| Literature DB >> 35329889 |
Francisco J Pilar-Orive1,2, Itziar Astigarraga3,4,5, Mikel Azkargorta6, Felix Elortza6, Susana Garcia-Obregon3,7.
Abstract
Sepsis is a syndrome without a standard validated diagnostic test. Early recognition is crucial. Serum proteome analysis in children with sepsis may identify new biomarkers. This study aimed to find suitable blood biomarkers for an early diagnosis of sepsis. An analytical observational case-control study was carried out in a single center. Children admitted to a Pediatric Intensive Care Unit with clinical diagnosed sepsis were eligible for study. A proteomic analysis conducted by mass spectrometry was performed. Forty patients with sepsis and 24 healthy donors were recruited. Proteomics results revealed 44 proteins differentially expressed between patients and healthy controls. Six proteins were selected to be validated: lactoferrin, serum amyloid-A1 (SAA-1), complement factor B, leucine-rich alpha-2 glycoprotein (LRG1), soluble interleukin-2 alpha chain receptor (sCD25) and soluble haptoglobin-hemoglobin receptor. Our results showed that sCD25, SAA-1, and LRG1 had high levels of specificity and sensitivity, as well as an excellent area under the ROC curve (>0.9). Our study provides a serum proteomic analysis that identifies new diagnostic biomarkers in sepsis. SAA-1, sCD25 and LRG1 were able to separate septic from healthy donor, so they could be used together with other clinical and analytical features to improve sepsis diagnosis in children.Entities:
Keywords: biomarkers; children; mass spectrometry analysis; proteome; sepsis; septic shock
Year: 2022 PMID: 35329889 PMCID: PMC8955185 DOI: 10.3390/jcm11061563
Source DB: PubMed Journal: J Clin Med ISSN: 2077-0383 Impact factor: 4.241
Clinical features of patients diagnosed with severe sepsis and septic shock.
| Patients | Severe Sepsis | Septic Shock | |
|---|---|---|---|
|
| 18/22 (55%) | 5/2 (71.4%) | 17/16 (51.5%) |
|
| 3.83 (1.6–8.3) | 1.04 (0.38–8.7) | 4.02 (2.28–8.5) |
|
| 16 (11–29) | 8.7 (7–35) | 17 (12–29) |
|
| 7 (4–11) | 4 (2.7–4.5) | 8 (4.5–13.5) |
|
| |||
| Prematurity | 3 (7.5%) | 1 (3%) | |
| Heart Disease | 3 (7.5%) | 2 (28.6%) | 3 (9%) |
| Chronic respiratory failure | 4 (10%) | 3 (9%) | |
| Neurological disease | 4 (10%) | 1 (14.3%) | 4 (12%) |
|
| |||
| Emergency | 28 (70%) | 24 (72.7%) | |
| Ward | 2 (5%) | 4 (57.1%) | 2 (6.1%) |
| Other hospital | 9 (22.5%) | 6 (18.2%) | |
| Theatre room | 1 (2.5%) | 3 (42.9%) | 1 (3%) |
|
| |||
| Medical | 38 (95%) | 7 (100%) | 31(94%) |
| Surgical | 2 (2.5%) | 2 (6%) | |
|
| |||
| Cardiovascular | 33 (82.5%) | 33 (100%) | |
| Respiratory | 12 (30%) | 10 (30%) | |
| Renal | 8 (20%) | 2 (28.6%) | 8 (24%) |
| Coagulopathy | 7 (17.5%) | 7 (21%) | |
