Prognostic Value of the National Early Warning Score Combined with Nutritional and Endothelial Stress Indices for Mortality Prediction in Critically Ill Patients with Pneumonia
Abstract
1. Introduction
2. Materials and Methods
2.1. Study Design and Setting
2.2. Study Population
2.3. Data Collection
2.4. Clinical Scores and Indices
2.5. Laboratory Parameters
2.6. Outcome Measure
2.7. Statistical Analysis
2.8. Ethical Considerations
3. Results
3.1. Patient Characteristics
3.2. Laboratory Findings
3.3. Logistic Regression Analysis
3.4. Interaction Analysis of NEWS with PNI and EASIX
3.5. Discriminative Performance and ROC Curve Analysis
4. Discussion
4.1. Clinical Implications
4.2. Strengths and Limitations
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| Abbreviation | Definition |
| ICU | Intensive Care Unit |
| NEWS | National Early Warning Score |
| PNI | Prognostic Nutritional Index |
| EASIX | Endothelial Activation and Stress Index |
| AUROC | Area Under the Receiver Operating Characteristic Curve |
| CI | Confidence Interval |
| OR | Odds Ratio |
| CRP | C-reactive Protein |
| WBC | White Blood Cell |
| COPD | Chronic Obstructive Pulmonary Disease |
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| Variables | All Patients (n = 221) | Survivors (n = 79) | Non-Survivors (n = 142) | p |
|---|---|---|---|---|
| Age, years | 74.8 ± 14.1 | 73.1 ± 16.3 | 75.7 ± 12.7 | 0.193 |
| Male sex, n (%) | 119 (53.8) | 39 (49.4) | 80 (56.3) | 0.319 |
| Nursing home resident, n (%) | 7 (3.2) | 2 (2.5) | 5 (3.5) | 0.514 |
| Comorbidity, n (%) | 208 (94.1) | 71 (89.9) | 137 (96.5) | 0.047 |
| Diabetes mellitus, n (%) | 58 (26.2) | 22 (27.8) | 36 (25.4) | 0.686 |
| COPD, n (%) | 34 (15.4) | 12 (15.2) | 22 (15.5) | 0.952 |
| Malignancy, n (%) | 63 (28.5) | 23 (29.1) | 40 (28.2) | 0.881 |
| Immunosuppression, n (%) | 37 (16.7) | 10 (12.7) | 27 (19.0) | 0.225 |
| Chronic kidney disease, n (%) | 28 (12.7) | 12 (15.2) | 16 (11.3) | 0.401 |
| Chronic liver disease, n (%) | 2 (0.9) | 1 (1.3) | 1 (0.7) | 0.673 |
| Heart failure, n (%) | 24 (10.9) | 9 (11.4) | 15 (10.6) | 0.507 |
| Stroke, n (%) | 40 (18.1) | 32 (22.5) | 8 (10.1) | 0.022 |
| Coronary artery disease, n (%) | 37 (16.7) | 14 (17.7) | 23 (16.2) | 0.771 |
| Psychosis, n (%) | 2 (0.9) | 1 (1.3) | 1 (0.7) | 0.673 |
| Other, n (%) | 157 (71.0) | 51 (64.6) | 106 (74.6) | 0.113 |
| PNI | 33.9 (29.9–37.9) | 35.3 (31.5–39.6) | 31.5 (28.4–37.4) | 0.001 |
| EASIX | 2.2 (1.1–4.9) | 2.0 (0.8–3.6) | 2.6 (1.2–6.8) | 0.021 |
| NEWS | 9.0 ± 3.1 | 7.8 ± 3.1 | 9.6 ± 2.9 | <0.001 |
| Length of ICU stay, days | 8.0 (5.0–16.0) | 8.0 (4.5–10.5) | 9.0 (5.0–21.0) | 0.055 |
| Intubation, n (%) | 136 (61.5) | 19 (24.1) | 117 (82.4) | <0.001 |
| Inotrope use, n (%) | 98 (44.3) | 14 (17.7) | 84 (59.2) | <0.001 |
| pH | 7.38 (7.28–7.44) | 7.40 (7.32–7.45) | 7.37 (7.26–7.43) | 0.016 |
