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Comparison of Genotypic and Expression Data to Determine Distinctness among Inbred Lines of Maize for Granting of Plant Variety Protection

机译:比较基因型和表达数据以确定玉米自交系之间的区别,以赋予植物新品种保护权

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The Union Internationale pour la Protection des Obtentions V??g??tales (UPOV) currently relies on morphological characteristics to evaluate distinctness, uniformity, and stability (DUS) as eligibility requirements for the granting of Plant Variety Protection (PVP). We used 10 maize (Zea mays L.) inbred lines, including both unrelated and closely similar pairs, representing three heterotic groups to compare abilities of morphological, ribonucleic acid (RNA) transcription, metabolomic, and single nucleotide polymorphism (SNP) data to distinguish inbred lines. We used the range of variability and robustness as important factors to determine distinguishing power of each methodological approach. Using an index that ranged from 0 to 100 (useless to the perfect ideal), index scores for each methodology were: metabolomics (0), RNA transcription (18.2), morphology (19.6), and SNPs (35.7). The ability to distinguish among genotypes using RNA transcription expression data was concordant with SNP data for genotypes that were up to 97.2% similar according to SNPs. The SNP data alone could provide the basis for a determination of distinctness among inbred lines of maize with use of morphological, physiological, or agronomic performance data as supplementary information, if needed.
机译:目前,国际保护联盟(VOV)故事(UPOV)依靠形态学特征来评估独特性,均匀性和稳定性(DUS)作为授予植物新品种保护(PVP)的资格要求。我们使用10个玉米(Zea mays L.)自交系,包括不相关和紧密相似的对,代表三个杂种组来比较形态学,核糖核酸(RNA)转录,代谢组学和单核苷酸多态性(SNP)数据的能力,以区分自交系。我们使用可变性和鲁棒性的范围作为确定每种方法论方法的区别力的重要因素。使用范围从0到100(无用到完美理想)的指数,每种方法的指数得分是:代谢组学(0),RNA转录(18.2),形态学(19.6)和SNP(35.7)。使用RNA转录表达数据区分基因型的能力与SNP数据一致,根据SNPs,高达97.2%的基因型相似。如果需要,可以单独使用SNP数据,利用形态,生理或农艺性能数据作为补充信息,为确定玉米自交系间的差异性提供基础。

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