Oury V, Leroux T, Turc O, Chapuis R, Palaffre C, Tardieu F, Prado S Alvarez, Welcker C, Lacube S
Phymea Systems, 453 Rue de l'Espinouse, Montpellier, France.
LEPSE, Univ Montpellier, INRAE, Institut Agro, Montpellier, France.
Plant Methods. 2022 Jul 28;18(1):96. doi: 10.1186/s13007-022-00925-8.
Characterizing plant genetic resources and their response to the environment through accurate measurement of relevant traits is crucial to genetics and breeding. Spatial organization of the maize ear provides insights into the response of grain yield to environmental conditions. Current automated methods for phenotyping the maize ear do not capture these spatial features.
We developed EARBOX, a low-cost, open-source system for automated phenotyping of maize ears. EARBOX integrates open-source technologies for both software and hardware that facilitate its deployment and improvement for specific research questions. The imaging platform consists of a customized box in which ears are repeatedly imaged as they rotate via motorized rollers. With deep learning based on convolutional neural networks, the image analysis algorithm uses a two-step procedure: ear-specific grain masks are first created and subsequently used to extract a range of trait data per ear, including ear shape and dimensions, the number of grains and their spatial organisation, and the distribution of grain dimensions along the ear. The reliability of each trait was validated against ground-truth data from manual measurements. Moreover, EARBOX derives novel traits, inaccessible through conventional methods, especially the distribution of grain dimensions along grain cohorts, relevant for ear morphogenesis, and the distribution of abortion frequency along the ear, relevant for plant response to stress, especially soil water deficit.
The proposed system provides robust and accurate measurements of maize ear traits including spatial features. Future developments include grain type and colour categorisation. This method opens avenues for high-throughput genetic or functional studies in the context of plant adaptation to a changing environment.
通过准确测量相关性状来表征植物遗传资源及其对环境的响应对于遗传学和育种至关重要。玉米果穗的空间组织为了解籽粒产量对环境条件的响应提供了线索。当前用于玉米果穗表型分析的自动化方法无法捕捉这些空间特征。
我们开发了EARBOX,这是一种用于玉米果穗自动化表型分析的低成本开源系统。EARBOX集成了用于软件和硬件的开源技术,便于针对特定研究问题进行部署和改进。成像平台由一个定制的盒子组成,果穗通过电动滚筒旋转时在其中反复成像。基于卷积神经网络的深度学习,图像分析算法采用两步程序:首先创建特定果穗的籽粒掩码,随后用于提取每个果穗的一系列性状数据,包括果穗形状和尺寸、籽粒数量及其空间组织,以及籽粒尺寸沿果穗的分布。每个性状的可靠性通过与手动测量的真实数据进行验证。此外,EARBOX还衍生出传统方法无法获得的新性状,特别是与果穗形态发生相关的籽粒尺寸沿籽粒群组的分布,以及与植物对胁迫(尤其是土壤水分亏缺)响应相关的果穗上败育频率的分布。
所提出的系统能够对包括空间特征在内的玉米果穗性状进行稳健且准确的测量。未来的发展包括籽粒类型和颜色分类。这种方法为在植物适应不断变化的环境背景下进行高通量遗传或功能研究开辟了道路。