Predictive value of specific cytokines for lethal COVID-19 outcome
- Authors: Arsentieva N.A.1, Liubimova N.E.1, Batsunov O.K.2,3, Korobova Z.R.2,3, Kuznetsova R.N.2,3, Rubinstein A.A.3, Stanevich O.V.3, Lebedeva A.A.3, Vorobyev E.A.3, Vorobieva S.V.3, Kulikov A.N.3, Gavrilova E.G.3, Pevtcov D.E.3, Polushin Y.S.3, Shlyk I.V.3, Totolian A.A.1,3
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Affiliations:
- St. Petersburg Pasteur Institute
- Petersburg Pasteur Institute
- Pavlov First St. Petersburg State Medical University
- Issue: Vol 12, No 5 (2022)
- Pages: 859-868
- Section: ORIGINAL ARTICLES
- Submitted: 28.09.2022
- Accepted: 28.09.2022
- Published: 19.01.2023
- URL: https://iimmun.ru/iimm/article/view/2043
- DOI: https://doi.org/10.15789/2220-7619-PVO-2043
- ID: 2043
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Abstract
In our study, we aimed to evaluate the significance of specific cytokines in blood plasma as predictive markers of COVID-associated mortality. Materials and methods. In plasma samples of 29 patients with PCR-confirmed COVID-19 we measured the concentrations of 47 molecules. These molecules included: interleukins and selected pro-inflammatory cytokines (IL-1α, IL-1β, IL-2, IL-3, IL-4, IL-5, IL-6, IL-7, IL-9, IL-12 (p40), IL-12 (p70), IL 13, IL-15, IL-17A/CTLA8, IL-17-E/IL-25, IL-17F, IL-18, IL-22, IL-27, IFNα2, IFNγ, TNFα, TNFβ/Lymphotoxin-α(LTA)); chemokines (CCL2/MCP-1, CCL3/MIP-1α, CCL4/MIP-1β, CCL7/MCP-3, CCL11/Eotaxin, CCL22/MDC, CXCL1/GROα, CXCL8/IL-8, CXCL9/MIG, CXCL10/IP-10, CX3CL1/Fractalkine); anti-inflammatory cytokines (IL-1Ra, IL-10); growth factors (EGF, FGF-2/FGF-basic, Flt-3 Ligand, G-CSF, M-CSF, GM-CSF, PDGF-AA, PDGFAB/BB, TGFα, VEGF-A); and sCD40L. We used multiplex analysis based on xMAP technology (Luminex, USA) using Luminex MagPix. As controls, we used plasma samples of 20 healthy individuals. Based on the results, we applied Receiver Operating Characteristic (ROC) analysis and Area Under Curve (AUC) values to compare two different predictive tests and to choose the optimal division point for disease outcome (survivors/non-survivors). To find optimal biomarker combinations, we as used cytokines concentrations as dependent variables to grow a regression tree using JMP 16 Software.Results. Out of 47 studied cytokines/chemokines/growth factors, we picked four pro-inflammatory cytokines as having high significance in evaluation of COVID-19 outcome: IL-6, IL-8, IL-15, and IL-18. Based on the results received, we assume that the highest significance in terms of predicting the outcome of acute COVID-19 belongs to IL-6 and IL-18. Conclusion. Analyzing concentrations of IL-6 and IL-18 before administering treatment may prove valuable in terms of outcome prognosis.
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Introduction
Novel coronavirus infection, later called COVID-19, started as an outbreak in December, 2019, and by March 2020 it had become a fully-grown pandemic [3]. The causative agent of COVID-19 is highly contagious; this infection’s estimated mortality rate is 2%. It is caused by the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), an enveloped, single-stranded RNA-virus of the genus Betacoronavirus [8]. Its virions attack target organs and induce local and systemic inflammation [2].
The clinical manifestation of the novel coronavirus can be described as an acute respiratory tract infection, although symptoms may vary drastically in patients: from asymptomatic to critically severe, i.e., acute respiratory distress syndrome (ARDS) pneumonia. ARDS and respiratory failure are the main causes of death in patients with COVID-19 [21].
