Literature DB >> 22183684

An unbiased method for the quantitation of disease phenotypes using a custom-built macro plugin for the program ImageJ.

Ahmed Abd-El-Haliem1.   

Abstract

Accurate evaluation of disease phenotypes is considered a key step to study plant-microbe interactions, as the rate of host colonization by the pathogenic microbe directly reflects whether the defense response of the plant is compromised. Although several techniques were developed to quantitate the amount of infection, only a few of them are inherently suitable for large disease screens. Here, I describe an unbiased method to quantitate disease phenotypes which manifest themselves by visible symptoms contrasting with the remaining unaffected parts of the host tissue. The method utilizes a macro plugin written for the image processing program "ImageJ" to calculate two values which determine the disease index for a specific treatment. In case the disease symptoms are not clear, a transgenic pathogenic fungus expressing the GUS gene is suitable for high-throughput disease screens, since staining for GUS activity facilitates an easy detection of the blue-stained pathogen. I illustrate the versatility of this method by analyzing a data set from a functional silencing screening experiment in resistant tomato that was inoculated with a GUS-expressing strain of the fungus Cladosporium fulvum. The method calculates a disease index for each silenced plant and thereby provides a basis for the unbiased identification of candidate host genes required for full resistance to this fungus.

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Year:  2012        PMID: 22183684     DOI: 10.1007/978-1-61779-501-5_41

Source DB:  PubMed          Journal:  Methods Mol Biol        ISSN: 1064-3745


  4 in total

1.  Endoplasmic reticulum-quality control chaperones facilitate the biogenesis of Cf receptor-like proteins involved in pathogen resistance of tomato.

Authors:  Thomas W H Liebrand; Patrick Smit; Ahmed Abd-El-Haliem; Ronnie de Jonge; Jan H G Cordewener; Antoine H P America; Jan Sklenar; Alexandra M E Jones; Silke Robatzek; Bart P H J Thomma; Wladimir I L Tameling; Matthieu H A J Joosten
Journal:  Plant Physiol       Date:  2012-05-30       Impact factor: 8.340

2.  Time-Course Transcriptome Analysis of Arabidopsis Siliques Discloses Genes Essential for Fruit Development and Maturation.

Authors:  Chiara Mizzotti; Lisa Rotasperti; Marco Moretto; Luca Tadini; Francesca Resentini; Bianca M Galliani; Massimo Galbiati; Kristof Engelen; Paolo Pesaresi; Simona Masiero
Journal:  Plant Physiol       Date:  2018-10-01       Impact factor: 8.340

3.  Characterization of Botrytis-plant interactions using PathTrack© -an automated system for dynamic analysis of disease development.

Authors:  Elad Eizner; Mordechi Ronen; Yonatan Gur; Assaf Gavish; Wenjun Zhu; Amir Sharon
Journal:  Mol Plant Pathol       Date:  2016-07-28       Impact factor: 5.663

4.  RNA-Seq and Gene Regulatory Network Analyses Uncover Candidate Genes in the Early Defense to Two Hemibiotrophic Colletorichum spp. in Strawberry.

Authors:  Tika B Adhikari; Rishi Aryal; Lauren E Redpath; Lisa Van den Broeck; Hamid Ashrafi; Ashley N Philbrick; Raymond L Jacobs; Rosangela Sozzani; Frank J Louws
Journal:  Front Genet       Date:  2022-03-10       Impact factor: 4.599

  4 in total

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