Literature DB >> 27793198

Differences in systemic adaptive immunity contribute to the 'frequent exacerbator' COPD phenotype.

Jasper X Geerdink1,2, Sami O Simons1, Rebecca Pike3, Hans J Stauss3, Yvonne F Heijdra1, John R Hurst4.   

Abstract

BACKGROUND: Some COPD patients are more susceptible to exacerbations than others. Mechanisms underlying these differences in susceptibility are not well understood. We hypothesized that altered cell mediated immune responses may underlie a propensity to suffer from frequent exacerbations in COPD.
METHODS: Peripheral blood mononuclear cells (PBMCs) were obtained from 24 stable COPD patients, eight frequent exacerbators (≥3 diary-card exacerbations/year) and 16 infrequent exacerbators (< 3 diary-card exacerbations/year). Detailed multi-parameter flow cytometry was used to study differences in innate and adaptive systemic immune function between frequent and infrequently exacerbating COPD patients.
RESULTS: The 24 COPD patients had a mean (SD) age of 76.3 (9.4) years and FEV1 1.43 (0.60)L, 53.3 (18.3)% predicted. PBMCs of frequent exacerbators (FE) contained lower frequencies of CD4+ T central memory cells (CD4+ Tcm) compared to infrequent exacerbators (IE) (FE = 18.7 %; IE = 23.9 %; p = 0.035). This observation was also apparent in absolute numbers of CD4+ Tcm cells (FE = 0.17 × 10^6/mL; IE = 0.25 × 10^6/mL; p = 0.035). PBMCs of FE contained a lower frequency of CD8+ T effector memory cells expressing HLA-DR (Human Leukocyte Antigen - D Related) compared to IE COPD patients (FE = 22.7 %; IE = 31.5 %; p = 0.007).
CONCLUSION: Differences in the adaptive systemic immune system might associate with exacerbation susceptibility in the 'frequent exacerbator' COPD phenotype. These differences include fewer CD4+ T central memory cells and CD8+ T effector memory cells. TRIAL REGISTRATION: Not applicable.

Entities:  

Keywords:  Adaptive immunity; COPD; COPD exacerbation; Flow cytometry; Respiratory immunology

Mesh:

Year:  2016        PMID: 27793198      PMCID: PMC5084432          DOI: 10.1186/s12931-016-0456-y

Source DB:  PubMed          Journal:  Respir Res        ISSN: 1465-9921


Background

Patients with chronic obstructive pulmonary disease (COPD) are prone to periodic deteriorations in respiratory health called exacerbations. Exacerbations impose a huge burden on patients by reducing quality of life [1], accelerating lung function decline [2] and increasing the risk of death [3]. Exacerbations also pose a significant financial burden on health care systems due to supplementary treatment and increased hospital admissions [4, 5]. Most exacerbations are caused by infections with respiratory viruses and or alterations in the lung bacterial flora termed dysbiosis. Mechanisms underlying an increased susceptibility to infections are not well understood. Key immune effector cells are abundant in the lungs of COPD patients, and data have shown that they may fail to launch an effective immune response when encountering an infectious pathogen [6]. It is has been suggested that a deficient immune response to pathogens may be attributed to decreased effector cell function and an increased number of suppressive T-regulatory cells [7]. In addition, Kalathil [8] reported an increased number of exhausted effector T-cells, characterised by expression of PD-1 (marker for programmed cell death and cell exhaustion), in the systemic circulation of patients with COPD compared to healthy controls. Similarly, McKendry [9] found increased PD-1 expression in CD8+ cells in lung tissue samples when comparing COPD patients to healthy controls. These changes in the immune system in COPD may lead to an immune paralytic state and thus predispose to recurrent infections [7]. Although this hypothesis is attractive, translational studies correlating changes in systemic immune function with exacerbation frequency in COPD are lacking. In particular, it is not known if such changes are seen in the ‘frequent exacerbator’ exacerbation-susceptibility phenotype [10]. The aim of the present study was to investigate whether alterations in the cell mediated immune system might underlie the frequent exacerbator phenotype in COPD.

Methods

Study population

This analysis comprises data from a subset of stable COPD patients from the London COPD cohort, collected between May 2012 and April 2013. The setting, recruitment and monitoring of the London COPD cohort have been described previously [1, 2, 11–16]. In short, patients with moderate to severe COPD were included. Patients were trained to record daily any worsening of respiratory symptoms on diary cards and were subsequently followed for 1 year to record exacerbations of COPD. COPD was defined as a post-bronchodilator Forced Exhaled Volume in 1 s (FEV1) < 80 % predicted, a FEV1/FVC ratio <70 %, and β2-agonist reversibility <12 % and/or 200 ml. Patients with asthma were excluded. A COPD exacerbation was defined as an increase of two major symptoms (increased breathlessness, sputum volume or purulence) or one major and one minor symptom (cold, increased cough, increased wheeze, sore throat). Patients were categorised as frequent (FE) or infrequent (IE) exacerbators defined as three or more versus two or fewer diary card (symptom based) exacerbations per year, respectively. We used three exacerbations for defining a frequent exacerbator (FE) as we included both treated and untreated exacerbations.

