| Literature DB >> 34991675 |
Tatiana Barichello1,2, Jaqueline S Generoso3, Mervyn Singer4, Felipe Dal-Pizzol3.
Abstract
A biomarker describes a measurable indicator of a patient's clinical condition that can be measured accurately and reproducibly. Biomarkers offer utility for diagnosis, prognosis, early disease recognition, risk stratification, appropriate treatment (theranostics), and trial enrichment for patients with sepsis or suspected sepsis. In this narrative review, we aim to answer the question, "Do biomarkers in patients with sepsis or septic shock predict mortality, multiple organ dysfunction syndrome (MODS), or organ dysfunction?" We also discuss the role of pro- and anti-inflammatory biomarkers and biomarkers associated with intestinal permeability, endothelial injury, organ dysfunction, blood-brain barrier (BBB) breakdown, brain injury, and short and long-term mortality. For sepsis, a range of biomarkers is identified, including fluid phase pattern recognition molecules (PRMs), complement system, cytokines, chemokines, damage-associated molecular patterns (DAMPs), non-coding RNAs, miRNAs, cell membrane receptors, cell proteins, metabolites, and soluble receptors. We also provide an overview of immune response biomarkers that can help identify or differentiate between systemic inflammatory response syndrome (SIRS), sepsis, septic shock, and sepsis-associated encephalopathy. However, significant work is needed to identify the optimal combinations of biomarkers that can augment diagnosis, treatment, and good patient outcomes.Entities:
Keywords: Biomarker; Sepsis; Sepsis-associated encephalopathy; Septic shock; Systemic inflammatory response
Mesh:
Substances:
Year: 2022 PMID: 34991675 PMCID: PMC8740483 DOI: 10.1186/s13054-021-03862-5
Source DB: PubMed Journal: Crit Care ISSN: 1364-8535 Impact factor: 9.097
Different roles of the biomarkers in sepsis
| Biomarker | Function | References |
|---|---|---|
| CRP, hsCRP | Response to infection and other inflammatory stimuli | [ |
| Predictive for increased 28-day mortality in patients with sepsis | ||
| Hyperinflammatory phenotype | ||
| Complement | Prognosis of disease severity | [ |
| Proteins | C5a can be predictive for DIC | |
| PTX-3 | Discrimination of sepsis and septic shock | [ |
| Diagnosis of sepsis and septic shock during the first week in the ICU | ||
| Prediction of septic shock | ||
| IL-10 | Hypoinflammatory phenotype | [ |
| MCP-1 | It differentiates patients with septic shock from patients with sepsis | [ |
| Mortality prognosis at 30 days and six months | ||
| TNF-α, IL-1β, IL-6 | IL-6 all-cause mortality prognosis at 30 days and six months | [ |
| IL-1β and IL-6 acute phase of sepsis | ||
| It was increased in the hyperinflammatory phenotype | ||
| Organ dysfunction prognosis | ||
| Calprotectin | PCT to distinguish between patients with sepsis and patients without sepsis in the ICU | [ |
| Predictive for 30-day mortality | ||
| HMGB-1 | Worst prognosis and higher 28-day mortality | [ |
| Syndecan-1 | Increase related to sepsis severity | [ |
| Discriminative power for DIC and subsequent mortality | ||
| VLA-3 (a3β1) | Indicative of sepsis | [ |
| Discrimination of sepsis and SIRS | ||
| Ang-1 | It stabilizes the endothelium and inhibits vascular leakage by constitutively activating the Tie-2 receptor | [ |
