• Home
  • Browse
    • Current Issue
    • By Issue
    • By Author
    • By Subject
    • Author Index
    • Keyword Index
  • Journal Info
    • About Journal
    • Aims and Scope
    • Editorial Board
    • Publication Ethics
    • Peer Review Process
  • Guide for Authors
  • Submit Manuscript
  • Contact Us
 
  • Login
  • Register
Home Articles List Article Information
  • Save Records
  • |
  • Printable Version
  • |
  • Recommend
  • |
  • How to cite Export to
    RIS EndNote BibTeX APA MLA Harvard Vancouver
  • |
  • Share Share
    CiteULike Mendeley Facebook Google LinkedIn Twitter
Journal of Plant Production
arrow Articles in Press
arrow Current Issue
Journal Archive
Volume Volume 16 (2025)
Volume Volume 15 (2024)
Volume Volume 14 (2023)
Volume Volume 13 (2022)
Volume Volume 12 (2021)
Volume Volume 11 (2020)
Volume Volume 10 (2019)
Volume Volume 9 (2018)
Volume Volume 8 (2017)
Volume Volume 7 (2016)
Volume Volume 6 (2015)
Volume Volume 5 (2014)
Issue Issue 12
Issue Issue 11
Issue Issue 10
Issue Issue 9
Issue Issue 8
Issue Issue 7
Issue Issue 6
Issue Issue 5
Issue Issue 4
Issue Issue 3
Issue Issue 2
Issue Issue 1
Volume Volume 4 (2013)
Volume Volume 3 (2012)
Volume Volume 2 (2011)
Volume Volume 1 (2010)
Volume Volume 34 (2009)
Volume Volume 33 (2008)
Volume Volume 32 (2007)
Volume Volume 31 (2006)
Volume Volume 30 (2005)
Volume Volume 29 (2004)
Volume Volume 28 (2003)
Volume Volume 27 (2002)
Volume Volume 26 (2001)
Volume Volume 25 (2000)
El-Emam, A., Rabie, E., Hassanin, A., El- Abady, M. (2014). IDENTIFICATION OF SOME FABA BEAN (Vicia faba L.) GENOTYPES USING MORPHOLOGICAL AND MOLECULAR CHARACTERS. Journal of Plant Production, 5(7), 1129-1141. doi: 10.21608/jpp.2014.56500
A. A. M. El-Emam; E. M. Rabie; Aziza M. Hassanin; M. I. El- Abady. "IDENTIFICATION OF SOME FABA BEAN (Vicia faba L.) GENOTYPES USING MORPHOLOGICAL AND MOLECULAR CHARACTERS". Journal of Plant Production, 5, 7, 2014, 1129-1141. doi: 10.21608/jpp.2014.56500
El-Emam, A., Rabie, E., Hassanin, A., El- Abady, M. (2014). 'IDENTIFICATION OF SOME FABA BEAN (Vicia faba L.) GENOTYPES USING MORPHOLOGICAL AND MOLECULAR CHARACTERS', Journal of Plant Production, 5(7), pp. 1129-1141. doi: 10.21608/jpp.2014.56500
El-Emam, A., Rabie, E., Hassanin, A., El- Abady, M. IDENTIFICATION OF SOME FABA BEAN (Vicia faba L.) GENOTYPES USING MORPHOLOGICAL AND MOLECULAR CHARACTERS. Journal of Plant Production, 2014; 5(7): 1129-1141. doi: 10.21608/jpp.2014.56500

IDENTIFICATION OF SOME FABA BEAN (Vicia faba L.) GENOTYPES USING MORPHOLOGICAL AND MOLECULAR CHARACTERS

Article 4, Volume 5, Issue 7, July 2014, Page 1129-1141  XML PDF (766.13 K)
Document Type: Original Article
DOI: 10.21608/jpp.2014.56500
View on SCiNiTO View on SCiNiTO
Authors
A. A. M. El-Emam1; E. M. Rabie2; Aziza M. Hassanin1; M. I. El- Abady1
1Seed Tech. Res. Dep. Field Crops Res. Institute, A.R.C.
2Legumes Crops Res.Sec. Field Crops Res. Institute, A. R. C.
Abstract
Field and laboratory experiments were carried out at the Farm of El-Gemmeza Agricultural Research Station, Gharbia Governorate and Seed Technology Research Department, ARC, Egypt, during 2010/2011and 2011/2012 seasons to identify and discriminate ten faba bean genotypes using morphological characters and molecular marker. The results revealed that some morphological characters such as pinnul shape, lines density of flag flower, pod color at maturity, testa shape and color were useful to identify some genotypes from each other, while they were not enough for identifying other genotypes. By using Inter-simple sequence repeat (ISSR-PCR) technique, it was possible to determine the genetic diversity and relationships of the ten faba bean genotypes included in this study. A total of 71 amplified bands were generated with five ISSR primers, of which 59 (83.1%) were polymorphic which represent a relatively high polymorphism level. These results are important in protecting of plant breeders rights and at releasing these genotypes as a new varieties.    
Statistics
Article View: 135
PDF Download: 396
Home | Glossary | News | Aims and Scope | Sitemap
Top Top

Journal Management System. Designed by NotionWave.