Blood samples

Blood samples from 24 stable COPD patients were collected during the study period. Peripheral blood mononuclear cells (PBMCs) were obtained from these blood samples by means of density centrifugation and stored at −180 °C in vapour-phase nitrogen in the UCL-RFH Biobank prior to this analysis. For thawing, PBMCs were re-suspended in a 30 mL solution of pre-warmed (37 °C) RPMI-1640, Heat-Inactivated Foetal Bovine Serum, Penicillin, Streptomycin, and L-Glutamine (R20). The R20 containing the PBMCs was then centrifuged for 5 min at 1500 rpm at 20 °C. Once centrifuged, the supernatant was removed and the remaining pellets were re-suspended in 10 mL of phosphate buffered saline (PBS). Next, viable cell counts were determined by the trypan blue exclusion (Neubauer hemocytometer). The cell concentration was adjusted to 10 × 106/mL in supplemented PBS with additional 1 % (volume/volume) foetal calf serum (FCS); 1 × 106 cells were dispensed into a 96 well plate for antibody labelling.

Antibody labelling

We used a detailed immune screening panel developed at The Royal Free Institute of Immunity and Transplantation, specifically designed for studying infection susceptibility and transplant rejection [17]. 1 × 106 PBMCs were stained for a T-cell panel, an innate panel, and isotype controls. Before antibody labelling, the suspensions were incubated with purified human IgG (Sigma) to block Fc receptors, reducing non-specific antibody binding. The T-cell panel aliquots were incubated with combinations of CD3-PECy7 (clone SK7), CD4-v500 (clone RPA-T4), CD8-v450 (clone RPA-T8), CD45R0-PECF594 (clone UCHL1), CD62L-APC (clone DREG-56), CD25-APC Cy7 (clone M-A251), CD127-FITC (clone HIL-7R-M21) (all from BD Biosciences), HLA-DR-PerCPCy5.5 (clone LN3) (eBioscience), and CD279-PE (clone EH12.2H7) (Biolegend). The innate panel aliquots were incubated with the following combination of antibodies: CD3-PECy7 (clone SK7), CD4-v500 (clone RPA-T4), CD8-v450 (clone RPA-T8), CD45R0-PECF594 (clone UCHL1), CD56-APC (clone NCAM16.2), CD16-APC H7 (clone 3G8), iNKT-PE (clone 6B11), and Vd2-FITC (B6) (all from BD biosciences). For each sample in the T-cell panel an individual isotype control was used. The isotype controls were labelled with CD3-PECy7 (clone SK7), CD4-v500 (clone RPA-T4), CD8-v450 (clone RPA-T8), CD45R0-PECF594 (clone UCHL1), IgG1k-APC Cy7 (clone MOPC-21) (all from BD biosciences), IgG1k-APC (clone MOPC-21), IgG1k-FITC (clone MOPC-21), IgG1k-PE (clone MOPC-21) (Biolegend), and IgG2b-PerCPCy5.5 (clone N/S) (eBioscience).

Flow cytometry

Flow cytometry analyses were performed with a four-laser SORP (special order research product) BD LSRFortessa™ cytometer using the BD FACSDiva™ software V.6.0.1. The results were analysed using FlowJo X 10.0.7r2 software.

Statistical analysis

Cell populations in frequent exacerbators were compared with infrequent exacerbators. Flow cytometry results were expressed as a percentage of parent cell and total number of cells calculated from the total lymphocyte count. Statistical analyses were performed using SPSS (IBM SPSS Statistics, Version 22.0. Armonk, NY: IBM Corp). Differences in percentages between groups were compared using Fisher’s exact test and differences in total number of cells using the Mann Whitney U test. A two-tailed p value of < 0.05 was considered to indicate significance. We did not correct for multiple testing because we further analysed our data with principal component analysis (PCA) and statistical multiplicity does not affect PCA. The PCA is an unsupervised technique that is used to project high-dimensional data into a new co-ordinate system. The projection of data into a new co-ordinate system is performed to find meaningful structure within extensive data sets; thereby deriving parameters, so-called principal components, that best describe the variance in an entire data set. The effectiveness of this analysis can be quantified by calculating the relative amount of variation that each principle component describes (expressed as a percentage of the total variance). We performed a stepwise multivariable linear regression analysis with CD4+ memory T-cells as independent variable and age (in years), smoking status (in pack-years), severity of COPD (% FEV predicted) as dependent variables to identify which clinical parameters associate with central memory T-cells. Research ethics approval was obtained from the Research Ethics Committee of the Royal Free Hampstead NHS Trust where this work was undertaken (reference number 05/Q0501/126). All subjects provided written informed consent.

