The Sainsbury Laboratory, Norwich Research Park, Norwich, NR4 7UH, UK.
Plant Methods. 2012 Dec 17;8(1):49. doi: 10.1186/1746-4811-8-49.
Quantification of callose deposits is a useful measure for the activities of plant immunity and pathogen growth by fluorescence imaging. For robust scoring of differences, this normally requires many technical and biological replicates and manual or automated quantification of the callose deposits. However, previously available software tools for quantifying callose deposits from bioimages were limited, making batch processing of callose image data problematic. In particular, it is challenging to perform large-scale analysis on images with high background noise and fused callose deposition signals.
We developed CalloseMeasurer, an easy-to-use application that quantifies callose deposition, a plant immune response triggered by potentially pathogenic microbes. Additionally, by tracking identified callose deposits between multiple images, the software can recognise patterns of how a given filamentous pathogen grows in plant leaves. The software has been evaluated with typical noisy experimental images and can be automatically executed without the need for user intervention. The automated analysis is achieved by using standard image analysis functions such as image enhancement, adaptive thresholding, and object segmentation, supplemented by several novel methods which filter background noise, split fused signals, perform edge-based detection, and construct networks and skeletons for extracting pathogen growth patterns. To efficiently batch process callose images, we implemented the algorithm in C/C++ within the Acapella™ framework. Using the tool we can robustly score significant differences between different plant genotypes when activating the immune response. We also provide examples for measuring the in planta hyphal growth of filamentous pathogens.
CalloseMeasurer is a new software solution for batch-processing large image data sets to quantify callose deposition in plants. We demonstrate its high accuracy and usefulness for two applications: 1) the quantification of callose deposition in different genotypes as a measure for the activity of plant immunity; and 2) the quantification and detection of spreading networks of callose deposition triggered by filamentous pathogens as a measure for growing pathogen hyphae. The software is an easy-to-use protocol which is executed within the Acapella software system without requiring any additional libraries. The source code of the software is freely available at https://sourceforge.net/projects/bioimage/files/Callose.
通过荧光成像量化胼胝质沉积物是衡量植物免疫活性和病原体生长的有用方法。为了稳健地评分差异,这通常需要进行大量的技术和生物学重复,并手动或自动量化胼胝质沉积物。然而,以前可用于从生物图像中量化胼胝质沉积物的软件工具有限,使得批量处理胼胝质图像数据成为问题。特别是,对具有高背景噪声和融合的胼胝质沉积信号的图像进行大规模分析具有挑战性。
我们开发了 CalloseMeasurer,这是一种易于使用的应用程序,可量化植物免疫反应触发的胼胝质沉积,该反应由潜在的致病性微生物引发。此外,通过在多个图像之间跟踪已识别的胼胝质沉积物,该软件可以识别给定丝状病原体在植物叶片中生长的模式。该软件已使用典型的嘈杂实验图像进行了评估,可以自动执行,而无需用户干预。自动化分析是通过使用标准图像分析功能(例如图像增强、自适应阈值处理和对象分割)以及几种新颖的方法来实现的,这些方法可以滤除背景噪声、分离融合信号、进行基于边缘的检测以及构建网络和骨架以提取病原体生长模式。为了有效地批量处理胼胝质图像,我们在 Acapella™框架内使用 C/C++实现了该算法。使用该工具,我们可以在激活免疫反应时稳健地评分不同植物基因型之间的显著差异。我们还提供了测量丝状病原体在植物体内菌丝生长的示例。
CalloseMeasurer 是一种新的软件解决方案,用于批量处理大型图像数据集,以量化植物中的胼胝质沉积。我们展示了它在两个应用中的高准确性和有用性:1)量化不同基因型中的胼胝质沉积作为植物免疫活性的衡量标准;2)量化和检测丝状病原体触发的胼胝质沉积扩展网络作为衡量生长的病原体菌丝的衡量标准。该软件是一种易于使用的协议,可在 Acapella 软件系统内执行,无需任何其他库。该软件的源代码可在 https://sourceforge.net/projects/bioimage/files/Callose 上免费获得。