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Harnessing Deep Learning to Analyze Cryptic Morphological Variability of Marchantia polymorpha.
Tomizawa, Yoko; Minamino, Naoki; Shimokawa, Eita; Kawamura, Shogo; Komatsu, Aino; Hiwatashi, Takuma; Nishihama, Ryuichi; Ueda, Takashi; Kohchi, Takayuki; Kondo, Yohei.
Afiliação
  • Tomizawa Y; Quantitative Biology Research Group, Exploratory Research Center on Life and Living Systems (ExCELLS), National Institutes of Natural Sciences, 5-1 Higashiyama, Myodaiji-cho, Okazak, Aichii, 444-8787 Japan.
  • Minamino N; Division of Cellular Dynamics, National Institute for Basic Biology, Nishigonaka 38, Myodaiji, Okazaki, Aichi, 444-8585 Japan.
  • Shimokawa E; Graduate School of Biostudies, Kyoto University, Kitashirakawa-Oiwakecho, Sakyo, Kyoto, 606-8502 Japan.
  • Kawamura S; Graduate School of Biostudies, Kyoto University, Kitashirakawa-Oiwakecho, Sakyo, Kyoto, 606-8502 Japan.
  • Komatsu A; Graduate School of Biostudies, Kyoto University, Kitashirakawa-Oiwakecho, Sakyo, Kyoto, 606-8502 Japan.
  • Hiwatashi T; Division of Cellular Dynamics, National Institute for Basic Biology, Nishigonaka 38, Myodaiji, Okazaki, Aichi, 444-8585 Japan.
  • Nishihama R; Graduate School of Biostudies, Kyoto University, Kitashirakawa-Oiwakecho, Sakyo, Kyoto, 606-8502 Japan.
  • Ueda T; Department of Applied Biological Science, Faculty of Science and Technology, Tokyo University of Science, 2641 Yamazaki, Noda, Chiba, 278-8510 Japan.
  • Kohchi T; Division of Cellular Dynamics, National Institute for Basic Biology, Nishigonaka 38, Myodaiji, Okazaki, Aichi, 444-8585 Japan.
  • Kondo Y; Department of Basic Biology, SOKENDAI (The Graduate University for Advanced Studies), Nishigonaka 38, Myodaiji, Okazaki, Aichi, 444-8585 Japan.
Plant Cell Physiol ; 64(11): 1343-1355, 2023 Dec 06.
Article em En | MEDLINE | ID: mdl-37797211
ABSTRACT
Characterizing phenotypes is a fundamental aspect of biological sciences, although it can be challenging due to various factors. For instance, the liverwort Marchantia polymorpha is a model system for plant biology and exhibits morphological variability, making it difficult to identify and quantify distinct phenotypic features using objective measures. To address this issue, we utilized a deep-learning-based image classifier that can handle plant images directly without manual extraction of phenotypic features and analyzed pictures of M. polymorpha. This dioicous plant species exhibits morphological differences between male and female wild accessions at an early stage of gemmaling growth, although it remains elusive whether the differences are attributable to sex chromosomes. To isolate the effects of sex chromosomes from autosomal polymorphisms, we established a male and female set of recombinant inbred lines (RILs) from a set of male and female wild accessions. We then trained deep learning models to classify the sexes of the RILs and the wild accessions. Our results showed that the trained classifiers accurately classified male and female gemmalings of wild accessions in the first week of growth, confirming the intuition of researchers in a reproducible and objective manner. In contrast, the RILs were less distinguishable, indicating that the differences between the parental wild accessions arose from autosomal variations. Furthermore, we validated our trained models by an 'eXplainable AI' technique that highlights image regions relevant to the classification. Our findings demonstrate that the classifier-based approach provides a powerful tool for analyzing plant species that lack standardized phenotyping metrics.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Marchantia / Aprendizado Profundo Tipo de estudo: Prognostic_studies Idioma: En Revista: Plant Cell Physiol Assunto da revista: BOTANICA Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Marchantia / Aprendizado Profundo Tipo de estudo: Prognostic_studies Idioma: En Revista: Plant Cell Physiol Assunto da revista: BOTANICA Ano de publicação: 2023 Tipo de documento: Article