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MetaboLyzer: A Novel Statistical Workflow for Analyzing Postprocessed LC–MS Metabolomics Data

Analytical Chemistry - United States
doi 10.1021/ac402477z
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Abstract

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Categories
Analytical Chemistry
Date

November 22, 2013

Authors
Tytus D. MakEvagelia C. LaiakisMaryam GoudarziAlbert J. Fornace
Publisher

American Chemical Society (ACS)


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