Javascript must be enabled to continue!
Machine learning uncovers the Pseudomonas syringae transcriptome in microbial communities and during infection
View through CrossRef
Abstract
The transcriptional regulatory network (TRN) of the phytopathogen
Pseudomonas syringae
pv.
tomato
DC3000 regulates its response to environmental stimuli, including interactions with hosts and neighboring bacteria. Despite the importance of transcriptional regulation during these agriculturally-significant interactions, a comprehensive understanding of the TRN of
P. syringae
is yet to be achieved. Here, we collected and decomposed a compendium of public RNA-seq data from
P. syringae
to obtain 45 independently modulated gene sets (iModulons) that quantitatively describe the TRN and its activity state across diverse conditions. Through iModulon analysis, we 1) untangle the complex interspecies interactions between
P. syringae
and other terrestrial bacteria in cocultures, 2) expand the current understanding of the
Arabidopsis thaliana
-
P. syringae
interaction, and 3) elucidate the AlgU-dependent regulation of flagellar gene expression. The modularized TRN yields a unique understanding of interaction-specific transcriptional regulation in
P. syringae
.
Importance
Pseudomonas syringae
pv.
tomato
DC3000 is a model plant pathogen that infects tomatoes and
Arabidopsis thaliana
. The current understanding of global transcriptional regulation in the pathogen is limited. Here, we applied iModulon analysis to a compendium of RNA-seq data to unravel its transcriptional regulatory network. We characterize each co-regulated gene set, revealing the activity of major regulators across diverse conditions. We provide new insights on the transcriptional dynamics in interactions with the plant immune system and with other bacterial species, such as AlgU-dependent regulation of flagellar genes during plant infection and downregulation of siderophore production in the presence of a siderophore cheater. This study demonstrates the novel application of iModulons in studying temporal dynamics during host-pathogen and microbe-microbe interactions, and reveals specific insights of interest.
Title: Machine learning uncovers the
Pseudomonas syringae
transcriptome in microbial communities and during infection
Description:
Abstract
The transcriptional regulatory network (TRN) of the phytopathogen
Pseudomonas syringae
pv.
tomato
DC3000 regulates its response to environmental stimuli, including interactions with hosts and neighboring bacteria.
Despite the importance of transcriptional regulation during these agriculturally-significant interactions, a comprehensive understanding of the TRN of
P.
syringae
is yet to be achieved.
Here, we collected and decomposed a compendium of public RNA-seq data from
P.
syringae
to obtain 45 independently modulated gene sets (iModulons) that quantitatively describe the TRN and its activity state across diverse conditions.
Through iModulon analysis, we 1) untangle the complex interspecies interactions between
P.
syringae
and other terrestrial bacteria in cocultures, 2) expand the current understanding of the
Arabidopsis thaliana
-
P.
syringae
interaction, and 3) elucidate the AlgU-dependent regulation of flagellar gene expression.
The modularized TRN yields a unique understanding of interaction-specific transcriptional regulation in
P.
syringae
.
Importance
Pseudomonas syringae
pv.
tomato
DC3000 is a model plant pathogen that infects tomatoes and
Arabidopsis thaliana
.
The current understanding of global transcriptional regulation in the pathogen is limited.
Here, we applied iModulon analysis to a compendium of RNA-seq data to unravel its transcriptional regulatory network.
We characterize each co-regulated gene set, revealing the activity of major regulators across diverse conditions.
We provide new insights on the transcriptional dynamics in interactions with the plant immune system and with other bacterial species, such as AlgU-dependent regulation of flagellar genes during plant infection and downregulation of siderophore production in the presence of a siderophore cheater.
This study demonstrates the novel application of iModulons in studying temporal dynamics during host-pathogen and microbe-microbe interactions, and reveals specific insights of interest.
Related Results
First Report of Bacterial Blight of Strelitzia augusta Caused by Pseudomonas syringae pv. lachrymans
First Report of Bacterial Blight of Strelitzia augusta Caused by Pseudomonas syringae pv. lachrymans
White bird of paradise tree (Strelitzia augusta Thunb.), originally from South Africa, is a tender perennial cultivated as an ornamental plant and is used in gardens in Italy. Duri...
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND
As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
GEOSPATIAL ASPECTS OF FINANCIAL CAPACITY OF TERRITORIAL COMMUNITIES OF TERNOPIL REGION
GEOSPATIAL ASPECTS OF FINANCIAL CAPACITY OF TERRITORIAL COMMUNITIES OF TERNOPIL REGION
In the article geospatial aspects of the financial capacity of territorial communities of Ternopil region are described. The need to conduct such a study has been updated, since no...
Pseudomonas Species Prevalence, Protein Analysis, and Antibiotic Resistance: An Evolving Public Health Challenge
Pseudomonas Species Prevalence, Protein Analysis, and Antibiotic Resistance: An Evolving Public Health Challenge
Abstract
Psychrotrophic Pseudomonas is one of the significant microbes that lead to putrefaction in chilled meat. One of the biggest problems in the detection of Pseudomona...
DNA Methylome Regulates Virulence and Metabolism in Pseudomonas syringae
DNA Methylome Regulates Virulence and Metabolism in Pseudomonas syringae
Abstract
Bacterial pathogens employ epigenetic mechanisms, including DNA methylation, to adapt to environmental changes, and these mechanisms play important roles i...
DNA Methylome Regulates Virulence and Metabolism in Pseudomonas syringae
DNA Methylome Regulates Virulence and Metabolism in Pseudomonas syringae
Abstract
Bacterial pathogens employ epigenetic mechanisms, including DNA methylation, to adapt to environmental changes, and these mechanisms play important roles i...
Identifying resistance in wild and ornamental cherry towards bacterial canker caused by Pseudomonas syringae
Identifying resistance in wild and ornamental cherry towards bacterial canker caused by Pseudomonas syringae
AbstractBacterial canker is a major disease of stone fruits and is a critical limiting factor to sweet cherry (Prunus avium) production worldwide. One important strategy for diseas...
Seasonal variation in susceptibility of apricot to Pseudomonas syringae pv. syringae (bacterial canker), and site of infection in apricot and cherry
Seasonal variation in susceptibility of apricot to Pseudomonas syringae pv. syringae (bacterial canker), and site of infection in apricot and cherry
The seasonal variation in susceptibility of buds, stems, leaves and fruit of apricot to Pseudomonas syringae pv. syringae, and sites through which infection occurs in apricot and c...