| Ang-2/Ang-1, Ang-1/Tie-2 ratio has a prognosis for 90-day mortality in sepsis and septic shock in the ICU higher than the PCT and SOFA score | ||
| Independent and effective predictors of SOFA score changes | ||
| Ang-2 | It can disrupt microvascular integrity by blocking the Tie-2 receptor, which results in vascular leakage | [ |
| Individuals with septic shock had higher levels of Ang-2 than those with sepsis | ||
| CLDN-5 | The absence of CLDN-5 may indicate damage to endothelial cells during sepsis | [ |
| OCLN | Increase related to sepsis severity and positive correlation with SOFA scores | [ |
| Predictive of mortality | ||
| The absence of OCLN in the cerebral microvascular endothelium was related to more severe disease and intense inflammatory response | ||
| PAI-1 | Sepsis severity prognosis | [ |
| Predictor of mortality | ||
| An increase may indicate DIC | ||
| sICAM-1 | Sepsis severity prognosis | [ |
| Prognosis of 90-day mortality in patients with sepsis and septic shock in the ICU | ||
| S100B | It is associated with delirium in septic shock | [ |
| Prognosis of severe organ dysfunction | ||
| Shortest survival in 180 days | ||
| Diagnosis of sepsis-associated encephalopathy | ||
| E-selectin | Sepsis severity prognosis | [ |
| Predicts mortality | ||
| Increase related to SOFA and APACHE-II | ||
| sFlt-1 | Prognosis of sepsis severity and SOFA score, | [ |
| The prognosis for morbidity and mortality | ||
| sVCAM-1 | Prognosis of sepsis severity and 28-day mortality | [ |
| Prognosis of 90-day mortality in patients with severe sepsis and septic shock in the ICU | ||
| Risk of septic shock | ||
| ZO-1 | Prognosis of sepsis severity and correlation with APACHE-II and SOFA scores | [ |
| Predictor of mortality | ||
| Diagnostic capability for MODS | ||
| Citrulline | The decrease may indicate early acute bowel dysfunction | [ |
| I-FABP | Risk of septic shock | [ |
| Indicates early intestinal damage in patients with sepsis and septic shock | ||
| Zonulin | Indicates intestinal permeability during sepsis and SIRS | [ |
| D-lactic acid | Indicates early intestinal damage in patients with sepsis and septic shock | [ |
| Lnc-MALAT1 | The distinction between septic and non-sepsis patients | [ |
| Positive correlation with APACHE-II | ||
| Sepsis severity prognosis | ||
| High risk of ARDS | ||
| Predictive for high mortality | ||
| The increase can distinguish ARDS from non-ARDS | ||
| lnc-MEG3 | The increase is predictive of sepsis | [ |
| 28-day mortality risk | ||
| miR-125a, miR-125b | Prognosis of more significant disease severity | [ |
| Distinguishes patients with sepsis from patients without sepsis | ||
| miR-125b: increased risk of mortality in patients with sepsis | ||
| miR-125a: risk of sepsis and increased mortality | ||
| CD64 | Prognosis of disease severity | [ |
| 28-day mortality predictor | ||
| Early diagnosis of infection | ||
| CD68 | Prognosis of disease severity | [ |
| Microglial activation | ||
| NFL | Indicates risk and severity of sepsis-associated encephalopathy | [ |
| NFH | Indicates risk and severity of sepsis-associated encephalopathy | [ |
| NSE | Diagnosis of sepsis-associated encephalopathy | [ |
| 30-day mortality risk | ||
| Risk of delirium | ||
| Neuronal injury marker in sepsis | ||
| Presepsin | Initial diagnosis and sepsis risk stratification | [ |
| Potential marker to distinguish Gram ( +) and Gram (-) bacterial infection | ||
| TREM-1 | Sepsis indicator | [ |
