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In vivo insertion pool sequencing identifies virulence factors in a complex fungal-host interaction.


ABSTRACT: Large-scale insertional mutagenesis screens can be powerful genome-wide tools if they are streamlined with efficient downstream analysis, which is a serious bottleneck in complex biological systems. A major impediment to the success of next-generation sequencing (NGS)-based screens for virulence factors is that the genetic material of pathogens is often underrepresented within the eukaryotic host, making detection extremely challenging. We therefore established insertion Pool-Sequencing (iPool-Seq) on maize infected with the biotrophic fungus U. maydis. iPool-Seq features tagmentation, unique molecular barcodes, and affinity purification of pathogen insertion mutant DNA from in vivo-infected tissues. In a proof of concept using iPool-Seq, we identified 28 virulence factors, including 23 that were previously uncharacterized, from an initial pool of 195 candidate effector mutants. Because of its sensitivity and quantitative nature, iPool-Seq can be applied to any insertional mutagenesis library and is especially suitable for genetically complex setups like pooled infections of eukaryotic hosts.

SUBMITTER: Uhse S 

PROVIDER: S-EPMC5912717 | biostudies-literature | 2018 Apr

REPOSITORIES: biostudies-literature

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In vivo insertion pool sequencing identifies virulence factors in a complex fungal-host interaction.

Uhse Simon S   Pflug Florian G FG   Stirnberg Alexandra A   Ehrlinger Klaus K   von Haeseler Arndt A   Djamei Armin A  

PLoS biology 20180423 4


Large-scale insertional mutagenesis screens can be powerful genome-wide tools if they are streamlined with efficient downstream analysis, which is a serious bottleneck in complex biological systems. A major impediment to the success of next-generation sequencing (NGS)-based screens for virulence factors is that the genetic material of pathogens is often underrepresented within the eukaryotic host, making detection extremely challenging. We therefore established insertion Pool-Sequencing (iPool-S  ...[more]

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