Results

Twenty-four patients participated in this study (eight frequent and 16 infrequent exacerbators). The demographic and lung function data are presented in Table 1 . The mean (SD) age of the patients was 76.3 (9.4) years and FEV1 53.3 (18.3) % predicted. There were no statistically significant differences between the frequent and infrequent groups in age, gender, lung function parameters, or smoking history.
Table 1

Study population

CharacteristicsFrequent exacerbation (n = 8)Infrequent exacerbation (n = 16)p
Age (years)80.6 ± 11.274.1 ± 8.00.169
Gender (male)6110.751
Exacerbation Frequency (/y)3.82 ± 0.921.70 ± 0.81NA
Smoking Status (ex-smoker)7100.204
Pack years51.6 ± 30.444.9 ± 26.70.605
FEV1 (L)1.21 ± 0.471.54 ± 0.640.163
FVC (L)2.41 ± 0.582.96 ± 0.860.079
FEV1 %pred (%)52.6 ± 19.453.7 ± 18.40.892
FVC %pred (%)91.1 ± 32.782.9 ± 18.70.527
FEV1/FVC0.52 ± 0.200.51 ± 0.150.928

Data expressed as mean ± SD except absolute number for gender and smoking status. Significance was calculated with chi-square or t test as appropriate. FEV forced expiratory volume in 1 s, FVC forced vital capacity, %pred the percentage of predicted

Study population Data expressed as mean ± SD except absolute number for gender and smoking status. Significance was calculated with chi-square or t test as appropriate. FEV forced expiratory volume in 1 s, FVC forced vital capacity, %pred the percentage of predicted

Susceptibility to exacerbation

The flow cytometry results by exacerbation frequency are presented in Tables 2 and 3 with the gating illustrated as Fig. 1 . Susceptibility to exacerbation was associated with differences in acquired, but not innate immune cells. Figure 2 depicts five representative plots of the division of CD4+ T cells into memory subsets. Frequent exacerbators had a lower frequency of CD4+ central memory T cells (CD4+ Tcm) compared to infrequent exacerbators (FE =18.7 %, IE =23.9 %, p = 0.035) (Fig. 3). There was also a decrease in the absolute number of CD4+ Tcm cells between these groups (FE =0.170 × 106/mL, IE =0.250 × 106/mL, p = 0.035). In addition, we also found a lower percentage of activated CD8+ T effector memory cells (CD8+ Tem HLA-DR) in the frequent exacerbator group compared to the infrequent exacerbators (FE =22.7 %, IE =31.5 % p = 0.007, Fig. 3). HLA-DR is a marker for early activation of T cells. The absolute number of these cells (FE = 0.020 × 106/mL, IE = 0.032 × 106/mL p = 0.759) was not statistically different. We found no statistically significant differences in other subsets of adaptive immune cells, including regulatory T cells (FE = 6.6 %, IE = 7.6 %, p = 0.270). The expression of PD-1, a marker which is expressed when cells are exhausted and/or will undergo apoptosis, did not significantly differ in various adaptive immune cells.
Table 2

Flow cytometry frequency results from COPD patients susceptible to frequent vs. infrequent exacerbations

Cell typeFE (n = 8) Mean ± SD % / Median (IQR) %IE (n = 16) Mean freq. ± SD % / Median (IQR) %p
CD3+66.7 ± 12.077.2 ± 10.70.291
 CD4+71.2 ± 17.073.6 ± 14.70.748
  CD4+ HLA-DR+5.2 (2.3–7.0)2.8 (2.3–4.9)0.417
  CD4+ PD-1+29.8 ± 9.227.8 ± 11.50.652
  CD4+ Naive37.5 ± 13.734.8 ± 13.30.651
  CD4+ Tcm18.7 ± 4.323.9 ± 6.90.035
  CD4+ Tem25.5 ± 11.125.6 ± 11.30.983
   CD4+ Tem PD-1+60.2 ± 7.651.6 ± 13.50.059
  CD4+ End18.3 ± 4.915.8 ± 6.40.287
 CD8+21.0 (12.6–31.3)19.2 (12.5–25.8)0.787
  CD8+ HLA-DR+12.4 (4.2–23.4)8.7 (6.4–20.9)0.928
  CD8+ PD-1+37.9 ± 11.136.6 ± 13.40.800
  CD8+ Naïve11.1 ± 6.514.3 ± 7.80.294
  CD8+ Tcm15.0 (6.7–17.5)13.0 (10.9–18.8)0.834
  CD8+ Tem43.9 ± 15.537.4 ± 8.60.300
   CD8+ Tem HLA-DR+22.7 ± 13.531.5 ± 13.00.007
  CD8+ End27.4 ± 13.531.5 ± 13.00.488
 Treg6.6 ± 2.07.6 ± 2.00.270
  Treg PD-1+39.2 ± 14.035.3 ± 12.70.521
NK62.9 ± 18.857.0 ± 17.60.473
 NK CD56bright 2.8 ± 2.13.5 ± 2.20.594
 NK CD56dim 58.8 ± 19.853.4 ± 18.40.530
 NK CD56brightCD16dim 1.8 (1.1–4.8)2.5 (1.4–4.4)0.697
 NK CD56dimCD16bright 48.1 ± 20.345.9 ± 18.70.803
  NK CD56 + CD56bright 3.5 (1.6–8.9)6.5 (2.3–9.1)0.358
  NK CD56 + CD56dim 92.7 (87.9–98.3)93.4 (90.6–97.6)0.903
iNKT1.6 (1.0–3.3)1.2 (0.73–2.5)0.417
γδ T0.78 (0.34–1.4)0.32 (0.17–0.70)0.153
 γδ T CD56+30.9 ± 15.432.3 ± 14.70.834
CD4+ : CD8+ ratio45 ± 8.045 ± 6.20.959

