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Comparative study of the morphological characteristics of Phoenix dactylifera L. cultivars in Al-Madinah Al-Munawarah-Saudi Arabia

Author name : MEAAD FHAD GHALEB ALENAZI
Publication Date : 2022-09-26
Journal Name : BMC plant biology

Abstract

Background: Phoenix dactylifera L. belongs to the subfamily Coryphoideae. Saudi Arabia is the third producing coun
try of dates in the world with over a million tons of dates every year. P. dactylifera is one of the most important species
that grows in Al-Madinah and has cultivars that are distinguished by their appearance and taste.
Results: This study aimed to investigate the importance of morphology among P. dactylifera cultivars by using
statistical analysis and the ability to identify the cultivars just by looking at them in the obvious characters of palms.
Plant specimens were collected from different areas in the Al-Madinah region. All the data obtained from morphology
were transferred to numerical characters and used in the multivariate statistical package (MVSP) to study the similarity
between the cultivars and give phenetic clusters. One-way ANOVA test and the least significant difference test (LSD)
were used to find the significant differences among cultivars in p = 0.05. The numerical data that was recorded indi
cated significant differences among cultivars. Principal coordinates analysis and cluster analysis (UPGMA) were utilized
to study the distance of similarities and differences between cultivars.
Conclusion: The most distinguishing characteristics were fruit and seed, and the least characteristic was the trunk.
However, the features of spine, frond and leaflet were also important in distinguishing between cultivars.

Keywords

Keywords: Phoenix dactylifera cultivars, Date palm, Al-Madinah Al-Munawarah, Morphological characters, MVSP, UPGMA, Saudi Arabia

Publication Link

https://doi.org/10.1186/s12870-022-03841-0

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