Jonas Anderegg, Radek Zenkl, Norbert Kirchgessner, Andreas Hund, Achim Walter, Bruce A McDonald
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引用次数: 0
摘要
背景:定量抗病性(QR)是一种复杂、动态的性状,在田间种植的作物中进行量化最为可靠。传统的病害评估在关键的作物生长发育阶段提供的潜力有限,无法区分不同成分对整体 QR 的贡献。然而,更好地了解 QR 的功能可以极大地支持对 QR 进行更有针对性的、基于知识的选择,并改进对季节性流行病的预测。基于图像的方法以及先进的图像处理方法最近已成为标准化相关疾病评估、提高测量效率和多维度描述疾病的宝贵工具:结果:我们介绍了一种简单、经济、易操作的成像装置和成像程序,用于在田间采集小麦叶片图像序列。通过症状检测和分割、图像空间配准、症状跟踪以及叶片和症状特征描述等稳健的方法,对七叶病和叶锈病的发展进行了长期监测。时间序列图像空间配准的平均精度约为 5 像素(约 0.15 毫米)。叶片级症状计数以及单个症状特性测量结果显示出稳定的时间模式,总体上与视觉印象非常吻合。这有力地证明了该方法对野外数据通常固有的变异性的稳健性。在不同的小麦基因型中观察到了由独立感染事件和病害扩展动态所导致的病害数量的对比模式。单独感染事件的数量和病斑的平均大小对总体病害强度的影响程度不同,这可能表明 QR 具有不同的互补机制:结论:所提出的方法能够在田间条件下快速、无损、可重复地测量几个关键的流行病学参数。这些数据可支持对 QR 的分解和功能理解,以及流行病学模型的参数化、微调和验证。利用高分辨率 RGB 图像的时间序列,可将致病机理的细节转化为具体的症状表型,从而提高对植物-病原体相互作用以及病害复合体相互作用的生物学理解。
SYMPATHIQUE: image-based tracking of symptoms and monitoring of pathogenesis to decompose quantitative disease resistance in the field.
Background: Quantitative disease resistance (QR) is a complex, dynamic trait that is most reliably quantified in field-grown crops. Traditional disease assessments offer limited potential to disentangle the contributions of different components to overall QR at critical crop developmental stages. Yet, a better functional understanding of QR could greatly support a more targeted, knowledge-based selection for QR and improve predictions of seasonal epidemics. Image-based approaches together with advanced image processing methodologies recently emerged as valuable tools to standardize relevant disease assessments, increase measurement throughput, and describe diseases along multiple dimensions.
Results: We present a simple, affordable, and easy-to-operate imaging set-up and imaging procedure for in-field acquisition of wheat leaf image sequences. The development of Septoria tritici blotch and leaf rusts was monitored over time via robust methods for symptom detection and segmentation, spatial alignment of images, symptom tracking, and leaf- and symptom characterization. The average accuracy of the spatial alignment of images in a time series was approximately 5 pixels (~ 0.15 mm). Leaf-level symptom counts as well as individual symptom property measurements revealed stable patterns over time that were generally in excellent agreement with visual impressions. This provided strong evidence for the robustness of the methodology to variability typically inherent in field data. Contrasting patterns in the number of lesions resulting from separate infection events and lesion expansion dynamics were observed across wheat genotypes. The number of separate infection events and average lesion size contributed to different degrees to overall disease intensity, possibly indicating distinct and complementary mechanisms of QR.
Conclusions: The proposed methodology enables rapid, non-destructive, and reproducible measurement of several key epidemiological parameters under field conditions. Such data can support decomposition and functional understanding of QR as well as the parameterization, fine-tuning, and validation of epidemiological models. Details of pathogenesis can translate into specific symptom phenotypes resolvable using time series of high-resolution RGB images, which may improve biological understanding of plant-pathogen interactions as well as interactions in disease complexes.
期刊介绍:
Plant Methods is an open access, peer-reviewed, online journal for the plant research community that encompasses all aspects of technological innovation in the plant sciences.
There is no doubt that we have entered an exciting new era in plant biology. The completion of the Arabidopsis genome sequence, and the rapid progress being made in other plant genomics projects are providing unparalleled opportunities for progress in all areas of plant science. Nevertheless, enormous challenges lie ahead if we are to understand the function of every gene in the genome, and how the individual parts work together to make the whole organism. Achieving these goals will require an unprecedented collaborative effort, combining high-throughput, system-wide technologies with more focused approaches that integrate traditional disciplines such as cell biology, biochemistry and molecular genetics.
Technological innovation is probably the most important catalyst for progress in any scientific discipline. Plant Methods’ goal is to stimulate the development and adoption of new and improved techniques and research tools and, where appropriate, to promote consistency of methodologies for better integration of data from different laboratories.