Table shows the mean frequency (%) of cells based on their parent cell line. Significance was calculated using t test or Mann-Whitney U test as appropriate. PD-1+ cell marker for programmed cell death, End end-stage T cell, Treg regulatory T cell, NK natural killer, iNKT invariant natural killer T cell

Table 3

Flow cytometry absolute number of cells results from COPD patients susceptible to frequent vs. infrequent exacerbations

Cell typeFE (n = 8) Mean abs No. ± SD/Median abs No. (IQR) *10^6/mlIE (n = 16) Mean abs No. ± SD/Median abs No. (IQR) *10^6/mlp
CD3+1.33 ± 0.381.42 ± 0.530.665
 CD4+0.91 ± 0.191.07 ± 0.420.223
  CD4+ HLA-DR+0.05 (0.02–0.07)0.03 (0.02–0.04)0.490
  CD4+ PD-1+0.27 ± 0.090.28 ± 0.140.785
  CD4+ Naive0.34 ± 0.120.38 ± 0.210.505
  CD4+ Tcm0.17 ± 0.050.25 ± 0.120.035
  CD4+ Tem0.23 ± 0.120.26 ± 0.140.669
   CD4+ Tem PD-1+0.14 ± 0.070.13 ± 0.070.666
  CD4+ End0.17 ± 0.060.17 ± 0.110.826
 CD8+0.28 (0.13–53)0.30 (0.13–0.40)0.697
  CD8+ HLA-DR+0.05 (0.01–0.09)0.03 (0.01–0.06)0.653
  CD8+ PD-1+0.12 ± 0.090.11 ± 0.070.707
  CD8+ Naïve0.04 ± 0.020.04 ± 0.030.662
  CD8+ Tcm0.05 (0.02–0.06)0.04 (0.02–0.07)0.976
  CD8+ Tem0.16 ± 0.120.11 ± 0.070.368
   CD8+ Tem HLA-DR+0.02 ± 0.010.03 ± 0.060.759
  CD8+ End0.13 ± 0.050.09 ± 0.060.575
 Treg0.06 ± 0.030.08 ± 0.040.173
  Treg PD-1+0.02 ± 0.010.03 ± 0.010.296
NK0.51 ± 0.240.30 ± 0.170.336
 NK CD56bright 0.01 ± <0.010.01 ± <0.010.572
 NK CD56dim 0.39 ± 0.120.18 ± 0.140.373
 NK CD56brightCD16dim 0.01 (<0.01–0.02)0.01 (<0.01–0.01)0.490
 NK CD56dimCD16bright 0.35 ± 0.140.15 ± 0.130.398
  NK CD56 + CD56bright 0.02 (0.01–0.03)0.01 (<0.01–0.02)0.653
  NK CD56 + CD56dim 0.29 (0.21–0.49)0.26 (0.12 0.41)0.490
iNKT0.02 (0.01–0.03)0.01 (0.01–0.03)0.214
γδ T0.01 (<0.01–0.02)<0.01 (<0.01–0.01)0.153
 γδ T CD56+0.01 ± 0.010.01 ± 0.010.544

Table shows the absolute number of cells in 1 ml of peripheral blood. Significance was calculated using t test or Mann-Whitney U test as appropriate. Abs No. absolute number, PD-1+ cell marker for programmed cell death, End end-stage T cell, Treg regulatory T cell, NK natural killer, iNKT invariant natural killer T cell

Fig. 1

Gating strategy for adaptive immune cells. Lymphocytes were gated based on their characteristic scatter patterns. Lymphocytes were then classified based on CD3 expression to identify T cells, which were divided into CD4+ and CD8+ T cells, prior to separation into their four main subsets of naive, central memory (Tcm), effector memory (Tem), and end-stage T cells (Tend); this separation was based on the expression of CD45R0 and CD62L. Tcm cells: CD45R0+/CD62L+, Tem cells: CD45R0+/CD62-, Naive T cells: CD45R0-/CD62L+, and Tend cells: CD45R0-/CD62L-. The CD4+ and CD8+ T cells were subsequently analysed (including each of the main subsets) for expression of the markers CD127, HLA-DR, CD25 and PD-1. Regulatory T-cells were identified based on the high expression of CD25 and low expression of CD127 in CD4+ T cells

