黄瓜(Cucumis sativus L.)基因型果实产量的主成分和相关分析研究

Q4 Agricultural and Biological Sciences ELECTRONIC JOURNAL OF PLANT BREEDING Pub Date : 2024-07-09 DOI:10.37992/2024.1502.065
Umeh O.A., Umeh I.S., Ulasi J.I., Keyagha E.R., Cookey C.O.
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引用次数: 0

摘要

利用相关性分析和主成分分析(PCA)可以确定产量及其成分之间的关联程度。PCA 还能揭示解释基因型之间大部分差异的关键特征。本研究旨在评估黄瓜产量及其贡献性状之间的关系。实验采用随机完全区组设计法,对 16 个黄瓜基因型进行了三次重复。相关分析表明,雌花数(r = 0.58**)、分枝数(r = 0.43**)、藤蔓长度(r = 0.69**)、叶片数(r = 0.73**)、叶面积(r = 0.70**)、果实数(r = 0.91**)、果实长度(r = 0.40**)、果实周长(r = 0.39**)和果实重量(r = 0.74**)与果实产量的关系密切且具有统计学意义。PCA 显示,PC1 占总变异的 51.53%,而 PC2 解释了总变异的 13.91%。该研究表明,选择与果实产量呈强正相关的性状,如雌花数、分枝数、蔓长、叶片数、叶面积、果实数、果实长度、果实周长和果实重量等,可优先选择,以提高产量。
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Principal component and correlation analyses study on fruit yield in cucumber (Cucumis sativus L.) genotypes
The degree of association between yield and its components can be identified using correlation and Principal Component Analyses (PCA). PCA also reveals key characteristics that explain most of the differences between genotypes. A study was formulated to evaluate the relationship between yield and its contributing traits in cucumber. The experiment was conducted with 16 cucumber genotypes in a Randomized Complete Block Design, with three replications. The correlation analysis revealed a strong and statistically significant relationship in number of pistillate flowers (r = 0.58**), number of branches (r = 0.43**), vine length (r = 0.69**), number of leaves (r = 0.73**), leaf area (r = 0.70**), number of fruits (r = 0.91**), fruit length (r = 0.40**), fruit girth (r = 0.39**), and fruit weight (r = 0.74**) with fruit yield. PCA revealed that PC1 accounted for 51.53% of the total variation, while PC2 explained 13.91% of the total variability. This study demonstrated that choosing traits such as number of pistillate flowers, number of branches, vine length, number of leaves, leaf area, number of fruits, fruit length, fruit girth, and fruit weight that have a strong positive correlation with fruit yield could be given priority in selection for yield improvement.
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来源期刊
ELECTRONIC JOURNAL OF PLANT BREEDING
ELECTRONIC JOURNAL OF PLANT BREEDING Agricultural and Biological Sciences-Soil Science
CiteScore
1.10
自引率
0.00%
发文量
153
审稿时长
25 weeks
期刊介绍: Electronic Journal of Plant Breeding (EJPB) is an official publication of Indian Socciety of Plant Breeders (ISPB). The main aim of this journal is to promote the general advancement of plant breeding and to create a forum to bring together and facilitate the exchange of information amongst plant breeders. It is published quarterly as ONLINE as OPEN ACCESS journal in the official web page www.ejplantbreeding.org. The publications are subjected into DOUBLE BLIND PEER REVIEWES. Original research articles and research communications on all areas of Plant Breeding viz., genetics, breeding, cytology, germplasm evaluation, marker assisted breeding, etc are accepted. At present Review articles are not accepted for publication.
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