| An early distinction between sepsis and SIRS | ||
| Predictive of septic shock | ||
| MR-proADM | Discrimination of survivors and non-survivors | [ |
| Organ dysfunction marker | ||
| PCT | Diagnosis of sepsis | [ |
| Predicts Bacterial Infection | ||
| NT-proBNP | In the acute phase of sepsis it indicates a risk of long-term impairment of physical function and muscle strength | [ |
| Predict mortality risk | [ | |
| Lactate | Predictive of mortality | [ |
| Risk stratification of patients with suspected infection | ||
| MPO | Increase in patients with DIC | [ |
| Indicates organ dysfunction | ||
| Mortality predictor at 28 and 90 days | ||
| Risk of septic shock | ||
| NET generation | ||
| Resistin | Sepsis indicator | [ |
| Risk of septic shock | ||
| 28-day mortality predictor | ||
| sPD-L1 | Prognosis of disease severity | [ |
| 28-day mortality predictor | ||
| Indicates immunosuppression | ||
| suPAR | Predictive mortality at 7 and 30 days | [ |
| Risk of patients with suspected infection | ||
| sTNFR-1 | Prognosis of 28-day mortality | [ |
| Risk of septic shock | ||
| Risk of delirium | ||
| LDL-C | Protective effect against sepsis | [ |
| The decrease can cause a risk of sepsis and admission to the ICU | ||
| HDL | Low levels: mortality prognosis and adverse clinical outcomes | [ |
| Predictive for MODS | ||
| T-chol | The decrease has a worse prognosis in sepsis | [ |
Ang-1 angiopoietin-1, Ang-2 angiopoietin-2, APACHE-II acute physiology and chronic health evaluation II, ARDS acute respiratory distress syndrome, CD cluster of differentiation, CLDN-5 claudin-5, CRP C reactive protein, DAMPs damage-associated molecular patterns, DIC disseminated intravascular coagulation, HDL high-density lipoprotein, HMGB1 high mobility group box 1, hsCRP high-sensitivity C reactive protein, ICU intensive care unit, I-FABP intestinal fatty acid binding protein, IL interleukin, LDL low-density lipoprotein, lnc-MALAT1 long non-coding metastasis-associated lung adenocarcinoma transcript 1, lnc-MEG3 long non-coding RNA maternally expressed gene 3, MCP-1 monocyte chemoattractant protein-1, miR-125a micro RNA-125a, miR-125b micro RNA-125b, MODS multiple organ dysfunction syndrome, MPO myeloperoxidase, MR-proADM mid-regional pro adrenomedullin, NFL neurofilament light, NFH neurofilament heavy, NSE neuron specific enolase, NT-proBNP N-terminal pro-brain natriuretic peptide, OCLN occludin, OR odds ratio, PAI-1 plasminogen activator inhibitor 1, PCT procalcitonin, PTX-3 pentraxin-3), S100B calcium-binding protein B, sFlt-1 soluble fms-like tyrosine kinase 1, sICAM-1 soluble intercellular adhesion molecule 1, SIRS systemic inflammatory response syndrome, SOFA sequential organ failure assessment, sPD-L1 soluble programmed death ligand 1, sTNFR1 soluble tumor necrosis factor receptor type 1, suPAR soluble form of the urokinase plasminogen activator receptor, sVCAM-1 soluble vascular cell adhesion molecule 1, T-chol total cholesterol, TNF-α tumour necrosis factor alpha, TREM-1 triggering receptor expressed on myeloid cells-1, VLA-3/a3β1 integrin alpha 3 beta 1, ZO-1 zonula-occluden 1
Biomarkers for sepsis, septic shock, and sepsis-associated encephalopathy
| Biomarker | Sample | Demographic | Specificity (%) | Sensitivity (%) | Cut-off | AUC | Clinical relevance | References | |
|---|---|---|---|---|---|---|---|---|---|
| Acute-phase proteins | |||||||||
