Deep Neural Networks for Classification of LC-MS Spectral Peaks.
| Citation | Kantz, Edward D, et al. “Deep Neural Networks for Classification of LC-MS Spectral Peaks”. 2019. Analytical Chemistry, vol. 91, no. 19, 2019, 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 
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| Journal | 
   Analytical chemistry 
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| Volume | 
   91 
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| Issue | 
   19 
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| Number of Pages | 
   12407-12413 
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| Date Published | 
   12/2019 
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| ISSN Number | 
   1520-6882 
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| DOI | 
   10.1021/acs.analchem.9b02983 
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| Alternate Journal | 
   Anal. Chem. 
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| PMCID | 
   PMC7089603 
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| PMID | 
   31483992 
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