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Indian Journal of Hematology & Blood Transfusion logoLink to Indian Journal of Hematology & Blood Transfusion
. 2021 Feb 27;37(4):534–542. doi: 10.1007/s12288-021-01407-y

Hematological and Inflammatory Parameters to Predict the Prognosis in COVID-19

Hakan Keski 1,
PMCID: PMC7910775  PMID: 33679013

Abstract

We aimed to evaluate the predictive ability of hematological and inflammatory parameters for mortality in COVID-19 patients. This was a retrospective study of hospitalized COVID-19 patients over 18 years old between March 2020 and May 2020. Patients were diagnosed to have COVID-19 based either on chest computed tomography findings or reverse transcriptase-polymerase chain reaction test. Age, gender, chronic medical conditions, and laboratory values including hemogram parameters (white blood cell, neutrophil, lymphocyte, and platelet counts), neutrophil to lymphocyte ratio, D-dimer, ferritin, fibrinogen, C-reactive protein, procalcitonin, prothrombin time, activated partial thromboplastin time and the international normalized ratio were recorded. Overall, we included 302 patients. Of these, 148 patients were male; the male to female ratio was 0.961. The mean age of the entire study cohort was 57.1 ± 17.6 years. The most common chronic medical condition was hypertension (38.1%). Half of the patients received low molecular weight heparin. During the study period, 25 patients (8.2%) died. White blood cell count and neutrophil count were significantly higher, whereas lymphocyte count was significantly lower in the deceased patients. The median neutrophil to lymphocyte ratio was 11.6 in the deceased patients, it was significantly higher than the surviving patients (p < 0.001). The values of C-reactive protein, procalcitonin, D-dimer, and ferritin were significantly higher among the deceased patients. Prothrombin time, activated partial thromboplastin time and the international normalized ratio were significantly longer in the deceased group compared with the surviving group. Logistic regression analysis showed age > 65 years, neutrophil to lymphocyte ratio, activated partial thromboplastin time, and hypertension as the independent predictors of mortality. The rate of abnormal inflammatory and hematologic-coagulation parameters increased with the COVID-19 severity. Age > 65 years, hypertension, activated partial thromboplastin time and neutrophil to lymphocyte ratio were the independent predictors of mortality.

Keywords: Coagulation, COVID-19, Inflammation, Mortality, Neutrophil-to-lymphocyte ratio

Introduction

Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) infection, named coronavirus disease 2019 (COVID-19), created a pandemic [1]. One of the striking features of COVID-19 was its systemic nature, although the virus's primary target was the respiratory tract. Many patients, particularly the elderly and having comorbid conditions, succumbed to multiorgan failure manifested with laboratory and clinical dysfunction in several organ systems, including heart, kidneys, coagulation system, and others [24].

It is of crucial importance to be able to predict which patients would develop a severe disease and which patients would have a higher risk of death to allocate limited resources better. To this end, several hematological and biochemical (particularly inflammatory) parameters, as well as presenting symptoms, have been examined to understand their ability to predict the severity of disease and mortality outcomes [2, 57].

Hematological parameters, including peripheral blood counts and coagulation tests, have become prominent in predicting the severity of the COVID-19 from the outset. Moreover, disseminated intravascular coagulation (DIC) was common among non-survived COVID-19 patients [8]. Thus, hematological parameters are of significant importance for treatment decisions in severe COVID-19 patients.

Several hematological parameters have been reported to be disturbed in patients with COVID-19, starting from the disease's early phases [912]. Besides, therapeutic anticoagulation in high-risk patients proved to be effective in reducing mortality [13]. Inflammation and coagulation cascades have a cross-talk in COVID-19 patients [14].

Thus, we aimed to evaluate the prevalence of abnormal hematological parameters (including coagulation tests and peripheral blood counts) along with inflammatory markers and their ability to predict mortality in patients with COVID-19.

Materials and Methods

This study was a retrospective analysis of the COVID-19 patients hospitalized in COVID-19 inpatient wards at Umraniye Education and Research Hospital between March 2020 and May 2020. Patients were diagnosed to have COVID-19 based on either the reverse-transcription quantitative polymerase chain reaction (RT-qPCR) tests applied on respiratory secretions obtained via nasal swabs or the chest computed tomography (CT) findings. The presence of single or multiple diffuse ground-glass appearance associated with consolidation was regarded as the positive CT findings for COVID-19 infection [1517]. The positive and negative RT-qPCR results were detected in 270 (89.4%) and 32 patients (10.6%). The diagnosis was confirmed via positive CT findings seen in 225 patients (74.8%). Patients over 18 years old were included in the study. Patients with a diagnosis of COVID-19 infection were excluded if they were followed up as an outpatient.

