High genetic differentiation of grapevine rootstock varieties determined by molecular markers and artificial neural networks
收藏DataCite Commons2022-06-07 更新2024-07-27 收录
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https://scielo.figshare.com/articles/dataset/High_genetic_differentiation_of_grapevine_rootstock_varieties_determined_by_molecular_markers_and_artificial_neural_networks/10026332/1
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ABSTRACT. The genetic differentiation of grapevine rootstock varieties was inferred by the Artificial Neural Network approach based on the Self-Organizing Map algorithm. A combination of RAPD and SSR molecular markers, yielding polymorphic informative loci, was used to determine the genetic characterization among the rootstock varieties 420-A, Schwarzmann, IAC-766 Campinas, Traviú, Kober 5BB, and IAC-572 Jales. A neural network algorithm, based on allelic frequency, showed that the individual grapevine rootstocks (n = 64) were grouped into three genetically differentiated clusters. Cluster 1 included only the Kober 5BB rootstock, Cluster 2 included rootstocks of the varieties Traviú and IAC-572, and Cluster 3 included 420-A, Schwarzmann and IAC-766 plants. Evidence from the current study indicates that, despite the morphological similarities of the 420-A and Kober 5BB varieties, which share the same genetic origin, two new varieties were generated that are genetically divergent and show differences in performance.
提供机构:
SciELO journals
创建时间:
2019-10-23