Fig. 2

Representative plots of CD4+ T central memory cells in patients with frequent exacerbations and in patients who exacerbate infrequently. CD4+ Tcm cells were identified as CD45R0+ and CD62L+ (top-right gate). The left plots present the memory profile belonging to a COPD patient susceptible to frequent exacerbations and the right plots are from patients who exacerbate infrequently. Tem = CD4+ T effector memory (bottom-right gate)

Fig. 3

Susceptibility to Exacerbation in COPD is associated with reduced CD4+ Tcm and CD8+ Tem HLA-DR+. Graphs show the frequency (left) and absolute number (right) of CD4+ Tcm cells in frequent exacerbators (FE) and infrequent exacerbators (IE). Horizontal lines indicate the mean. Each dot represents an individual patient

Flow cytometry frequency results from COPD patients susceptible to frequent vs. infrequent exacerbations Table shows the mean frequency (%) of cells based on their parent cell line. Significance was calculated using t test or Mann-Whitney U test as appropriate. PD-1+ cell marker for programmed cell death, End end-stage T cell, Treg regulatory T cell, NK natural killer, iNKT invariant natural killer T cell Flow cytometry absolute number of cells results from COPD patients susceptible to frequent vs. infrequent exacerbations Table shows the absolute number of cells in 1 ml of peripheral blood. Significance was calculated using t test or Mann-Whitney U test as appropriate. Abs No. absolute number, PD-1+ cell marker for programmed cell death, End end-stage T cell, Treg regulatory T cell, NK natural killer, iNKT invariant natural killer T cell Gating strategy for adaptive immune cells. Lymphocytes were gated based on their characteristic scatter patterns. Lymphocytes were then classified based on CD3 expression to identify T cells, which were divided into CD4+ and CD8+ T cells, prior to separation into their four main subsets of naive, central memory (Tcm), effector memory (Tem), and end-stage T cells (Tend); this separation was based on the expression of CD45R0 and CD62L. Tcm cells: CD45R0+/CD62L+, Tem cells: CD45R0+/CD62-, Naive T cells: CD45R0-/CD62L+, and Tend cells: CD45R0-/CD62L-. The CD4+ and CD8+ T cells were subsequently analysed (including each of the main subsets) for expression of the markers CD127, HLA-DR, CD25 and PD-1. Regulatory T-cells were identified based on the high expression of CD25 and low expression of CD127 in CD4+ T cells Representative plots of CD4+ T central memory cells in patients with frequent exacerbations and in patients who exacerbate infrequently. CD4+ Tcm cells were identified as CD45R0+ and CD62L+ (top-right gate). The left plots present the memory profile belonging to a COPD patient susceptible to frequent exacerbations and the right plots are from patients who exacerbate infrequently. Tem = CD4+ T effector memory (bottom-right gate) Susceptibility to Exacerbation in COPD is associated with reduced CD4+ Tcm and CD8+ Tem HLA-DR+. Graphs show the frequency (left) and absolute number (right) of CD4+ Tcm cells in frequent exacerbators (FE) and infrequent exacerbators (IE). Horizontal lines indicate the mean. Each dot represents an individual patient We did not define differences in innate immunity between FE and IE. For example, the proportion of natural Killer (NK) cells (FE = 62.9 %, IE = 57.0 %, p = 0.473) and the variety of NK cell subsets did not differ significantly by susceptibility to exacerbation.

Principal Component Analysis (PCA)

Data were further analysed using an unsupervised PCA. This demonstrated that the first principal component (PC) explained 20 % of the total variance. Adding a second and a third covered 36 % and 48 % respectively. Adding more PCs explained additional variance, however, the contribution from further PCs was limited (Fig. 4a). The principle component analysis parameter loadings (weighting coefficients) for the first PC are plotted in Fig. 4b-d. The first PC associated most closely with cells expressing PD-1, and there had been a trend to a statistically lower proportion of CD4+ Tem cells expressing PD-1 in frequent versus infrequent exacerbators (Table 2). The second PC associated most closely with CD4+ Tcm. However, the PCA was unable to differentiate frequent from infrequent exacerbators and variance in the dataset reflects high heterogeneity between COPD patients in immunological profiles. This, in itself, is an important observation.
Fig. 4

Principal component analysis. Graph presenting the results of the principal component analysis; this analysis was unable to concretely stratify patients based on frequency of exacerbations, which suggests high heterogeneity. a Graph presenting the percentage of variance explained, bars represent each separate principal component (PC), the line represents the cumulative percentage of these PCs. b-d The bar graphs present the principle component analysis parameter loadings for the first three PCs. The bars illustrate the weighting coefficients, which demonstrates the contribution each component (in this case: cell types) has in relation to their respective PC

