de Jesus Colwell Filipe, Souter Jock, Bryan Glenn J, Compton Lindsey J, Boonham Neil, Prashar Ankush
School of Natural Environmental Sciences, Newcastle University, Newcastle upon Tyne, United Kingdom.
Survey Solutions Scotland, Edinburgh, United Kingdom.
Front Plant Sci. 2021 Feb 10;12:612843. doi: 10.3389/fpls.2021.612843. eCollection 2021.
Traditional phenotyping techniques have long been a bottleneck in breeding programs and genotype- phenotype association studies in potato, as these methods are labor-intensive and time consuming. In addition, depending on the trait measured and metric adopted, they suffer from varying degrees of user bias and inaccuracy, and hence these challenges have effectively prevented the execution of large-scale population-based field studies. This is true not only for commercial traits (e.g., yield, tuber size, and shape), but also for traits strongly associated with plant performance (e.g., canopy development, canopy architecture, and growth rates). This study demonstrates how the use of point cloud data obtained from low-cost UAV imaging can be used to create 3D surface models of the plant canopy, from which detailed and accurate data on plant height and its distribution, canopy ground cover and canopy volume can be obtained over the growing season. Comparison of the canopy datasets at different temporal points enabled the identification of distinct patterns of canopy development, including different patterns of growth, plant lodging, maturity and senescence. Three varieties are presented as exemplars. Variety Nadine presented the growth pattern of an early maturing variety, showing rapid initial growth followed by rapid onset of senescence and plant death. Varieties Bonnie and Bounty presented the pattern of intermediate to late maturing varieties, with Bonnie also showing early canopy lodging. The methodological approach used in this study may alleviate one of the current bottlenecks in the study of plant development, paving the way for an expansion in the scale of future genotype-phenotype association studies.
长期以来,传统的表型分析技术一直是马铃薯育种计划和基因型-表型关联研究的瓶颈,因为这些方法 labor-intensive 且耗时。此外,根据所测量的性状和采用的指标,它们存在不同程度的用户偏差和不准确性,因此这些挑战有效地阻碍了大规模基于群体的田间研究的开展。不仅商业性状(如产量、块茎大小和形状)如此,与植物性能密切相关的性状(如冠层发育、冠层结构和生长速率)也是如此。本研究展示了如何利用从低成本无人机成像获得的点云数据来创建植物冠层的3D表面模型,通过该模型可以在生长季节获得关于株高及其分布、冠层地面覆盖和冠层体积的详细准确数据。对不同时间点的冠层数据集进行比较,能够识别出冠层发育的不同模式,包括不同的生长、植物倒伏、成熟和衰老模式。以三个品种为例进行了展示。品种 Nadine 呈现出早熟品种的生长模式,初期生长迅速,随后衰老和植株死亡迅速开始。品种 Bonnie 和 Bounty 呈现出中晚熟品种的模式,Bonnie 还表现出早期冠层倒伏。本研究中使用的方法学途径可能缓解当前植物发育研究中的一个瓶颈,为未来扩大基因型-表型关联研究的规模铺平道路。