So far, there is no certain explanation for the different clinical presentations of COVID-19. There are many theories concerning its pathogenesis, but it is evident that the main reason behind the clinical course of the disease is actually the host immune system [2, 23].
There is a lot of data concerning critically ill patients developing a so-called “cytokine storm” featuring pathological hyperinflammatory reactions with heavy cytokine release. Cytokines are regulatory peptides produced by cells of the body; the cytokine system consists of nearly 200 polypeptides. Their uncontrolled release in response to infection is damaging for multiple organs and body systems, including the respiratory tract, which can lead to progression of ARDS. It would seem there is a connection between severity of the disease, viral replication, and “cytokine storm” [28]. Based on that, the goal of our research was to evaluate the significance of specific cytokines as predictive markers of COVID-associated mortality.
Materials and methods
From May to December 2020, we studied 29 COVID-19 patients in the acute stage of the disease. Based on disease outcome, we divided them into two separate groups: survivors (n = 13), and non-survivors of COVID-19 (n = 16). As a control group, we chose healthy individuals (n = 20). The research was carried out at the Laboratory of Molecular Immunology, Saint Petersburg Pasteur Institute. The study protocol was approved by the Ethics Committee of the Saint Petersburg Pasteur Institute in accordance with the Declaration of Helsinki. All participants were informed of our study and willingly signed consent forms.
All patients were infected with the original Wuhan strain for the first time; no vaccines were available at the time of the study.
Overall, patients represented both sexes (58% male, 42% female), with ages from 31 to 83 (62.1±12.5). We divided them into: survivors (46% male, 54% female), aged from 31 to 77 (55.8±13.6); and non-survivors (69% male, 31% female), aged 45 to 83 years. Non-survivors’ age median was 65±16.0, whereas for survivors it was 53±14.4. All patients were treated at the Pavlov First St. Petersburg State Medical University, a COVID-19 specialized hospital from May to July 2020. They were diagnosed with COVID-19 (U07.1), and the virus was identified via qualitative PCR (detection of SARS-CoV-2 RNA). Blood samples were taken in the acute phase of the disease at the time of admission (5–14 days from the first symptoms without any signs of recovery). At hospital admission, 72.4% of individuals (21 patients) presented with a moderate course of the disease, while 27.6% (8 patients) presented with severe infection. Course of the disease was evaluated by administering doctors based on Russian Ministry of Healthcare guidelines on COVID-19 treatment.
All recovered patients presented moderate disease severity, while patients who did not survive developed either moderate or severe disease courses.
All patients developed typical COVID-induced changes (pneumonia) in lung tissues confirmed by CT-scan performed at the time of admission. Besides that, all of them presented fever, cough, joint and muscle paints, as well as blood oxygen saturation levels below 93 mm Hg and laboratory signs of inflammation such as higher WBC count and higher levels ESR, CRP compared to reference levels for their age and sex. They did not receive any treatment before administration to the hospital besides non-steroid anti-inflammatory drugs (Ibuprofen, Paracetamol, etc.) in small doses against fever and antiviral drugs (Umifenovirum) for 4 days or less. Some of the patients had underlying conditions, but we excluded patients with previous history of cancer, HIV, hepatitis, tuberculosis and lung pathology from the study, as well as chronic diseases in the acute stage.
Blood samples were taken at hospital admission, before initiation of therapy. We chose 20 healthy individuals living in Saint Petersburg as a control group (sex ratio: 35% male, 65% female) aged 25 to 65 years (44.1±10.3). These individuals did not have any inflammatory diseases, nor did they have any apparent chronic illnesses in the acute phase. Their SARS-CoV-2 PCR detection tests were negative, and they did not have specific SARS-CoV-2 IgG plasma antibodies.
Sample prepatation. We used peripheral blood as our study material. Blood samples were collected in vacuum tubes with EDTA anticoagulant reagent, followed by centrifugation (350g for 10 minutes). Plasma samples were transferred to cryotubes and frozen at –80°С before multiplex analysis.