Principal component analysis. Graph presenting the results of the principal component analysis; this analysis was unable to concretely stratify patients based on frequency of exacerbations, which suggests high heterogeneity. a Graph presenting the percentage of variance explained, bars represent each separate principal component (PC), the line represents the cumulative percentage of these PCs. b-d The bar graphs present the principle component analysis parameter loadings for the first three PCs. The bars illustrate the weighting coefficients, which demonstrates the contribution each component (in this case: cell types) has in relation to their respective PC

Multiple linear regression analysis

To investigate which clinical characteristics were correlated with CD4+ central memory cells, we conducted a multiple linear regression analysis (Table 4). This analysis shows that the only factor significantly associated with CD4+ central memory T-cells was exacerbation frequency.
Table 4

Stepwise multiple linear regression model investigating clinical variables associated with CD4+ central memory T-cells

B (SE)p
Exacerbation frequency−2.62 (1.04)0.03
FEV1 % predicted0.42 (0.16)0.70
Smoking history (pack years)0.38 (0.07)0.10
Age0.12 (0.02)0.68

B-value indicates the individual contribution of each predictor to the model. All parameters were included in the multiple linear regression using the stepwise method

Stepwise multiple linear regression model investigating clinical variables associated with CD4+ central memory T-cells B-value indicates the individual contribution of each predictor to the model. All parameters were included in the multiple linear regression using the stepwise method

Discussion

We have shown that alterations in the cell mediated immune system might explain why some patients with COPD exacerbate more frequently than others. COPD patients with frequent exacerbations showed lower numbers of CD4+ central memory T-cells and CD8+ activated effector memory T-cells in peripheral blood when compared with patients that have infrequent exacerbations. This therefore provides a biological basis (or ‘endotype’) for the exacerbation susceptibility phenotype in COPD and suggests the presence of specific immune ‘signatures’ that may associate with exacerbation susceptibility. We found a lower frequency and absolute number of central memory CD4+ T-cells in COPD patients who exacerbate frequently. Central memory cells are very sensitive to cross-linking of their T-cell receptors and rapidly express CD40 ligand in response [18]. Therefore, they are very easily and quickly activated in response to stimulation such that the immune system can respond more rapidly and effectively to previously encountered pathogens. Several studies have shown that CD4+ T memory cells contribute to an effective defence against specific viral pathogens (e.g. RSV and influenza) [19, 20]. Central memory CD4+ T-cells are stable and can maintain their population for many years [21]. This enables CD4+ Tcm to provide long-term protection against previously encountered pathogens. The lower frequency of CD4+ Tcm cells we observed in this study may predispose patients to viral respiratory infections and therefore to frequent exacerbations. We hypothesise that the lower numbers CD4+ Tcm cells might be caused by chronic antigen stimulation in the frequent exacerbator phenotype, because long-term T-cell memory (i.e. Tcm cells) fails to develop in conditions of chronic antigenic stimulation. Numerous studies [22-28] have found that infections with high loads of chronically persisting antigen are characterised by sustained increased frequencies of effector cells. However, these cells fail to acquire essential features of memory cells, such as the IL-7 receptor; true for both CD4+ and CD8+ populations. Chronic antigen stimulation in frequent exacerbators may arise through multiple mechanisms, for example the past history of repeated infections, or exposure to alterations in the airway microbiome. It has long been recognised, for example, that the presence of potentially-pathogenic airway bacteria on sputum culture associates with susceptibility to exacerbation [16]. We also report a lower percentage of activated CD8+ effector cells in patients with frequent exacerbations. This finding might also be linked to chronic antigen stimulation, causing a downregulation of CD247 expression on CD8+ cells [29]. This process might be in part driven by myeloid derived suppressor cells (MDSC). Downregulating CD247 expression by MDCSs leads to an immunosuppressive state and defective effector cell function [29]. In support of this, both a downregulation of CD247 expression in pulmonary CD8 cells in COPD as well as higher levels of MDSCs have been seen in patients with COPD [8]. That we did not report differences in exhausted effector T-cells expressing PD-1 and regulatory T-cells might at first appear contrary to this hypothesis. Previous work by Kalathil did show differences in these type of immune cells and inferred that this might render COPD patients more susceptible to infections [8]. However, our findings suggest that the effect of exhausted T-cells and regulatory T-cells on exacerbation susceptibility may be limited. An alternative hypothesis would be that the PD-1+ T-cells and T-regulatory cells are indeed different in COPD patients compared to controls, but in the COPD population not specifically different in the frequent exacerbator phenotype compared to those less susceptible to exacerbations. We hypothesise that continuous lung damage due to smoking skews the systemic immune system in COPD patients towards an exhausted paralytic state as seen in studies by others [8, 9]. These changes in immune function lead to inadequate clearing of pathogens, and hence persistent chronic antigen stimulation. This persistent antigenic simulation, in return, directs the immune system in a subgroup of ‘frequent exacerbator’ COPD patients towards the changes seen in the present study. In addition, the current study defines no differences within the systemic innate immunity (e.g. NK, iNKT, and γδ T cells) between FE and IE COPD patients. The explanation to the lack of differences might originate from the primary function of the innate immunity, which is predominantly to provide an initial defence against pathogens. Considering we studied COPD patients in a stable state (i.e. no acute infection), the innate immunity is not stimulated in the systemic circulation and differences cannot be observed. It might prove to be interesting investigating whether differences in the innate immunity arise between FE and IE during an acute COPD exacerbation. Our findings are in agreement with the hypothesis that lung inflammation in COPD may lead to impaired immunity to respiratory pathogens, facilitating COPD exacerbations [8]. Both local and systemic inflammatory processes must balance between attenuating inflammation caused by smoking and launching an effective immunological response against pathogens. Our data suggest that in COPD patients susceptible to frequent exacerbations this balance is, at least in part, tipped towards attenuating the inflammatory response. It is tempting to speculate that restoration of immune function could restore this balance and might be of therapeutic benefit in COPD [7, 8]. Our higher dimensional statistical analysis did not show any single principal component responsible for most of the variance seen in our study. This highlights the heterogeneity associated with COPD. Whilst this might suggest that our findings therefore simply reflect type 1 errors, we think our findings truly reflects a systemic immune dysfunction because the direction of our results are in agreement with other studies on immune dysfunction in COPD [7, 8, 30]. However, the high heterogeneity in our sample, important in itself, emphasises that besides systemic immune dysfunction other mechanisms also likely play a role in the susceptibility to exacerbations [31]. A limitation of our study is the relatively small sample size and cross-sectional design, making it difficult to make firm causal inferences. Another limitation is that we did not perform functional analysis of the immune cell subsets, such as cytokine response when stimulated with pathogen exposure (e.g. RSV, influenza). Such a functional analysis might have revealed differences between FE and IE which would expand our understanding of the immune response in the exacerbation phenotype. A strength of our study is the detailed flow cytometry, the most comprehensive examination of various subsets of the adaptive systemic immune function ever reported in COPD. Moreover, it is one of the first studies to establish systemic immunological differences between phenotypes of COPD patients with regard to exacerbation susceptibility. Future prospective studies in a larger COPD population with frequent exacerbators should be undertaken to confirm our results.

