Mapping the Arabidopsis Metabolic Landscape by Untargeted Metabolomics at Different Environmental Conditions
Si Wu,Takayuki Tohge,Álvaro Cuadros-Inostroza,Hao Tong,Hezi Tenenboim,Rik Kooke,Michaël Méret,Joost J. B. Keurentjes,Zoran Nikoloski,Alisdair R. Fernie,Lothar Willmitzer,Yariv Brotman,Yariv Brotman +12 more
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TL;DR: The power of combining large-scale untargeted metabolomics-based GWAS with time-course-derived networks both performed under different abiotic environments for identifying metabolite-gene associations are demonstrated, providing novel global insights into the metabolic landscape of Arabidopsis.
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About: This article is published in Molecular Plant. The article was published on 08 Jan 2018. and is currently open access. The article focuses on the topics: Metabolomics & Quantitative trait locus.
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Lloyd W. Sumner,Alexander Amberg,Dave Barrett,Michael H. Beale,Richard D. Beger,Clare A. Daykin,Teresa W.-M. Fan,Oliver Fiehn,Royston Goodacre,Julian L. Griffin,Thomas Hankemeier,Nigel Hardy,James M. Harnly,Richard M. Higashi,Joachim Kopka,Andrew N. Lane,John C. Lindon,Philip J. Marriott,Andrew W. Nicholls,Michael D. Reily,John J. Thaden,Mark R. Viant +21 more
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