Lee Jae Hoon, Lee Unseok, Yoo Ji Hye, Lee Taek Sung, Jung Je Hyeong, Kim Hyoung Seok
Department of Agricultural Biotechnology, Seoul National University, Seoul, 08826, Republic of Korea.
Research Institute of Agriculture and Life Sciences, Seoul National University, Seoul, 08826, Republic of Korea.
Plant Methods. 2024 Mar 16;20(1):44. doi: 10.1186/s13007-024-01171-w.
Plant scientists have largely relied on pathogen growth assays and/or transcript analysis of stress-responsive genes for quantification of disease severity and susceptibility. These methods are destructive to plants, labor-intensive, and time-consuming, thereby limiting their application in real-time, large-scale studies. Image-based plant phenotyping is an alternative approach that enables automated measurement of various symptoms. However, most of the currently available plant image analysis tools require specific hardware platform and vendor specific software packages, and thus, are not suited for researchers who are not primarily focused on plant phenotyping. In this study, we aimed to develop a digital phenotyping tool to enhance the speed, accuracy, and reliability of disease quantification in Arabidopsis.
Here, we present the Arabidopsis Disease Quantification (AraDQ) image analysis tool for examination of flood-inoculated Arabidopsis seedlings grown on plates containing plant growth media. It is a cross-platform application program with a user-friendly graphical interface that contains highly accurate deep neural networks for object detection and segmentation. The only prerequisite is that the input image should contain a fixed-sized 24-color balance card placed next to the objects of interest on a white background to ensure reliable and reproducible results, regardless of the image acquisition method. The image processing pipeline automatically calculates 10 different colors and morphological parameters for individual seedlings in the given image, and disease-associated phenotypic changes can be easily assessed by comparing plant images captured before and after infection. We conducted two case studies involving bacterial and plant mutants with reduced virulence and disease resistance capabilities, respectively, and thereby demonstrated that AraDQ can capture subtle changes in plant color and morphology with a high level of sensitivity.
AraDQ offers a simple, fast, and accurate approach for image-based quantification of plant disease symptoms using various parameters. Its fully automated pipeline neither requires prior image processing nor costly hardware setups, allowing easy implementation of the software by researchers interested in digital phenotyping of diseased plants.
植物科学家在很大程度上依赖病原体生长测定和/或应激反应基因的转录分析来量化疾病严重程度和易感性。这些方法对植物具有破坏性,劳动强度大且耗时,从而限制了它们在实时大规模研究中的应用。基于图像的植物表型分析是一种替代方法,能够自动测量各种症状。然而,目前大多数可用的植物图像分析工具需要特定的硬件平台和供应商特定的软件包,因此,不适合那些并非主要专注于植物表型分析的研究人员。在本研究中,我们旨在开发一种数字表型分析工具,以提高拟南芥疾病量化的速度、准确性和可靠性。
在此,我们展示了用于检查在含有植物生长培养基的平板上生长的水淹接种拟南芥幼苗的拟南芥疾病量化(AraDQ)图像分析工具。它是一个跨平台应用程序,具有用户友好的图形界面,包含用于目标检测和分割的高精度深度神经网络。唯一的前提是输入图像应在白色背景上包含一个固定大小的24色平衡卡,放置在感兴趣的对象旁边,以确保无论图像采集方法如何,结果都可靠且可重复。图像处理管道会自动为给定图像中的单个幼苗计算10种不同的颜色和形态参数,通过比较感染前后拍摄的植物图像,可以轻松评估与疾病相关的表型变化。我们进行了两个案例研究,分别涉及毒力降低的细菌和抗病能力降低的植物突变体,从而证明AraDQ能够以高度敏感性捕捉植物颜色和形态的细微变化。
AraDQ提供了一种简单、快速且准确的方法,可使用各种参数对基于图像的植物病害症状进行量化。其全自动管道既不需要预先进行图像处理,也不需要昂贵的硬件设置,便于对患病植物进行数字表型分析感兴趣的研究人员轻松实施该软件。