Age, gender, chronic medical conditions, and laboratory results, including hemogram parameters [white blood cell (WBC) count, neutrophil count, lymphocyte count, thrombocyte count, hemoglobin, red cell distribution width (RDW), and mean platelet volume (MPV)], D-dimer, lactate dehydrogenase (LDH), ferritin, fibrinogen, C-reactive protein (CRP), procalcitonin, prothrombin time (PT), the international normalized ratio (INR), and activated partial thromboplastin time (aPTT) were retrieved from the hospital electronic database system.

This study was performed in line with the principles of the Declaration of Helsinki. The local ethics committee approved the study. Informed consent was obtained from all participants included in the study.

Statistical Analysis

Descriptive data derived from the study were presented as mean ± standard deviation or median and interquartile ranges of 25th and 75th percentiles (IQR 1–3) or the minimum and maximum depending on the distribution of continuous variables. Categorical variables were given as number and percentage. The normal distribution of numerical variables was checked with the Kolmogorov–Smirnov and the Shapiro-Wilks tests. In comparison of the two independent groups, the independent samples t-test was used when the numerical variables had a normal distribution, or the Mann–Whitney U test was used when the numerical variables did not have normal distribution. The differences between the categorical variables were compared with the Pearson chi-square, Fisher's Exact, and Fisher-Freeman-Halton tests. The temporal relationships between the survival rates and white blood cell count, neutrophil count, lymphocyte count, neutrophil-to-lymphocyte ratio, procalcitonin, prothrombin time, aPTT, and INR were evaluated via Kaplan–Meier survival analysis.

The analysis of the receiver operating characteristic (ROC) curve associated with area under curve (AUC) was used to discover the optimal cut-off values of the levels of the laboratory parameters to predict the development of mortality in the study group. AUC was interpreted as excellent if 0.9 < AUC < 1, good if 0.8 < AUC < 0.9, fair if 0.7 < AUC < 0.8, poor if 0.6 < AUC < 0.7, and fail if 0.5 < AUC < 0.6.

Univariate and multivariate Cox regression analyses were used to evaluate the independent predictors of mortality. The selected variables in the multivariate model were determined based on the significant variables in the univariate analyses. The independent variables that showed multivariate multicollinearity with significant correlation coefficients was not analyzed in the model.

Statistical analyses were performed using the Jamovi project (Version 1.6.3) and JASP (Version 0.13.1). A p-value below 0.05 was accepted as statistically significant.

Results

Clinical and Demographic Features and Laboratory Results of the Entire Study Cohort

Overall, we included 302 patients who were hospitalized with the diagnosis of COVID-19. Of these, 148 patients were male. The male to female ratio was 0.961. The mean age of the entire study cohort was 57.1 ± 17.6 years. Most of the patients (85.8%) were hospitalized in a dedicated COVID-19 hospital ward; the rest showed a need for stay at the intensive care unit (ICU) during or at the outset of their hospitalization. The most common chronic medical condition among the patients was hypertension (38.1%). Clinical and demographic characteristics and laboratory results of the entire study cohort are shown in Table 1.

Table 1.

Comparison of clinical and demographic characteristics and laboratory results of the deceased and surviving patients

