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Published in: Respiratory Research 1/2022

Open Access 01-12-2022 | Expectoration | Research

Peripheral blood transcriptomic clusters uncovered immune phenotypes of asthma

Authors: Hyun Woo Lee, Min-gyung Baek, Sungmi Choi, Yoon Hae Ahn, Ji-Young Bang, Kyoung-Hee Sohn, Min-Gyu Kang, Jae-Woo Jung, Jeong-Hee Choi, Sang-Heon Cho, Hana Yi, Hye-Ryun Kang

Published in: Respiratory Research | Issue 1/2022

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Abstract

Background

Transcriptomic analysis has been used to elucidate the complex pathogenesis of heterogeneous disease and may also contribute to identify potential therapeutic targets by delineating the hub genes. This study aimed to investigate whether blood transcriptomic clustering can distinguish clinical and immune phenotypes of asthmatics, and microbiome in asthmatics.

Methods

Transcriptomic expression of peripheral blood mononuclear cells (PBMCs) from 47 asthmatics and 21 non-asthmatics was measured using RNA sequencing. A hierarchical clustering algorithm was used to classify asthmatics. Differentially expressed genes, clinical phenotypes, immune phenotypes, and microbiome of each transcriptomic cluster were assessed.

Results

In asthmatics, three distinct transcriptomic clusters with numerously different transcriptomic expressions were identified. The proportion of severe asthmatics was highest in cluster 3 as 73.3%, followed by cluster 2 (45.5%) and cluster 1 (28.6%). While cluster 1 represented clinically non-severe T2 asthma, cluster 3 tended to include severe non-T2 asthma. Cluster 2 had features of both T2 and non-T2 asthmatics characterized by the highest serum IgE level and neutrophil-dominant sputum cell population. Compared to non-asthmatics, cluster 1 showed higher CCL23 and IL1RL1 expression while the expression of TREML4 was suppressed in cluster 3. CTSD and ALDH2 showed a significant positive linear relationship across three clusters in the order of cluster 1 to 3. No significant differences in the diversities of lung and gut microbiomes were observed among transcriptomic clusters of asthmatics and non-asthmatics. However, our study has limitations in that small sample size data were analyzed with unmeasured confounding factors and causal relationships or function pathways were not verified.

Conclusions

Genetic clustering based on the blood transcriptome may provide novel immunological insight, which can be biomarkers of asthma immune phenotypes.
Trial registration Retrospectively registered
Appendix
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Metadata
Title
Peripheral blood transcriptomic clusters uncovered immune phenotypes of asthma
Authors
Hyun Woo Lee
Min-gyung Baek
Sungmi Choi
Yoon Hae Ahn
Ji-Young Bang
Kyoung-Hee Sohn
Min-Gyu Kang
Jae-Woo Jung
Jeong-Hee Choi
Sang-Heon Cho
Hana Yi
Hye-Ryun Kang
Publication date
01-12-2022
Publisher
BioMed Central
Published in
Respiratory Research / Issue 1/2022
Electronic ISSN: 1465-993X
DOI
https://doi.org/10.1186/s12931-022-02156-w

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