Lu Yuwei, Wang Rui, Hu Tianyu, He Qiang, Chen Zhou Shuai, Wang Jinhu, Liu Lingbo, Fang Chuanying, Luo Jie, Fu Ling, Yu Lejun, Liu Qian
Britton Chance Center for Biomedical Photonics, Wuhan National Laboratory for Optoelectronics-Huazhong University of Science and Technology, Wuhan, Hubei, China.
MoE Key Laboratory for Biomedical Photonics, Huazhong University of Science and Technology, Wuhan, Hubei, China.
Front Plant Sci. 2023 Jan 12;13:1087904. doi: 10.3389/fpls.2022.1087904. eCollection 2022.
Passion fruit is a tropical liana of the Passiflora family that is commonly planted throughout the world due to its abundance of nutrients and industrial value. Researchers are committed to exploring the relationship between phenotype and genotype to promote the improvement of passion fruit varieties. However, the traditional manual phenotyping methods have shortcomings in accuracy, objectivity, and measurement efficiency when obtaining large quantities of personal data on passion fruit, especially internal organization data. This study selected samples of passion fruit from three widely grown cultivars, which differed significantly in fruit shape, size, and other morphological traits. A Micro-CT system was developed to perform fully automated nondestructive imaging of the samples to obtain 3D models of passion fruit. A designed label generation method and segmentation method based on U-Net model were used to distinguish different tissues in the samples. Finally, fourteen traits, including fruit volume, surface area, length and width, sarcocarp volume, pericarp thickness, and traits of fruit type, were automatically calculated. The experimental results show that the segmentation accuracy of the deep learning model reaches more than 0.95. Compared with the manual measurements, the mean absolute percentage error of the fruit width and length measurements by the Micro-CT system was 1.94% and 2.89%, respectively, and the squares of the correlation coefficients were 0.96 and 0.93. It shows that the measurement accuracy of external traits of passion fruit is comparable to manual operations, and the measurement of internal traits is more reliable because of the nondestructive characteristics of our method. According to the statistical data of the whole samples, the Pearson analysis method was used, and the results indicated specific correlations among fourteen phenotypic traits of passion fruit. At the same time, the results of the principal component analysis illustrated that the comprehensive quality of passion fruit could be scored using this method, which will help to screen for high-quality passion fruit samples with large sizes and high sarcocarp content. The results of this study will firstly provide a nondestructive method for more accurate and efficient automatic acquisition of comprehensive phenotypic traits of passion fruit and have the potential to be extended to more fruit crops. The preliminary study of the correlation between the characteristics of passion fruit can also provide a particular reference value for molecular breeding and comprehensive quality evaluation.
西番莲是西番莲科的一种热带藤本植物,因其丰富的营养成分和工业价值而在全球广泛种植。研究人员致力于探索表型与基因型之间的关系,以促进西番莲品种的改良。然而,传统的人工表型分析方法在获取大量西番莲个体数据,尤其是内部组织数据时,在准确性、客观性和测量效率方面存在不足。本研究选取了三个广泛种植的西番莲品种的样本,这些品种在果实形状、大小和其他形态特征上有显著差异。开发了一种微型计算机断层扫描(Micro-CT)系统,对样本进行全自动无损成像,以获得西番莲的三维模型。使用基于U-Net模型设计的标签生成方法和分割方法来区分样本中的不同组织。最后,自动计算了包括果实体积、表面积、长度和宽度、果肉体积、果皮厚度以及果实类型特征在内的14个性状。实验结果表明,深度学习模型的分割准确率达到95%以上。与人工测量相比,微型计算机断层扫描系统对果实宽度和长度测量的平均绝对百分比误差分别为1.94%和2.89%,相关系数的平方分别为0.96和0.93。这表明西番莲外部性状的测量精度与人工操作相当,并且由于我们方法的无损特性,内部性状的测量更加可靠。根据整个样本的统计数据,采用Pearson分析方法,结果表明西番莲的14个表型性状之间存在特定的相关性。同时,主成分分析结果表明,使用该方法可以对西番莲的综合品质进行评分,这将有助于筛选出果实大、果肉含量高的优质西番莲样本。本研究结果首先将为更准确、高效地自动获取西番莲综合表型性状提供一种无损方法,并且有可能扩展到更多的水果作物。对西番莲特征之间相关性的初步研究也可为分子育种和综合品质评价提供一定的参考价值。