| Literature DB >> 34220307 |
Zheng Zhou1, Ying Li2, Yuanhui Ma3, Heng Zhang4, Yunfeng Deng1, Zuobin Zhu5.
Abstract
Coronavirus disease 2019 (COVID-19) has spread widely in the communities in many countries. Although most of the mild patients could be cured by their body's ability to self-heal, many patients quickly progressed to severe disease and had to undergo treatment in the intensive care unit (ICU). Thus, it is very important to effectively predict which patients with mild disease are more likely to progress to severe disease. A total of 72 patients hospitalized with COVID-19 in Shandong Provincial Public Health Clinical Center and 1141 patients included in the published papers were enrolled in this study. We determined that the combination of interleukin-6 (IL-6), Neutrophil (NEUT), and Natural Killer (NK) cells had the highest prediction accuracy (with 75% sensitivity and 95% specificity) for progression of COVID-19 infection. A binomial regression equation that accounted for a multiple risk score for the combination of IL-6, NEUT, and NK was also established. The multiple risk score is a good indicator for early stratification of mild patients into risk categories, which is very important for adjusting the treatment plan and preventing death. © The author(s).Entities:
Keywords: COVID-19; IL-6; Multi-biomarker; predictors; progression
Mesh:
Substances:
Year: 2021 PMID: 34220307 PMCID: PMC8241766 DOI: 10.7150/ijms.58742
Source DB: PubMed Journal: Int J Med Sci ISSN: 1449-1907 Impact factor: 3.738
Search strategy for the research
| Search strategy | |
|---|---|
| Database | PubMed |
| Limitations | Language (English or Chinese), Species (studies in humans) |
| Data | 2019 to March 9, 2020 |
| #1 (MeSH) | “COVID-19 virus” and “Cytokines” |
| #2 (Entry Terms) | “COVID 19 virus” or “COVID-19 virus” or “coronavirus disease” or “2019 virus” and “Cytokines” |
| Search | #1 or #2 |
Search strategy used in the meta-analysis for selecting patients for inclusion in the study
Meta-analysis of 18 studies reporting the association between 16 hematological biomarkers and severity of COVID-19 infection
| Biomarkers | N of Study | SMD (95%CI) | I2 | Chi-square (P-value) | Egger test (P-value) |
|---|---|---|---|---|---|
| Lymphocyte ( | 9 [21,22,23,25,26.27,28,29,31] | 1.48 (1.30; 1.67) | 97.0 | 289.26 (P < 0.001) | 0.69 (P = 0.51) |
| CD3+ T cell ( | 8 | 1.28 (1.09; 1.47) | 94 | 108.54 (P < 0.001) | 1.69 (P = 0.23) |
| Neutrophils ( | 9 | -2.06 (-2.26; -1.86) | 96 | 178.38 (P < 0.001) | 0.01 (P = 0.99) |
| PLT ( | 2 | 0.37 (0.05; 0.69) | 0.0 | 1.81 (P=0.40) | 0.09 (P = 0.94) |
| CD4+ T cell ( | 8 | 2.11 (1.91; 2.31) | 82 | 39.37 (P < 0.001) | 2.84 (P = 0.04) |
| CD8+ T cell ( | 8 | 1.00(0.83; 1.18) | 88 | 58.60 (P < 0.001) | 1.82 (P = 0.11) |
| CRP (mg/L) | 9 | -0.83 (-1.07; -0.58) | 96 | 226.59 (P < 0.001) | 1.2 (P = 0.36) |
| DD-dimer (μg/mL) | 4 | -1.75 (-1.99; -1.50) | 98 | 122.56 (P < 0.001) | 1.37 (P = 0.3) |
| NK cell ( | 3 | 21.21 (18.28; 24.15) | 56 | 4.50 (P < 0.001) | 0.81 (P = 0.46) |
| WBC (×109/L) | 8 | -1.30 (-.1.54; -1.07) | 95 | 141.24 (P < 0.001) | 0.42 (P = 0.05) |
| FDP (mg/L) | 4 | -1.19 (-1.57; -0.81) | 94 | 52.53 (P < 0.001) | 2.02 (P = 0.09) |
| TT (s) | 4 | 0.30 (-0.03; 0.64) | 78 | 13.61 (P < 0.001) | 1.06 (P = 0.32) |
| APTT (s) | 4 | -0.26 (-0.63; 0.10) | 94 | 51.80 (P < 0.001) | 0.37 (P = 0.73) |
| IL-10 (pg/ml) | 8 | -1.58 (-1.86; -1.31) | 97 | 221.08 (P < 0.001) | 1.66 (P = 0.34) |
| IL-6 (pg/ml) | 15 | -6.08 (-6.41; -5.75) | 95 | 298.64 (P < 0.001) | 0.91 (P = 0.53) |
| PDW (%) | 4 | 0.43 (0.10; 0.75) | 94 | 47.26 (P < 0.001) | 0.67 (P = 0.31) |
N: number of studies used. SMD: Standard Mean Difference. I2 was used for quantifying inconsistency: the larger the value, the stronger the heterogeneity.
