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Plant-Pathogen Interactions

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Cover of 'Plant-Pathogen Interactions'

Table of Contents

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    Book Overview
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    Chapter 1 Specific Detection and Quantification of Major Fusarium spp. Associated with Cereal and Pulse Crops
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    Chapter 2 Distinguishing Puccinia striiformis f. sp. tritici Isolates Using Genomic Sequencing: A Case Study
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    Chapter 3 DNA-Barcoding Identification of Plant Pathogens for Disease Diagnostics
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    Chapter 4 Real-Time Portable LAMP Assay for a Rapid Detection of Xylella fastidiosa In-Field
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    Chapter 5 Selective Quantification of Chemotropic Responses of Fusarium graminearum
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    Chapter 6 Live-Cell Visualization of Early Stages of Root Colonization by the Vascular Wilt Pathogen Fusarium oxysporum
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    Chapter 7 Transfection of Barley Leaf Protoplasts with a Fluorescently Tagged Fungal Effector for In Planta Localization Studies in Barley
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    Chapter 8 A Bioinformatic Guide to Identify Protein Effectors from Phytopathogens
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    Chapter 9 Unraveling Plant-Pathogen Interactions in Cereals Using RNA-seq.
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    Chapter 10 RNA-Seq Data Processing in Plant-Pathogen Interaction System: A Case Study
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    Chapter 11 Differential Expression Feature Extraction (DEFE): A Case Study in Wheat FHB RNA-Seq Data Analysis
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    Chapter 12 Proteomic Profiling of Host Response in the Cereal Crop Triticum aestivum to the Mycotoxin, 15-Acetyldeoxynivalenol, Produced by the Fungal Pathogen, Fusarium graminearum
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    Chapter 13 Quantitative Phosphoproteome Analysis of the Interaction Between Fusarium graminearum and Triticum aestivum
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    Chapter 14 Fatty Acid Profiling of Grapevine Extracellular Compartment
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    Chapter 15 Identifying Fungal Secondary Metabolites and Their Role in Plant Pathogenesis
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    Chapter 16 Eliciting Targeted Mutations in Medicago sativa Using CRISPR/Cas9-Mediated Genome Editing: A Potential Tool for the Improvement of Disease Resistance
Attention for Chapter 10: RNA-Seq Data Processing in Plant-Pathogen Interaction System: A Case Study
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Chapter title
RNA-Seq Data Processing in Plant-Pathogen Interaction System: A Case Study
Chapter number 10
Book title
Plant-Pathogen Interactions
Published by
Humana, New York, NY, May 2023
DOI 10.1007/978-1-0716-3159-1_10
Pubmed ID
Book ISBNs
978-1-07-163158-4, 978-1-07-163159-1
Authors

Ziying Liu, Youlian Pan, Yifeng Li, Thérèse Ouellet, Nora A. Foroud

Abstract

In RNA-seq data processing, short reads are usually aligned from one species against its own genome sequence; however, in plant-pathogen interaction systems, reads from both host and pathogen samples are blended together. In contrast with single-genome analyses, both pathogen and host reference genomes are involved in the alignment process. In such circumstances, the order in which the alignment is carried out, whether the host or pathogen is aligned first, or if both genomes are aligned simultaneously, influences the read counts of certain genes. This is a problem, especially at advanced infection stages. It is crucial to have an appropriate strategy for aligning the reads to their respective genomes, yet the existing strategies of either sequential or parallel alignment become problematic when mapping mixed reads to their corresponding reference genomes. The challenge lies in the determination of which reads belong to which species, especially when homology exists between the host and pathogen genomes. This chapter proposes a combo-genome alignment strategy, which was compared with existing alignment scenarios. Simulation results demonstrated that the degree of discrepancy in the results is correlated with phylogenetic distance of the two species in the mixture which was attributable to the extent of homology between the two genomes involved. This correlation was also found in the analysis using two real RNA-seq datasets of Fusarium-challenged wheat plants. Comparisons of the three RNA-seq processing strategies on three simulation datasets and two real Fusarium-infected wheat datasets showed that an alignment to a combo-genome, consisting of both host and pathogen genomes, improves mapping quality as compared to sequential alignment procedures.

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