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High Throughput Phenotyping for Various Traits on Soybean Seeds Using Image Analysis.

JeongHo BaekEungyeong LeeNyunhee KimSong Lim KimInchan ChoiHyeonso JiYong-Suk ChungMan-Soo ChoiJung-Kyung MoonKyung-Hwan Kim
Published in: Sensors (Basel, Switzerland) (2020)
Data phenotyping traits on soybean seeds such as shape and color has been obscure because it is difficult to define them clearly. Further, it takes too much time and effort to have sufficient number of samplings especially length and width. These difficulties prevented seed morphology to be incorporated into efficient breeding program. Here, we propose methods for an image acquisition, a data processing, and analysis for the morphology and color of soybean seeds by high-throughput method using images analysis. As results, quantitative values for colors and various types of morphological traits could be screened to create a standard for subsequent evaluation of the genotype. Phenotyping method in the current study could define the morphology and color of soybean seeds in highly accurate and reliable manner. Further, this method enables the measurement and analysis of large amounts of plant seed phenotype data in a short time, which was not possible before. Fast and precise phenotype data obtained here may facilitate Genome Wide Association Study for the gene function analysis as well as for development of the elite varieties having desirable seed traits.
Keyphrases
  • high throughput
  • genome wide
  • electronic health record
  • deep learning
  • single cell
  • gene expression
  • data analysis
  • convolutional neural network
  • body composition
  • optical coherence tomography