| CRP, hsCRP | Plasma and serum | Sepsis = 483 | – | – | 15–20 mg/dl | – | – | ↑ hsCRP hyperinflammatory phenotype | [ |
| Mean age mean = 60.5 | – | – | – | – | – | ↑ hsCRP day 1 to 2, 95.8% | |||
| ♂ 54.9% | – | – | – | – | – | ↑ hsCRP, 23 patients (25.8%) at 3, 26 patients (30.2%) at 6, and 23 patients (25.6%) at 12 months | |||
| Plasma | Sepsis = 43 | – | – | – | – | 0.51, 0.56, and 0.48 | CRP, day 1, 3, and 8 to predict 30-day mortality | [ | |
| Septic shock n = 93 | |||||||||
| Age = 26 to 88 | |||||||||
| Plasma | Sepsis = 17 | 61.54% | 52.17% | 9 mg/dl | – | 0.684 | ↑ hsCRP sepsis versus control group, | [ | |
| Control = 19 | |||||||||
| Age = 52.18 | |||||||||
| ♂ 63% | |||||||||
| Serum | Sepsis = 38 | 100% | 88.40% | 8.02 mg/l | – | 0.98 | ↑ CRP in septic patients compared to control group, | [ | |
| Septic shock = 31 Control = 40 | |||||||||
| Age = 37 to 95 | |||||||||
| ♂ 57.89% | |||||||||
| Serum | Sepsis = 27 | 75.00% | 78.00% | 7.4 mg/dl | – | 0.825 | ↑ hsCRP sepsis versus control group, | [ | |
| Septic shock = 23 | – | – | – | – | 0.751 | ↑ hsCRP septic shock versus sepsis, | |||
| Control = 20 | – | – | – | 0.686 | – | ↑ hs-CRP level versus SOFA, | |||
| Age = 85 | |||||||||
| ♂57.89% | |||||||||
| Blood | Sepsis = 33 | 90.70% | 98.60% | 407 pg/ml | - | 0.859 | ↑ CRP in sepsis patients compared in SIRS group, | [ | |
| Severe sepsis = 24 | |||||||||
| Septic shock = 15 | |||||||||
| SIRS = 23 | |||||||||
| Normal = 20 | |||||||||
| Mean age = 62.1 | |||||||||
| Serum | Sepsis = 119 | - | - | - | - | - | ↑ CRP and SOFA score in the sepsis group compared to the control group, | [ | |
| Septic shock = 32 | ↔ Septic shock group when compared with sepsis group, | ||||||||
| Control = 20 | – | – | – | – | – | ↔ Diagnosing positive infection culture in patients with sepsis, | |||
| – | – | – | – | 0.609 | |||||
| Serum | Severe sepsis = 34 | – | – | – | – | – | ↔ CRP did not differentiate septic shock and severe sepsis | [ | |
| Septic shock = 53 | |||||||||
| Age = 2 mo to 16 years | |||||||||
| Complement | Plasma | Sepsis = 20 | – | – | – | – | – | ↑ Sepsis (C4d 3.5-fold; Factor Bb 6.1-fold; C3 0.8-fold; C3a 11.6-fold; and C5a 1.8-fold) versus control | [ |
| Proteins | Control = 10 | ↑ C5a ↓ SOFA | |||||||
| Age = 85 | – | – | – | 0.18 | – | ||||
| ♂57.89% | – | ||||||||
| PTX-3 | Plasma | Sepsis = 73 | – | – | – | 0.36 | – | ↑ PTX-3 versus APACHE-II, and SOFA, | [ |
| Control = 77 | – | – | 31.4 ng/ml | – | – | Sepsis versus SIRS, | |||
| Septic Shock = 140 | – | – | – | – | – | Sepsis versus septic shock, | |||
| Age = 26 to 88 | – | – | – | – | – | ↑Sepsis/septic shock versus control, | |||
| ♂57.89% | – | – | – | – | 0.82 and 0.73 | Sepsis and septic shock discrimination on day 1 | |||
| Plasma | Sepsis = 17 | – | – | – | – | – | ↑ PTX-3 sepsis, septic shock, and post-surgery infection versus control group, | [ | |
| Septic shock = 26 | ↑ PTX-3 sepsis shock versus sepsis, | ||||||||
| Post-surg. Inf. = 33 | – | – | – | – | 0.798 | ||||
| Control = 25 | |||||||||
| Cytokines and chemokines | |||||||||
| IL-10 | Plasma | Sepsis = 208 Control = 210 | – | – | – | – | − 0.161 | ↑ miR-126 correlated negatively with IL-10, | [ |
| Plasma | Sepsis = 309 | – | – | – | – | − 0.166 | ↑ lncRNA ITSN1-2 correlated negatively with IL-10, | [ | |
| Mean age = 57,3 ± 9,7 | |||||||||
| Control = 330 | |||||||||
| Mean age = 55,8 ± 9,7 | |||||||||
