Artikel CC BY 4.0
referiert
Veröffentlicht

High-throughput phenotyping of nematode cysts

Zugehörigkeit
RWTH Aachen University, Institute of Imaging and Computer Vision (LfB), Germany
Chen, Long;
GND
135911168
Zugehörigkeit
Julius Kühn-Institute (JKI), Institute of Plant Protection in Field Crops and Grassland, Germany
Daub, Matthias;
Zugehörigkeit
LemnaTec GmbH, Aachen, Germany
Luigs, Hans-Georg;
Zugehörigkeit
LemnaTec GmbH, Aachen, Germany
Jansen, Marcus;
Zugehörigkeit
RWTH Aachen University, Institute of Imaging and Computer Vision (LfB), Germany
Strauch, Martin;
Zugehörigkeit
RWTH Aachen University, Institute of Imaging and Computer Vision (LfB), Germany
Merhof, Dorit

The beet cyst nematode Heterodera schachtii is a plant pest responsible for crop loss on a global scale. Here, we introduce a high-throughput system based on computer vision that allows quantifying beet cyst nematode infestation and measuring phenotypic traits of cysts. After recording microscopic images of soil sample extracts in a standardized setting, an instance segmentation algorithm serves to detect nematode cysts in these images. In an evaluation using both ground truth samples with known cyst numbers and manually annotated images, the computer vision approach produced accurate nematode cyst counts, as well as accurate cyst segmentations. Based on such segmentations, cyst features could be computed that served to reveal phenotypical differences between nematode populations in different soils and in populations observed before and after the sugar beet planting period. The computer vision approach enables not only fast and precise cyst counting, but also phenotyping of cyst features under different conditions, providing the basis for high-throughput applications in agriculture and plant breeding research. Source code and annotated image data sets are freely available for scientific use.

Vorschau

Zitieren

Zitierform:
Zitierform konnte nicht geladen werden.

Zugriffsstatistik

Gesamt:
Volltextzugriffe:
Metadatenansicht:
12 Monate:
Volltextzugriffe:
Metadatenansicht:

Rechte

Rechteinhaber: 2022 Chen, Daub, Luigs, Jansen, Strauch and Merhof.

Nutzung und Vervielfältigung: