Klukas Christian, Chen Dijun, Pape Jean-Michel
Department of Molecular Genetics, Leibniz Institute of Plant Genetics and Crop Plant Research, D-06466 Gatersleben, Germany
Department of Molecular Genetics, Leibniz Institute of Plant Genetics and Crop Plant Research, D-06466 Gatersleben, Germany.
Plant Physiol. 2014 Jun;165(2):506-518. doi: 10.1104/pp.113.233932. Epub 2014 Apr 23.
High-throughput phenotyping is emerging as an important technology to dissect phenotypic components in plants. Efficient image processing and feature extraction are prerequisites to quantify plant growth and performance based on phenotypic traits. Issues include data management, image analysis, and result visualization of large-scale phenotypic data sets. Here, we present Integrated Analysis Platform (IAP), an open-source framework for high-throughput plant phenotyping. IAP provides user-friendly interfaces, and its core functions are highly adaptable. Our system supports image data transfer from different acquisition environments and large-scale image analysis for different plant species based on real-time imaging data obtained from different spectra. Due to the huge amount of data to manage, we utilized a common data structure for efficient storage and organization of data for both input data and result data. We implemented a block-based method for automated image processing to extract a representative list of plant phenotypic traits. We also provide tools for build-in data plotting and result export. For validation of IAP, we performed an example experiment that contains 33 maize (Zea mays 'Fernandez') plants, which were grown for 9 weeks in an automated greenhouse with nondestructive imaging. Subsequently, the image data were subjected to automated analysis with the maize pipeline implemented in our system. We found that the computed digital volume and number of leaves correlate with our manually measured data in high accuracy up to 0.98 and 0.95, respectively. In summary, IAP provides a multiple set of functionalities for import/export, management, and automated analysis of high-throughput plant phenotyping data, and its analysis results are highly reliable.
高通量表型分析正在成为剖析植物表型成分的一项重要技术。高效的图像处理和特征提取是基于表型性状量化植物生长和性能的先决条件。问题包括大规模表型数据集的数据管理、图像分析和结果可视化。在此,我们展示了综合分析平台(IAP),这是一个用于高通量植物表型分析的开源框架。IAP提供用户友好的界面,其核心功能具有高度适应性。我们的系统支持从不同采集环境传输图像数据,并基于从不同光谱获得的实时成像数据对不同植物物种进行大规模图像分析。由于要管理的数据量巨大,我们采用了一种通用数据结构来高效存储和组织输入数据及结果数据。我们实现了一种基于块的自动图像处理方法,以提取植物表型性状的代表性列表。我们还提供用于内置数据绘图和结果导出的工具。为了验证IAP,我们进行了一个示例实验,该实验包含33株玉米(Zea mays 'Fernandez')植株,这些植株在一个自动温室中生长9周,并进行无损成像。随后,使用我们系统中实现的玉米管道对图像数据进行自动分析。我们发现,计算得出的数字体积和叶片数量与我们手动测量的数据高度相关,准确率分别高达0.98和0.95。总之,IAP为高通量植物表型数据的导入/导出、管理和自动分析提供了多组功能,并且其分析结果高度可靠。