scholarly journals Screening of CIMMYT Wheat Genotypes to Stem Rust Disease under Field Conditions in Egypt غربلة التراکیب الوراثیة لقمح السیمیت ضد مرض صدأ الساق تحت ظروف الحقل فی مصر

2020 ◽  
Vol 11 (8) ◽  
pp. 411-419
Author(s):  
R. Omara ◽  
A. Shahin ◽  
M. Ahmed
PLoS ONE ◽  
2021 ◽  
Vol 16 (11) ◽  
pp. e0257959
Author(s):  
Hanaa S. Omar ◽  
Abdullah Al Mutery ◽  
Neama H. Osman ◽  
Nour El-Houda A. Reyad ◽  
Mohamed A. Abou-Zeid

Wheat has a remarkable importance among cereals worldwide. Wheat stem and leaf rust constitute the main threats that destructively influence grain quality and yield production. Pursuing resistant cultivars and developing new genotypes including resistance genes is believed to be the most effective tool to overcome these challenges. This study is the first to use molecular markers to evaluate the genetic diversity of eighteen Egyptian wheat genotypes. Moreover, the molecular docking analysis was also used to assess the Cu-chitosan nanoparticle (CuChNp) treatment and its mode of action in disease control management. The tested genotypes were categorized into two main cluster groups depending on the similarity matrix, i.e the most resistant and susceptible genotypes to stem and leaf rust races. The results of SCoT primers revealed 140 polymorphic and 5 monomorphic bands with 97% polymorphism. While 121 polymorphic and 74 monomorphic bands were scored for SRAP primers (99% polymorphism). The genotypes Sakha 94, Sakha 95, Beni Sweif 4, Beni Sweif 7, Sohag 4 and Sohag 5 were resistant, while Giza 160 was highly susceptible to all stem rust races at the seedling stage. However, in the adult stage, the 18 genotypes were evaluated for stem and leaf rust-resistant in two different locations, i.e. Giza and Sids. In this investigation, for the first time, the activity of CuChNp was studied and shown to have the potential to inhibit stem and leaf rust in studied Egyptian wheat genotypes. The Spraying Cu-chitosan nanoparticles showed that the incubation and latent periods were increased in treated plants of the tested genotypes. Molecular modeling revealed their activity against the stem and leaf rust development. The SRAP and SCoT markers were highly useful tools for the classification of the tested wheat genotypes, although they displayed high similarities at the morphological stage. However, Cu-chitosan nanoparticles have a critical and effective role in stem and leaf rust disease control.


2009 ◽  
Vol 12 (2) ◽  
pp. 146-151
Author(s):  
A.R. Razavi ◽  
M. Taeb ◽  
F. Afshari ◽  
S. Khavari ◽  
M. Abbaspoor

1971 ◽  
Vol 48 (3) ◽  
pp. 353-360 ◽  
Author(s):  
P. M. Seevers ◽  
J. M. Daly ◽  
F. F. Catedral

2021 ◽  
Vol 13 (7) ◽  
pp. 1341
Author(s):  
Simon Appeltans ◽  
Jan G. Pieters ◽  
Abdul M. Mouazen

Rust disease is an important problem for leek cultivation worldwide. It reduces market value and in extreme cases destroys the entire harvest. Farmers have to resort to periodical full-field fungicide applications to prevent the spread of disease, once every 1 to 5 weeks, depending on the cultivar and weather conditions. This implies an economic cost for the farmer and an environmental cost for society. Hyperspectral sensors have been extensively used to address this issue in research, but their application in the field has been limited to a relatively low number of crops, excluding leek, due to the high investment costs and complex data gathering and analysis associated with these sensors. To fill this gap, a methodology was developed for detecting leek rust disease using hyperspectral proximal sensing data combined with supervised machine learning. First, a hyperspectral library was constructed containing 43,416 spectra with a waveband range of 400–1000 nm, measured under field conditions. Then, an extensive evaluation of 11 common classifiers was performed using the scikit-learn machine learning library in Python, combined with a variety of wavelength selection techniques and preprocessing strategies. The best performing model was a (linear) logistic regression model that was able to correctly classify rust disease with an accuracy of 98.14 %, using reflectance values at 556 and 661 nm, combined with the value of the first derivative at 511 nm. This model was used to classify unlabelled hyperspectral images, confirming that the model was able to accurately classify leek rust disease symptoms. It can be concluded that the results in this work are an important step towards the mapping of leek rust disease, and that future research is needed to overcome certain challenges before variable rate fungicide applications can be adopted against leek rust disease.


2021 ◽  
Vol 6 (3) ◽  
pp. 47
Author(s):  
Lidiya Tilahun Hadis ◽  
Tamirat Negash Gure ◽  
Daniel Kassa Habtemariam ◽  
Getnet Muche Abebile ◽  
Fikrte Yirga Belayineh ◽  
...  
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