Multivariate analysis in rice (Oryza sativa L.) germplasms for yield attributing traits

IF 0.7 Q4 PLANT SCIENCES Plant Science Today Pub Date : 2023-10-11 DOI:10.14719/pst.2231
Satya Prakash, S Sumanth Reddy, Sandeep Chaudhary, SC Vimal, Adesh Kumar
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Abstract

A study was conducted to evaluate the genetic diversity and relationships among sixty rice genotypes by assessing eleven morphological yield traits using principal component analysis (PCA) and cluster analysis at ANDUAT, Ayodhya (Uttar Pradesh), India. The results found significant variation among the genotypes, with some exhibiting higher values for certain traits which confirm genetic diversity. Cluster analysis revealed that Cluster V had the highest number of genotypes, while Cluster IV had the highest intra-cluster distance, suggesting that these genotypes would be useful for rice improvement. Principal component analysis revealed that the first two principal components, along with three other components, accounted for 75.11 percent of the total variability. Days to 50% flowering (DFF) in days was identified as the most accurate predictor of variability, followed by days to maturity (DM) in days, 1000 seed weight (TSW) in gm, and panicle length (PL) in cm. The principal component to be first (PC1) was linked with plant height (PH) and harvest index (HI) in gm, the second principal component (PC2) was linked with DFF and DM, the third (PC3) was linked with TSW and grains/panicle (GP) in number, the fourth (PC4) with panicles bearing per plant (PBP) in number and biological yield per plant (BY) in gramme, and the fifth principal component (PC5) is linked with PL and BY. The study identified several promising genotypes for various traits, including G.35, G.17, G.30, G.45, and G.46 for short plant height and G.60, G.40, G.54, G.55, and G.41 for high yield.
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水稻(Oryza sativa L.)种质产量性状的多变量分析
利用主成分分析(PCA)和聚类分析方法,对印度阿约提亚(Uttar Pradesh) ANDUAT地区60个水稻基因型的11个形态产量性状进行了遗传多样性和相互关系评价。结果发现基因型之间存在显著差异,有些基因型在某些性状上表现出较高的值,这证实了遗传多样性。聚类分析表明,聚类V的基因型数量最多,聚类IV的基因型簇内距离最大,表明这些基因型在水稻改良中具有一定的应用价值。主成分分析显示,前两个主成分,连同其他三个成分,占总变异性的75.11%。以天为单位的开花天数至50% (DFF)是最准确的变异预测因子,其次是以天为单位的成熟期(DM)、以gm为单位的千粒重(TSW)和以cm为单位的穗长(PL)。第1主成分(PC1)与株高(PH)和收获指数(HI)有关,第2主成分(PC2)与DFF和DM有关,第3主成分(PC3)与总重(TSW)和粒/穗(GP)有关,第4主成分(PC4)与单株实穗数(PBP)和单株生物产量(BY)有关,第5主成分(PC5)与PL和BY有关。本研究确定了几个有潜力的基因型,包括株高较矮的G.35、G.17、G.30、G.45和G.46,高产的G.60、G.40、G.54、G.55和G.41。
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来源期刊
Plant Science Today
Plant Science Today PLANT SCIENCES-
CiteScore
1.50
自引率
11.10%
发文量
177
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