JPA: Joint Metabolic Feature Extraction Increases the Depth of Chemical Coverage for LC-MS-Based Metabolomics and Exposomics (Unknown)
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In:
Metabolites, Vol 12, Iss 3, p 212 (2022)
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2022
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ISSN:
- Article (Journal) / Electronic Resource
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Title:JPA: Joint Metabolic Feature Extraction Increases the Depth of Chemical Coverage for LC-MS-Based Metabolomics and Exposomics
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Contributors:Jian Guo ( author ) / Sam Shen ( author ) / Min Liu ( author ) / Chenjingyi Wang ( author ) / Brian Low ( author ) / Ying Chen ( author ) / Yaxi Hu ( author ) / Shipei Xing ( author ) / Huaxu Yu ( author ) / Yu Gao ( author )
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Published in:
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Publisher:
- New search for: MDPI AG
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Publication date:2022
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ISSN:
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DOI:
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Type of media:Article (Journal)
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Type of material:Electronic Resource
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Language:Unknown
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Keywords:
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Source:
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