Diversity of wheat (Triticum aestivum) genotypes deciphered by biplot analysis

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Abstract

Diversity of hundred and seventy six wheat genotypes had been studied as per fifteen relevant morphological traits in research farm of Haryana Agricultural University during cropping season 2016-17. Maximum range was observed for flag leaf area followed by number of grains per ear and plant height. The least deviation also expressed by flag leaf breadth trait. The phenotypic diversity were estimated by the Shannon-Weaver diversity index (H’), by bifurcating set of genotypes in five classes, revealed maximum values for days to heading (cluster 2), number of tillers per plant (cluster 3), flag leaf length (cluster 2), flag leaf breadth (cluster 2), flag leaf area (cluster 4), plant height (cluster 5), ear length (cluster 2), ear weight (cluster 4), number of grains per ear (cluster 4), weight of grain per ear (cluster 2), number of spikelet per ear (cluster 2), thousand grains weight (cluster 4), Grain yield per plant (cluster 2), biological yield per plant (cluster 2) and Harvest Index (cluster 2). Simpson’s index (1/D) varied from 0.44 for biological yield to 0.54 for flag leaf breadth followed by ear weight. Association analysis among traits exhibited significant positive correlation of grain yield observed with number of tillers per plant, thousand grains weight and biological yield expressed high degree of linear association with grain yield per plant, number of tillers per plant, thousand grains weight, ear weight and weight of grains per ear. Harvest Index maintained positive and negative correlation with other traits though magnitudes were of small values. Biplot analysis had seen strong bondage of grain yield per plant with number of tillers per plant and biological yield per plant as well as of flag leaf length with thousand grains weight evident from group 1 as acute angles had exhibited by traits rays. Weight of grains per ear along with ear weight expressed strong relationship with number of spikelet per ear, number of grains per ear whereas similar behavior evident from plant height & flag leaf area as evident by acute angles among corresponding rays. Darwin software exploited to import the dissimilarity matrix for multivariate hierarchical clustering of genotypes. Two broad categories had seen which further partitioned into five and six sub groups as evident from respective nodes.
小麦(Triticum aestivum)基因型多样性双图分析
2016-17种植季,在哈里亚纳农业大学研究农场对176个小麦基因型的15个相关形态性状进行了多样性研究。旗叶面积变化最大,穗粒数次之,株高次之。旗叶宽度性状的变异最小。的表型多样性估计Shannon-Weaver多样性指数(H),通过分支组基因型五类,显示最大值为天标题集群(2),每个工厂的分蘖数(集群3),旗叶长度(集群2),旗叶宽度(集群2),旗叶面积(集群4),株高(集群5)、穗长(集群2),耳朵重量(集群4),穗粒数(集群4),每穗粒重(集群2),每穗小穗数(聚类2)、千粒重(聚类4)、单株籽粒产量(聚类2)、单株生物产量(聚类2)和收获指数(聚类2)。辛普森指数(1/D)从生物产量的0.44到旗叶宽度的0.54,其次是穗重。性状间的相关分析表明,单株分蘖数、千粒重和生物产量与单株产量、单株分蘖数、千粒重、穗重和单穗粒重呈极显著正相关,与单株产量、单株分蘖数、千粒重呈高度线性相关。收获指数与其他性状均保持正相关和负相关,但数值较小。双图分析表明,单株籽粒产量与单株分蘖数、单株生物产量、旗叶长与千粒重之间存在较强的捆绑关系。单穗粒重、穗重与穗粒数、穗粒数有较强的相关性,而株高、旗叶面积与单穗粒数、穗粒数有较强的相关性。利用达尔文软件导入差异矩阵进行基因型多变量分层聚类。从各自的节点可以明显看出,两个大的类别进一步划分为五个和六个子组。
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