| Literature DB >> 22886542 |
Charles Ansong1, Brooke L Deatherage, Daniel Hyduke, Brian Schmidt, Jason E McDermott, Marcus B Jones, Sadhana Chauhan, Pep Charusanti, Young-Mo Kim, Ernesto S Nakayasu, Jie Li, Afshan Kidwai, George Niemann, Roslyn N Brown, Thomas O Metz, Kathleen McAteer, Fred Heffron, Scott N Peterson, Vladimir Motin, Bernhard O Palsson, Richard D Smith, Joshua N Adkins.
Abstract
Salmonella and Yersinia are two distantly related genera containing species with wide host-range specificity and pathogenic capacity. The metabolic complexity of these organisms facilitates robust lifestyles both outside of and within animal hosts. Using a pathogen-centric systems biology approach, we are combining a multi-omics (transcriptomics, proteomics, metabolomics) strategy to define properties of these pathogens under a variety of conditions including those that mimic the environments encountered during pathogenesis. These high-dimensional omics datasets are being integrated in selected ways to improve genome annotations, discover novel virulence-related factors, and model growth under infectious states. We will review the evolving technological approaches toward understanding complex microbial life through multi-omic measurements and integration, while highlighting some of our most recent successes in this area.Entities:
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Year: 2013 PMID: 22886542 PMCID: PMC6197062 DOI: 10.1007/82_2012_247
Source DB: PubMed Journal: Curr Top Microbiol Immunol ISSN: 0070-217X Impact factor: 4.291