1. Introduction
Infection by the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) causes the coronavirus disease 2019 (COVID-19), which has become the worst pandemic worldwide in the last few decades, with officially reported deaths exceeding 6.8 million, which are likely underestimated [1,2,3,4,5]. Although the SARS-CoV-2 virus presents a substantial pulmonary burden producing hypoxemic respiratory failure and acute respiratory distress syndrome (ARDS), extrapulmonary complications have also been reported [6]. Pathophysiology seems to be complex; however, some clues have been elucidated. This virus appears to enter the epithelial cells of the respiratory tract by binding to the angiotensin-converting enzyme 2 (ACE2) receptor, which is widespread in various organs including the respiratory system. Thus, the virus and the down-regulation of ACE2 leads to direct cytotoxic damage and a pro-inflammatory state, commonly misnamed as a “cytokine storm” [4,7]. Broadly, 14–20% of patients required admission to the intensive care unit (ICU), with an overall mortality of around 2%. In addition, among those admitted to an ICU, the mortality dramatically increases up to nearly 50% [1,2,3,8]. In this setting, it has been described that the presence of previous comorbidities and laboratory biomarkers, such as low lymphocyte count, high levels of D-dimer, C-reactive protein (CRP), and other inflammatory biomarkers, alongside some laboratory indices (or ratios), is associated with poor prognosis in SARS-CoV-2 infection [1,4,9,10,11,12]. Previous works have proposed that combining two different biomarkers in ratios might improve their prognostic capacity when compared to the biomarkers themselves. Previously, we hypothesized that SARS-CoV-2 might induce endothelial damage (vascular dysfunction) and activate the immune system, and those factors provoked a disbalance, provoking a pro-inflammatory (low lymphocyte count) and pro-coagulant state (elevation of D-dimer serum levels) [8,11,12,13,14,15,16]; taking into account the same theoretical basis, our working group evaluated, in a single-center cohort of 1113 hospitalized COVID-19 patients, the role of 10 laboratory indices as prognostic biomarkers, including both well-known ratios described previously in the literature (neutrophil to lymphocyte ratio (NLR), derived neutrophil to white blood cells minus neutrophile ratio (d-NLR), platelet to lymphocyte ratio (PLR), CRP to lymphocyte ratio, and CRP to albumin ratio) and proposed new laboratory indices. After multivariate regression logistic analysis, only the new proposed ratio, the D-dimer to lymphocyte ratio (DLR), showed an independent association in terms of mortality (adjusted OR 2.33; p < 0.05) [12].
This study aims to validate the usefulness of the novel D-dimer to lymphocyte ratio for in-hospital mortality prediction in a large national cohort of hospitalized COVID-19 patients.
2. Materials and Methods
2.1. Study Design
The present study is a retrospective, multicenter, observational study that includes patients hospitalized due to SARS-CoV-2 infection from March 2020 to March 2022 in Spain. The Spanish Society of Internal Medicine is the sponsor of the nationwide SEMI-COVID-19 Registry.
2.2. Population of the Study
For the SEMI-COVID-19 Registry, an online electronic data capture system (DCS) was developed, which includes a database manager along with procedures for the verification of data and contrasting information against the original medical record to ensure the best possible quality of data collection. Patient-identifiable data were dissociated and anonymized. Data were collected retrospectively and included more than 300 variables grouped under different headings: inclusion criteria, epidemiological data, personal medical and medication history, symptoms and physical examination findings at admission, wide laboratory panel at admission, diagnostic imaging tests, and complications during the hospitalization. More in-depth information about the registry can be found in previously published works [14]. The inclusion criteria were age over 18 years old, consent information, and complete data for the outcome variable. The exclusion criteria for baseline characteristics were the presence of leukemia, lymphoma, and infection by the human immunodeficiency virus, since most cellular indices are based on lymphocyte count. Patients without registered D-dimer, lymphocyte, CRP, albumin, and/or white cell count values at admission were excluded. From 28,444 patients included in the SEMI-COVID-19 Registry in March 2022, a total of 11,029 patients were recruited from the database. The final sample included 10,575 patients after removing extreme values for each quantitative variable and variables with considerable missing data and those of in-hospital patients before statistical analysis (Figure 1). We analyzed demographic characteristics, clinical and radiological presentation, and laboratory biomarkers on admission and treatments. The outcome was in-hospital mortality. The laboratory indices that were measured included neutrophil to lymphocyte ratio (NLR), derived neutrophil to white blood cells minus neutrophile ratio (d-NLR), platelet to lymphocyte ratio (PLR) (106/L), CRP to lymphocyte ratio (mg/L)/(106/L), CRP to albumin ratio (mg/L)/(g/dL), and the new D-dimer to lymphocyte ratio (ng/mL)/(106/L). All biomarkers and laboratory indices analyzed were measured once at admission.