| MCP-1 | Plasma | Sepsis = 43 | – | – | – | – | 0.64, 0.51, and 0.51 | MCP-1, day 1, 3, and 8 to predict 30-day mortality, | [ |
| Septic shock n = 93 | |||||||||
| Age = 26 to 88 | |||||||||
| Plasma | Sepsis = 17 | – | – | – | – | – | ↑ MCP-1 sepsis, septic shock and post-surgery infection versus control group, | [ | |
| Septic shock = 26 | ↑ MCP-1 sepsis shock versus sepsis, | ||||||||
| Post-surg. Inf. = 33 | – | – | – | – | 0.71 | ||||
| Control = 25 | |||||||||
| TNF-α, IL-1β, IL-6 | Serum | Sepsis = 288 | – | – | – | – | – | ↑ Sepsis TNF-α, IL-1β, IL-6, and IL-8 compared to the control group, | [ |
| Mean age = 58.2 ± 11.2 | ↑ TNF-α, IL-1β, IL-6, and IL-8 were negatively correlated with surviving sepsis patients, | ||||||||
| Control = 290 | – | – | – | – | − 0.270, | ||||
| Mean age = 56.8 ± 12.1 | − 0.310, | ||||||||
| − 0.254, and | |||||||||
| − 0.256 | |||||||||
| Plasma | Sepsis = 483 | – | – | 102 pg/dl | – | – | ↑ IL-6, 72 patients (74.2%) at 3 months, 62 (70.5%) at 6 months, and 59 (66.3%) at 12 months | [ | |
| Age mean = 60.5 | |||||||||
| ♂ 54.9% | |||||||||
| Serum | Sepsis = 43 | – | – | – | – | 0.69, 0.70, and 0.68 | ↑ IL-6, day 1, 3, and 8 to predict 30-day mortality, | [ | |
| Septic shock n = 93 | |||||||||
| Age = 26 to 88 | |||||||||
| Serum | Sepsis = 39 | – | – | 12,704—111,372 | – | – | ↑ IL-6 septic patients with DIC, | [ | |
| Control = 15 | pg/ml | ||||||||
| Age ≥ 18 years | |||||||||
| DAMPs | |||||||||
| Calprotectin | Plasma | Sepsis = 77 | 56% | 81% | 1.3 mg/l | – | – | ↑ Calprotectin, sepsis versus trauma patients, | [ |
| Trauma = 32 | – | – | – | – | – | ↑ Calprotectin at admission was ↑ in non-survivors than in survivors at day 30, | |||
| HMGB-1 | Serum | Sepsis = 247 | – | – | 3.6 ng/ml | – | – | ↑ HMGB-1 sepsis versus control, | [ |
| – | – | – | – | 0.51 and 0.53 | HMGB-1, day 0 and 3, survivor = non-survivor | ||||
| – | – | – | – | – | HMGB-1 does not have predictive value for organ failure and outcome | ||||
| Endothelial cells and BBB markers | |||||||||
| Syndecan-1 | Serum | Sepsis = 39 | – | – | – | – | – | ↑ Syndecan-1 in sepsis versus control, | [ |
| Control = 15 | – | – | – | – | – | ↑ Syndecan-1 non-survivors on days 1, 2, and 4 | |||
| Age | – | – | – | – | 0.54 and 0.59 | ↑ Syndecan-1 versus DIC on day 1 and 2, | |||
| Age ≥ 18 years | – | – | 189–1301 ng/ml | – | – | ↑ Syndecan-1 in septic patient with DIC, | |||
| VLA-3 (a3β1) | Neutrophil | SIRS = 9 | – | – | – | – | – | ↑ α3β1 (VLA-3, CD49c/CD29) on neutrophils of septic patients, | [ |
| Sepsis = 15 | |||||||||
| Control = 7 | |||||||||
| Sepsis = 6 | – | – | – | – | – | ↑ β1 (CD29), on neutrophils of sepsis patients, | [ | ||
| Control = 5 | |||||||||
| Ang-1 | Serum | Severe sepsis = 48 | – | – | – | – | – | ↑ Ang-1 severe sepsis compared with shock septic, | [ |
| Septic shock = 54 | ↓ Ang-1/Tie-2 in non-survivors, | ||||||||
| Age ≥ 18 years | – | – | 3.81–16.1 ng/ml | – | – | ||||
| Plasma | SIRS = 943 | – | – | – | – | – | ↑ Ang-1 was associated with a reduced risk of shock. OR: 0.77 | [ | |
| Sepsis = 330 | ↑ Ang-1 was higher in survivor versus non-survivor, | ||||||||
| Shock = 216 | – | – | 5719 pg/ml | – | – | ||||
| Pneumonia = 169 | |||||||||
| Others = 152 | |||||||||
| Age = 55.1 ± 16.1 | |||||||||
| ♂ 63.9% | |||||||||
| Ang-2 | Serum | Severe sepsis = 48 | – | – | – | – | – | ↑ Ang-2 severe sepsis compared with shock septic, | [ |