Overall (n = 302) Survival status p-value
Deceased (n = 25) Surviving (n = 277)
Age, years 57.1 ± 17.6 73.4 ± 13.2 55.6 ± 17.2  < 0.001
Sex
 Male 148 (49.0) 12 (48.0) 136 (49.1) 0.999
 Female 154 (51.0) 13 (52.0) 141 (50.9)
Hospital stay setting
 Ward 259 (85.8) 1 (4.0) 258 (93.1)  < 0.001
 Intensive care unit 43 (14.2) 24 (96.0) 19 (6.9)
Comorbid conditions 199 (65.9) 24 (96.0) 175 (63.2) 0.002
 Diabetes mellitus 80 (26.5) 13 (52.0) 67 (24.2) 0.005
 Hypertension 115 (38.1) 17 (68.0) 98 (35.4) 0.003
 Chronic obstructive lung disease 40 (13.2) 4 (16.0) 36 (13.0) 0.756
 Coronary artery disease 34 (11.3) 7 (28.0) 27 (9.8) 0.014
 Congestive heart failure 11 (3.6) 3 (12.0) 8 (2.9) 0.053
 Chronic kidney disease 16 (5.3) 3 (12.0) 13 (4.7) 0.136
Malignancy 28 (9.3) 4 (16.0) 24 (8.7) 0.269
COVID-19 treatments
 Hydroxychloroquine 300 (99.3) 25 (100.0) 275 (99.3) 0.999
 Azithromycin 289 (95.7) 24 (96.0) 265 (95.7) 0.999
 Favipiravir 70 (23.2) 17 (68.0) 53 (19.1)  < 0.001
 Tocilizumab 9 (3.0) 5 (20.0) 4 (1.4)  < 0.001
 Oseltamivir 236 (78.1) 22 (88.0) 214 (77.3) 0.321
 Low molecular weight heparin 146 (48.3) 18 (72.0) 128 (46.2) 0.024
 Broad spectrum antibiotics 48 (15.9) 15 (60.0) 33 (11.9)  < 0.001
Laboratory parameters
 White blood cell count (× 109/L) 6.80 [0.93–34.34] 11.05 [7.82–14.56] 6.1 [4.74–8.67]  < 0.001
 Neutrophil count (× 109/L) 4.50 [0.59–31.63] 9.4 [2.3–31.63] 4.12 [0.59–19.86]  < 0.001
 Lymphocyte count (× 109/L) 1.37 [0.13–4.22] 0.78 [0.25–3.64] 1.42 [0.13–4.22]  < 0.001
NLR 3.1 [0.6–50.0] 11.6 [2.4–49.2] 2.9 [0.6–50.0]  < 0.001
 Hemoglobin (g/dL) 12.5 [6.0–16.6] 11.2 ± 2.2 12.4 ± 1.9 0.012
 RDW (%) 13.6 [11.7–29.4] 15.2 ± 1.9 14.1 ± 2.0 0.015
 Platelet count (× 109/L) 218 [34–553] 246 ± 83 230 ± 83 0.336
 MPV (fL) 10.0 [1.0–16.1] 10.3 [1.0–14.5] 10.0 [1.0–16.1] 0.019
 C-reactive protein (mg/dL) 2.7 [0.1–34.0] 10.7 [0.2–34.0] 2.2 [0.1–34.0]  < 0.001
 Procalcitonin (ng/mL) 0.1 [0.0–54.6] 0.7 [0.1–13.4] 0.1 [0.0–54.6]  < 0.001
 D-dimer (ng/mL) 793 [20–19400] 3660 [210–9650] 713 [20–19400]  < 0.001
 LDH (U/L) 294.5 [90.0–1917.0] 289.0 [230.0–376.0] 463.0 [368.0–626.0]  < 0.001
 Ferritin (ng/mL) 279.0 [2.1–4835.0] 813 [87–3295] 273 [2–4835]  < 0.001
 Fibrinogen (mg/dL) 422 [30–2716] 409.0 [317.0–525.0] 627.0 [492.0–706.0]  < 0.001
 Prothrombin time (seconds) 14.8 [12.4–32.3] 17.1 ± 3.9 15.1 ± 2.0 0.018
 INR 1.1 [0.9–38.5] 1.2 [1.1- 1.4] 1.1 [1.0- 1.2]  < 0.001
 aPTT (seconds) 31.1 [21.3–50.2] 35.0 ± 6.0 31.2 ± 3.7 0.004

Bold values denote statistical significance at the p ≤ 0.05 level

aPTT: activated thromboplastin time, INR: international normalized ratio, NLR: neutrophil-to-lymphocyte ratio, MPV: mean platelet volume, RDW: red cell distribution width

Comparison of Clinical and Laboratory Features of the Deceased and Surviving Patients

During the study period, 25 patients (8.2%) died. The deceased patients were significantly older than those who survived (73.4 ± 13.2 vs. 55.6 ± 17.2 years, respectively, p < 0.001). All of these patients except one were hospitalized in the ICU. Ninety-six percent of the deceased patients had at least one chronic medical condition, whereas 63.2% of the surviving patients had a comorbid disorder (p = 0.002). Diabetes mellitus, hypertension, and coronary artery disease were significantly more common among the deceased than in the survivors.