2.3. Data Analysis
The Shapiro–Wilk test determined the normality of continuous quantitative variables. This study reported categorical data as proportions and continuous data as mean and standard deviation (SD) or median and interquartile range (IQR), depending on their normality. The Student’s t-test and analysis of variance (ANOVA) were performed for normally distributed variables, while the Mann–Whitney U and the Kruskal–Wallis test were used for non-normally distributed variables. The Kaplan–Meier (KM) estimator was used to graphically represent the event death, and the Cox regression test was used to evaluate the hazard ratio (HR). The receiver operating characteristic area under the curve (AUC) analysis and the Youden index were used to explore the best cut-off point for predicting mortality for laboratory biomarkers. The univariate logistic regression test evaluated the association between the different variables and outcome (crude odds ratio (OR)). The multivariate logistic (adjusted OR) regression analysis included adjustment for potential confounding variables and included variables with p < 0.1 and a strong association in the univariate analysis. All tests were two-sided, and the level of statistical significance was set at p < 0.05. The statistical analysis was carried out by using R, version 4.2.2, R Core Team, Vienna, Austria (main R packages used: tidyverse, pROC, survival).
3. Results
A total of 10,575 COVID-19 patients were included in this study. The mean age of participants was 66.9 (±16) years, and 58.6% (6202 patients) of them were male. Among the comorbidities observed, arterial hypertension was the most common, affecting 51.8% of the patients (n = 5474), followed by dyslipidemia in 40.3% (n = 4259 patients), diabetes in 22.9% (n = 1098 patients), atrial fibrillation in 10.3% (n = 1089 patients), and dementia in 7.8% (n = 815 patients). The overall mortality rate was 16.3% (n = 1654 patients). In addition, ICU admission was needed in 10.5% (n = 1106 patients), non-invasive mechanical ventilation was required in 8.8% (n = 923 patients), and orotracheal intubation was required in 7.5% (789 patients). The median length of hospitalization was 9 days (6–15). Table 1 describes and summarizes the baseline characteristics of the total sample, while a comparison of distribution frequency between survivors and non-survivors is shown.
The predictive capacity of the D-dimer to lymphocyte ratio demonstrated an AUC of 0.69 (95% CI, 0.68–0.71) for in-hospital mortality (Figure 2, panel A). DLR > 1 was identified as the optimal cut-off point for mortality, with a negative predictive value (NPV) of 90%. NLR exhibited an AUC of 0.67 (95% CI, 0.65–0.68) for in-hospital mortality, with an optimal cut-off above 6.5 for predicting mortality (NPV 88%). The predictive capacity of d-NLR revealed an AUC of 0.66 (95% CI, 0.65–0.68) for in-hospital mortality. d-NLR > 4 was the optimal cut-off for mortality (NPV 89%). PLR showed an AUC of 0.58 (95% CI, 0.57–0.6) for in-hospital mortality, with an optimal cut-off above 290. The predictive capacity of the CPR to lymphocyte ratio showed an AUC of 0.67 (95% CI, 0.66–0.69) for in-hospital mortality, with an optimal cut-off above 0.1 for mortality (NPV 89%). The CPR to serum albumin ratio showed an AUC of 0.67 (95% CI, 0.65–0.68) for in-hospital mortality (Figure 2a), with an optimal cut-off above 25 for mortality (NPV 90%).
Univariate logistic regression analysis for in-hospital mortality showed the following: DLR > 1 (crude OR 3.54; 95% CI 2.34–5.47), NLR > 6.5 (crude OR 3.58; 95% CI 2.39–5.44), d-NLR > 4 (crude OR 3.58, 2.40–5.39), CRP to lymphocyte ratio > 0.1 (crude OR 3.41, 95% CI 2.26–5.25), and CRP to serum albumin ratio > 25 (crude OR 2.93; 95% CI 1.96–4.43). On the other hand, the multivariate analysis presented an independent association with in-hospital mortality for DLR > 1 (adjusted OR 2.12, 95% CI 1.119–4.08; p = 0.02), age over 70 (adjusted OR 2.63; 95% CI 1.60–4.41; p =< 0.01), and ARDS (adjusted OR 10.96; 95% CI 5.69–23.46; p < 0.01). Table 2 summarizes the association for univariate and multivariate analysis related to mortality.
