Integrating host response and unbiased microbe detection for lower respiratory tract infection diagnosis in critically ill adults

Charles Langelier(University of California, San Francisco), Katrina Kalantar(University of California, San Francisco), Farzad Moazed(University of California, San Francisco), Michael R. Wilson(University of California, San Francisco), Emily Crawford(University of California, San Francisco), Thomas Deiss(University of California, San Francisco), Annika Belzer(University of California, San Francisco), Samaneh Bolourchi(University of California, San Francisco), Saharai Caldera(University of California, San Francisco), Monica Fung(University of California, San Francisco), Alejandra Jáuregui(University of California, San Francisco), Katherine Malcolm(University of California, San Francisco), Amy Lyden(Chan Zuckerberg Initiative (United States)), Lillian M. Khan(University of California, San Francisco), Kathryn Vessel(University of California, San Francisco), Jenai Quan(University of California, San Francisco), Matt S. Zinter(University of California, San Francisco), Charles Y. Chiu(University of California, San Francisco), Eric D. Chow(University of California, San Francisco), Jenny L. Wilson(Stanford University), Steve Miller(University of California, San Francisco), Michael A. Matthay(University of California, San Francisco), Katherine S. Pollard(QB3), Stephanie A. Christenson(University of California, San Francisco), Carolyn S. Calfee(University of California, San Francisco), Joseph L. DeRisi(University of California, San Francisco)
Proceedings of the National Academy of Sciences
November 27, 2018
Cited by 423Open Access
Full Text

Abstract

Lower respiratory tract infections (LRTIs) lead to more deaths each year than any other infectious disease category. Despite this, etiologic LRTI pathogens are infrequently identified due to limitations of existing microbiologic tests. In critically ill patients, noninfectious inflammatory syndromes resembling LRTIs further complicate diagnosis. To address the need for improved LRTI diagnostics, we performed metagenomic next-generation sequencing (mNGS) on tracheal aspirates from 92 adults with acute respiratory failure and simultaneously assessed pathogens, the airway microbiome, and the host transcriptome. To differentiate pathogens from respiratory commensals, we developed a rules-based model (RBM) and logistic regression model (LRM) in a derivation cohort of 20 patients with LRTIs or noninfectious acute respiratory illnesses. When tested in an independent validation cohort of 24 patients, both models achieved accuracies of 95.5%. We next developed pathogen, microbiome diversity, and host gene expression metrics to identify LRTI-positive patients and differentiate them from critically ill controls with noninfectious acute respiratory illnesses. When tested in the validation cohort, the pathogen metric performed with an area under the receiver-operating curve (AUC) of 0.96 (95% CI, 0.86-1.00), the diversity metric with an AUC of 0.80 (95% CI, 0.63-0.98), and the host transcriptional classifier with an AUC of 0.88 (95% CI, 0.75-1.00). Combining these achieved a negative predictive value of 100%. This study suggests that a single streamlined protocol offering an integrated genomic portrait of pathogen, microbiome, and host transcriptome may hold promise as a tool for LRTI diagnosis.


Related Papers

No related papers found

Powered by citation graph analysis