Multiplex analysis. We measured the concentrations of 47 molecules in blood plasma: interleukins and selected pro-inflammatory cytokines (IL-1α, IL-1β, IL-2, IL-3, IL-4, IL-5, IL-6, IL-7, IL-9, IL-12 (p40), IL-12 (p70), IL-13, IL-15, IL-17A/CTLA8, IL-17-E/IL-25, IL-17F, IL-18, IL-22, IL-27, IFNα2, IFNγ, TNFα, TNFβ/Lymphotoxin-α[LTA]); chemokines (CCL2/MCP-1, CCL3/MIP-1α, CCL4/MIP-1β, CCL7/MCP-3, CCL11/Eotaxin, CCL22/MDC, CXCL1/GROα, CXCL8/IL-8, CXCL9/MIG, CXCL10/IP-10, CX3CL1/Fractalkine); anti-inflammatory cytokines (IL-1Ra, IL-10); growth factors (EGF, FGF-2/FGF-basic, Flt-3 Ligand, G-CSF, M-CSF, GM-CSF, PDGFAA, PDGFAB/BB, TGFα, VEGF-A); and sCD40L. The study was conducted with multiplex analysis based on xMAP technology (Luminex, Austin, USA) with the Milliplex HCYTA-60k-PX48 reagent kit (Billerica, MA, USA) according to manufacturer’s instructions. Data analysis was performed in Luminex MAGPIX (Luminex, Austin, USA).
Data analysis and statistics. Statistical analyses were conducted with GraphPad Prism 5.0 (GraphPad Software Inc.) and JMP 16.0 (SAS Institute Inc.). The data we received did not follow a normal distribution, so we used non-parametric statistical analysis methods. Between groups, we applied the Kruskal–Wallis test with Dunn’s Multiple Comparison Test. We considered differences significant at p < 0.05. Median (Me) and interquartile range (Q25–Q75) were used as descriptive measures of metric data. We used receiver operating characteristic (ROC) analysis and calculated area under curve (AUC) values to compare two different predictive tests and to choose the optimal division point. To find optimal combinations of biomarkers, we used the decision tree building method with JMP 16.0 software.
Method limitations. As biological samples of our study we used plasma samples of patients with COVID-19 and without it. It must be noted that the number of participants in our study is relatively small (29 patients with COVID-19 and 20 controls). This may affect statistical analysis performed in this research. We also used only one detection method to measure cytokine levels in this study, since multiplex analysis technology provides a wider spectrum of possible markers to assess. There is a difference in sex ratio of healthy donors cohor.
Thus, interpretation of results of this study must be interpreted with the limitations listed above.
First, we analyzed the concentrations of 47 cytokines in the blood plasma of patients in the acute phase of COVID-19, relative to disease outcome, survivors and non-survivors (Table 1). In comparison with healthy donor controls, all patients with COVID-19 had elevated levels of: pro-inflammatory cytokines (IL-6, IL-7, IL-15, IL-18, IL-27, TNFα); CC-chemokines (CCL-2/MCP-1, CCL-3/MIP-1α, CCL7/MCP-3, CCL22/MDC); CXC-chemokines (CXCL8/IL-8, CXCL9/MIG, CXCL10/IP-10); antiinflammatory cytokines (IL-1RA, IL-10); growth factors (FGF-2/FGF-basic, G-CSF); and sCD40L.