White blood cell count and neutrophil count were significantly higher, whereas lymphocyte count was significantly lower in the deceased patients. Besides, MPV, D-dimer, ferritin, and fibrinogen values were significantly higher, and PT and aPTT were significantly longer in deceased patients. Table 1 summarizes the comparison of the clinical features and laboratory results of the deceased and surviving patients.

We also examined the data as the percentages above the normal reference range for the entire group, the deceased patients, and the surviving patients (Table 2). Overall, the number of patients with leukocytosis and neutrophilia were significantly higher in the deceased group than the surviving group. Interestingly, 13.7% and 9% of the patients had leukopenia and neutropenia among the surviving patients, respectively. On the other hand, there was no neutropenia and only one leukopenia in the deceased group. While leukopenia and neutropenia were significantly more common in the surviving patients, lymphopenia was significantly more frequent among the deceased (p < 0.001, for all). Thrombocytopenia frequency was comparable between both groups.

Table 2.

Number and percentage of patients with blood counts above and below the normal reference ranges (Other hematological/inflammatory parameters presented as number and percentage above the normal reference range)

All patients
(n = 302)
Survival status p-value
Survivor
(n = 277)
Deceased
(n = 25)
White blood cell count (× 109/L) (%)
 < 4.0 39 (12.9) 38 (13.7) 1 (4.0)  < 0.001
 4.0–10.0 203 (67.2) 193 (69.7) 10 (40.0)
 > 10.0 60 (19.9) 46 (16.6) 14 (56.0)
Neutrophil count (× 109/L) (%)
 < 2.0 25 (8.3) 25 (9.0) 0 (0.0)  < 0.001
 2.0–7.0 206 (68.2) 199 (71.8) 7 (28.0)
 > 7.0 71 (23.5) 53 (19.1) 18 (72.0)
Lymphocyte count (× 109/L) (%)
 < 0.8 58 (19.2) 45 (16.2) 13 (52.0)  < 0.001
 0.8–4.0 242 (80.1) 230 (83.0) 12 (48.0)
 > 4.0 2 (0.7) 2 (0.7) 0 (0.0)
Hemoglobin (g/dL) (%)
 < 12 122 (40.4) 107 (38.6) 15 (60.0) 0.113
 12–16 176 (58.3) 166 (59.9) 10 (40.0)
 > 16 4 (1.3) 4 (1.4) 0 (0.0)
Platelet count (× 109/L) (%)
 < 150 43 (14.2) 39 (14.1) 4 (16.0) 0.849
 150–450 254 (84.1) 233 (84.1) 21 (84.0)
 > 450 5 (1.7) 5 (1.8) 0 (0.0)
Percent of the patients with value above normal
 RDW (%) 51 (16.9) 46 (16.6) 5 (20.0) 0.588
 MPV (%) 38 (12.6) 29 (10.5) 9 (36.0) 0.001
 C-reactive protein (%) 235 (77.8) 211 (76.2) 24 (96.0) 0.042
 Procalcitonin (%) 126 (41.7) 101 (36.5) 25 (100.0)  < 0.001
 D-dimer (%) 201 (66.6) 177 (63.9) 24 (96.0) 0.002
 LDH (%) 248 (82.1) 223 (80.5) 25 (100.0) 0.011
 Ferritin (%) 158 (52.3) 138 (49.8) 20 (80.0) 0.007
 Fibrinogen (%) 168 (55.6) 147 (53.1) 21 (84.0) 0.006
 Prothrombin time (%) 88 (29.1) 73 (26.4) 15 (60.0) 0.001
 INR (%) 43 (14.2) 33 (11.9) 10 (40.0) 0.001
 aPTT (%) 13 (4.3) 7 (2.5) 6 (24.0)  < 0.001

Bold values denote statistical significance at the p ≤ 0.05 level

NLR neutrophil-to-lymphocyte ratio, RDW red cell distribution width, MPV mean platelet volume, LDH lactate dehydrogenase, INR international normalized ratio, aPTT activated thromboplastin time

Normal laboratory reference values: MPV: 6–12 fL, CRP: 0–0.5 mg/dL, procalcitonin: < 0.05 ng/mL, D-dimer: 0–500 ng/mL, LDH: 125–220 U/L, ferritin: 22–275 ng/mL, Fibrinogen: 200–400 mg/dL, PT: 11–16 s, INR: 0.8–1.3, aPTT: 25–40 s

To determine cut-off values, ROC analysis using the sensitivities and specificities based on the development of mortality revealed that there were the optimal cut-off values for each laboratory parameter except for platelet count with statistical significance. The largest AUC for procalcitonin was 0.894 with the cut-off value of > 0.11 (sensitivity = 96.0% and specificity = 77.26%). The second highest AUC of 0.861 was observed in NLR with a cut-off value of > 8.59 (sensitivity = 72.0% and specificity = 88.45%). The predictive power of procalcitonin, NLR, D-Dimer, neutrophil count, ferritin and CRP for mortality were regarded as good. The corresponding sensitivity and specificities of all laboratory parameters under the optimal cut-off values are given in Table 3.