| Neurological | 5 (12.5%) | 5 (15%) | |
| Liver | 3 (7.5%) | 3 (9%) | |
| Thrombocytopenia | 2 (5%) | 2 (6%) | |
|
| |||
| Microbiologically proven | 21 (52%) | 4 (57.1%) | 17 (51.5%) |
|
| |||
| Endovascular | 21 (52.5%) | 2 (28.6%) | 19 (57.6%) |
| Pneumonia | 8 (20%) | 5 (71.4%) | 3 (9%) |
| Intra-abdominal | 3 (7.5%) | 3 (9%) | |
| Others | 8 (20%) | 8 (18.3%) | |
|
| |||
| Vasoactive | 33 (82.5%) | 33 (100%) | |
|
| 16 (0.3; 0.05–1) | 16 (0.3; 0.05–1) | |
|
| 14 (0.3; 0.1–1) | 14 (0.3; 0.1–1) | |
|
| 26 (10; 5–20) | 26 (10; 5–20) | |
|
| 13 (32.5%) | 1 (14.3%) | 12 (36.4%) |
|
| 1 (2.5%) | 1 (14.3%) | |
|
| 7 (17.5%) | 7 (21%) | |
| Hydrocortisone | 11 (27.5%) | 1 (14.3%) | 10 (30.3%) |
| Insulin | 1 (2.5%) | 1 (3%) | |
|
| |||
| Vasoactives (median P25–P75) | 2 (1–3) | 2 (1–3) | |
| MV (median P25–P75) | 3 (2–5) | 12 | 3 (2–5) |
|
| |||
| PICU | 3 (2–6) | 2 (1–5) | 3 (2–6) |
| Hospital | 7 (6–9.5) | 7 (6–14) | 7 (6–9) |
|
| |||
| Survivors | 39 | 7 | 32 |
| Non-survivors | 1 | 1 |
PRISM: Pediatric Risk of Mortality; NE: Norepinephrine, EPI: Epinephrine, DOP: Dopamine; MV: Mechanical ventilation; NIV: Noninvasive ventilation; AKI: Acute kidney injury. n: number.
Figure 1Significantly deregulated proteins among different groups.
Figure 2Flow chart performed for deciding validation of proteins.
ELISA-validated serum protein concentrations, sensitivity and specificity, and area under the curve (AUROC) for each protein.
| Protein | Sepsis | Control | Sensitivity | Specificity | Area Under the Curve (AUROC) (95% CI) (DeLong) | |
|---|---|---|---|---|---|---|
| SAA-1 ng/mL | 188,472.7 ± 148,147.6 | 5965.7 ± 10,308.8 | <0.001 | 0.889 | 1 | 0.978 (0.946–1) |
| sCD25 pg/mL | 11,886.1 ± 11,334.7 | 2119.1 ± 500.5 | <0.001 | 0.946 | 1 | 0.97 (0.92–1) |
| LRG1 ng/mL | 131,052.8 ± 46,256.1 | 48,119.2 ± 22,320.2 | <0.001 | 0.867 | 0.89 | 0.933 (0.86–1) |
| LTF ng/mL | 51,940.2 ± 71,933.6 | 9640.8 ± 9840.9 | <0.001 | 0.724 | 0.9 | 0.83 (0.71–0.94) |
| sCD163 pg/mL | 1291.4 ± 6444 | 915.3 ± 377 | 0.079 | 0.595 | 0.8 | 0.68 (0.51–0.85) |
| CFAB ng/mL | 188,472.7 ± 148,147.6 | 316,717.6 ± 431,551.4 | 0.078 | 0.621 | 0.73 | 0.65 (0.49–0.8) |
SD: standard deviation; LTF: Lactotransferrin, CFAB: Complement Factor B protein, SAA-1: Serum Amyloid A-1, LRG1: Leucine-rich alpha-2-glycoprotein; sCD25: Soluble interleukin-2 receptor alpha chain; sCD163: Soluble haptoglobin-hemoglobin receptor; CI: Confidence interval.
Figure 3Area under the receiver operating characteristic (AUROC) and box plot for SAA-1, sCD25 and LRG1. Among these proteins studied as potential biomarkers, SAA-1 (AUROC 0.978; 95% CI: 0.946–1), sCD25 (0.97; 95% CI: 0.92–1) and LRG1 (0.93; 95% CI: 0.86–1), showed an area under the ROC curve greater than 0.9.