Table 1. Plasma cytokine concentrations in acute phase COVID-19 patients and healthy donors, Me (Q25–Q75)
Cytokine, pg/ml | Studied groups | р-value | ||||
Healthy donors (HD, n = 20) | COVID-19 survivors (n = 13) | COVID-19, non-survivors (n = 16) | HD vs non-survivors | HD vs survivors | non-survivors vs survivors | |
Interleukins and selected proinflammatory cytokines | ||||||
IL-1α | 0.87 (0.22–3.923) | 1.68 (0–4.705) | 4.475 (2.198–5.773) | < 0.05 | ns | ns |
IL-1β | 0.28 (0–2.798) | 0.46 (0–4.925) | 2.44 (0.44–5.193) | ns | ns | ns |
IL-2 | 0 (0–0) | 0 (0–0.005) | 0 (0–0.3475) | ns | ns | ns |
IL-3 | 0 (0–0) | 0 (0–0) | 0 (0–0) | ns | ns | ns |
IL-4 | 0 (0–0) | 0 (0–0.895) | 0 (0–0.3625) | ns | ns | ns |
IL-5 | 1.515 (0.905–2.283) | 3.21 (1.515–6.31) | 1.95 (1.373–4.203) | ns | ns | ns |
IL-6 | 0 (0–0.17) | 8.63 (3.55–12.21) | 29.11 (11.92–117.3) | < 0.001 | < 0.001 | ns |
IL-7 | 0.17 (0–0.92) | 2.63 (1.1–4.47) | 1.275 (0.22–5.653) | < 0.05 | < 0.001 | ns |
IL-9 | 0 (0–5.32) | 0 (0–10.35) | 0 (0–3.06) | ns | ns | ns |
IL-12 p40 | 10.56 (4.488–22.14) | 15.02 (8.955–25.97) | 19.85 (8.275–38.51) | ns | ns | ns |
IL-12 p70 | 0 (0–0.5775) | 0 (0–0.185) | 0 (0–0.045) | ns | ns | ns |
IL-13 | 6.12 (1.97–10.7) | 12.45 (5.125–15.41) | 10.26 (3.47–13.83) | ns | ns | ns |
IL-15 | 1.765 (0.5925–3.19) | 4.61 (3.795–7.88) | 9.8 (6.678–14.34) | < 0.001 | < 0.01 | ns |
IL-17A | 0.125 (0–2.1) | 0 (0–2.235) | 1.4 (0.0625 — 3.55) | ns | ns | ns |
IL-17E/IL-25 | 173.1 (0–469.4) | 146.6 (37.81–335.4) | 277.6 (143.2–415.5) | ns | ns | ns |
IL-17F | 0 (0–0) | 0 (0–0) | 0 (0–0) | not applicable | ||
IL-18 | 8.0 (4.898–19.7) | 33.6 (20.15–54.31) | 100.3 (43.47–140) | < 0.001 | < 0.01 | ns |
IL-22 | 0 (0–0) | 0 (0–0) | 0 (0–0) | not applicable | ||
IL-27 | 821.9 (680.2–1141) | 1568 (1130–2790) | 3453 (1363–4463) | < 0.001 | <0.05 | ns |
IFNα2 | 8.69 (3.258–17.85) | 8.69 (2.72–28.93) | 16.28 (12.6–39.63) | < 0.05 | ns | ns |
IFNγ | 0 (0–0) | 0 (0–21.99) | 6.6 (0–35.75) | ns | ns | ns |
TNFα | 6.55 (4.078–10.29) | 14.21 (10.57–24.12) | 30.24 (18.3–45.56) | < 0.001 | < 0.05 | ns |
TNFβ/Lymphotoxin-α | 1.725 (0.5825–3.015) | 2.7 (1.12–5.005) | 3.25 (1.553–5.12) | ns | ns | ns |
CC-chemokines | ||||||
CCL2/MCP-1 | 89.49 (64.15–153.3) | 223.4 (129.2–376.3) | 346.7 (296.6–534.7) | < 0.001 | < 0.05 | ns |
CCL3/MIP-1α | 3.585 (0–7.43) | 9.1 (3.585–14.22) | 10.38 (5.875–14.47) | < 0.01 | < 0.05 | ns |
CCL4/MIP-1β | 10.08 (6.433–14.04) | 12.15 (8.48–16.78) | 19.35 (11.5–32.4) | < 0.05 | ns | ns |
CCL7/MCP-3 | 0 (0–0) | 0 (0–14.79) | 14.56 (9.29–25.48) | < 0.001 | ns | < 0.05 |
CCL11/Eotaxin | 31.3 (24.67–52.75) | 40.32 (28.4–52.13) | 44.59 (23.3–80.22) | ns | ns | ns |
