Liu Weizhen, Liu Chang, Jin Jingyi, Li Dongye, Fu Yongping, Yuan Xiaohui
School of Computer Science and Technology, Wuhan University of Technology, Wuhan, China.
Wuhan Gooalgene Technology Co., Ltd., Wuhan, China.
Front Plant Sci. 2020 Nov 12;11:601475. doi: 10.3389/fpls.2020.601475. eCollection 2020.
Traditional seed and fruit phenotyping are mainly accomplished by manual measurement or extraction of morphological properties from two-dimensional images. These methods are not only in low-throughput but also unable to collect their three-dimensional (3D) characteristics and internal morphology. X-ray computed tomography (CT) scanning, which provides a convenient means of non-destructively recording the external and internal 3D structures of seeds and fruits, offers a potential to overcome these limitations. However, the current CT equipment cannot be adopted to scan seeds and fruits with high throughput. And there is no specialized software for automatic extraction of phenotypes from CT images. Here, we introduced a high-throughput image acquisition approach by mounting a specially designed seed-fruit container onto the scanning bed. The corresponding 3D image analysis software, 3DPheno-Seed&Fruit, was created for automatic segmentation and rapid quantification of eight morphological phenotypes of internal and external compartments of seeds and fruits. 3DPheno-Seed&Fruit is a graphical user interface design and user-friendly software with an excellent phenotype result visualization function. We described the software in detail and benchmarked it based upon CT image analyses in seeds of soybean, wheat, peanut, pine nut, pistachio nut and dwarf Russian almond fruit. values between the extracted and manual measurements of seed length, width, thickness, and radius ranged from 0.80 to 0.96 for soybean and wheat. High correlations were found between the 2D (length, width, thickness, and radius) and 3D (volume and surface area) phenotypes for soybean. Overall, our methods provide robust and novel tools for phenotyping the morphological seed and fruit traits of various plant species, which could benefit crop breeding and functional genomics.
传统的种子和果实表型分析主要通过人工测量或从二维图像中提取形态特征来完成。这些方法不仅通量低,而且无法收集其三维(3D)特征和内部形态。X射线计算机断层扫描(CT)能够方便地无损记录种子和果实的外部和内部3D结构,为克服这些局限性提供了可能。然而,目前的CT设备无法用于高通量扫描种子和果实。并且没有专门用于从CT图像中自动提取表型的软件。在此,我们介绍了一种高通量图像采集方法,即将一个专门设计的种子 - 果实容器安装到扫描床上。创建了相应的3D图像分析软件3DPheno - Seed&Fruit,用于对种子和果实内部和外部隔室的八种形态表型进行自动分割和快速定量。3DPheno - Seed&Fruit是一款具有图形用户界面设计且用户友好的软件,具有出色的表型结果可视化功能。我们详细描述了该软件,并基于大豆、小麦、花生、松子、开心果和矮扁桃果实种子的CT图像分析对其进行了基准测试。大豆种子长度、宽度、厚度和半径的提取测量值与人工测量值之间的相关性在0.80至0.96之间。大豆的二维(长度、宽度、厚度和半径)和三维(体积和表面积)表型之间发现了高度相关性。总体而言,我们的方法为各种植物物种的种子和果实形态性状表型分析提供了强大而新颖的工具,这可能有利于作物育种和功能基因组学。