Table 3.

ROC analysis of laboratory parameters for the prediction of mortality

AUC Sensitivity Specificity Cut Off 95% CI p
White blood cell count (× 109/L) 0.771 76.00 67.51  > 7810 0.720–0.818  < 0.001
Neutrophil count (× 109/L) 0.823 76.00 79.78  > 6760 0.776–0.865  < 0.001
Lymphocyte count (× 109/L) 0.723 72.00 69.31  ≤ 1070 0.669–0.773  < 0.001
NLR 0.861 72.00 88.45  > 8.59 0.817–0.898  < 0.001
Hemoglobin (g/dL) 0.656 48.00 82.67  ≤ 10.5 0.600–0.710 0.013
RDW (%) 0.681 60.00 67.51  > 14.3 0.626–0.734 0.001
Platelet count (× 109/L) 0.577 68.00 49.46  > 213,000 0.519–0.633 0.223
MPV (fL) 0.642 36.00 93.5  > 12.2 0.585–0.696 0.025
C-reactive protein (mg/dL) 0.800 96.00 57.04  > 2.9 0.750–0.843  < 0.001
Procalcitonin (ng/mL) 0.894 96.00 77.26  > 0.11 0.854–0.926  < 0.001
D-dimer (ng/mL) 0.843 76.00 85.56  > 1893 0.797–0.882  < 0.001
LDH (U/L) 0.798 84.00 67.51  > 341 0.748–0.842  < 0.001
Ferritin (ng/mL) 0.803 72.00 89.53  > 625 0.753–0.846  < 0.001
Fibrinogen (mg/dL) 0.748 72.00 76.17  > 531 0.695–0.796  < 0.001
Prothrombin time (seconds) 0.703 68.00 72.92  > 15.7 0.648–0.754 0.001
INR 0.728 64.00 79.06  > 1.21 0.674–0.777  < 0.001
aPTT (seconds) 0.707 56.00 79.42  > 33.5 0.653–0.758 0.001

Bold values denote statistical significance at the p ≤ 0.05 level

NLR neutrophil-to-lymphocyte ratio, RDW red cell distribution width, MPV mean platelet volume, LDH lactate dehydrogenase, INR international normalized ratio, aPTT activated thromboplastin time

Percentages of patients with results above the normal range for inflammatory markers (C-reactive protein, ferritin, procalcitonin) were significantly higher in the deceased group than the surviving group. All patients (100%) had elevated serum procalcitonin levels in the deceased group. Higher than normal serum D-dimer values were observed in 63.9% and 96% of the surviving and deceased patients, respectively (p = 0.002). Similarly, the percentage of patients with elevated fibrinogen values was higher in the deceased patient group than in the surviving group. Prolonged coagulation tests (increased aPTT and PT) were also more common among the deceased patients.

Survival Analysis

The Kaplan–Meier survival curves revealed that there were significant associations between mortality and WBC, neutrophil, and lymphocyte counts, NLR, procalcitonin, PT, aPTT, and INR (p < 0.05 for all) (Fig. 1). Patients with lymphopenia had significantly lower survival rates than patients with normal lymphocyte counts (p = 0.042). Patients with higher WBC, neutrophil count, and procalcitonin levels had significantly shorter survival (p = 0.007, p < 0.001, and p < 0.001, respectively). When we grouped all patients based on NLR as those above and below median NLR value (3.07), patients with above-the-median NLR had a significantly higher mortality rate than the others (p = 0.001). Finally, patients with prolonged PT, aPTT, and INR had significantly lower survival rates (p = 0.008, p < 0.001 and p = 0.012, respectively).

Fig. 1.

