| Literature DB >> 27768042 |
Silvia Dal Santo1, Mauro Commisso1, Erica D'Incà1, Andrea Anesi2, Matteo Stocchero3, Sara Zenoni1, Stefania Ceoldo1, Giovanni B Tornielli1, Mario Pezzotti1, Flavia Guzzo4.
Abstract
Terroir refers to the combination of environmental factors that affect the characteristics of crops such as grapevine (Vitis vinifera) according to particular habitats and management practices. This article shows how certain terroir signatures can be detected in the berry metabolome and transcriptome of the grapevine cultivar Corvina using multivariate statistical analysis. The method first requires an appropriate sampling plan. In this case study, a specific clone of the Corvina cultivar was selected to minimize genetic differences, and samples were collected from seven vineyards representing three different macro-zones during three different growing seasons. An untargeted LC-MS metabolomics approach is recommended due to its high sensitivity, accompanied by efficient data processing using MZmine software and a metabolite identification strategy based on fragmentation tree analysis. Comprehensive transcriptome analysis can be achieved using microarrays containing probes covering ~99% of all predicted grapevine genes, allowing the simultaneous analysis of all differentially expressed genes in the context of different terroirs. Finally, multivariate data analysis based on projection methods can be used to overcome the strong vintage-specific effect, allowing the metabolomics and transcriptomics data to be integrated and analyzed in detail to identify informative correlations.Entities:
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Year: 2016 PMID: 27768042 PMCID: PMC5092147 DOI: 10.3791/54410
Source DB: PubMed Journal: J Vis Exp ISSN: 1940-087X Impact factor: 1.355