4.7 Article

Potential markers of coffee genotypes grown in different Brazilian regions: A metabolomics approach

Journal

FOOD RESEARCH INTERNATIONAL
Volume 61, Issue -, Pages 75-82

Publisher

ELSEVIER SCIENCE BV
DOI: 10.1016/j.foodres.2014.02.048

Keywords

Metabolite profiling; Coffea arabica L.; GC-Q/MS; PLS-DA

Funding

  1. Brazilian agencies [CNPq-MCT/CNPq 014/2008]
  2. Capes
  3. Fapemig
  4. CNPq
  5. Warnell School
  6. Hank Haynes Forest Biotechnology endowment fund at the University of Georgia
  7. LPF (CNPq)

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Seeds from different coffee species and coffee from different continents or countries have very distinct chemical composition. However, the differences between genotypes grown at micro-regional levels with similar geographical characteristics are still unclear. In this study, we highlighted the need of using metabolite profiling instead of the usual targeted analysis as a more powerful tool to describe the slight differences between coffees of the same species grown in close origins. Thus, our study focused on finding potential metabolite markers to describe differences of Coffea arabica L. genotypes (Mundo Novo and Bourbons) grown in Brazilian coffee producing municipalities (Lavras, Santo Antonio do Amparo-SAA, and Sao Sebastian da Grama-SSG). Using the metabolomics approach, 44 metabolites were identified, and some showed great potential for origin and genotype differentiation. The Partial Least Square Discriminant Analysis - PLS-DA model showed that the SAA coffee samples had the most differentiated metabolite profile (approximately 95% accuracy) compared to the other municipalities. The samples from Lavras and SGG had similar profiles (model accuracy of approximately 50%). Potential metabolite markers for the SAA samples included galactinol, fructose, malic acid, oxalic add, D-glucose, D-sorbitol, galactinol, and myo-inositol. The model used to differentiate the Bourbon and the MN genotype showed 100% accuracy indicating very different metabolite profiles. The features that were most influential in differentiating genotype were: 5-CQA, oxalic add, galactinol, nicotinic acid, caffeine, and caffeic acid (Bourbon) and myo-inositol, quinic acid, malic acid, fructose, and D-glucose (MN). Enhancing subtle differences in the data by combining information from GC-Q/MS and multivariate analysis resulted in the identification of coffee origins and genotypes as well as the identification of potential markers. (C) 2014 Elsevier Ltd. All rights reserved.

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