Fig. 1

Kaplan–Meier survival curves for patients with normal and abnormal values for white blood cell count, neutrophil count, lymphocyte count, neutrophil-to-lymphocyte ratio, procalcitonin, prothrombin time, aPTT, and INR

Univariate and Multivariate Cox Regression Analysis to Determine Independent Predictors of Mortality

We included age (as a categorical variable below and above 65 years), presence of hypertension, chronic kidney disease, diabetes mellitus, congestive heart failure, and the indicators such as platelet count, MPV, NLR, CRP, procalcitonin, ferritin, fibrinogen, prothrombin time, and aPTT in the univariate Cox regression analysis to determine the predictors of mortality. In the univariate analysis, being older than 65 years, the presence of hypertension, NLR, CRP, procalcitonin, ferritin, prothrombin time, and aPTT emerged as independent predictors of mortality. Multivariate Cox regression analysis revealed that ages above 65 years, NLR, aPTT, and hypertension remained independent predictors of mortality (Table 4).

Table 4.

Independent determinants of mortality according to univariate and multivariate binary logistic regression analyses

Crude
HR (95%CI)
Crude
p-value
Adjusted
HR (95%CI)
Adjusted
p-value
Age > 65 years: present or absent 3.11 [1.23–7.91] 0.017 3.19 [1.13–9.06] 0.029
Hypertension: present vs absent 2.66 [1.14–6.18] 0.023 2.99 [1.03–8.7] 0.044
Chronic kidney disease: present vs absent 3.24 [0.95–11.05] 0.061
Diabetes mellitus: present vs absent 2.13 [0.96–4.72] 0.062
Congestive heart failure: present vs absent 2.12 [0.62–7.23] 0.229
Platelet count: high or normal 1.00 [1.00–1.00] 0.175
MPV: high or normal 1.01 [0.85–1.21] 0.870
NLR: high or normal 1.05 [1.03–1.08]  < 0.001 1.05 [1.02–1.09] 0.001
C-reactive protein: high or normal 1.05 [1.01–1.09] 0.022 1.03 [0.97–1.09] 0.350
Procalcitonin: high or normal 1.05 [1.01–1.10] 0.024 1.05 [0.96–1.15] 0.271
Ferritin: high or normal 1.00 [1.00–1.00] 0.034 1.00 [1.00–1.00] 0.831
Prothrombin time: high or normal 1.13 [1.03–1.24] 0.011 0.96 [0.83–1.11] 0.566
aPTT: high or normal 1.10 [1.03–1.18] 0.003 1.15 [1.03–1.29] 0.013

Bold values denote statistical significance at the p ≤ 0.05 level

HR hazard ratio, CI confidence interval, NLR neutrophil-to-lymphocyte ratio, RDW red cell distribution width, MPV mean platelet volume, aPTT activated thromboplastin time

Discussion

Our findings showed the significant differences in demographic and clinical variables, hemostatic biomarkers, coagulation tests, and inflammatory parameters between the survivors and non-survivors of COVID-19 patients. Elderly patients with hypertension were the most vulnerable group for mortality. Lymphopenia, leukocytosis, higher procalcitonin and NLR, and prolonged coagulation tests were associated with the development of mortality in COVID-19.

In a systematic review, significantly higher serum D-dimer levels were found in COVID-19 patients with acute respiratory distress syndrome (ARDS) and the subgroup of those with mortality [18]. The authors concluded a significant correlation between elevated D-Dimer levels and complications and mortality due to COVID-19. However, Favaloro et al. [19] expressed some concerns regarding the measurement and quality of reporting of D-dimer such as the measurement method, assay, cut-off values, or D-dimer units [i.e., D-dimer units (DDU) or fibrinogen equivalent units (FEU)]. Although these issues may be important in comparing the results of different studies, our results showed that higher serum D-dimer levels were significantly associated with mortality due to COVID-19. So, we think that D-Dimer monitoring in COVID-19 patients may have some critical therapeutic impacts to tailor the treatment.

Although it is not yet entirely clear how SARS-CoV-2 activates the coagulation cascade, it is plausible to think that it might be a byproduct of cytokine storm [20]. The aPTT and PT are usually prolonged during severe COVID-19, but the amount of elevation is milder than that observed in bacterial sepsis and DIC [21]. A meta-analysis conducted by Henry et al. [22] found that patients with severe and fatal COVID-19 had significantly more elevated coagulation parameters (especially PT) than patients with non-severe disease. It has been suggested that the coagulopathy observed in patients with severe COVID-19 is a mixture of localized pulmonary thrombotic microangiopathy and low-grade DIC [9]. We detected significant prolongations in the coagulation tests in the current study, consistent with the previously published studies [21, 22]. Although the mechanisms of these changes are not fully elucidated, the significant changes in the coagulation tests, increased PT, INR and aPTT, might be regarded as useful biomarkers to guide the disease severity and virus-induced biological catastrophic cascades.

