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Survey of a grapevine microbiome through functional metagenomics

基因组 微生物群 计算生物学 生物 进化生物学 生物信息学 遗传学 基因
作者
Paola Di Gianvito,Vasileios Englezos,Ilario Ferrocino,Luca Cocolin,Kalliopi Rantsiou
出处
期刊:Food Research International [Elsevier BV]
卷期号:219: 117000-117000 被引量:2
标识
DOI:10.1016/j.foodres.2025.117000
摘要

Microorganisms colonizing grapevines possess diverse functional capabilities that influence the health, growth, productivity and, consequently, wine quality. In this study, spatial and temporal dynamics of the microbiome of Vitis vinifera cv. Barbera grapevine were determined by shotgun sequencing. Bacterial and fungal populations and functions were monitored in samples of rhizosphere, leaves, and grapes, collected at different stages from fruit development to harvest in a conventionally managed vineyard. A compartmental specificity of diverse species was observed within both bacterial and fungal communities. A core microbiome was also identified. LEfSe analysis revealed significantly discriminant taxa associated with each plant compartment, but not according to the sampling time. KEGG genes associated with carbohydrate metabolism were the most abundant in all samples, followed by genes related to amino acid metabolism, respectively involved in carbon and nitrogen metabolic pathways. Interestingly, differences were observed in the functions of rhizosphere and phyllosphere communities with additional differences observed between functions of bacterial and fungal communities. Pathways involved in critical functions like nutrient acquisition, stress resistance, metabolic flexibility, and interaction with the grapevine, were detected within the microbiome. The findings of this study unravel ecological and functional characteristics of the Barbera microbiome. This fundamental understanding is a prerequisite for the development of tailored strategies to protect vineyards and promote sustainability in grapevine production.
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