Understanding the Genetic Basis of Yield-related Traits in Little Millet (Panicum sumatrense Roth. ex. Roem. and Schultz.) Germplasm through Association and Diversity Analysis

M. Amaravel, A. Nirmalakumari, S. Geetha, K. Sathiya, R. Renuka
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Abstract

Background: Little millet is an important crop grown by tribal farmers in India. Genetic variability can be exploited to develop new varieties with higher yield. However, yield is complex and depends on multiple interconnected component characters. Diversity analyses, such as D2 analysis, are used to evaluate the diversity among genotypes and determine the traits that contribute the most diversity in a given population. These analyses are crucial for achieving the goal of developing new varieties with increased yield. Methods: In this study, 323 little millet genotypes were evaluated using an Augmented RCBD, focusing on ten quantitative traits. The experiment was conducted during the rabi season of 2020-2021, and good agronomic practices were followed. D square cluster analysis and path analysis were used to analyze the data, with the "R" tool and the "biotools" and "agricolae" packages, respectively. Result: In this study, 323 little millet genotypes classified into thirteen distinct clusters based on Mahalanobis's D2 statistics, reflecting differences in their phenotypic characteristics. The largest cluster (cluster I) included 243 genotypes, while the smallest clusters (Cluster IX, Cluster X, Cluster XI, Cluster XII and Cluster XIII) had only 1 genotype. The inter-cluster distance varied, with the largest value (577.7) between cluster V and XII. This analysis can be useful for identifying desirable genotypes and understanding the population's genetic diversity and structure.
小粟(Panicum sumatense Roth)产量相关性状遗传基础的研究。Roem。和舒尔茨)。种质资源的关联与多样性分析
背景:小小米是印度部落农民种植的重要作物。利用遗传变异可以培育出高产的新品种。然而,成品率是复杂的,取决于多个相互关联的成分特性。多样性分析,如D2分析,用于评估基因型之间的多样性,并确定在给定群体中贡献最大多样性的性状。这些分析对于实现培育高产新品种的目标至关重要。方法:利用增强RCBD对323个小小米基因型进行鉴定,重点分析10个数量性状。试验在2020-2021年rabi季节进行,并遵循了良好的农艺规范。采用D方聚类分析和通径分析,分别使用“R”工具和“biotools”和“agricolae”软件包对数据进行分析。结果:本研究将323个小小米基因型根据Mahalanobis’s D2统计分为13个不同的簇,反映了其表型特征的差异。聚类间距离不同,聚类V和聚类XII之间的距离最大,为577.7。这种分析可以用于确定理想的基因型和了解群体的遗传多样性和结构。
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