Survival analysis for in-hospital mortality showed DLR > 1 (HR 2.24; 95% CI 2.03–2.47; p < 0.01), NLR > 6.5 (HR 1.92; 95% CI 1.74–2.11; p < 0.01), d-NLR > 4 (HR 1.98; 95% CI 1.80–2.18; p < 0.01), CRP to lymphocyte ratio > 0.1 (HR 1.97; 95% CI 1.78–2.17; p < 0.01), and CRP to serum albumin ratio > 25 (HR 1.89; 95% CI 1.71–2.09; p < 0.01). The survival Kaplan–Meir curve for in-hospital mortality and DLR cut-off above 1 is shown in Figure 2b.
4. Discussion
Since the presence of a low lymphocyte count and elevated D-dimer levels seems to be associated with poor prognosis in SARS-CoV-2 infection, searching for laboratory biomarkers presents a great clinical interest [15,16,17]. In this setting, Zhang H et al. [18] conducted a meta-analysis with 3337 patients and found that patients with severe COVID-19 had lower levels of lymphocytes, with a weight mean difference (WMD) of −0.468 (×109/L) (95% CI; −0.543 to −0.394), but higher levels of NLR, with a WMD of 6.939 (95% CI 4.581–9.297) and D-dimer levels with a WMD of 1.217 mg/L (95% CI 0.788–1.646), when compared with non-severe COVID-19. Another meta-analysis on 61 studies (15,522 patients) found that higher levels of NLR were associated with all-cause mortality in hospitalized COVID-19 patients in the univariate analysis but not in the multivariate analysis (crude OR 12.6; 95% CI 6.88–23.06), showing a high degree of heterogeneity (I2 = 98%) [19]. Contrarily, our working group found no association between NLR and 30-day mortality (crude OR 1.03; 95% CI 0.99–1.05) in a prospective cohort of 95 critically ill patients admitted to the ICU [17]. Further, some other laboratory indices were also evaluated. Sarkar et al. [20] evaluated the role of PLR in COVID-19 patients upon admission (14 studies; 2768 patients) for mortality, showing a WMD of 66.10 (95% CI: 47.75–84.44) with high heterogeneity (I2 = 89%) and low-quality evidence; a meta-analysis of 71 studies found no association for PLR with a poor prognosis in terms of mortality [21]. Moreover, a retrospective study evaluated the role of the CRP to serum albumin ratio in 272 COVID-19 patients in terms of mortality, finding an optimal cut-off above 21.5 (c-statistic of 0.72; 95% CI 0.66–0.77) [22], whereas another study that involved 3471 patients showed an optimal cut-off above 25 to be associated with mortality (OR, 1.47; 95% CI 1.19–1.82) [23]. A meta-analysis conducted by Zavalaga-Zegarra et al. [24] evaluated the potential association of the CPR to albumin ratio in terms of mortality in 17 studies (7164 COVID-19 patients), finding higher values in non-survivors (MD: 2.59; 95% CI: 1.95–3.23) with severe heterogeneity (I2 = 92%). A sensitivity analysis that included studies with a low risk of bias (5 studies) showed a significant association (MD: 2.99; 95% CI: 2.47–3.51; I2 = 0%), where cut-off values were only stated in two studies without specifying units of measure.
Formerly, our working group evaluated different laboratory indices published in the literature and a new index called the D-dimer to lymphocyte ratio as a potential prognostic biomarker in a single-center cohort of 1113 hospitalized COVID-19 patients. DLR > 0.6 showed an independent association for 30-day mortality (adjusted OR 2.33; 95% CI 1.01–5.38), but no other laboratory indices showed any association in multivariate analysis, including NLR, d-NLR, PLR, CRP to lymphocyte ratio, and CRP to albumin ratio [12]. The present study involved a large national multicenter cohort of 10,575 hospitalized COVID-19 patients, aiming to validate the potential association between DLR and short-term mortality. In this national cohort, 10.5% of patients were admitted to the ICU, while in other series, this may reach up to 5–17%. In addition, in this study, ICU mortality was 24.7% compared to up to 40–50% previously published in the literature. Thus, new biomarkers such as DLR might be helpful for a better prognosis prediction [2,3,4,9]. Among all laboratory biomarkers evaluated in this retrospective national cohort that involved 10,575 COVID-19 patients, we found that DLR showed an independent association for in-hospital mortality, proving its potential usefulness as a biomarker of poor prognosis with an optimal cut-off above 1 (adjusted OR 2.12, 95% CI 1.119–4.08) regarding age, ARDS, lymphopenia < 800 µL−1, D-dimer > 1000 ng/mL, among others (Table 2), with the worst survival rate for DLR > 1 (HR 2.24; 95% CI 2.03–2.47). In this large multicenter cohort, no other laboratory indices showed an independent association in multivariate analysis.
Hence, in this large national cohort study, we successfully achieved the outcome and validated the usefulness of the novel laboratory index known as DLR for predicting mortality. DLR appears to be a useful prognostic biomarker in the assessment of mortality in hospitalized COVID-19 patients; further, we hypothesize that DLR might be a useful biomarker for other infectious or inflammatory diseases. However, additional prospective studies will be necessary to incorporate it into daily clinical practice.
Our study has some limitations. Firstly, it is a retrospective observational study based on a national dataset. Secondly, all laboratory biomarkers were measured only once at admission; the dynamic changes in the biomarkers were not assessed, and virus load or virus variant was not assessed. Thirdly, our study included patients from March 2020 to March 2022, without differentiation between COVID-19 pandemic waves. Fourthly, patients with pre-existing hematological disorders were excluded, so the results might not apply to this population. Despite these limitations, our study has several strengths: It was a large multicenter study that included all consecutive patients, minimizing selection biases. The role of ratios has been analyzed in the context of real clinical practice, and efforts have been made to minimize information biases when establishing the definitions of the concepts in the methods.
5. Conclusions
In summary, this large national multicenter study validates the potential usefulness of the novel laboratory index called the D-dimer to lymphocyte ratio as a prognostic biomarker for in-hospital mortality, measured at admission. Although DLR would be an easy-to-use, accessible, and cost-effective biomarker for daily clinical practice, additional prospective studies will be necessary to incorporate it into daily clinical practice.
Conceptualization, C.-M.O., P.D.-R. and L.-A.A.-S.-W.; methodology, C.-M.O., M.R.-R., L.d.J.-H., J.A.V.N. and N.R.P.; formal analysis, C.-M.O.; investigation, M.R.-R., F.N.-R., V.G.G., J.L.B.P., P.M.P.F., A.A.M. and J.M.G.B.; resources, J.M.N.-C.; data curation, M.R.-R., F.N.-R., V.G.G., L.d.J.-H., E.F.A., G.M.G.G., P.M.P.F., E.R.V. and J.-M.C.-R.; writing—original draft, C.-M.O. and P.D.-R.; writing—review and editing, all authors contributed to review-editing the original draft; visualization, C.-M.O., P.D.-R. and L.-A.A.-S.-W.; supervision, P.D.-R. and L.-A.A.-S.-W.; project administration, J.-M.C.-R. and J.M.N.-C.; funding acquisition, J.-M.C.-R. All authors have read and agreed to the published version of the manuscript.
The SEMI-COVID-19 Registry and related studies were approved by the Institutional Research Ethics Committee of Malaga (Spain) in March 2020 (Ethics Committee code: SEMI-COVID-19 27-03-20).
All included patients or their legal representatives gave their informed consent. In cases in which there were biological safety concerns, or the patient had already been discharged, consent was obtained verbally and noted on the patient’s medical record. Patient-identifiable data were dissociated and anonymized to ensure confidentiality and privacy.
The data that support the findings of this study are available from the corresponding author upon reasonable request.
We gratefully acknowledge all the investigators who participated in the SEMI-COVID-19 Registry.
The authors declare no conflicts of interest.
Footnotes
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Figure 2. (a) showed the predictive capacity for in-hospital mortality of D-dimer to lymphocyte ratio (DLR) showed a ROC area under the curve of 0.69 (95% CI, 0.68–0.71). (b) showed overall survival Kaplan–Meier analyses of in-hospital mortality for DLR > 1 stratified according to the optimal cut-off, showing a hazard ratio of 2.24 (95% CI 2.03–2.47). The absolute numbers of surviving patients on days 0, 5, 10, 15, 20, 25, and 30 comparing levels from above or below the optimal cut-off.
Baseline characteristics and outcomes in the studied population, comparing survivors and non-survivors.
Variable | Total | Survivors | Non-Survivors | p Value |
---|---|---|---|---|
Age, years (mean, SD) | 66.9 (±16) | 64.8 (±16) | 78.2 (±11) | <0.01 |
Sex male, n (%) | 6202 (58.6) | 5162 (57.9) | 1040 (62.9) | <0.01 |
BMI, kg/m2 (mean, SD) | 29 (±5) | 29 (±5) | 30 (±5) | <0.01 |
Hypertension, n (%) | 5474 (51.8) | 4297 (48.2) | 1177 (71.2) | <0.01 |
Dyslipidemia, n (%) | 4259 (40.3) | 3389 (38.0) | 870 (52.6) | <0.01 |
Heart failure, n (%) | 691 (6.5) | 440 (4.9) | 251 (15.2) | <0.01 |
COPD, n (%) | 736 (7.0) | 529 (5.9) | 207 (12.5) | <0.01 |
Dementia, n (%) | 815 (7.7) | 514 (5.8) | 301 (18.2) | <0.01 |
Cancer, n (%) | 557 (5.3) | 423 (4.7) | 134 (8.1) | <0.01 |
Pneumonia, n (%) | 4525 (42.8) | 3635 (40.7) | 890 (53.8) | <0.01 |
SBP < 100 mmHg, n (%) | 776 (7.5) | 586 (6.7) | 190 (11.6) | <0.01 |
Heart rate > 100 bpm, n (%) | 2274 (21.8) | 1904 (21.6) | 370 (22.8) | 0.29 |
Oxygen saturation < 90%, n (%) | 1937 (18.8) | 1247 (14.3) | 690 (42.6) | <0.01 |
ARDS, n (%) | 3459 (32.7) | 2218 (24.9) | 1241 (75.0) | <0.01 |
Laboratory findings | ||||
Hemoglobin, mg/dL | 13.7 | 13.8 | 13.2 | <0.01 |
Leukocytes, µL−1 | 6400 | 6300 | 7150 | <0.01 |
Neutrophils, µL−1 | 4680 | 4520 | 5655 | <0.01 |
Neutrophils, >8000/µL, n (%) | 1660 (15.7) | 1195 (13.4) | 465 (28.1) | <0.01 |
Lymphocytes, µL−1 | 930 | 980 | 760 | <0.01 |
Lymphocytes < 800/µL, n (%) | 4137 (39.1) | 3217 (36.1) | 920 (55.6) | <0.01 |
Platelets, ×1000∙µL−1 | 193 | 195 | 183 | <0.01 |
D-dimer, ng/mL | 613 | 575 | 981 | <0.01 |
D-dimer > 1000 ng/mL, n (%) | 3074 (29.1) | 2263 (25.4) | 843 (51.0) | <0.01 |
CRP, mg/L | 64.6 | 58.1 | 107.5 | <0.01 |
CRP > 100 mg/L, n (%) | 3672 (34.7) | 2789 (31.3) | 883 (53.4) | <0.01 |
Procalcitonin, µg/L | 0.11 | 0.10 | 0.22 | <0.01 |
Albumin, g/dL (median, P25–P75) | 3.7 (3.3–4.0) | 3.8 (3.4–4.1) | 3.4 (3.1–3.7) | <0.01 |
NLR, (median, P25–P75) | 4.9 (3.1–8.3) | 4.6 (2.9–7.5) | 7.3 (4.4–13.0) | <0.01 |
d-NLR, (median, P25–P75) | 3.1 (2.1–4.9) | 2.9 (1.9–4.5) | 4.4 (2.8–7.0) | <0.01 |
PLR, | 205 | 200 | 239 | <0.01 |
CLR, | 0.07 | 0.06 | 0.14 | <0.01 |
CAR, | 17.7 | 15.6 | 32.4 | <0.01 |
DLR, | 0.67 | 0.60 | 1.37 | <0.01 |
ICU admission, n (%) | 1106 (10.5) | 706 (7.9) | 400 (24.2) | <0.01 |
Orotracheal intubation, n (%) | 789 (7.5) | 435 (4.9) | 354 (21.5) | <0.01 |
NIMV, n (%) | 923 (8.8) | 585 (6.6) | 338 (20.6) | <0.01 |
Outcomes | ||||
Mortality, n (%) | 1654 (15.6) | - | - | - |
ARDS: acute respiratory distress syndrome; BMI: body mass index; COPD: chronic obstructive pulmonary disease; CAR: CRP to serum albumin ratio; CLR: CRP to lymphocyte ratio; DLR: D-dimer to lymphocyte ratio; d-NLR: derivate neutrophil to white blood cells ratio; ICU: intensive care unit; NIMV: non-invasive mechanical ventilation; NLR: neutrophil to lymphocyte ratio; PLR: platelet to lymphocyte ratio; SBP: systolic blood pressure.
Univariate and multivariate * logistic regression analysis for in-hospital mortality.
Variables | OR † | 95% CI | p Value | OR ‡ | 95% CI | p Value | ||
---|---|---|---|---|---|---|---|---|
Univariate | Multivariate | |||||||
Age > 70 years | 3.17 | 2.10 | 4.87 | <0.01 | 2.63 | 1.59 | 4.41 | <0.01 |
Sex (female) | 0.67 | 0.44 | 1.01 | 0.06 | 0.66 | 0.40 | 1.06 | 0.09 |
Dementia | 1.70 | 0.76 | 3.43 | 0.17 | - | - | - | - |
Hypertension | 2.51 | 1.63 | 3.96 | <0.01 | 1.43 | 0.85 | 2.44 | 0.18 |
Dyslipidemia | 1.35 | 0.91 | 2.00 | 0.13 | - | - | - | - |
Heart failure | 3.99 | 2.25 | 6.87 | <0.01 | 1.92 | 0.96 | 3.75 | 0.06 |
COPD | 2.88 | 1.65 | 4.86 | <0.01 | 1.14 | 0.58 | 2.20 | 0.70 |
Cancer | 2.02 | 0.96 | 3.89 | 0.05 | 2.12 | 0.89 | 4.75 | 0.08 |
ARDS | 14.6 | 7.9 | 30.2 | <0.01 | 10.9 | 5.7 | 23.5 | <0.01 |
SBP < 100 mmHg | 1.85 | 0.93 | 3.45 | 0.06 | 1.98 | 0.84 | 4.39 | 0.10 |
Oxygen saturation < 90% | 2.78 | 1.82 | 4.35 | <0.01 | 1.38 | 0.81 | 2.31 | 0.23 |
Neutrophils > 8000/µL | 1.71 | 1.01 | 2.79 | 0.04 | 1.02 | 0.50 | 2.00 | 0.97 |
Lymphocyte < 800/µL | 2.78 | 1.85 | 4.17 | <0.01 | 1.20 | 0.65 | 2.24 | 0.56 |
D-dimer > 1000 ng/mL | 2.13 | 1.43 | 3.17 | <0.01 | 1.03 | 0.56 | 1.91 | 0.92 |
CRP > 100 mg/L | 2.87 | 1.93 | 4.30 | <0.01 | 1.48 | 0.58 | 4.14 | 0.44 |
Albumin < 3.5 g/dL | 2.38 | 1.59 | 3.57 | <0.01 | 1.39 | 0.83 | 2.31 | 0.21 |
NLR > 6.5 (µL−1/µL−1) | 3.58 | 2.39 | 5.44 | <0.01 | 1.10 | 0.51 | 2.38 | 0.81 |
d-NLR > 4 (µL−1/µL−1) | 3.58 | 2.40 | 5.39 | <0.01 | 1.90 | 0.96 | 3.82 | 0.07 |
PLR > 290 (µL−1/µL−1) | 1.83 | 1.23 | 2.72 | <0.01 | 0.62 | 0.36 | 1.08 | 0.09 |
CLR > 0.1 (mg/L/µL−1) | 3.41 | 2.26 | 5.25 | <0.01 | 1.45 | 0.64 | 3.26 | 0.37 |
CAR > 25 (mg/L)/(g/dL) | 2.93 | 1.96 | 4.43 | <0.01 | 0.82 | 0.28 | 2.26 | 0.71 |
DLR > 1 (ng/mL/µL−1) | 3.54 | 2.34 | 5.47 | <0.01 | 2.12 | 1.11 | 4.08 | 0.02 |
ARDS: acute respiratory distress syndrome; COPD: chronic obstructive pulmonary disease; CRP: C-reactive protein; CAR: CRP to serum albumin ratio; CLR: CRP to lymphocyte ratio; DLR: D-dimer to lymphocyte ratio; d-NLR: derivate neutrophil to white blood cells ratio; NLR: neutrophil to lymphocyte ratio; PLR: platelet to lymphocyte ratio; SBP: systolic blood pressure. * The multivariate analysis was performed for variables with a p-value < 0.1 in the univariate analysis. † Crude odds ratio; ‡ adjusted odds ratio.
Supplementary Materials
The following supporting information can be downloaded at:
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Abstract
Background: This study aimed to validate the role of the D-dimer to lymphocyte ratio (DLR) for mortality prediction in a large national cohort of hospitalized coronavirus disease 2019 (COVID-19) patients. Methods: A retrospective, multicenter, observational study that included hospitalized patients due to SARS-CoV-2 infection in Spain was conducted from March 2020 to March 2022. All biomarkers and laboratory indices analyzed were measured once at admission. Results: A total of 10,575 COVID-19 patients were included in this study. The mean age of participants was 66.9 (±16) years, and 58.6% (6202 patients) of them were male. The overall mortality rate was 16.3% (n = 1726 patients). Intensive care unit admission was needed in 10.5% (n = 1106 patients), non-invasive mechanical ventilation was required in 8.8% (n = 923 patients), and orotracheal intubation was required in 7.5% (789 patients). DLR presented a c-statistic of 0.69 (95% CI, 0.68–0.71) for in-hospital mortality with an optimal cut-off above 1. Multivariate analysis showed an independent association for in-hospital mortality for DLR > 1 (adjusted OR 2.09, 95% CI 1.09–4.04; p = 0.03); in the same way, survival analysis showed a higher mortality risk for DLR > 1 (HR 2.24; 95% CI 2.03–2.47; p < 0.01). Further, no other laboratory indices showed an independent association for mortality in multivariate analysis. Conclusions: This study confirmed the usefulness of DLR as a prognostic biomarker for mortality associated with SARS-CoV-2 infection, being an accessible, cost-effective, and easy-to-use biomarker in daily clinical practice.
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1 Internal Medicine Department, Hospital Clínico de Santiago, 15706 Santiago de Compostela, Spain; Sanitary Research Institute of Santiago, 15706 Santiago de Compostela, Spain; School of Medicine, Universidad Complutense de Madrid, 28040 Madrid, Spain;
2 School of Medicine, Universidad Complutense de Madrid, 28040 Madrid, Spain;
3 Internal Medicine Department, Hospital Universitario de Bellvitge, 08908 Barcelona, Spain
4 Internal Medicine Department, Hospital Costa del Sol, 29603 Marbella, Spain;
5 Internal Medicine Department, Hospital Universitario San Juan de Alicante, 03550 Alicante, Spain
6 Internal Medicine Department, Hospital Universitario 12 de Octubre, 28041 Madrid, Spain;
7 Internal Medicine Department, Hospital de Cabueñes, 33394 Gijon, Spain;
8 Internal Medicine Department, Complejo Hospitalario Universitario de Badajoz, 06010 Badajoz, Spain;
9 Internal Medicine Department, Complejo Hospitalario Universitario de Albacete, 02006 Albacete, Spain
10 Internal Medicine Department, Hospital Clínico de Santiago, 15706 Santiago de Compostela, Spain
11 Internal Medicine Department, Hospital Universitario Dr. Peset, 46017 Valencia, Spain;
12 Internal Medicine Department, Hospital Universitario Puerta de Hierro Majadahonda, 28222 Madrid, Spain
13 Internal Medicine Department, Hospital General Universitario de Elda, 03600 Alicante, Spain
14 Internal Medicine Department, Hospital Miguel Servet, 50009 Zaragoza, Spain
15 Internal Medicine Department, Hospital Universitario La Princesa, 28006 Madrid, Spain
16 Internal Medicine Department, Hospital Infanta Sofía, 28702 Madrid, Spain
17 Internal Medicine Department, Hospital Universitario La Fe, 46026 Valencia, Spain
18 Internal Medicine Department, Hospital Público de Monforte de Lemos, 27400 Lugo, Spain;
19 Internal Medicine Department, Complejo Asistencial Universitario de León, 24008 Leon, Spain
20 Internal Medicine Department, Hospital Torrecardenas, 04009 Almeria, Spain
21 Internal Medicine Department, Hospital Insular de Gran Canaria, 35016 Las Palmas de Gran Canarias, Spain
22 School of Medicine, Universidad Complutense de Madrid, 28040 Madrid, Spain;
23 School of Medicine, Universidad Complutense de Madrid, 28040 Madrid, Spain;