CCL22/MDC | 557.3 (335.6–625.3) | 254.3 (184.4–370.9) | 230.7 (132.1–346.1) | < 0.01 | < 0.05 | ns |
CXC-chemokines | ||||||
CXCL1/GROα | 3.62 (1.208–11.26) | 18.11 (9.705–40.96) | 21.14 (5.225–24.81) | ns | < 0.05 | ns |
CXCL8/IL-8 | 0.655 (0.2875–1.195) | 2.64 (1.73–4.04) | 6.4 (3.993–13.64) | < 0.001 | < 0.01 | ns |
CXCL9/MIG | 710 (593.2–1164) | 3165 (1703–4572) | 4061 (1987–6741) | < 0.001 | < 0.001 | ns |
CXCL10/IP-10 | 65.56 (48.53–95.57) | 1294 (373.9–8508) | 2364 (1022–40 000) | < 0.001 | < 0.001 | ns |
CX3C-chemokines | ||||||
CX3CL1/Fractalkine | 43.79 (26.08–58.62) | 57.04 (26.74–76.45) | 96.91 (57.45–114.6) | < 0.001 | ns | ns |
Anti-inflammatory cytokines | ||||||
IL-1RA | 2.225 (0.915–4.598) | 8.59 (4.02–16.3) | 34.67 (10.3–66.61) | < 0.001 | < 0.05 | ns |
IL-10 | 0 (0–0) | 5.52 (0–13.23) | 20.21 (5.278 — 53.36) | < 0.001 | < 0.05 | ns |
Growth factors | ||||||
EGF | 32.57 (5.27–68.8) | 94.8 (51.95–152.2) | 48.71 (16.5–89.99) | ns | < 0.05 | ns |
FGF-2/FGF-basic | 18.09 (11.01–26.48) | 55.35 (23.64–100.8) | 38.94 (21.98–77.04) | < 0.05 | < 0.01 | ns |
FLT-3L | 8.42 (0.97–15.06) | 2.72 (0.425–8.86) | 9.08 (6.403–11.14) | ns | ns | ns |
G-CSF | 0 (0–7.45) | 16.4 (11.22–30.94) | 31.42 (4.313–47.35) | < 0.001 | < 0.01 | ns |
M-CSF | 7.645 (0–38.02) | 102.1 (5.28–243.8) | 158.5 (113.8–315.5) | < 0.001 | ns | ns |
GM-CSF | 0 (0–0) | 0 (0–0) | 0 (0–0) | not applicable | ||
PDGF-AA | 1073 (872–2487) | 1739 (1220–2501) | 1034 (659.7–2488) | ns | ns | ns |
PDGF-AB/BB | 22 946 (18 269–31 171) | 25 599 (21 487–32 255) | 23 641 (15 760–29 899) | ns | ns | ns |
TGFα | 0 (0–0) | 0.96 (0–2.275) | 2.985 (1.753–6.778) | < 0.001 | ns | ns |
VEGF-A | 37.12 (18.25–102.9) | 166.7 (57.85–324.5) | 119.3 (30.22–250.9) | ns | < 0.05 | ns |
Other soluble ligands | ||||||
sCD40L | 1079 (423.9–1871) | 2883 (1281–5589) | 3475 (2044–5838) | < 0.01 | < 0.05 | ns |
Moreover, in those infected who later died due to COVID-19, we noted elevated levels of IL-1α, ССL4/MIP-1β, СX3CL1/Fractalkine, M-CSF, and TGFα. Our study shows that IFNα2 levels are significantly higher in deceased group patients (р < 0.05), yet we did not find any differences in IFNã concentrations between different groups. Analyzing differences in cytokine concentration based on disease outcome, we found 14-fold higher levels of CCL7/MCP-3 in deceased group patiaents compared to those who recovered (р < 0.05).
To identify potential markers of unfavorable COVID-19 outcome amongst 47 studied factors, we built ROC-curves for acute phase patients; these were divided into two groups based on disease outcome (survivors and non-survivors). We received statistically significant differences for 12 cytokines, as shown in Table 2.