| Septic shock = 54 | ↓ Ang-2/Ang-1 in non-survivors, | ||||||||
| Age ≥ 18 years | – | – | – | – | – | ||||
| Plasma | SIRS = 943 | – | – | – | – | – | ↑ Ang-2 was associated with an increased risk of shock, OR: 1.63 | [ | |
| Sepsis = 330 | – | – | 42.063 pg/ml | – | – | ↑ Ang-2 non-survivor, | |||
| Shock = 216 | |||||||||
| Pneumonia = 169 | |||||||||
| Others = 152 | |||||||||
| Age = 55.1 ± 16.1 | |||||||||
| ♂ 63.9% | |||||||||
| CLDN-5 | Serum | Sepsis = 11 | – | – | – | – | – | ↑ CLDN-5 was not associated with MODS and the non-MODS group | [ |
| Severe sepsis = 18 | – | – | – | – | 0.157 and 0.087 | ↑ CLDN-5 was not correlated with SOFA or APACHE score, | |||
| Septic shock = 22 | – | – | – | – | – | Did not predict mortality | |||
| Serum | Sepsis = 11 | – | – | – | – | – | CLDN-5 was absent from the endothelium | [ | |
| Severe sepsis = 18 | |||||||||
| Septic shock = 22 | |||||||||
| OCLN | Serum | Sepsis = 11 | – | – | – | – | – | ↑ OCLN in severe sepsis and septic shock than in sepsis, | [ |
| Severe sepsis = 18 | – | – | – | – | – | ↑ OCLN in non-survivors compared with survivors, | |||
| Septic shock = 22 | – | – | – | – | 0.337 | ↑ OCLN positively correlated with SOFA, | |||
| – | – | – | – | 0.224 | ↔ OCLN levels were not correlated with the APACHE-II, | ||||
| Brain tissue autopsies | Sepsis = 47 | – | – | – | – | – | ↓ OCLN, cerebellar endothelium damage, ↑ CRP ≥ 100 mg/l | [ | |
| – | – | – | – | – | 38% of patients (18/47) had no expression of OCLN in the BMVECs | ||||
| – | – | – | – | – | 34% of patients (16/47) had MOFs | ||||
| – | – | – | – | – | 74.5% of patients (35/47) had septic shock | ||||
| – | – | – | – | – | The deceased with BBB damage had SOFA scores six versus 14, | ||||
| PAI-1 | Plasma | Sepsis = 63 | – | – | – | – | 0.85 | ↑ PAI-1 to predict mortality, | [ |
| Severe sepsis = 61 | – | – | – | 0.45 | – | ↑ PAI-1 correlated with the SOFA score at 24 h, | |||
| Septic shock = 42 | – | – | – | 0.58 | – | ↑ PAI-1 correlation with APACHE-II score, | |||
| Age = 60 ± 17 | – | – | – | – | – | ↑ Severe sepsis ↑ sFlt-1, | |||
| Serum | Sepsis = 39 | – | – | 15.5–49.9 | – | – | ↑ PAI-1 in patients with DIC, | [ | |
| Control = 15 | ng/ml | ||||||||
| Age ≥ 18 years | |||||||||
| sICAM-1 | Plasma | Sepsis = 63 | – | – | – | – | – | ↑ Severe sepsis ↑ sICAM-1, | [ |
| Severe sepsis = 61 | – | – | – | 0.15 | – | ↑ sICAM-1 correlated with SOFA score at 24 h, | |||
| Septic shock = 42 | – | ↑ sICAM-1 correlate with APACHE-II score, | |||||||
| Age = 60 ± 17 | – | – | – | 0.17 | – | ||||
| Serum | Severe sepsis = 48 | – | – | 1.297–1787 ng/ml | - | – | ↑ sICAM-1 in non-survivors, | [ | |
| Septic shock = 54 | – | – | – | – | – | ↑ sICAM-1, predictor of 90 day-mortality, | |||
| Age ≥ 18 years | – | – | – | – | – | ↑ sICAM-1, septic shock compared to severe sepsis | |||
| S100B | Serum | Septic shock = 22 | – | – | > 0.15 μg/l | – | – | ↑ Delirium was present in 10/22 of the patients (45.5%) | [ |
| – | – | – | – | – | OR: 18.0, for risk of developing delirium S-100β > 0.15 μg/l | ||||
| – | – | – | – | 0.489 | ↑ S100 β correlate positively with and IL-6 | ||||
| Serum | Sepsis = 104 | 80.0% and | 66.1 and | 0.226 and | – | – | ↑ S100B cut-of value for day 1 and 3 | [ | |
| Sepsis-associated encephalopathy = 59 | 84.44% | 69.49% | 0.144 μg/l | – | – | ↑ S100B in sepsis-associated encephalopathy day 1 to day 3 compared with non- sepsis-associated encephalopathy, | |||
