| Literature DB >> 29378627 |
Martin Broberg1,2, James Doonan1, Filip Mundt3, Sandra Denman4, James E McDonald5.
Abstract
BACKGROUND: Britain's native oak species are currently under threat from acute oak decline (AOD), a decline-disease where stem bleeds overlying necrotic lesions in the inner bark and larval galleries of the bark-boring beetle, Agrilus biguttatus, represent the primary symptoms. It is known that complex interactions between the plant host and its microbiome, i.e. the holobiont, significantly influence the health status of the plant. In AOD, necrotic lesions are caused by a microbiome shift to a pathobiome consisting predominantly of Brenneria goodwinii, Gibbsiella quercinecans, Rahnella victoriana and potentially other bacteria. However, the specific mechanistic processes of the microbiota causing tissue necrosis, and the host response, have not been established and represent a barrier to understanding and managing this decline.Entities:
Keywords: Holobiont; Meta-omics; Microbiome; Microbiota; Multi-omics; Plant-microbiome interactions
Mesh:
Substances:
Year: 2018 PMID: 29378627 PMCID: PMC5789699 DOI: 10.1186/s40168-018-0408-5
Source DB: PubMed Journal: Microbiome ISSN: 2049-2618 Impact factor: 14.650
Fig. 1Metagenomics reveals distinct microbiomes and functional genes between symptomatic and non-symptomatic samples. a Shift of metagenomic functional categories relative abundances between symptomatic and non-symptomatic samples. The STAMP software was used to draw a heatmap comparing the relative abundances of level 2 SEED subsystems associated with bacterial virulence, plant defence and hormone production in the samples. b A principal component analysis of the samples based on functional SEED subsystem categories. SEED subsystem genesets were found to be statistically significant using White’s non-parametric t test and Benjamini-Hochberg multiple test correction
Fig. 2Metatranscriptomics reveals distinct gene expression profiles between symptomatic and non-symptomatic samples. a Bacterial virulence-associated genes significantly upregulated in symptomatic samples compared to non-symptomatic samples. Genes were determined to be significantly different in expression by using the limma package in R (statistical cutoff at FDR < 0.05, and log2 cutoff at < − 2 and > 2). Genes were separated into different colour-coded categories. b Oak tree defence-associated genes, based on the Swissprot database, upregulated in symptomatic samples compared to non-symptomatic samples. Genes were identified the same way as in a and separated into different categories as colour coded in the figure. Circles in light grey outgoing from the centre indicate the different log2 fold changes, with respective numbers (5, 8, 11 in a and 5, 7, 9 in b) indicated to the side of the plots. c Geneset Enrichment Analysis highlights the global impact on genesets of infected oak tree cells. Genes with closest homology to Arabidopsis, determined to be statistically significantly altered in expression in symptomatic samples compared to non-symptomatic samples, were used in a geneset enrichment analysis (GSEA). Depicted in the figure are genesets found in the GO and KEGG databases. The figure was made using the GSEA results in the Enrichment Map plugin (Bader Lab) for the Cytoscape software (version 3.2). Red circles signify upregulated genesets, and blue circles signify downregulated genesets
Fig. 3Metaproteomics reveals protein abundance profiling between symptomatic and non-symptomatic samples. a Bacterial and host defence-associated proteins detected in AOD symptomatic tissue. Heatmap of MAD-scaled log10 counts for proteins detected in symptomatic samples but not detected in non-symptomatic samples. The colour key depicts the log10 MAD scale of protein counts in the different symptomatic samples. b Pathogenic and host defence-associated proteins differently abundant in symptomatic samples, depicting the increase of bacterial virulence-associated proteins in symptomatic tissue compared to non-symptomatic. Proteins were determined as significant using a t test on MAD normalised proteins of interest. Circles in light grey going out from the centre indicate the different log2 fold changes, with the numbers indicated to the side of the plots
Fig. 4Multi-omic profiling provides an overview of the different -omics and models of the interactions between host and pathogens. Using our in-house narrowed-down database, Brenneria goodwinii was found to be the most active bacterium and the primary pathogenic agent in the AOD lesion microbiome based on metatranscriptomics and metaproteomics (depicted as Bg and yellow colour in the figure). Gibbsiella quercinecans (Gq and white colour in the figure) and Rahnella victoriana (Rv and blue colour in the figure) were found to provide some ambiguous activity. Other Gram-negative species (collectively called G−, with grey colour in the figure) and two predicted Gram-positive bacterial genomes (collectively called G+ in the figure and coloured red) provided some virulent activity as well. The size of each bacterial species/group indicates their relative abundance in each dataset (not to scale). The colour of active groups of virulence-associated genes of interest are coloured coded as their associated bacterial origin. Active plant proteins and genes are coloured dark green. The depicted shapes correspond to different virulence-associated functions
List of genes and proteins of interest involved in virulence, bacterial survival and interactions identified in the metaproteome and metatranscriptome of AOD lesions and their corresponding bacterial species/group of origin
| Gene annotation | G+ | G− | |||
|---|---|---|---|---|---|
| Antitoxin HicB | T | ||||
| Bacterial type II secretion system protein F domain protein | T | ||||
| Protease CtpB | T | ||||
| Catalase | PT | T | T | T | |
| Colicin V secretion protein CvaA | T | P | |||
| CRISPR-associated protein Csy3 | T | ||||
| CsrB | T | T | T | T | |
| Cysteine protease avirulence protein AvrPphB | T | ||||
| Effector protein HopM1 | T | ||||
| Effector protein YopJ | T | ||||
| Entericidin B membrane lipoprotein | P | ||||
| Flavodoxin | PT | ||||
| Harpin HrpN | T | ||||
| HTH-type transcriptional regulator KdgR | T | ||||
| Iron-binding protein IscA | T | ||||
| Multidrug efflux pump subunit AcrB | T | T | T | ||
| Oligoendopeptidase F, plasmid | PT | ||||
| Oligogalacturonate lyase | T | ||||
| Oligopeptidase A | T | ||||
| Pathogenicity factor | T | ||||
| Pectate lyase A precursor | T | ||||
| Peroxiredoxin OsmC | PT | ||||
| Persistence and stress-resistance toxin PasT | T | ||||
| ProP effector | T | ||||
| Protease 2 | T | ||||
| Protease HtpX | T | ||||
| Putative oxidoreductase SadH | T | ||||
| Putative type II secretion system protein E | T | T | |||
| Response regulator UvrY | T | ||||
| Serine protease AprX | T | ||||
| Superoxide dismutase [Mn] | PT | T | |||
| Thermostable beta-glucosidase B | T | T | |||
| Toxin A | PT | ||||
| Toxin B | T | ||||
| Toxin HigB-2 | T | ||||
| Toxin-antitoxin biofilm protein TabA | T | ||||
| Type II secretion system protein D | T | PT | |||
| Type IV secretion system protein VirB | T | ||||
| Virulence factor SrfB | T | ||||
| Virulence regulon transcriptional activator VirF | T | ||||
| Virulence sensor histidine kinase PhoQ | T |
G+ signifies the two Gram-positive bacteria belonging to the Clostridioides and Carnobacterium, while G− signifies other Gram-negative bacteria excluding B. goodwinii, G. quercinecans and R. victoriana. P signifies detection of that gene in the proteomic data, while T signifies detection of the gene in the transcriptomic data from AOD lesions