Table 2. Cytokines showing the most statistically significant concentrations within our study
Cytokine | AUC | p-value | Cut off, pg/ml | Sensitivity, % | Specificity, % |
IL-6 | 0.8389 | 0.002 | 12.8 | 85 | 75 |
IL-15 | 0.8101 | 0.0047 | 9.0 | 92 | 69 |
IL-18 | 0.8606 | 0.001 | 51.8 | 77 | 75 |
TNFα | 0.8173 | 0.038 | 22.3 | 77 | 69 |
CCL2/MCP-1 | 0.7596 | 0.018 | 301.3 | 69 | 69 |
CCL7/MCP-3 | 0.7452 | 0.025 | 5.8 | 69 | 87 |
CXCL8/IL-8 | 0.8413 | 0.0018 | 4.3 | 85 | 75 |
CX3CL1/Fractalkine | 0.7525 | 0.021 | 73.7 | 69 | 69 |
IL-1Ra | 0.7764 | 0.012 | 9.1 | 62 | 81 |
IL-10 | 0.7524 | 0.021 | 15.0 | 92 | 62 |
FLT-3L | 0.7284 | 0.037 | 7.9 | 77 | 75 |
TGFα | 0.7500 | 0.023 | 2.1 | 69 | 69 |
The largest AUC values were found for the following cytokines: IL-6, IL-15, IL-18, and CXCL8/IL-8 (Fig. 2)
ROC analysis results showed little significance when testing separate plasma cytokine levels to predict disease outcome. Instead, we used a decision tree building method for that purpose. Based on the results received, we established that combined detection of IL-18 and IL-6 is more valuable in terms of COVID-19 outcome prediction. For these two cytokines, parameters were: AUC 0.97; sensitivity 94%; and specificity 100%. From this analysis, we received the following threshold values for prediction of COVID-19 outcome: IL-18 — 81.6 pg/ml; and IL-6 — 23.5 pg/ml (Fig. 3).
Discussion
Regulation of the antiviral immune response is conducted by different factors, mainly cytokines and chemokines. In our study of COVID-19 patient plasma, we noticed higher levels of: proinflammatory cytokines (IL-6, IL-7, IL-15, IL-18, IL-27, TNFα); chemokines (CCL2/MCP-1, CCL3/MIP-1α, CCL7/MCP-3, CCL22/MDC, CXCL8/IL-8, CXCL9/MIG, CXCL10/IP-10); anti-inflammatory cytokines (IL-1RA, IL-10); growth factors (FGF-2/FGF-basic, G-CSF); and sCD40L. Most of these factors play a role in virus-induced immune responses. Earlier this year, we proved that COVID-19 in the acute phase is followed by significantly higher levels of cytokines (both pro- and anti-inflammatory) in blood plasma [1]. This data further adds to previous findings of other researchers [9, 13, 14]. Age is a highly important factor for COVID-19 outcome, elderly people are at risk of developing a more severe course of disease [18]. We have also performed analysis of cytokine levels in different cohorts based on the age, and found very little statistically significant difference. We noted elevation of TNFá in all cohorts — HD, survivors and non-survivors in patients above 50 (p < 0.05, p < 0.05 and p <0.01, respectively). Due to that, we excluded TNFá out of decision tree analysis.
Figure 1. Plasma cytokine levels in patients with acute phase COVID-19 and healthy donors (HD)
Note. COVID-19 patients are divided into two groups, depending on disease outcome: recovery (survivors), or death (non-survivors).
However, despite an absence of statistically significant differences, median values for concentrations of specific factors (IL-6, IL-15, IL-18, IL-27, TNFα, CCL2/MCP-1, CXCL8/IL-8, CXCL9/MIG, CXCL10/IP-10, IL-1RA, IL-10, G-CSF, sCD40L) in non-survivors were higher than those in survivors. Moreover, deceased patients showed higher levels of IL-1α, IFNα2, ССL4/MIP-1β, СX3CL1/Fractalkine, M-CSF and TGFα compared to controls, as noted in other reports [17].
