Unraveling the Relationship between Fruit Yield and Yield Related Components in Snake Gourd Genotypes using Multivariate Analysis

A. Fathima, L. Pugalendhi, T. Saraswathi, N. Manivannan, M. Raveendran
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Abstract

Background: Snake gourd is a monoecious crop that prefers cross pollination. Snake gourd has a lot of potential for genetic improvement. A large variation can be produced when genetically diverse and geographically distant lines are combined. To examine the genetic diversity and connection between essential agronomic features in snake gourd, multivariate methods such as principal component analysis and cluster analysis were used. This study will use multivariate analysis to determine the genetic diversity and link between critical agronomic aspects of snake gourd. Methods: A total of sixteen genotypes and two varieties of snake gourd genotypes were subjected to boxplot, principal component analysis and cluster analysis based on eleven quantitative traits. Boxplot analysis, Principal component analysis and cluster analysis were performed using R version of 4.2.1. Result: Boxplot analysis depicted the frequency distribution of eleven quantitative traits among 18 snake gourd accessions. The overall variation was split into eleven principal components, out of which five major principal components contributed for variability of snake gourd genotypes by exhibiting 90.05 per cent of variability. The squared cosine variables inferred that the traits viz., days to first male flowering, days to first female flowering and days to first harvest contributed more for variability in the first component. The ward D2 method of hierarchical clustering cluster the 16 genotypes and 2 varieties in two clusters based on cluster sum of squares.
利用多变量分析揭示丝瓜基因型果实产量与产量相关成分的关系
背景:蛇葫芦是一种雌雄同株的作物,喜欢异花授粉。丝瓜有很大的遗传改良潜力。当基因多样化和地理距离遥远的系结合在一起时,会产生很大的变异。采用主成分分析和聚类分析等多变量分析方法,研究了丝瓜种质资源的遗传多样性及其基本农艺性状之间的联系。本研究将使用多变量分析来确定蛇葫芦的遗传多样性和关键农艺方面之间的联系。方法:对16个基因型和2个品种的11个数量性状进行箱线图、主成分分析和聚类分析。采用R 4.2.1版本进行箱线图分析、主成分分析和聚类分析。结果:箱线图分析显示了11个数量性状在18份冬瓜材料中的频率分布。总体变异分为11个主成分,其中5个主成分对丝瓜基因型变异的贡献率为90.05%。平方余弦变量推断,雄性首次开花的天数、雌性首次开花的天数和首次收获的天数对第一个分量的变异贡献更大。ward D2分层聚类方法基于聚类平方和将16个基因型和2个品种聚在两个聚类中。
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