Changes in peripheral blood cell counts have been well-studied in COVID-19. In infected patients, counts of white blood cells and neutrophils increase, whereas counts of lymphocyte and platelet decrease [22]. In a subset of patients, thrombocytopenia has been related to coagulation abnormalities (prolonged INR and aPTT) and DIC [23]. It has been postulated that several possible mechanisms might be responsible for this, including the viral cytopathic effect on lymphocytes, the suppressive effect of cytokine storm, lactic acidosis, and lymphoid organ atrophy [2426]. Moreover, lymphopenia was associated with the development of ARDS [27, 28]. Peripheral blood neutrophilia has been shown to predict mortality in COVID-19 independently [28]. In our study, WBC and neutrophil counts were significantly higher, and lymphocyte counts were significantly lower in the deceased than those in the surviving patients. The NLR also emerged as one of the independent predictors of mortality in our COVID-19 patient cohort. This result was in line with the previously published studies [2931]. Since NLR is calculated by considering both neutrophils and lymphocytes, the changes in the NLR values may help physicians assess the severity and prognosis of COVID-19 infections. A meta-analysis including nine studies with a total of 1,779 COVID-19 patients demonstrated that thrombocytopenia was associated with a more than five-fold increased risk of severe COVID-19. Low platelet counts were also significantly associated with increased mortality [32].

On the other hand, platelet counts were comparable between the groups in the current study. Different pathophysiological mechanisms may lead to such insignificant findings.

It seems that a reciprocal interaction exists between SARS-CoV-2 induced cytokine storm (inflammation) and activated coagulation system [33]. In severe COVID-19, a remarkable inflammatory state is usually observed, as evidenced by increased serum CRP, interleukin-6, procalcitonin, and ferritin levels [34, 35]. Although this was a viral infection, higher procalcitonin levels increased the risk of severe COVID-19 five-fold [36]. Similarly, higher CRP levels in COVID-19 patients were associated with ARDS development, myocardial injury, and death [28, 37, 38]. A meta-analysis reported that elevated serum levels of ferritin, procalcitonin, and D-dimer were associated with more deaths, ARDS development, and need for ICU care in COVID-19 patients [39]. Bacterial infections secondary viral infections would be additional reasons to explain the elevations in these inflammatory biomarkers. Our results demonstrated that serum CRP, procalcitonin, and ferritin levels were significantly higher in the deceased COVID-19 patients, reflecting a poor composite outcome. There are controversial issues about the cut-off values of these biomarkers [39]. Thus, we recommend using CRP, ferritin, and procalcitonin changes to monitor the progression and improvements of COVID-19 patients.

The limitations of the current study are as follows. First, we did not assess the development of ARDS complications and acute kidney injury in the study group. Thus, we cannot confidently say that impaired inflammatory and coagulation factors are more common in complicated COVID-19. The only outcome measure of our study was in-hospital mortality. Although we evaluated the platelet count, D-dimer, and fibrinogen levels, we did not calculate the International Society on Thrombosis and Hemostasis (ISTH) score of study patients. Thus, we cannot distinguish patients who had mild-to-moderate coagulation abnormalities from those with full-scale DIC.

In conclusion, the current study showed that inflammatory, hematological, and coagulation parameters were elevated in most COVID-19 patients. While neutrophil and WBC counts increased, lymphocyte counts decreased significantly as the disease severity increased. Age ≥ 65 years, NLR, aPTT, and hypertension were the independent predictors of mortality.

Acknowledgements

We thank Gökhan Karakoç and the editors of Model Statistics Center for help with the statistical treatment of the data.

Funding

This research did not receive any specific grant from funding agencies in the public, commercial, or not-for-profit sectors.

Code Availability

N/A.

Data Availability

N/A.

Compliance with Ethical Standards

Conflict of interest

The author declares that he has no conflict of interest.

Ethics Approval

The study was approved by Ümraniye Education and Research Hospital Ethics Committee (28.04.2020, #54132726-000-9041) and performed ethically in accordance with the Declaration of Helsinki.

Consent to Participate

All participants were informed about the study and their consent was obtained.

Consent for Publications

N/A.

Footnotes

Publisher's Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

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