Bauer Felix Maximilian, Lärm Lena, Morandage Shehan, Lobet Guillaume, Vanderborght Jan, Vereecken Harry, Schnepf Andrea
Institute of Bio-and Geosciences, Agrosphere (IBG-3), Forschungszentrum Jülich GmbH, 52425 Jülich, Germany.
Institute of Soil Science and Land Evaluation, University of Hohenheim, 70559 78 Stuttgart, Germany.
Plant Phenomics. 2022 May 28;2022:9758532. doi: 10.34133/2022/9758532. eCollection 2022.
Root systems of crops play a significant role in agroecosystems. The root system is essential for water and nutrient uptake, plant stability, symbiosis with microbes, and a good soil structure. Minirhizotrons have shown to be effective to noninvasively investigate the root system. Root traits, like root length, can therefore be obtained throughout the crop growing season. Analyzing datasets from minirhizotrons using common manual annotation methods, with conventional software tools, is time-consuming and labor-intensive. Therefore, an objective method for high-throughput image analysis that provides data for field root phenotyping is necessary. In this study, we developed a pipeline combining state-of-the-art software tools, using deep neural networks and automated feature extraction. This pipeline consists of two major components and was applied to large root image datasets from minirhizotrons. First, a segmentation by a neural network model, trained with a small image sample, is performed. Training and segmentation are done using "RootPainter." Then, an automated feature extraction from the segments is carried out by "RhizoVision Explorer." To validate the results of our automated analysis pipeline, a comparison of root length between manually annotated and automatically processed data was realized with more than 36,500 images. Mainly the results show a high correlation ( = 0.9) between manually and automatically determined root lengths. With respect to the processing time, our new pipeline outperforms manual annotation by 98.1-99.6%. Our pipeline, combining state-of-the-art software tools, significantly reduces the processing time for minirhizotron images. Thus, image analysis is no longer the bottle-neck in high-throughput phenotyping approaches.
作物的根系在农业生态系统中发挥着重要作用。根系对于水分和养分吸收、植物稳定性、与微生物的共生以及良好的土壤结构至关重要。微根窗已被证明能有效地对根系进行非侵入性研究。因此,像根长这样的根系性状可以在作物整个生长季节获取。使用常规软件工具通过常见的手动注释方法分析来自微根窗的数据集既耗时又费力。因此,需要一种客观的高通量图像分析方法来为田间根系表型分析提供数据。在本研究中,我们开发了一种结合最先进软件工具的流程,使用深度神经网络和自动特征提取。该流程由两个主要部分组成,并应用于来自微根窗的大型根系图像数据集。首先,使用一个小图像样本训练的神经网络模型进行分割。训练和分割使用“RootPainter”完成。然后,由“RhizoVision Explorer”对分割后的图像进行自动特征提取。为了验证我们自动分析流程的结果,对超过36500张图像的手动注释和自动处理数据之间的根长进行了比较。主要结果表明,手动和自动确定的根长之间具有高度相关性( = 0.9)。在处理时间方面,我们的新流程比手动注释快98.1 - 99.6%。我们结合最先进软件工具的流程显著减少了微根窗图像的处理时间。因此,图像分析不再是高通量表型分析方法中的瓶颈。