Non-Invasive, Bioluminescence-Based Visualisation and Quantification of Bacterial Infections in Arabidopsis Over Time.

IF 4.9 1区 农林科学 Q1 PLANT SCIENCES
Nanne W Taks, Mathijs D Batstra, Ronald F Kortekaas, Floris D Stevens, Sebastian Pfeilmeier, Harrold A van den Burg
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引用次数: 0

Abstract

Plant-pathogenic bacteria colonise their hosts using various strategies, exploiting both natural openings and wounds in leaves and roots. The vascular pathogen Xanthomonas campestris pv. campestris (Xcc) enters its host through hydathodes, organs at the leaf margin involved in guttation. Subsequently, Xcc breaches the hydathode-xylem barrier and progresses into the xylem vessels causing systemic disease. To elucidate the mechanisms that underpin the different stages of an Xcc infection, a need exists to image bacterial progression in planta in a non-invasive manner. Here, we describe a phenotyping setup and Python image analysis pipeline for capturing 16 independent Xcc infections in Arabidopsis thaliana plants in parallel over time. The setup combines an RGB camera for imaging disease symptoms and an ultrasensitive CCD camera for monitoring bacterial progression inside leaves using bioluminescence. The method reliably quantified bacterial growth in planta for two bacterial species, that is, vascular Xcc and the mesophyll pathogen Pseudomonas syringae pv. tomato (Pst). The camera resolution allowed Xcc imaging already in the hydathodes, yielding reproducible data for the first stages prior to the systemic infection. Data obtained through the image analysis pipeline was robust and validated findings from other bioluminescence imaging methods, while requiring fewer samples. Moreover, bioluminescence was reliably detected within 5 min, offering a significant time advantage over our previously reported method with light-sensitive films. Thus, this method is suitable to quantify the resistance level of a large number of Arabidopsis thaliana accessions and mutant lines to different bacterial strains in a non-invasive manner for phenotypic screenings.

非侵入性,基于生物发光的拟南芥细菌感染随时间的可视化和定量。
植物致病菌利用不同的策略在它们的宿主上定居,利用叶子和根的自然开口和伤口。血管病原体油菜黄单胞菌pv。campestris (Xcc)通过叶缘的喉管进入寄主。随后,Xcc破坏木质部-木质部屏障,进入木质部血管,引起全身性疾病。为了阐明支持Xcc感染不同阶段的机制,需要以非侵入性方式对植物中的细菌进展进行成像。在这里,我们描述了一个表型设置和Python图像分析管道,用于捕获拟南芥植物中16个独立的Xcc感染。该装置结合了一个用于成像疾病症状的RGB相机和一个利用生物发光监测叶子内部细菌进展的超灵敏CCD相机。该方法可靠地定量了维管菌Xcc和叶肉病原菌丁香假单胞菌pv两种细菌在植物中的生长情况。番茄(Pst)。相机分辨率允许在水孔中进行Xcc成像,在系统感染前的第一阶段产生可重复的数据。通过图像分析管道获得的数据是鲁棒的,并且验证了其他生物发光成像方法的发现,同时需要更少的样品。此外,生物发光可以在5分钟内可靠地检测到,与我们之前报道的使用光敏膜的方法相比,具有显著的时间优势。因此,该方法适合于对大量拟南芥材料和突变系对不同菌株的抗性水平进行无创量化,进行表型筛选。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Molecular plant pathology
Molecular plant pathology 生物-植物科学
CiteScore
9.40
自引率
4.10%
发文量
120
审稿时长
6-12 weeks
期刊介绍: Molecular Plant Pathology is now an open access journal. Authors pay an article processing charge to publish in the journal and all articles will be freely available to anyone. BSPP members will be granted a 20% discount on article charges. The Editorial focus and policy of the journal has not be changed and the editorial team will continue to apply the same rigorous standards of peer review and acceptance criteria.
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