The clinical characteristics of COVID-19 patients
| Characteristics | Mild (n=56) | Severe (n=16) | 5P value |
|---|---|---|---|
| 1Age (Mean ± SD) | 47±16.44 | 60±16.88 | 0.0153 |
| ≤65 years old | 87.50 | 62.50 | |
| >65 years old | 12.50 | 37.50 | |
| Hypertension | 14.30 | 50.00 | 0.009262 |
| Diabetes | 10.20 | 25.00 | ns |
| Coronary heart disease | 6.10 | 25.00 | ns |
| Cerebrovascular disease | 6.10 | 31.30 | 0.026548 |
| Chronic obstructive pulmonary disease | 1.80 | 6.30 | ns |
| Chronic renal disease | 0 | 6.30 | ns |
| Cancer | 5.40 | 6.30 | ns |
| Tuberculosis | 1.80 | 0 | ns |
| 17.90 | 16.67 | ns | |
| Bacterial (%) | 5.40 | 25.00 | ns |
| Fungal (%) | 1.80 | 12.50 | ns |
Note: 1 Age: the mean age of 56 mild patients and 16 severe patients.
2 Coexisting conditions (%): The percentage of coexisting diseases in mild and severe cases. Coexisting conditions were recorded in 49 mild patients and 16 severe patients.
3 Current smoker (%): The percentage of smokers in 49 mild patients and 16 severe patients.
4 Positive culture on the same day plasma: The percentage of fungi and bacteria detected in plasma of mild and severe patients.
5 P value: The incidence of clinical disease, which was different between mild and severe patients, was examined by Fisher's exact test.
The laboratory characteristics between mild COVID-19 patients and severe COVID-19 patients
| Biomarkers | Mild patients | Severe patients | P-value5 | TPR6 | TNR7 | ||||
|---|---|---|---|---|---|---|---|---|---|
| Median1 | Min2, Max3 | Std. D4 | Median1 | Min2, Max3 | Std. D4 | ||||
| LYM cells (109) | 1.71 | (0.76, 2.47) | 0.53 | 0.68 | (0.26, 1.53) | 0.42 | 3.30E-06 | 0.23 | 0.80 |
| CD3+ (n/ul) | 1185.00 | (405.1, 1840) | 477.30 | 401.90 | (104.3, 922) | 281.30 | 2.90E-05 | 0.23 | 0.60 |
| NEUT (109/L) | 3.33 | (1.57, 5.34) | 0.94 | 6.01 | (1.85, 13.36) | 3.30 | 9.50E-05 | 0.13 | 0.25 |
| PLT (109/L) | 243.50 | (178, 398) | 50.87 | 151.50 | (73, 310) | 75.72 | 0.00029 | 0.21 | 0.16 |
| CD4+ (n/ul) | 637.50 | (235.6, 1270) | 343.90 | 270.30 | (52, 657.6) | 203.70 | 0.00030 | 0.38 | 0.43 |
| CD8+ (n/ul) | 379.20 | (142.9, 1032) | 222.10 | 127.50 | (44.72, 365) | 91.72 | 0.00036 | 0.15 | 0.65 |
| CRP (mg/L) | 5.00 | (<5, 50.7) | 10.79 | 19.97 | (5, 124.8) | 36.48 | 0.0008 | 0.15 | 0.13 |
| D dimer (mg/L) | 0.41 | (0.19, 1.02) | 0.21 | 1.64 | (0.26, 7.86) | 2.52 | 0.00212 | 0.13 | 0.12 |
| NK cells (n/ul) | 61.28 | (28.55, 278.9) | 55.33 | 19.49 | (7.74, 42.53) | 11.27 | 0.00257 | 0.15 | 0.15 |
| WBC (109/L) | 5.50 | (2.99, 8.38) | 1.33 | 7.53 | (2.96, 13.93) | 3.14 | 0.00412 | 0.13 | 0.22 |
| FDP (mg/L) | 1.60 | (0.9, 3.8) | 0.77 | 5.80 | (1.4, 34.1) | 10.36 | 0.00414 | 0.17 | 0.26 |
| TT (s) | 21.00 | (18.1, 23.2) | 1.25 | 20.15 | (17.4, 21) | 1.58 | 0.00470 | 0.13 | 0.14 |
| APTT (s) | 26.95 | (19.9, 33.3) | 3.90 | 31.00 | (23.4, 51.7) | 8.51 | 0.00662 | 0.21 | 0.21 |
