Model-based plant phenomics on morphological traits using morphometric descriptors.

IF 2 4区 农林科学 Q2 AGRONOMY Breeding Science Pub Date : 2022-03-01 Epub Date: 2022-02-17 DOI:10.1270/jsbbs.21078
Koji Noshita, Hidekazu Murata, Shiryu Kirie
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引用次数: 2

Abstract

The morphological traits of plants contribute to many important functional features such as radiation interception, lodging tolerance, gas exchange efficiency, spatial competition between individuals and/or species, and disease resistance. Although the importance of plant phenotyping techniques is increasing with advances in molecular breeding strategies, there are barriers to its advancement, including the gap between measured data and phenotypic values, low quantitativity, and low throughput caused by the lack of models for representing morphological traits. In this review, we introduce morphological descriptors that can be used for phenotyping plant morphological traits. Geometric morphometric approaches pave the way to a general-purpose method applicable to single units. Hierarchical structures composed of an indefinite number of multiple elements, which is often observed in plants, can be quantified in terms of their multi-scale topological characteristics using topological data analysis. Theoretical morphological models capture specific anatomical structures, if recognized. These morphological descriptors provide us with the advantages of model-based plant phenotyping, including robust quantification of limited datasets. Moreover, we discuss the future possibilities that a system of model-based measurement and model refinement would solve the lack of morphological models and the difficulties in scaling out the phenotyping processes.

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基于模型的植物形态特征表型组学研究。
植物的形态特征决定了植物的辐射拦截、抗倒伏、气体交换效率、个体和/或物种间的空间竞争以及抗病性等重要的功能特征。尽管随着分子育种策略的进步,植物表型技术的重要性日益增加,但其发展存在障碍,包括测量数据与表型值之间的差距,由于缺乏表征形态性状的模型而导致的低数量和低通量。在这篇综述中,我们介绍了可以用于植物形态性状表型的形态描述子。几何形态计量学方法为适用于单个单位的通用方法铺平了道路。在植物中经常观察到由无数多个元素组成的层次结构,利用拓扑数据分析可以根据其多尺度拓扑特征进行量化。理论形态模型捕捉特定的解剖结构,如果识别。这些形态描述符为我们提供了基于模型的植物表型分析的优势,包括有限数据集的稳健量化。此外,我们还讨论了基于模型的测量和模型改进系统将解决形态学模型的缺乏和扩大表型过程的困难的未来可能性。
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来源期刊
Breeding Science
Breeding Science 农林科学-农艺学
CiteScore
4.90
自引率
4.20%
发文量
37
审稿时长
1.5 months
期刊介绍: Breeding Science is published by the Japanese Society of Breeding. Breeding Science publishes research papers, notes and reviews related to breeding. Research Papers are standard original articles. Notes report new cultivars, breeding lines, germplasms, genetic stocks, mapping populations, database, software, and techniques significant and useful for breeding. Reviews summarize recent and historical events related breeding. Manuscripts should be submitted by corresponding author. Corresponding author must have obtained permission from all authors prior to submission. Correspondence, proofs, and charges of excess page and color figures should be handled by the corresponding author.
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