Conclusion

In conclusion, COPD patients who are subject to frequent exacerbations have measurable differences in the systemic adaptive immune system, which may make them more susceptible to exacerbations. Therefore, the exacerbation susceptibility phenotype in COPD has, at least in part, a biological basis, which can be detected with specific immune signatures in peripheral blood.
  30 in total

1.  The economic burden of COPD.

Authors:  S D Sullivan; S D Ramsey; T A Lee
Journal:  Chest       Date:  2000-02       Impact factor: 9.410

2.  The impact of ischemic heart disease on symptoms, health status, and exacerbations in patients with COPD.

Authors:  Anant R C Patel; Gavin C Donaldson; Alex J Mackay; Jadwiga A Wedzicha; John R Hurst
Journal:  Chest       Date:  2011-09-22       Impact factor: 9.410

3.  Inverse correlation between IL-7 receptor expression and CD8 T cell exhaustion during persistent antigen stimulation.

Authors:  Karl S Lang; Mike Recher; Alexander A Navarini; Nicola L Harris; Max Löhning; Tobias Junt; Hans Christian Probst; Hans Hengartner; Rolf M Zinkernagel
Journal:  Eur J Immunol       Date:  2005-03       Impact factor: 5.532

4.  Severe acute exacerbations and mortality in patients with chronic obstructive pulmonary disease.

Authors:  J J Soler-Cataluña; M A Martínez-García; P Román Sánchez; E Salcedo; M Navarro; R Ochando
Journal:  Thorax       Date:  2005-07-29       Impact factor: 9.139

5.  Relationship between bacterial colonisation and the frequency, character, and severity of COPD exacerbations.

Authors:  I S Patel; T A R Seemungal; M Wilks; S J Lloyd-Owen; G C Donaldson; J A Wedzicha
Journal:  Thorax       Date:  2002-09       Impact factor: 9.139

6.  Role of T lymphocyte subsets in the pathogenesis of primary infection and rechallenge with respiratory syncytial virus in mice.

Authors:  B S Graham; L A Bunton; P F Wright; D T Karzon
Journal:  J Clin Invest       Date:  1991-09       Impact factor: 14.808

7.  Relationship between exacerbation frequency and lung function decline in chronic obstructive pulmonary disease.

Authors:  G C Donaldson; T A R Seemungal; A Bhowmik; J A Wedzicha
Journal:  Thorax       Date:  2002-10       Impact factor: 9.139

8.  T-regulatory cells and programmed death 1+ T cells contribute to effector T-cell dysfunction in patients with chronic obstructive pulmonary disease.

