Borrayo Ernesto, Machida-Hirano Ryoko, Takeya Masaru, Kawase Makoto, Watanabe Kazuo
Gene Research Center, University of Tsukuba, 1-1-1 Tennodai, Tsukuba City, 305-8571, Ibaraki, Japan.
Genetc Resources Center, National Institute of Agrobiological Sciences, 2-1-2 Kannodai, Tsukuba City, 305-8602, Ibaraki, Japan.
BMC Genet. 2016 Feb 16;17:42. doi: 10.1186/s12863-016-0343-z.
Core collections are important tools in genetic resources research and administration. At present, most core collection selection criteria are based on one of the following item characteristics: passport data, genetic markers, or morphological traits, which may lead to inadequate representations of variability in the complete collection. The development of a comprehensive methodology that includes as much element data as possible has been explored poorly. Using a collection of (Setaria italica sbsp. italica (L.) P. Beauv.) as a model, we developed a method for core collection construction based on genotype data and numerical representations of agromorphological traits, thereby improving the selection process.
Principal component analysis allows the selection of the most informative discriminators among the various elements evaluated, regardless of whether they are genetic or morphological, thereby providing an adequate criterion for further K-mean clustering. Overall, the core collections of S. italica constructed using only genotype data demonstrated overall better validation scores than other core collections that we generated. However, core collection based on both genotype and agromorphological characteristics represented the overall diversity adequately.
The inclusion of both genotype and agromorphological characteristics as a comprehensive dataset in this methodology ensures that agricultural traits are considered in the core collection construction. This approach will be beneficial for genetic resources management and research activities for S. italica as well as other genetic resources.
核心种质库是遗传资源研究与管理中的重要工具。目前,大多数核心种质库的选择标准基于以下项目特征之一:护照数据、遗传标记或形态性状,这可能导致完整种质库中变异性的代表性不足。对一种包含尽可能多元素数据的综合方法的开发探索较少。以一组(粟(Setaria italica sbsp. italica (L.) P. Beauv.))为模型,我们开发了一种基于基因型数据和农艺形态性状数值表示的核心种质库构建方法,从而改进了选择过程。
主成分分析允许在评估的各种元素中选择信息量最大的鉴别指标,无论它们是遗传的还是形态的,从而为进一步的K均值聚类提供了充分的标准。总体而言,仅使用基因型数据构建的粟核心种质库的验证得分总体上优于我们生成的其他核心种质库。然而,基于基因型和农艺形态特征的核心种质库充分代表了总体多样性。
在该方法中纳入基因型和农艺形态特征作为综合数据集,可确保在核心种质库构建中考虑农业性状。这种方法将有利于粟以及其他遗传资源的遗传资源管理和研究活动。