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A deep learning-integrated micro-CT image analysis pipeline for quantifying rice lodging resistance-related traits

Lodging is a common problem in rice, reducing its yield and mechanical harvesting efficiency. Rice architecture is a key aspect of its domestication and a major factor that limits its high productivity. The ideal rice culm structure, including major_axis_culm, minor axis_culm, and wall thickness_cul...

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Autores principales: Wu, Di, Wu, Dan, Feng, Hui, Duan, Lingfeng, Dai, Guoxing, Liu, Xiao, Wang, Kang, Yang, Peng, Chen, Guoxing, Gay, Alan P., Doonan, John H., Niu, Zhiyou, Xiong, Lizhong, Yang, Wanneng
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8060729/
https://www.ncbi.nlm.nih.gov/pubmed/33898978
http://dx.doi.org/10.1016/j.xplc.2021.100165
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author Wu, Di
Wu, Dan
Feng, Hui
Duan, Lingfeng
Dai, Guoxing
Liu, Xiao
Wang, Kang
Yang, Peng
Chen, Guoxing
Gay, Alan P.
Doonan, John H.
Niu, Zhiyou
Xiong, Lizhong
Yang, Wanneng
author_facet Wu, Di
Wu, Dan
Feng, Hui
Duan, Lingfeng
Dai, Guoxing
Liu, Xiao
Wang, Kang
Yang, Peng
Chen, Guoxing
Gay, Alan P.
Doonan, John H.
Niu, Zhiyou
Xiong, Lizhong
Yang, Wanneng
author_sort Wu, Di
collection PubMed
description Lodging is a common problem in rice, reducing its yield and mechanical harvesting efficiency. Rice architecture is a key aspect of its domestication and a major factor that limits its high productivity. The ideal rice culm structure, including major_axis_culm, minor axis_culm, and wall thickness_culm, is critical for improving lodging resistance. However, the traditional method of measuring rice culms is destructive, time consuming, and labor intensive. In this study, we used a high-throughput micro-CT-RGB imaging system and deep learning (SegNet) to develop a high-throughput micro-CT image analysis pipeline that can extract 24 rice culm morphological traits and lodging resistance-related traits. When manual and automatic measurements were compared at the mature stage, the mean absolute percentage errors for major_axis_culm, minor_axis_culm, and wall_thickness_culm in 104 indica rice accessions were 6.03%, 5.60%, and 9.85%, respectively, and the R(2) values were 0.799, 0.818, and 0.623. We also built models of bending stress using culm traits at the mature and tillering stages, and the R(2) values were 0.722 and 0.544, respectively. The modeling results indicated that this method can quantify lodging resistance nondestructively, even at an early growth stage. In addition, we also evaluated the relationships of bending stress to shoot dry weight, culm density, and drought-related traits and found that plants with greater resistance to bending stress had slightly higher biomass, culm density, and culm area but poorer drought resistance. In conclusion, we developed a deep learning-integrated micro-CT image analysis pipeline to accurately quantify the phenotypic traits of rice culms in ∼4.6 min per plant; this pipeline will assist in future high-throughput screening of large rice populations for lodging resistance.
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spelling pubmed-80607292021-04-23 A deep learning-integrated micro-CT image analysis pipeline for quantifying rice lodging resistance-related traits Wu, Di Wu, Dan Feng, Hui Duan, Lingfeng Dai, Guoxing Liu, Xiao Wang, Kang Yang, Peng Chen, Guoxing Gay, Alan P. Doonan, John H. Niu, Zhiyou Xiong, Lizhong Yang, Wanneng Plant Commun Resource Article Lodging is a common problem in rice, reducing its yield and mechanical harvesting efficiency. Rice architecture is a key aspect of its domestication and a major factor that limits its high productivity. The ideal rice culm structure, including major_axis_culm, minor axis_culm, and wall thickness_culm, is critical for improving lodging resistance. However, the traditional method of measuring rice culms is destructive, time consuming, and labor intensive. In this study, we used a high-throughput micro-CT-RGB imaging system and deep learning (SegNet) to develop a high-throughput micro-CT image analysis pipeline that can extract 24 rice culm morphological traits and lodging resistance-related traits. When manual and automatic measurements were compared at the mature stage, the mean absolute percentage errors for major_axis_culm, minor_axis_culm, and wall_thickness_culm in 104 indica rice accessions were 6.03%, 5.60%, and 9.85%, respectively, and the R(2) values were 0.799, 0.818, and 0.623. We also built models of bending stress using culm traits at the mature and tillering stages, and the R(2) values were 0.722 and 0.544, respectively. The modeling results indicated that this method can quantify lodging resistance nondestructively, even at an early growth stage. In addition, we also evaluated the relationships of bending stress to shoot dry weight, culm density, and drought-related traits and found that plants with greater resistance to bending stress had slightly higher biomass, culm density, and culm area but poorer drought resistance. In conclusion, we developed a deep learning-integrated micro-CT image analysis pipeline to accurately quantify the phenotypic traits of rice culms in ∼4.6 min per plant; this pipeline will assist in future high-throughput screening of large rice populations for lodging resistance. Elsevier 2021-01-29 /pmc/articles/PMC8060729/ /pubmed/33898978 http://dx.doi.org/10.1016/j.xplc.2021.100165 Text en © 2021 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Resource Article
Wu, Di
Wu, Dan
Feng, Hui
Duan, Lingfeng
Dai, Guoxing
Liu, Xiao
Wang, Kang
Yang, Peng
Chen, Guoxing
Gay, Alan P.
Doonan, John H.
Niu, Zhiyou
Xiong, Lizhong
Yang, Wanneng
A deep learning-integrated micro-CT image analysis pipeline for quantifying rice lodging resistance-related traits
title A deep learning-integrated micro-CT image analysis pipeline for quantifying rice lodging resistance-related traits
title_full A deep learning-integrated micro-CT image analysis pipeline for quantifying rice lodging resistance-related traits
title_fullStr A deep learning-integrated micro-CT image analysis pipeline for quantifying rice lodging resistance-related traits
title_full_unstemmed A deep learning-integrated micro-CT image analysis pipeline for quantifying rice lodging resistance-related traits
title_short A deep learning-integrated micro-CT image analysis pipeline for quantifying rice lodging resistance-related traits
title_sort deep learning-integrated micro-ct image analysis pipeline for quantifying rice lodging resistance-related traits
topic Resource Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8060729/
https://www.ncbi.nlm.nih.gov/pubmed/33898978
http://dx.doi.org/10.1016/j.xplc.2021.100165
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