Our data suggest activation of cytokine and chemokine systems in response to COVID-19, followed by systemic inflammation. On the other hand, elevation of cytokine concentrations in COVID-19 patient plasma points to development of a ‘cytokine storm’ causing organ damage; this may explain higher cytokine levels in patients who died of COVID. We noted higher levels of MCP-3, the only cytokine between cohorts of survivors and non-survivors showing significant differences between two groups. Based on the data discovered by previous researchers, this cytokine can, in fact, be a predictor for a cytokine storm by itself [6]. However, we believe that single cytokine levels do not have enough prognostic value, and, therefore, there is a need for multiple factor-based evaluation. Such evaluation of the prognostic potential of cytokines based on disease outcome showed the significance of specific proinflammatory cytokines: IL-6, IL-15, IL-18, and CXCL8/IL-8.
IL-6. The IL-6 cytokine controls immune responses, cellular proliferation, and cellular differentiation. It is produced by different cell types: T-lymphocytes, macrophages, endothelial cells, fibroblasts, and monocytes. IL-6 targets B- and T-cells, basophiles, eosinophiles, and neutrophils. The effects of IL-6 on B-cells are mainly activation of differentiation and secretion of IgM, IgE, and IgA. However, it also controls activation, differentiation and survival of T-cells. This means that, after infection, cytokine storm induces activation and differentiation of T- and B-cells. IL-6 secretion causes antibody production by B-cells and increases autoantibody formation. It also causes chronic inflammation and T-helper activation, potentially leading to autoimmune processes [22]. Diao et al. states that IL-6 levels correlate with severity of COVID-19. They also note elevation of this cytokine throughout the course of the disease with significantly lower levels after disease resolution, potentially marking depletion of IL-6 production and secretion [10]. In our study, patients with favorable COVID-19 outcomes presented moderate disease courses, while non-survivors, in 50% of cases, had severe infection. There is another study that shows a correlation between higher levels of IL-6 and severity of lung injury [16]. Findings throughout the world have pinpointed high blood plasma concentrations of IL-6 in patients with COVID-19 and suggest administration of anti-IL-6 drugs [19].
Figure 2. ROСs describing sensitivity and specificity for IL-6, IL-15, IL-18 and CXCL8/IL-8 comparison of patients with acute COVID-19 followed by different disease outcomes (recovery, death)
Note. AUC — area under curve; Sens. — sensitivity; Sp. — specificity.
Figure 3. Decisions tree for division of patients with COVID-19 into two groups: survivors and non-survivors
IL-15. A study conducted by Angioni R et al. shows the presence of higher IL-15 levels in patients with severe COVID-19 and longer hospital stays. IL-15 may stimulate a rise in NK-cell subpopulations in elderly people compared to youth. On the other hand, long exposure of NK-cells to circulating IL-15 may reduce their cytolytic activity, potentially causing their depletion [4]. There is also a correlation between IL-15 and CXCL8/IL-8 concentrations.
CXCL8. CXCL8 (also called IL-8) is involved in inflammatory responses and attracts immune cells to the inflammatory site of viral infections. CXCL8/IL-8 plays an important role in the initial control of airway infection due to its activity against neutrophils and monocytes [15]. The level of CXCL8/IL-8 in nasal secretions correlates with the severity of symptoms in acute respiratory tract infections [12]. In addition, CXCL8/IL-8 is a chemokine considered to be a potential prognostic biomarker of acute respiratory distress syndrome (ARDS) [11]. Previously, it was found that CXCL8/IL-8 levels are increased in both plasma and bronchoalveolar lavage fluid of ARDS patients [7].
IL-18. IL-18 belongs to the IL-1 cytokine family and plays roles in: innate and adaptive immunity; fibrosis; and hematopoiesis [5]. IL-18 regulates Th1 and Th2 differentiation [20]; it also stimulates naïve T-cells, CD8+ and NK cells to proliferate and to produce IFNã [25]. Further, IL-18 promotes Th1 differentiation and increases NK-cell cytotoxicity by induction of Fas-ligand expression; this leads to destruction of infected cells through Fas-mediated apoptosis [26]. IL-18 can induce cytokine production in Th2, NK, and NKT-cells [27]. This makes IL-18 a unique type of cytokine: one that can stimulate various subpopulations of T and NK-cells. A study conducted by Satış et al. shows higher plasma levels of IL-18 in COVID-19 patients compared to healthy donors; the highest levels were noticed in patients with severe pneumonia. Those authors assert a correlation between disease outcome and IL-18 concentration [24].
