Bourras, Salim
- Institutionen för växtbiologi, Sveriges lantbruksuniversitet
Forskningsartikel2025Vetenskapligt granskadÖppen tillgång
Lueck, Stefanie; Bourras, Salim; Douchkov, Dimitar
The increasing availability of genetic and genomic resources has underscored the need for automated microscopic phenotyping in plant-pathogen interactions to identify genes involved in disease resistance. Building on accumulated experience and leveraging automated microscopy and software, we developed BluVision Micro, a modular, machine learning-aided system designed for high-throughput microscopic phenotyping. This system is adaptable to various image data types and extendable with modules for additional phenotypes and pathogens. BluVision Micro was applied to screen 196 genetically diverse barley genotypes for interactions with powdery mildew fungi, delivering accurate, sensitive, and reproducible results. This enabled the identification of novel genetic loci and marker-trait associations in the barley genome. The system also facilitated high-throughput studies of labor-intensive phenotypes, such as precise colony area measurement. Additionally, BluVision's open-source software supports the development of specific modules for various microscopic phenotypes, including high-throughput transfection assays for disease resistance-related genes.
BluVision; automated microscopy; barley; deep learning; microphenomics; neuronal networks; pathogens; powdery mildew
Frontiers in Plant Science
2025, volym: 16, artikelnummer: 1462694
Utgivare: FRONTIERS MEDIA SA
Botanik
https://res.slu.se/id/publ/140933