| Lactate, mmol/L | 1.8 (1.3–3.0) | 1.4 (1.0–1.9) | 2.3 (1.5–3.7) | <0.001 |
| Urea, mg/dL | 88.0 (58.0–140.0) | 76.0 (56.5–128.0) | 96.0 (63.0–143.0) | 0.056 |
| WBC, ×103/µL | 12.4 (8.9–17.7) | 11.0 (8.8–16.0) | 13.8 (8.9–18.6) | 0.062 |
| Albumin, g/dL | 2.9 (2.5–3.3) | 3.1 (2.8–3.4) | 2.8 (2.4–3.1) | <0.001 |
| Procalcitonin, ng/mL | 1.9 (0.6–9.0) | 0.9 (0.3–2.7) | 3.6 (1.1–12.9) | <0.001 |
| CRP, mg/L | 155.0 (83.0–240.0) | 122.0 (65.7–250.0) | 167.5 (97.0–240.0) | 0.088 |
| Ferritin, µg/L | 381.0 (153.0–933.0) | 279.0 (100.0–500.0) | 451.0 (189.0–1035.5) | 0.007 |
| D-dimer, mg/L | 3.0 (1.6–6.8) | 2.9 (1.5–4.7) | 3.3 (1.6–8.1) | 0.090 |
| In-Hospital Mortality (n = 142) | ||||||||
|---|---|---|---|---|---|---|---|---|
| Univariate Analysis | Multivariate Analysis | |||||||
| Variable | OR (95% CI) | Wald | β | p-Value | OR (95% CI) | Wald | β | p-Value |
| Age | 1.013 (0.993–1.033) | 1.685 | 0.013 | 0.194 | ||||
| Sex (female, ref.) | 0.756 (0.435–1.312) | 0.991 | −0.280 | 0.320 | ||||
| Comorbidity | 3.087 (0.974–9.785) | 3.669 | 1.127 | 0.055 | ||||
| PNI | 0.968 (0.937–0.999) | 3.964 | −0.033 | 0.046 | ||||
| EASIX | 1.093 (1.019–1.171) | 6.248 | 0.089 | 0.012 | ||||
| NEWS | 1.215 (1.101–1.340) | 15.157 | 0.194 | <0.001 | ||||
| Length of ICU stay | 1.040 (1.007–1.073) | 5.895 | 0.039 | 0.015 | ||||
| Intubation | 14.779 (7.541–28.963) | 61.550 | 2.693 | <0.001 | 12.460 (4.662–33.303) | 25.288 | 2.522 | <0.001 |
| Inotrope use | 6.724 (3.450–13.107) | 31.319 | 1.906 | <0.001 | 5.139 (1.996–13.233) | 11.505 | 1.637 | 0.001 |
| Lactate | 1.788 (1.356–2.357) | 16.952 | 0.581 | <0.001 | 1.746 (1.214–2.512) | 9.046 | 0.558 | 0.003 |
| Urea | 1.003 (0.999–1.008) | 2.164 | 0.003 | 0.141 | ||||
| WBC | 1.027 (0.993–1.062) | 2.391 | 0.026 | 0.122 | ||||
| Albumin | 0.321 (0.188–0.549) | 17.264 | −1.136 | <0.001 | ||||
| Procalcitonin | 1.016 (1.001–1.031) | 4.662 | 0.016 | 0.031 | ||||
| CRP | 1.002 (0.999–1.005) | 2.366 | 0.002 | 0.124 | ||||
| Ferritin | 1.001 (1.000–1.001) | 5.567 | 0.001 | 0.018 | ||||
| D-dimer | 1.021 (0.984–1.060) | 1.275 | 0.021 | 0.259 | ||||
| Odds Ratio (95% CI) | |||||
|---|---|---|---|---|---|
| n Died/n Total (%) | Crude Model | p | Adjusted Model | p | |
| NEWS/PNI | |||||
| NEWS ≤ 7/PNI ≥ 34.7 | 10/27 (37.0) | Reference | - | Reference | - |
| NEWS > 7/PNI ≥ 34.7 | 43/74 (58.1) | 2.358 (0.952–5.843) | 0.064 | 2.533 (1.011–6.349) | 0.047 |
| NEWS ≤ 7/PNI < 34.7 | 12/22 (54.5) | 2.040 (0.648–6.420) | 0.223 | 2.170 (0.681–6.912) | 0.190 |
| NEWS > 7/PNI < 34.7 | 77/98 (78.6) | 6.233 (2.489–15.612) | <0.001 | 6.445 (2.551–16.283) | <0.001 |
| NEWS/EASIX | |||||
| NEWS ≤ 7/EASIX < 3.3 | 11/30 (36.7) | Reference | - | Reference | - |
| NEWS > 7/EASIX < 3.3 | 66/104 (63.5) | 3.000 (1.291–6.970) | 0.011 | 3.152 (1.340–7.417) | 0.009 |
| NEWS ≤ 7/EASIX ≥ 3.3 | 11/19 (57.9) | 2.375 (0.733–7.691) | 0.149 | 2.515 (0.766–8.261) | 0.128 |
