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深度学习集成的微 CT 图像分析流水线,用于量化水稻抗倒伏相关性状。

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

机构信息

National Key Laboratory of Crop Genetic Improvement, National Center of Plant Gene Research, Hubei Key Laboratory of Agricultural Bioinformatics and College of Engineering, Huazhong Agricultural University, Wuhan 430070, PR China.

School of Information Engineering, Wuhan Technology and Business University, Wuhan 430065, PR China.

出版信息

Plant Commun. 2021 Jan 29;2(2):100165. doi: 10.1016/j.xplc.2021.100165. eCollection 2021 Mar 8.

Abstract

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 were 6.03%, 5.60%, and 9.85%, respectively, and the 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 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.

摘要

倒伏是水稻生产中的一个常见问题,会降低其产量和机械收获效率。水稻株型是其驯化的一个关键方面,也是限制其高生产力的一个主要因素。理想的水稻茎秆结构,包括主轴茎、次轴茎和茎壁厚度,对于提高抗倒伏能力至关重要。然而,传统的水稻茎秆测量方法具有破坏性、耗时且劳动强度大。在本研究中,我们使用高通量微 CT-RGB 成像系统和深度学习(SegNet)开发了一种高通量微 CT 图像分析流水线,可以提取 24 个水稻茎秆形态特征和抗倒伏相关特征。在成熟阶段比较手动和自动测量时,104 个样本中主轴茎、次轴茎和茎壁厚度的平均绝对百分比误差分别为 6.03%、5.60%和 9.85%, 值分别为 0.799、0.818 和 0.623。我们还构建了成熟和分蘗期茎秆特征的弯曲应力模型, 值分别为 0.722 和 0.544。建模结果表明,该方法即使在早期生长阶段也可以非破坏性地定量评估抗倒伏能力。此外,我们还评估了弯曲应力与地上部干重、茎秆密度和干旱相关性状的关系,发现弯曲应力抗性较高的植株具有略高的生物量、茎秆密度和茎秆面积,但抗旱性较差。总之,我们开发了一种深度学习集成的微 CT 图像分析流水线,可以在大约 4.6 分钟内准确量化水稻茎秆的表型特征;该流水线将有助于未来对大量水稻群体进行抗倒伏的高通量筛选。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/65a8/8060729/457b55ad6453/gr1.jpg

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