Out of 47 studied factors, we found 4 pro-inflammatory cytokines having high significance in evaluation of COVID-19 outcomes: IL-6, CXCL8/IL-8, IL-15, and IL-18. The main significance, in terms of predicting the outcome of acute COVID-19, belongs to IL-6 and IL-18. The AUC value for these two cytokines is 0.97, with 94% sensitivity and 100% specificity. Analyzing concentrations of IL-6 and IL-18 before administering treatment may prove valuable in terms of outcome prognosis.
About the authors
N. A. Arsentieva
St. Petersburg Pasteur Institute
Email: raknv@mail.ru
PhD (Biology), Senior Researcher, Laboratory of Molecular Immunology
Россия, St. PetersburgN. E. Liubimova
St. Petersburg Pasteur Institute
Email: raknv@mail.ru
PhD (Biology), Researcher, Laboratory of Molecular Immunology
Россия, St. PetersburgO. K. Batsunov
Petersburg Pasteur Institute; Pavlov First St. Petersburg State Medical University
Email: raknv@mail.ru
Junior Researcher, Laboratory of Molecular Immunology
Россия, St. Petersburg; St. PetersburgZ. R. Korobova
Petersburg Pasteur Institute; Pavlov First St. Petersburg State Medical University
Email: zoia-korobova@yandex.ru
PhD (Medicine), Allergologist-Immunologist
Россия, St. Petersburg; St. PetersburgR. N. Kuznetsova
Petersburg Pasteur Institute; Pavlov First St. Petersburg State Medical University
Email: raknv@mail.ru
PhD (Medicine), Allergologist-Immunologist
Россия, St. Petersburg; St. PetersburgA. A. Rubinstein
Pavlov First St. Petersburg State Medical University
Email: raknv@mail.ru
6th year Student
Россия, St. PetersburgO. V. Stanevich
Pavlov First St. Petersburg State Medical University
Email: raknv@mail.ru
Infectious Disease Physician
Россия, St. PetersburgA. A. Lebedeva
Pavlov First St. Petersburg State Medical University
Email: raknv@mail.ru
Physician, Emergency Department
Россия, St. PetersburgE. A. Vorobyev
Pavlov First St. Petersburg State Medical University
Email: raknv@mail.ru
Nephrologist, Assistant Professor, Department of Nephrology
Россия, St. PetersburgS. V. Vorobieva
Pavlov First St. Petersburg State Medical University
Email: raknv@mail.ru
Physician, Assistant Professor, Department of Propaedeutics of Internal Diseases
Россия, St. PetersburgA. N. Kulikov
Pavlov First St. Petersburg State Medical University
Email: raknv@mail.ru
PhD, MD (Medicine), Professor, Head of the Department of Propaedeutics of Internal Diseases
Россия, St. PetersburgE. G. Gavrilova
Pavlov First St. Petersburg State Medical University
Email: raknv@mail.ru
PhD (Medicine), Anesthesiologist-Resuscitator of the Highest Category, Assistant Professor, Resuscitation and Anaesthesiology Department
Россия, St. PetersburgD. E. Pevtcov
Pavlov First St. Petersburg State Medical University
Email: raknv@mail.ru
Transfusiologist, Head of the Blood Transfusion Department
Россия, St. PetersburgYu. S. Polushin
Pavlov First St. Petersburg State Medical University
Email: raknv@mail.ru
RAS Full Member, PhD, MD (Medicine), Professor, Head of the Resuscitation and Anaesthesiology Department
Россия, St. PetersburgI. V. Shlyk
Pavlov First St. Petersburg State Medical University
Email: raknv@mail.ru
PhD, MD (Medicine), Professor, Deputy Head Physician
Россия, St. PetersburgA. A. Totolian
St. Petersburg Pasteur Institute; Pavlov First St. Petersburg State Medical University
Author for correspondence.
Email: raknv@mail.ru
RAS Full Member, PhD, MD (Medicine), Professor
Россия, St. Petersburg; St. PetersburgReferences
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