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Use of the canonical discriminant analysis to select SNP markers for bovine breed assignment and traceability purposes.

机译:使用规范判别分析来选择SNP标记,以用于牛的品种分配和可追溯性目的。

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摘要

Several market research studies have shown that consumers are primarily concerned with the provenance of the food they eat. Among the available identification methods, only DNA-based techniques appear able to completely prevent frauds. In this study, a new method to discriminate among different bovine breeds and assign new individuals to groups was developed. Bulls of three cattle breeds farmed in Italy - Holstein, Brown, and Simmental - were genotyped using the 50K SNP Illumina BeadChip. Multivariate canonical discriminant analysis was used to discriminate among breeds, and discriminant analysis (DA) was used to assign new observations. This method was able to completely identify the three groups at chromosome level. Moreover, a genome-wide analysis developed using 340 linearly independent SNPs yielded a significant separation among groups. Using the reduced set of markers, the DA was able to assign 30 independent individuals to the proper breed. Finally, a set of 48 high discriminant SNPs was selected and used to develop a new run of the analysis. Again, the procedure was able to significantly identify the three breeds and to correctly assign new observations. These results suggest that an assay with the selected 48 SNP could be used to routinely track monobreed products.
机译:多项市场研究表明,消费者主要关注所食用食物的来源。在可用的识别方法中,只有基于DNA的技术才能完全防止欺诈。在这项研究中,开发了一种新的方法来区分不同的牛品种,并将新的个体分配到组中。使用50K SNP Illumina BeadChip对在意大利饲养的三种牛品种的公牛(荷斯坦,布朗和西门塔尔牛)进行了基因分型。多元标准判别分析用于区分品种,判别分析(DA)用于分配新观察值。该方法能够在染色体水平上完全鉴定出三组。此外,使用340个线性独立的SNP进行的全基因组分析产生了各组之间的显着分离。使用减少的一组标记,DA可以将30个独立的个体分配给适当的品种。最后,选择了一组48个高判别SNP,并将其用于开发新的分析方法。同样,该程序能够显着识别这三个品种并正确分配新的观察值。这些结果表明,使用选定的48个SNP进行的测定可用于常规跟踪单品种产品。

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