| NEWS > 7/EASIX ≥ 3.3 | 54/68 (79.4) | 6.662 (2.584–17.176) | <0.001 | 7.365 (2.773–19.558) | <0.001 |
| Prognostic Models | Pairwise Analysis | ||||||
|---|---|---|---|---|---|---|---|
| DBA | 95% CI | SE | Z Statistic | p Value | |||
| Without PNI, AUROC 95% CI | With PNI, AUROC 95% CI | ||||||
| Base Model | 0.737 (0.671–0.803) | 0.760 (0.697–0.823) | −0.023 | (−0.050–0.004) | 0.253 | −1.657 | 0.093 |
| NEWS | 0.657 (0.581–0.732) | 0.690 (0.617–0.763) | −0.033 | (−0.072–0.005) | 0.271 | −1.697 | 0.090 |
| Base Model + NEWS | 0.763 (0.699–0.827) | 0.791 (0.731–0.852) | −0.028 | (−0.061–0.005) | 0.249 | −1.647 | 0.099 |
| Without EASIX, AUROC 95% CI | With EASIX, AUROC 95% CI | ||||||
| Base Model | 0.737 (0.671–0.803) | 0.752 (0.688–0.816) | −0.015 | (−0.031–0.001) | 0.254 | −1.878 | 0.060 |
| NEWS | 0.657 (0.581–0.732) | 0.709 (0.640–0.779) | −0.053 | (−0.092–0.013) | 0.268 | −2.606 | 0.009 |
| Base Model + NEWS | 0.763 (0.699–0.827) | 0.785 (0.724–0.845) | −0.022 | (−0.045–0.002) | 0.249 | −1.824 | 0.068 |
| Prognostic Model | Pairwise Analysis | |||||
|---|---|---|---|---|---|---|
| AUROC 95% CI | DBA | 95% CI | SE | Z Statistic | p Value | |
| Base Model vs. Base Model + NEWS + PNI | 0.737 (0.671–0.803) vs. 0.791 (0.731–0.852) | −0.054 | (−0.102, −0.007) | 0.252 | −2.249 | 0.025 |
| Base Model vs. Base Model + NEWS + EASIX | 0.737 (0.671–0.803) vs. 0.785 (0.724–0.845) | −0.048 | (−0.090, −0.005) | 0.251 | −2.211 | 0.027 |
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Demirer Aydemir, F.; Daş, M.; Kurtkulağı, Ö.; Çetin, E.Ü.; Mutlay, F.; Beyazıt, Y. Prognostic Value of the National Early Warning Score Combined with Nutritional and Endothelial Stress Indices for Mortality Prediction in Critically Ill Patients with Pneumonia. Medicina 2026, 62, 207. https://doi.org/10.3390/medicina62010207
Demirer Aydemir F, Daş M, Kurtkulağı Ö, Çetin EÜ, Mutlay F, Beyazıt Y. Prognostic Value of the National Early Warning Score Combined with Nutritional and Endothelial Stress Indices for Mortality Prediction in Critically Ill Patients with Pneumonia. Medicina. 2026; 62(1):207. https://doi.org/10.3390/medicina62010207
Chicago/Turabian StyleDemirer Aydemir, Ferhan, Murat Daş, Özge Kurtkulağı, Ece Ünal Çetin, Feyza Mutlay, and Yavuz Beyazıt. 2026. "Prognostic Value of the National Early Warning Score Combined with Nutritional and Endothelial Stress Indices for Mortality Prediction in Critically Ill Patients with Pneumonia" Medicina 62, no. 1: 207. https://doi.org/10.3390/medicina62010207
APA StyleDemirer Aydemir, F., Daş, M., Kurtkulağı, Ö., Çetin, E. Ü., Mutlay, F., & Beyazıt, Y. (2026). Prognostic Value of the National Early Warning Score Combined with Nutritional and Endothelial Stress Indices for Mortality Prediction in Critically Ill Patients with Pneumonia. Medicina, 62(1), 207. https://doi.org/10.3390/medicina62010207