| IL-10 (pg/ml) | 2.44 | (2.44, 8.72) | 1.39 | 4.71 | (2.44, 33.32) | 8.68 | 0.02014 | 0.15 | 0.58 |
| IL-6 (pg/ml) | 2.44 | (2.44, 58.1) | 14.11 | 15.91 | (2.44, 6040) | 2144.00 | 0.02591 | 0.38 | 0.05 |
| PDW (%) | 15.80 | (15.5, 16.5) | 0.33 | 16.20 | (15.2, 17.5) | 0.82 | 0.02705 | 0.13 | 0.12 |
| MCHC (pg) | 325.50 | (314, 341) | 7.22 | 318.00 | (283, 334) | 14.38 | 0.00044 | 0.00 | 0.07 |
| RDW-SD (%) | 37.00 | (31.9, 38.8) | 1.98 | 45.15 | (36.9, 84.4) | 14.01 | 0.00044 | 0.00 | 0.04 |
| PCT (%) | 0.21 | (0.15, 0.33) | 0.04 | 0.14 | (0.08, 0.31) | 0.07 | 0.00076 | 0.00 | 0.09 |
| INR | 0.96 | (0.84, 1.12) | 0.08 | 1.14 | (0.87, 1.74) | 0.22 | 0.00088 | 0.04 | 0.08 |
| PT (s) | 11.10 | (9.8, 13) | 0.98 | 13.15 | (10.1, 20.8) | 2.65 | 0.00109 | 0.04 | 0.05 |
| RBC (1012/L) | 4.20 | (3.02, 4.77) | 0.52 | 3.10 | (2.26, 5.16) | 0.83 | 0.00223 | 0.04 | 0.04 |
| Hb (g/L) | 118.50 | (92, 141) | 13.03 | 94.50 | (62, 150) | 24.39 | 0.00487 | 0.04 | 0.09 |
| ESR (mm/h) | 15.00 | (6, 102) | 22.48 | 57.00 | (6, 140) | 46.21 | 0.00510 | 0.00 | 0.04 |
| MCV (fl) | 91.30 | (76.6, 96.8) | 5.84 | 95.65 | (84.4, 114.5) | 8.99 | 0.00773 | 0.04 | 0.05 |
| Hct (%) | 37.00 | (26.9, 42.3) | 3.89 | 29.60 | (21.8, 47.1) | 6.91 | 0.01654 | 0.04 | 0.05 |
| RDW-CV (%) | 12.75 | (11.2, 15.3) | 1.08 | 13.95 | (12.7, 31.2) | 5.86 | 0.01668 | 0.04 | 0.17 |
| TNF-a (pg/ml) | 13.82 | (2.44, 138.6) | 41.48 | 4.85 | (2.44, 12.1) | 3.01 | 0.03608 | 0.00 | 0.20 |
1 Median: The intermediate value of each biomarker.
2 Min: The minimum value of each biomarker.
3 Max: The maximum value of each biomarker.
4 Std. D: The standard deviation of each biomarker.
5 P-value: P-value were calculated by Mann Whitney test.
6 TPR: The true positive rate.
7 TNR: The true negative rate.
Figure 1The value of hematological biomarkers in predicting the progression of COVID-19. Hematological biomarkers can be better predictors if we can use them to identify the patients with poor prognosis from the population with good prognosis. In this study, the predictive ability of 16 hematological biomarkers for COVID-19 infection progression, which showed a significant difference between mild patients and severe patients, confirmed in our data and in a systematic review was further assessed.
Figure 2Multiple risk score has a better prediction effect for the progression of COVID-19. (A) The ability of the combination of IL-6, neutrophil granulocytes, and NK cells to distinguish between mild and severe patients. (B) The value of the combination of IL-6, neutrophil granulocytes, and NK cells in predicting the progression of COVID-19 by using an independent dataset. If the multiple risk score is greater than 0, the mild patient has a high probability of progressing to severe disease; if the multiple risk score is less than 0, the mild patient has a low probability of progressing to severe disease.