Naoki Iwanaga1, Jay K Kolls1. 1. Center for Translational Research in Infection and Inflammation Tulane University School of Medicine New Orleans, Louisiana.
Cystic fibrosis (CF) is autosomal recessive disease caused by
mutations in the CFTR (CF transmembrane conductance regulator) gene, which leads to
chronic pulmonary disease and gastrointestinal abnormalities through the loss of
CFTR-mediated chloride and bicarbonate transport (1, 2). Clinically, the lung disease
is characterized by chronic neutrophilic inflammation with bacterial airway infection,
especially by Pseudomonas aeruginosa, which can lead to progression of
CF lung disease, the primary cause of morbidity and mortality in CF (3). Although the dominant inflammatory cells in CF
sputum are neutrophils, other cells including macrophages, eosinophils, T cells, and B
cells have been reported in sputum and BAL fluid (4). However, much of this analysis has been morphological or based on flow
cytometry with prespecified antibody panels, which by definition introduce some bias to
the analysis. There have been prior bulk RNA sequencing (RNAseq) studies that found
clear evidence of excessive inflammation, dominated by neutrophils, as well as type 1
and type 17 inflammation (5, 6). In this issue of the Journal,
Schupp and colleagues (pp. 1419–1429) conducted an
unbiased analysis by performing single-cell RNAseq analyses in sputum between nine CF
subjects and five healthy control subjects (7).The authors found a cluster of recruited lung mononuclear phagocytes in CF sputum and
identified three different archetypes of monocytes: activated monocytes,
monocyte-derived macrophages, and heat shock–activated monocytes. The authors
used pseudotime analyses, which is a bioinformatic tool to infer a cell trajectory that
is highly relevant to recruited myeloid cells in the lung. In accordance with prior data
(8), some monocytes had a proinflammatory
trajectory with increasing expression of inflammatory genes (IL1B,
CXCL2, CCL3, CCL4,
CCL20, VEGFA, and EREG),
calprotectin (S100A8, S100A9), antiapoptotic genes
such as MCL1 and BCL2L1, the inflammasome subunit
NLRP3, inducible cyclooxygenase 2 (PTGS2), and
expression of the transcription factors NFKB1, NFKB2,
ETS, and IRF1. Expression of the proinflammatory
cytokines TNF and IL1A were observed in the most
activated subset. There was also a significant decrease in monocyte maturation gene
expression (APOC1 and APOE) and impaired phagocytic
function (MARCO). This transcriptomic feature might account for
phagocytic dysfunction, contributing to the perpetuation of infection in CF lungs. Most
macrophages in CF sputum originated from the circulating monocytes as opposed to
tissue-resident alveolar macrophages observed in healthy control subjects.Also, the authors observed a complex population of polymorphonuclear neutrophils (PMN)
based on the inflammatory genes (S100A8, S100A9,
S100A11, CSF3R, BL2A1, and MIP
[CCL3 and CCL4]) and genes involved in PMN
maturation (FCGR3B, ALPL, CXCR2,
CEBPB, and NFIL3), which was quite distinct from
healthy control subjects. Consistent with a prior report (9), the CF airway PMNs consisted of an overall proinflammatory
phenotype, but single-cell RNAseq identifies cells in different stages of PMN
differentiation. In addition, the authors found evidence of an antiapoptotic program in
PMNs that may be due to high levels of G-CSF (granulocyte colony–stimulating
factor) in the CF lung (10).The authors also found B cells in CF sputum. This feature is quite interesting, as B
cells are believed to largely reside in the submucosal space (11). Considering that P.
aeruginosa–specific antibodies in patients with CF decrease rapidly
after transplantation (12), tissue-resident B
cells in the CF airway might play a role to exert humoral immune responses in CF. Given
that class II MHC (major histocompatibility complex) is a gene modifier in CF (13), it would be of keen interest to know the
antigen specificity of these cells. Also, are antibodies protective, or do they
contribute to CF lung disease? Newer single-cell techniques that allow simultaneous BCR
(B-cell receptor) and mRNA sequencing of the same cell will be a valuable tool to
understand the role of B cells in CF. Notably, not fresh but cryopreserved sputum
samples were able to be used for transcriptome analysis, which allows investigation on
archived specimens. In addition, unlike lung tissues or bronchial blushing (14, 15),
sputum sampling is noninvasive, on hand at the clinic, and low cost.However, as the authors point out, there are still some limitations in this study. One
issue is the minimal sputum and cell populations in health, so what are the appropriate
controls for CF? Also, with the use of modulators, sputum production has declined, and
thus it remains to be determined if this technique may aid our understanding of residual
disease after modulator therapy.These results provide one of the first unbiased transcriptomic data sets in CF sputum.
Moreover, the data could be successfully generated from archived sputum samples as
opposed to more invasive samples such as BAL or bronchial brushings. Whether sputum
single-cell analysis will be useful in other diseases remains to bet determined.
However, this report could be a blueprint for the future applications of this technology
to advance our basic understanding of chronic lung diseases. These data may be useful in
understanding responses to therapy as well as potentially informing clinical trial
design. This technology will likely accelerate our understanding and, ultimately,
management of chronic lung disease. With a more granular understanding of the cellular
basis of lung disease, we can use this knowledge to reduce the burden of these diseases,
which are major diseases affecting human health.
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