistry
Volume
91
Issue
19
Number of Pages
12407-12413
Date Published
12/2019
ISSN Number
1520-6882
DOI
10.1021/acs.analchem.9b02983
Alternate Journal
Anal. Chem.
PMID
31483992
PMCID
PMC7089603
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