Authors:  Suresh Gopi Kalathil; Amit Anand Lugade; Vandana Pradhan; Austin Miller; Ganapathi Iyer Parameswaran; Sanjay Sethi; Yasmin Thanavala
Journal:  Am J Respir Crit Care Med       Date:  2014-07-01       Impact factor: 21.405

9.  Cardiovascular risk, myocardial injury, and exacerbations of chronic obstructive pulmonary disease.

Authors:  Anant R C Patel; Beverly S Kowlessar; Gavin C Donaldson; Alex J Mackay; Richa Singh; Siobhan N George; Davinder S Garcha; Jadwiga A Wedzicha; John R Hurst
Journal:  Am J Respir Crit Care Med       Date:  2013-11-01       Impact factor: 21.405

10.  Characterization of the CD4+ T cell response to Epstein-Barr virus during primary and persistent infection.

Authors:  Elisabeth Amyes; Chris Hatton; Damien Montamat-Sicotte; Nancy Gudgeon; Alan B Rickinson; Andrew J McMichael; Margaret F C Callan
Journal:  J Exp Med       Date:  2003-09-15       Impact factor: 14.307

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  11 in total

Review 1.  Immunodeficiency in Patients with Acute Exacerbation of Chronic Obstructive Pulmonary Disease.

Authors:  Sheling Xie; Kaifei Wang; Wei Zhang; Kun Xiao; Peng Yan; Yanqin Li; Wanxue He; Yuhan Zhang; Lixin Xie
Journal:  Inflammation       Date:  2018-10       Impact factor: 4.092

2.  The Role of Human Leukocyte Antigen-DR in Regulatory T Cells in Patients with Virus-Induced Acute Exacerbation of Chronic Obstructive Pulmonary Disease.

Authors:  Lin Zhang; Xiuhong Nie; Zhiming Luo; Bing Wei; Guojie Teng
Journal:  Med Sci Monit       Date:  2021-03-02

3.  LncRNAs NR-026690 and ENST00000447867 are upregulated in CD4+ T cells in patients with acute exacerbation of COPD.

Authors:  Xuefei Qi; Huilong Chen; Bohua Fu; Zhenli Huang; Yong Mou; Juan Liu; Yongjian Xu; Weining Xiong; Yong Cao
Journal:  Int J Chron Obstruct Pulmon Dis       Date:  2019-03-26

4.  Management of chronic obstructive pulmonary disease: A review focusing on exacerbations.

Authors:  Suzanne G Bollmeier; Aaron P Hartmann
Journal:  Am J Health Syst Pharm       Date:  2020-02-07       Impact factor: 2.637

Review 5.  How Do Innate Immune Cells Contribute to Airway Remodeling in COPD Progression?

Authors:  Tegeleqi Bu; Li Fang Wang; Yi Qing Yin
Journal:  Int J Chron Obstruct Pulmon Dis       Date:  2020-01-10

6.  Neutrophil-to-Lymphocyte Ratio Predicts Clinical Outcome of Severe Acute Exacerbation of COPD in Frequent Exacerbators.

Authors:  Fang-Ying Lu; Rong Chen; Ning Li; Xian-Wen Sun; Min Zhou; Qing-Yun Li; Yi Guo
Journal:  Int J Chron Obstruct Pulmon Dis       Date:  2021-02-17

7.  Low Eosinophil Phenotype Predicts Noninvasive Mechanical Ventilation Use in Patients with Hospitalized Exacerbations of COPD.

Authors:  Tingting Wei; Xiaocen Wang; Ke Lang; Cuicui Chen; Yansha Song; Jinlong Luo; Zhaolin Gu; Xianglin Hu; Dong Yang
Journal:  J Inflamm Res       Date:  2022-02-24

8.  Effect of acupoint application on T lymphocyte subsets in patients with chronic obstructive pulmonary disease: A meta-analysis.

Authors:  Jian-Jun Wu; Ying-Xue Zhang; Hong-Ri Xu; Yi-Xuan Li; Liang-Duo Jiang; Cheng-Xiang Wang; Mei Han
Journal:  Medicine (Baltimore)       Date:  2020-04       Impact factor: 1.817

Review 9.  COVID-19 and COPD: a narrative review of the basic science and clinical outcomes.

Authors:  Andrew Higham; Alexander Mathioudakis; Jørgen Vestbo; Dave Singh
Journal:  Eur Respir Rev       Date:  2020-11-05

10.  Bacterial and viral infections and related inflammatory responses in chronic obstructive pulmonary disease.

Authors:  Silvestro Ennio D'Anna; Mauro Maniscalco; Francesco Cappello; Mauro Carone; Andrea Motta; Bruno Balbi; Fabio L M Ricciardolo; Gaetano Caramori; Antonino Di Stefano
Journal:  Ann Med       Date:  2021-12       Impact factor: 4.709

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