Integrated host-microbe plasma metagenomics for sepsis diagnosis in a prospective cohort of critically ill adults

Katrina Kalantar(Chan Zuckerberg Initiative (United States)), Lucile Neyton(University of California, San Francisco), Mazin Abdelghany(University of California, San Francisco), Eran Mick(University of California, San Francisco), Alejandra Jáuregui(University of California, San Francisco), Saharai Caldera(University of California, San Francisco), Paula Hayakawa Serpa(University of California, San Francisco), Rajani Ghale(University of California, San Francisco), Jack Albright(Western University), Aartik Sarma(University of California, San Francisco), Alexandra Tsitsiklis(University of California, San Francisco), Aleksandra Leligdowicz(Western University), Stephanie A. Christenson(University of California, San Francisco), Kathleen D. Liu(University of California, San Francisco), Kirsten N. Kangelaris(University of California, San Francisco), Carolyn M. Hendrickson(University of California, San Francisco), Pratik Sinha(Washington University in St. Louis), Antonio Gómez(San Francisco General Hospital), Norma Neff(Chan Zuckerberg Initiative (United States)), Angela Oliveira Pisco(Chan Zuckerberg Initiative (United States)), Sarah B. Doernberg(University of California, San Francisco), Joseph L. DeRisi(University of California, San Francisco), Michael A. Matthay(University of California, San Francisco), Carolyn S. Calfee(University of California, San Francisco), Charles Langelier(University of California, San Francisco)
Nature Microbiology
October 20, 2022
Cited by 142Open Access
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Abstract

We carried out integrated host and pathogen metagenomic RNA and DNA next generation sequencing (mNGS) of whole blood (n = 221) and plasma (n = 138) from critically ill patients following hospital admission. We assigned patients into sepsis groups on the basis of clinical and microbiological criteria. From whole-blood gene expression data, we distinguished patients with sepsis from patients with non-infectious systemic inflammatory conditions using a trained bagged support vector machine (bSVM) classifier (area under the receiver operating characteristic curve (AUC) = 0.81 in the training set; AUC = 0.82 in a held-out validation set). Plasma RNA also yielded a transcriptional signature of sepsis with several genes previously reported as sepsis biomarkers, and a bSVM sepsis diagnostic classifier (AUC = 0.97 training set; AUC = 0.77 validation set). Pathogen detection performance of plasma mNGS varied on the basis of pathogen and site of infection. To improve detection of virus, we developed a secondary transcriptomic classifier (AUC = 0.94 training set; AUC = 0.96 validation set). We combined host and microbial features to develop an integrated sepsis diagnostic model that identified 99% of microbiologically confirmed sepsis cases, and predicted sepsis in 74% of suspected and 89% of indeterminate sepsis cases. In summary, we suggest that integrating host transcriptional profiling and broad-range metagenomic pathogen detection from nucleic acid is a promising tool for sepsis diagnosis.


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