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High-throughput phenotyping of leaf discs infected with grapevine downy mildew using shallow convolutional neural networks

Zendler, Daniel; Malagol, Nagarjun; Schwandner, Anna; Töpfer, Reinhard; Hausmann, Ludger and Zyprian, Eva (2021) High-throughput phenotyping of leaf discs infected with grapevine downy mildew using shallow convolutional neural networks. Agronomy, 11 (9), pp. 1-16.

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Document available online at: https://www.mdpi.com/2073-4395/11/9/1768


Summary in the original language of the document

Objective and standardized recording of disease severity in mapping crosses and breeding lines is a crucial step in characterizing resistance traits utilized in breeding programs and to conduct QTL or GWAS studies. Here we report a system for automated high-throughput scoring of disease severity on inoculated leaf discs. As proof of concept, we used leaf discs inoculated with Plasmopara viticola ((Berk. and Curt.) Berl. and de Toni) causing grapevine downy mildew (DM). This oomycete is one of the major grapevine pathogens and has the potential to reduce grape yield dramatically if environmental conditions are favorable. Breeding of DM resistant grapevine cultivars is an approach for a novel and more sustainable viticulture. This involves the evaluation of several thousand inoculated leaf discs from mapping crosses and breeding lines every year. Therefore, we trained a shallow convolutional neural-network (SCNN) for efficient detection of leaf disc segments showing P.viticola sporangiophores. We could illustrate a high and significant correlation with manually scored disease severity used as ground truth data for evaluation of the SCNN performance. Combined with an automated imaging system, this leaf disc-scoring pipeline has the potential to considerably reduce the amount of time during leaf disc phenotyping. The pipeline with all necessary documentation for adaptation to other pathogens is freely available.


EPrint Type:Journal paper
Keywords:grapevines, downy mildews, phenotyping, Vitis vinifera, CNN, high-throughput, phenotyping, leaf discs
Agrovoc keywords:
Language
Value
URI
English
grapevines
http://aims.fao.org/aos/agrovoc/c_3360
English
downy mildews
http://aims.fao.org/aos/agrovoc/c_10450
English
phenotyping
http://aims.fao.org/aos/agrovoc/c_45113221
Subjects: Crop husbandry > Breeding, genetics and propagation
Crop husbandry > Production systems > Fruit and berries > Viticulture
Research affiliation: Germany > Federal Research Centre for Cultivated Plants - JKI > Institute for Grapevine Breeding
ISSN:2073-4395
DOI:10.3390/agronomy11091768
Deposited By: Hausmann, Dr. Ludger
ID Code:54569
Deposited On:22 Jan 2025 10:07
Last Modified:22 Jan 2025 10:08
Document Language:English
Status:Published
Refereed:Peer-reviewed and accepted

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