A scalable phenotyping approach for female floral organ development and senescence in the absence of pollination in wheat

Marina Millan-Blanquez, Matthew Hartley, Nicholas Bird, Yann Manes, Cristobal Uauy, Scott Boden
New automated phenotyping method for stigma and ovary development in wheat which highlights the potential for genetic variation that could benefit hybrid breeding. The work was supported by the UK Biotechnology and Biological Sciences Research Council (BBSRC) through the Designing Future Wheat (BB/P016855/1) and Genes in the Environment (BB/P013511/1) Institute Strategic Programmes. Additional funding was provided by the European Research Council (ERC-2019-COG-866328). Marina Millan Blanquez was supported by a BBSRC Norwich Research Park Biosciences Doctoral Training Grant (BB/M011216/1).
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