Project 2: Pathogen and Microbiome Temporal Changes During Resolution of HAP Severe pneumonia is a dreaded complication among mechanically ventilated patients and is associated with high rates of mortality. To better understand these challenging infections, we propose to develop the Successful Clinical Response In Pneumonia Therapy (SCRIPT) Systems Biology Center. The overall goal of SCRIPT Research Project 2 is to create a computational model based on microbial biosignatures that predicts clinical failure in patients with ventilator-associated pneumonia. Specific pathogens such as Pseudomonas aeruginosa and Acinetobacter baumannii are particularly problematic in ventilator-associated pneumonia and are associated with clinical failure rates as high as 50%, even in patients treated with appropriate antibiotic therapy. For this reason, we will focus on pneumonia caused by these pathogens. Work from our group and others has shown that strains of these bacteria differ dramatically in their ability to cause severe infections. Furthermore, emerging evidence indicates that alterations in the pulmonary microbiome induced by pathogens or by the antibiotics used to treat them may contribute to poor clinical outcomes. We hypothesize that specific genetic biosignatures of P. aeruginosa and Acinetobacter baumannii and other spp. and particular alterations to the pulmonary microbiome are associated with clinical failure in patients with HAP. To test this hypothesis, we will perform the following aims:
Aim 1. We will identify genetic biosignatures of P. aeruginosa and A. baumannii strains associated with poor clinical responses in patients with severe pneumonia.
Aim 2. We will identify pulmonary microbiome constituents (bacteria, viruses, and fungi) and longitudinal microbiome patterns associated with poor clinical responses in patients with severe pneumonia.
Aim 3. Generate a computational model that integrates pathogen genome, pathogen transcriptome, and microbiome components to predict the clinical response in severe pneumonia caused by P. aeruginosa or A. baumannii. The data we generate will be used in an iterative manner to create and optimize a computational model that identifies patients at risk for clinical failure based upon the microbiology of their pneumonia. Highly discriminatory microbiological biosignatures for clinical failure will be further examined to determine whether they play a causal role in the progression of pneumonia.

Public Health Relevance

It is not required per instructions stated on the Funding Opportunity Announcement RFA-AI-16-080, Section IV. Application and Submission Information, Research Projects, Research & Related Other Project Information (Research Projects), ?Project Narrative: Do not complete?.

Agency
National Institute of Health (NIH)
Institute
National Institute of Allergy and Infectious Diseases (NIAID)
Type
Research Program--Cooperative Agreements (U19)
Project #
1U19AI135964-01
Application #
9454824
Study Section
Special Emphasis Panel (ZAI1)
Project Start
Project End
Budget Start
2018-01-17
Budget End
2018-12-31
Support Year
1
Fiscal Year
2018
Total Cost
Indirect Cost
Name
Northwestern University at Chicago
Department
Type
DUNS #
005436803
City
Chicago
State
IL
Country
United States
Zip Code
60611
Sala, Marc A; Balderas-Martínez, Yalbi Itzel; Buendía-Roldan, Ivette et al. (2018) Inflammatory pathways are upregulated in the nasal epithelium in patients with idiopathic pulmonary fibrosis. Respir Res 19:233
Walter, James M; Helmin, Kathryn A; Abdala-Valencia, Hiam et al. (2018) Multidimensional assessment of alveolar T cells in critically ill patients. JCI Insight 3:
Ozer, Egon A (2018) ClustAGE: a tool for clustering and distribution analysis of bacterial accessory genomic elements. BMC Bioinformatics 19:150
Morales-Nebreda, Luisa; McLafferty, Fred S; Singer, Benjamin D (2018) DNA methylation as a transcriptional regulator of the immune system. Transl Res :
Katoh, Masaru (2018) Multi?layered prevention and treatment of chronic inflammation, organ fibrosis and cancer associated with canonical WNT/??catenin signaling activation (Review). Int J Mol Med 42:713-725
Rutherford, Victoria; Yom, Kelly; Ozer, Egon A et al. (2018) Environmental reservoirs for exoS+ and exoU+ strains of Pseudomonas aeruginosa. Environ Microbiol Rep 10:485-492
Walter, James M; Wunderink, Richard G (2018) Testing for Respiratory Viruses in Adults With Severe Lower Respiratory Infection. Chest 154:1213-1222
Ozer, Egon A; Hauser, Alan R; Gerding, Dale N et al. (2017) Complete Genome Sequence of Clostridioides difficile Epidemic Strain DH/NAP11/106/ST-42, Isolated from Stool from a Pediatric Patient with Diarrhea. Genome Announc 5: