| Literature DB >> 35115644 |
Eduardo Cervantes-Alvarez1,2, Nathaly Limon-de la Rosa1, Moises Salgado-de la Mora3, Paola Valdez-Sandoval3, Mildred Palacios-Jimenez1,4, Fatima Rodriguez-Alvarez1,4, Brenda I Vera-Maldonado1,4, Eduardo Aguirre-Aguilar3, Juan Manuel Escobar-Valderrama3, Jorge Alanis-Mendizabal3, Osvely Méndez-Guerrero1, Farid Tejeda-Dominguez5, Jiram Torres-Ruíz6, Diana Gómez-Martín6, Kathryn L Colborn7, David Kershenobich1, Christene A Huang8, Nalu Navarro-Alvarez9,10,11.
Abstract
Severe COVID-19 is associated with a systemic hyperinflammatory response leading to acute respiratory distress syndrome (ARDS), multi-organ failure, and death. Galectin-3 is a ß-galactoside binding lectin known to drive neutrophil infiltration and the release of pro-inflammatory cytokines contributing to airway inflammation. Thus, we aimed to investigate the potential of galectin-3 as a biomarker of severe COVID-19 outcomes. We prospectively included 156 patients with RT-PCR confirmed COVID-19. A severe outcome was defined as the requirement of invasive mechanical ventilation (IMV) and/or in-hospital death. A non-severe outcome was defined as discharge without IMV requirement. We used receiver operating characteristic (ROC) and multivariable logistic regression analysis to determine the prognostic ability of serum galectin-3 for a severe outcome. Galectin-3 levels discriminated well between severe and non-severe outcomes and correlated with markers of COVID-19 severity, (CRP, NLR, D-dimer, and neutrophil count). Using a forward-stepwise logistic regression analysis we identified galectin-3 [odds ratio (OR) 3.68 (95% CI 1.47-9.20), p < 0.01] to be an independent predictor of severe outcome. Furthermore, galectin-3 in combination with CRP, albumin and CT pulmonary affection > 50%, had significantly improved ability to predict severe outcomes [AUC 0.85 (95% CI 0.79-0.91, p < 0.0001)]. Based on the evidence presented here, we recommend clinicians measure galectin-3 levels upon admission to facilitate allocation of appropriate resources in a timely manner to COVID-19 patients at highest risk of severe outcome.Entities:
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Year: 2022 PMID: 35115644 PMCID: PMC8813958 DOI: 10.1038/s41598-022-05968-4
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Univariate and multivariable logistic regression analyses for severe outcome.
| Variable | Univariate | Multivariable | |||||
|---|---|---|---|---|---|---|---|
| Odds ratio | 95% CI | Odds ratio | 95% CI | ||||
| Galectin-3 (binary) | 7.94 | (3.75–16.82) | < | 3.68 | (1.47–9.20) | < | < |
| CRP | 1.11 | (1.07–1.16) | < | 1.05 | (1.00–1.11) | ||
| Albumin | 0.14 | (0.06–0.33) | < | 0.35 | (0.13–0.89) | ||
| Critical disease (CT pulmonary affection > 50%) | 7.86 | (3.25–19.03) | < | 4.04 | (1.17–13.97) | < | |
| Gender (male) | 1.99 | (0.93–4.25) | |||||
| Age | 1.02 | (1.00–1.05) | |||||
| Diabetes | 1.62 | (0.74–3.57) | 0.23 | ||||
| Hypertension | 0.98 | (0.48–2.01) | 0.96 | ||||
| Obesity (BMI ≥ 30) | 1.14 | (0.59–2.21) | 0.71 | ||||
| NLR | 1.05 | (1.02–1.09) | < | ||||
| Neutrophil count | 1.15 | (1.07–1.23) | < | ||||
| Ferritin | 1.00 | (1.07–1.23) | < | ||||
| Lymphocyte count | 0.63 | (0.28–1.42) | 0.27 | ||||
| Platelets | 1.00 | (1.00–1.00) | 0.89 | ||||
| D-Dimer | 1.00 | (1.00–1.00) | |||||
| Fibrinogen | 1.00 | (1.00–1.01) | < | ||||
| INR | 2.06 | (1.01–4.24) | |||||
| Triglycerides | 1.01 | (1.00–1.01) | |||||
| AST | 1.01 | (1.00–1.02) | |||||
Galectin-3 was analyzed as a binary variable according to its non-linear relationship with severe outcomes (> 30.99 ng/mL = 1, < 30.99 ng/mL = 0). Only variables with a p value < 0.20 after univariate analyses were further evaluated in multivariable analyses. The AUC of the final model was compared against that of each independent predictor with DeLong’s test for correlated ROC curves. Bold values represent p < 0.05.
Demographic, clinical and laboratory characteristics.
| Total (n = 156) | Severe outcome (n = 54) | Non-severe outcome (n = 102) | ||
|---|---|---|---|---|
| Age | 53.24 ± 13.22 | 54.63 ± 11.52 | 50.97 ± 13.92 | 0.10 |
| Gender, male | 107 (68.6%) | 42 (39.3%)* | 65 (60.7%)* | 0.07 |
| Gender, female | 49 (31.4%) | 12 (24.5%)* | 37 (75.5%)* | |
| BMI | 29.42 (26.74–33.78) | 29.35 (26.79–32.89) | 29.42 (26.80–33.40) | 0.77 |
| Normal | 21 (13.5%) | 4 (19.0%)* | 17 (81.0%)* | 0.14 |
| Overweight | 66 (42.3%) | 25 (37.9%)* | 41 (62.1%)* | 0.46 |
| Obesity | 69 (44.2%) | 25 (36.2%)* | 44 (63.8%)* | 0.71 |
| Hypertension | 47 (30.1%) | 17 (36.2%)* | 30 (63.8%)* | 0.96 |
| Diabetes | 33 (21.2%) | 15 (45.5%)* | 18 (54.5%)* | 0.23 |
| Alcohol consumption | 60 (38.5%) | 24 (40.0%)* | 36 (60.0%)* | 0.28 |
| Days of hospital stay | 7 (5–14) | 16.5 (6–26) | 7 (5–9) | < |
| IMV | 51 (32.7%) | 51 (94.4%) | 0 (0.0%) | < |
| Mortality | 21 (13.5%) | 21(38.9%) | 0 (0.0%) | < |
| > 50%, critical disease | 94 (60.3%) | 47 (87.0%) | 47 (46.1%) | < |
| < 50%, moderate disease | 62 (39.7%) | 7 (13.0%) | 55 (53.9%) | |
| Galectin-3 (ng/ml) | 28.77 (17.52–42.04) | 41.17 (29.71–52.25) | 23.76 (15.78–33.97) | < |
| Neutrophil count (× 103/µl) | 6.83 (4.13–10.61) | 9.4 (5.98–14.28) | 6 (3.54–9) | < |
| Lymphocyte count (× 103/µl) | 0.77 (0.53–1.05) | 0.7 (0.48–0.98) | 0.84 (0.57–1.09) | 0.09 |
| NLR | 8.43 (5.29–17.68) | 14.22 (7.94–23.32) | 6.97 (4.09–12.89) | < |
| Fibrinogen | 645 (482–772) | 682 (592.5–848.75) | 616.5 (455.5–738) | < |
| Ferritin (ng/ml) | 500.47 (292.25–1020.5) | 722.7 (339.4–1167) | 376.4 (227.3–851.6) | < |
| D-Dimer (ng/ml) | 698.5 (459.5–1178.5) | 1176 (528.8–2510) | 604.5 (400.8–928.8 ) | < |
| CRP (mg/dl) | 14 (6.13–23.01) | 20.96 (14.42–29.17) | 9.38 (4.48–19.1) | < |
| INR | 1.1 (1–1.2) | 1 (1.1–1.2) | 1.1 (1–1.2) | |
| Platelets (K/μl) | 224.25 (191–288) | 220.7 (185.5–300) | 234 (193–290) | 0.66 |
| Albumin (g/dl) | 3.7 ± 0.54 | 3.44 ± 0.47 | 3.89 ± 0.49 | < |
| AST (U/L) | 36.25 (26.8–59.9) | 43.26 (33–65) | 31.62 (23.1–56.7) | < |
| Triglycerides (mg/dL) | 152 (115.5–199.5) | 175 (127.8–224.8) | 137.5 (112–193.3) | |
Data are reported as median (IQR), mean (± SD) and n (%).Comparisons were performed with Pearson’s Chi-squared test or Fisher’s exact test and either Student’s t-test or Mann–Whitney U test. Bold values represent p < 0.05.
BMI Body mass index.
Figure 1Galectin-3 serum levels in COVID-19 patients. (a) Galectin-3 circulating levels upon hospital admission of COVID-19 patients (n = 156) and age-matched healthy pre-pandemic controls (n = 10). (b) Severe outcomes in COVID-19 patients were associated with elevated levels of galectin-3. Data in (a, b) are shown as median with IQR. ****p < 0.0001; two-tailed Mann–Whitney U test or two-tailed t-test. Samples were assessed in duplicate in ELISA assays.
Figure 2Galectin-3 correlates with inflammatory markers in COVID-19 patients. Spearman correlations show significant associations between galectin-3 and commonly measured inflammatory markers in SARS-CoV-2 infected patients. (a) CRP, (b) Neutrophil count, (c) Lymphocyte count, (d) NLR, (e) Ferritin, (f) D-dimer, (g) INR, (h) Fibrinogen, (i) Platelets, (j) Albumin, (k) AST and (l) Triglycerides.
Figure 3Galectin-3, CRP, albumin and CT pulmonary affection > 50% as independent predictors of severe outcome in COVID-19 patients. Receiver-operating characteristic curves (ROCs) of the independent predictors for the classification of binary outcomes (severe/non-severe) using (a) galectin-3, (b) CRP, (c) albumin and (d) the combined predicted probabilities of galectin-3, CRP albumin and CT pulmonary affection > 50%.
Discrimination power of other inflammatory and thromboinflammatory markers for severe outcome and comparison with galectin-3.
| Biomarker | AUC | 95% CI | ||
|---|---|---|---|---|
| Galectin-3 | 0.75 | (0.67–0.84) | < | – |
| CRP | 0.76 | (0.68–0.85) | < | 0.70 |
| Albumin | 0.73 | (0.65–0.82) | < | 0.93 |
| NLR | 0.71 | (0.62–0.79) | < | 0.52 |
| Neutrophil count | 0.70 | (0.61–0.78) | < | 0.43 |
| Ferritin | 0.66 | (0.57–0.76) | < | 0.19 |
| Lymphocyte count | 0.58 | (0.49–0.68) | 0.09 | 0.02 |
| Platelets | 0.48 | (0.38–0.58) | 0.66 | < 0.01 |
| D-Dimer | 0.69 | (0.60–0.79) | < | 0.49 |
| Fibrinogen | 0.66 | (0.57–0.75) | < | 0.16 |
| INR | 0.61 | (0.51–0.71) | 0.05 | |
| Triglycerides | 0.64 | (0.54–0.74) | 0.12 | |
| AST | 0.68 | (0.59–0.76) | < | 0.27 |
ROC curves were performed to determine the discrimination power of each biomarker for severe outcome. The AUC obtained was compared against that of galectin-3 using DeLong’s test for correlated ROC curves. Bold values represent p < 0.05.