JPA: joint metabolic feature extraction increases the depth of chemical coverage for LC-MS-based metabolomics and exposomics

Extracting metabolic features from liquid chromatography-mass spectrometry (LC-MS) data has been a long-standing bioinformatic challenge in untargeted metabolomics. Conventional feature extraction algorithms fail to recognize features with low signal intensities, poor chromatographic peak shapes, or...

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Main Authors: Guo, Jian, Shen, Sam, Liu, Min, Wang, Chenjingyi, Low, Brian, Chen, Ying, Hu, Yaxi, Xing, Shipei, Yu, Huaxu, Gao, Yu, Fang, Mingliang, Huan, Tao
Other Authors: School of Civil and Environmental Engineering
Format: Article
Language:English
Published: 2023
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Online Access:https://hdl.handle.net/10356/164852
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Institution: Nanyang Technological University
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spelling sg-ntu-dr.10356-1648522023-02-20T06:28:08Z JPA: joint metabolic feature extraction increases the depth of chemical coverage for LC-MS-based metabolomics and exposomics Guo, Jian Shen, Sam Liu, Min Wang, Chenjingyi Low, Brian Chen, Ying Hu, Yaxi Xing, Shipei Yu, Huaxu Gao, Yu Fang, Mingliang Huan, Tao School of Civil and Environmental Engineering Engineering::Environmental engineering Untargeted Metabolomics Exposomics Extracting metabolic features from liquid chromatography-mass spectrometry (LC-MS) data has been a long-standing bioinformatic challenge in untargeted metabolomics. Conventional feature extraction algorithms fail to recognize features with low signal intensities, poor chromatographic peak shapes, or those that do not fit the parameter settings. This problem also poses a challenge for MS-based exposome studies, as low-abundant metabolic or exposomic features cannot be automatically recognized from raw data. To address this data processing challenge, we developed an R package, JPA (short for Joint Metabolomic Data Processing and Annotation), to comprehensively extract metabolic features from raw LC-MS data. JPA performs feature extraction by combining a conventional peak picking algorithm and strategies for (1) recognizing features with bad peak shapes but that have tandem mass spectra (MS2) and (2) picking up features from a user-defined targeted list. The performance of JPA in global metabolomics was demonstrated using serial diluted urine samples, in which JPA was able to rescue an average of 25% of metabolic features that were missed by the conventional peak picking algorithm due to dilution. More importantly, the chromatographic peak shapes, analytical accuracy, and precision of the rescued metabolic features were all evaluated. Furthermore, owing to its sensitive feature extraction, JPA was able to achieve a limit of detection (LOD) that was up to thousands of folds lower when automatically processing metabolomics data of a serial diluted metabolite standard mixture analyzed in HILIC(-) and RP(+) modes. Finally, the performance of JPA in exposome research was validated using a mixture of 250 drugs and 255 pesticides at environmentally relevant levels. JPA detected an average of 2.3-fold more exposure compounds than conventional peak picking only. Published version This research was funded by Canada Foundation for Innovation, grant number CFI 38159; Natural Sciences and Engineering Research Council, grant numbers RGPIN-2020-04895, DGECR2020-00189; University of British Columbia, grant number F19-05720; Social Sciences and Humanities Research Council, grant number NFRFE-2019-00789. 2023-02-20T06:28:08Z 2023-02-20T06:28:08Z 2022 Journal Article Guo, J., Shen, S., Liu, M., Wang, C., Low, B., Chen, Y., Hu, Y., Xing, S., Yu, H., Gao, Y., Fang, M. & Huan, T. (2022). JPA: joint metabolic feature extraction increases the depth of chemical coverage for LC-MS-based metabolomics and exposomics. Metabolites, 12(3), 12030212-. https://dx.doi.org/10.3390/metabo12030212 2218-1989 https://hdl.handle.net/10356/164852 10.3390/metabo12030212 35323655 2-s2.0-85125754429 3 12 12030212 en Metabolites © 2022 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https:// creativecommons.org/licenses/by/ 4.0/). application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Environmental engineering
Untargeted Metabolomics
Exposomics
spellingShingle Engineering::Environmental engineering
Untargeted Metabolomics
Exposomics
Guo, Jian
Shen, Sam
Liu, Min
Wang, Chenjingyi
Low, Brian
Chen, Ying
Hu, Yaxi
Xing, Shipei
Yu, Huaxu
Gao, Yu
Fang, Mingliang
Huan, Tao
JPA: joint metabolic feature extraction increases the depth of chemical coverage for LC-MS-based metabolomics and exposomics
description Extracting metabolic features from liquid chromatography-mass spectrometry (LC-MS) data has been a long-standing bioinformatic challenge in untargeted metabolomics. Conventional feature extraction algorithms fail to recognize features with low signal intensities, poor chromatographic peak shapes, or those that do not fit the parameter settings. This problem also poses a challenge for MS-based exposome studies, as low-abundant metabolic or exposomic features cannot be automatically recognized from raw data. To address this data processing challenge, we developed an R package, JPA (short for Joint Metabolomic Data Processing and Annotation), to comprehensively extract metabolic features from raw LC-MS data. JPA performs feature extraction by combining a conventional peak picking algorithm and strategies for (1) recognizing features with bad peak shapes but that have tandem mass spectra (MS2) and (2) picking up features from a user-defined targeted list. The performance of JPA in global metabolomics was demonstrated using serial diluted urine samples, in which JPA was able to rescue an average of 25% of metabolic features that were missed by the conventional peak picking algorithm due to dilution. More importantly, the chromatographic peak shapes, analytical accuracy, and precision of the rescued metabolic features were all evaluated. Furthermore, owing to its sensitive feature extraction, JPA was able to achieve a limit of detection (LOD) that was up to thousands of folds lower when automatically processing metabolomics data of a serial diluted metabolite standard mixture analyzed in HILIC(-) and RP(+) modes. Finally, the performance of JPA in exposome research was validated using a mixture of 250 drugs and 255 pesticides at environmentally relevant levels. JPA detected an average of 2.3-fold more exposure compounds than conventional peak picking only.
author2 School of Civil and Environmental Engineering
author_facet School of Civil and Environmental Engineering
Guo, Jian
Shen, Sam
Liu, Min
Wang, Chenjingyi
Low, Brian
Chen, Ying
Hu, Yaxi
Xing, Shipei
Yu, Huaxu
Gao, Yu
Fang, Mingliang
Huan, Tao
format Article
author Guo, Jian
Shen, Sam
Liu, Min
Wang, Chenjingyi
Low, Brian
Chen, Ying
Hu, Yaxi
Xing, Shipei
Yu, Huaxu
Gao, Yu
Fang, Mingliang
Huan, Tao
author_sort Guo, Jian
title JPA: joint metabolic feature extraction increases the depth of chemical coverage for LC-MS-based metabolomics and exposomics
title_short JPA: joint metabolic feature extraction increases the depth of chemical coverage for LC-MS-based metabolomics and exposomics
title_full JPA: joint metabolic feature extraction increases the depth of chemical coverage for LC-MS-based metabolomics and exposomics
title_fullStr JPA: joint metabolic feature extraction increases the depth of chemical coverage for LC-MS-based metabolomics and exposomics
title_full_unstemmed JPA: joint metabolic feature extraction increases the depth of chemical coverage for LC-MS-based metabolomics and exposomics
title_sort jpa: joint metabolic feature extraction increases the depth of chemical coverage for lc-ms-based metabolomics and exposomics
publishDate 2023
url https://hdl.handle.net/10356/164852
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