Assessment of Genetic Diversity Among Intra- and Interspecific Lowland Rice using Morpho-agronomic Traits and SSR Markers

A. Ogunbayo, M. Sié, G. Gregorio, D. K. Ojo, K. Sanni, S. Akinyosoye, S. Afeez, Moses Gbenga Akinwale, Najimu Adeniyi Adetoro, J. Adetumbi, O. Amusa, M. Adekoya, S. Obukosia, O. Akinbo
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引用次数: 1

Abstract

Rice is staple food in many countries of Africa and a major part of the diet in many others. However, Africa’s demand for rice exceeds production with the deficit of 40% being imported. One way to improve Africa’s rice production is through breeding high yielding varieties suitable for the different environment conditions. This study was conducted to assess the genetic variability and stability performance of 48 lowland rice genotypes including 37 interspecific (Oryza glaberrima × Oryza sativa ssp. indica) and 11 intraspecific (O. sativa ssp. indica × O. sativa ssp. indica) in 12 environments in Nigeria, Benin Republic and Togo using Additive Main Effect and Multiplicative Interaction (AMMI) and Genotype+ Genotype x Environment (GGE) biplot models. The combined analysis of variance revealed significant differences (P<0.01) among the genotypes, environments, and genotypes x environment interaction. Both the AMMI and GGE models identified NERICA-L8 and NERICA-LI2 as the best genotypes for cultivation across environments. Ouedeme environments in Benin Republic were the most stable and ideal for rice cultivation, while Ibadan sites were the most unstable. TOG 5681 had the least yield and was the most unstable across seasons. Genetic diversity was analyzed using 22 important morpho-agronomic traits and 50 simple sequence repeat (SSR) markers and the results were subjected to principal components analysis (PCA). The results revealed that the first eight PC axes (PC1–8) accounted for 75.13% of the total variation, while PC1–4 accounted for 50.39% of the total variation among rice genotypes. However, 10 of the 50 SSR markers were polymorphic and generated 49 alleles (average = 4.9 alleles per locus), suggesting moderate to substantial genetic diversity among the rice genotypes. The polymorphic information content (PIC) ranged from 0.24 to 0.65, with an average PIC value of 0.45. Two structured populations were observed which clustered into five heterotic groups and an outgroup, respectively. This suggests that heterosis could be exploited in the next hybridization program by crossing one of the genotypes in any SSR marker-defined cluster, with the rice accession TOG 5681 in cluster I. The results of this study suggest that morpho-agronomic traits should be used to compliment SSR data in rice diversity studies, especially if a few polymorphic SSR markers are to be used.
大米是非洲许多国家的主食,也是其他许多国家饮食的主要组成部分。然而,非洲对大米的需求超过了产量,40%的缺口来自进口。改善非洲水稻生产的一种方法是培育适合不同环境条件的高产品种。本研究对48个低地水稻基因型(包括37个种间(glaberrima × Oryza sativa ssp))的遗传变异和稳定性进行了评价。11种内(O. sativa ssp.)。籼× O. sativa;利用加性主效应和乘法相互作用(AMMI)和基因型+基因型x环境(GGE)双图模型对尼日利亚、贝宁共和国和多哥的12个环境进行了研究。综合方差分析显示,基因型、环境及基因型与环境交互作用差异显著(P<0.01)。AMMI和GGE模型均认为NERICA-L8和NERICA-LI2是最适合跨环境栽培的基因型。贝宁共和国的Ouedeme环境最稳定,最适合水稻种植,而伊巴丹的环境最不稳定。TOG 5681产量最低,各季节最不稳定。利用22个重要形态农艺性状和50个SSR标记进行遗传多样性分析,并对结果进行主成分分析(PCA)。结果表明,水稻基因型中前8个PC轴(PC1-8)占总变异量的75.13%,PC1-4占总变异量的50.39%。50个SSR标记中有10个是多态性的,共产生49个等位基因(平均每个位点4.9个等位基因),表明水稻基因型之间存在中等至较高的遗传多样性。多态信息含量(PIC)在0.24 ~ 0.65之间,平均为0.45。观察到两个结构种群,分别聚集成5个杂种优势群和1个外群。本研究结果表明,在水稻多样性研究中,应利用形态农艺性状对SSR数据进行补充,特别是在使用少量多态SSR标记的情况下。
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