| Literature DB >> 36180580 |
Andrea McDowell1, Juwon Kang1, Jinho Yang1, Jihee Jung1, Yeon-Mok Oh2, Sung-Min Kym3, Tae-Seop Shin1, Tae-Bum Kim4, Young-Koo Jee5, Yoon-Keun Kim6.
Abstract
Although mounting evidence suggests that the microbiome has a tremendous influence on intractable disease, the relationship between circulating microbial extracellular vesicles (EVs) and respiratory disease remains unexplored. Here, we developed predictive diagnostic models for COPD, asthma, and lung cancer by applying machine learning to microbial EV metagenomes isolated from patient serum and coded by their accumulated taxonomic hierarchy. All models demonstrated high predictive strength with mean AUC values ranging from 0.93 to 0.99 with various important features at the genus and phylum levels. Application of the clinical models in mice showed that various foods reduced high-fat diet-associated asthma and lung cancer risk, while COPD was minimally affected. In conclusion, this study offers a novel methodology for respiratory disease prediction and highlights the utility of serum microbial EVs as data-rich features for noninvasive diagnosis.Entities:
Mesh:
Year: 2022 PMID: 36180580 PMCID: PMC9534896 DOI: 10.1038/s12276-022-00846-5
Source DB: PubMed Journal: Exp Mol Med ISSN: 1226-3613 Impact factor: 12.153