| non- sepsis-associated encephalopathy = 45 | – | – | – | – | 0.728 and 0.819 | ↑ S100B on days 1 and 3 to predict sepsis-associated encephalopathy | |||
| – | – | – | – | 0.61 | ↑ S100B on day 1 to predict 180 day-mortality | ||||
| 84.44% | 69.49% | 0.529 μg/l | – | 0.731 | ↑ S100B on day 3 to predict 180 day-mortality | ||||
| 93.33% | 50.00% | 0.266 μg/l | |||||||
| Serum | Sepsis = 21 | – | – | – | – | 0.082, 0.082, | ↑ S100B did not correlate with GCS, EEG pattern, or SOFA scores | [ | |
| Age = 68.7 | and 0.124 | ||||||||
| E-selectin | Plasma | Sepsis = 63 | – | – | – | – | 0.77 | ↑ Predict mortality | [ |
| Severe sepsis = 61 | – | – | – | – | – | ↑ Severe sepsis ↑ sE-selectin, | |||
| Septic shock = 42 | – | – | – | 0.27 | – | ↑ sE-selectin correlated with SOFA score at 24 h, | |||
| Age = 60 ± 17 | – | – | – | 0.31 | – | ↑ sE-selectin correlated with APACHE-II score, | |||
| sFlt-1 | Plasma | Sepsis = 63 | – | – | – | - | 0.85 | ↑ sFlt-1 to predict mortality, | [ |
| Severe sepsis = 61 | – | – | – | 0.36 | – | ↑ sFlt-1 associated with organ dysfunction | |||
| Septic shock = 42 | – | – | – | 0.63 | – | ↑ sFlt-1 correlation with ↑ IL-6, | |||
| Age = 60 ± 17 | – | – | – | 0.6 | – | ↑ sFlt-1 correlated with SOFA score at 24 h, | |||
| – | – | – | 0.64 | – | ↑ sFlt-1 correlated with APACHE-II score, | ||||
| sVCAM-1 | Plasma | Sepsis = 63 | – | – | – | – | 0.78 | ↑ Predict mortality | [ |
| Severe sepsis = 61 | – | – | – | – | – | ↑ Severe sepsis ↑ sVCAM-1, | |||
| Septic shock = 42 | – | – | – | 0.45 | – | ↑ sE-selectin correlated with SOFA at 24 h, | |||
| Age = 60 ± 17 | – | – | – | 0.38 | – | ↑ sVCAM-1 correlated with APACHE-II s, | |||
| Serum | Severe sepsis = 48 | – | – | 369–467 µg/l | – | – | ↑ sVCAM in non-survivors, | [ | |
| Septic shock = 54 | – | – | – | – | – | ↑ sVCAM, predictor of 90 day-mortality, | |||
| Age ≥ 18 years | – | – | – | – | – | ↑ sVCAM, septic shock compared to severe sepsis, | |||
| Plasma | SIRS = 943 | – | – | – | – | – | ↑ s-VCAM was associated with an increased risk of shock. OR: 1.63 | [ | |
| Sepsis = 330 | ↑ sVCAM-1 non-survivor, | ||||||||
| Shock = 216 | – | – | 819 pg/ml | – | – | ||||
| Pneumonia = 169 | |||||||||
| Others = 152 | |||||||||
| Age = 55.1 ± 16.1 | |||||||||
| ♂ 63.9% | |||||||||
| ZO-1 | Serum | Sepsis = 11 | – | – | – | – | – | ↑ ZO-1 in severe sepsis and septic shock compared to sepsis, | [ |
| Severe sepsis = 18 | – | – | – | – | – | ↑ ZO-1 in non-survivors compared with survivors, | |||
| Septic shock = 22 | – | – | – | – | – | ↑ ZO-1 in MODs group | |||
| – | – | – | – | 0.502 and 0.380 | ↑ ZO-1 was positively correlated with SOFA and APACHE-II scores, | ||||
| Brain tissue autopsies | Sepsis = 47 | – | – | – | – | – | ZO-1 is absent from the endothelial cells in the cerebrum and endothelium | [ | |
| Gut permeability markers | |||||||||
| Citrulline | Plasma | Septic shock = 16 | – | – | – | – | – | Citrulline was positively correlated with plasma arginine (r2 = 0.85) and glutamine (r2 = 0.90) concentrations in both groups, and significantly inversely correlated with CRP (r2 = 0.10) | [ |
| (Survivors = 8 | ↓ Citrulline in patients with digestive bacterial translocation | ||||||||
| Age = 60 ± 16.5 | |||||||||
| Non-survivor = 8 | |||||||||
| Age = 62.9 ± 18.5 | – | – | – | – | – | ||||
| Plasma | Sepsis/ARDS = 44 | – | – | – | – | – | ↓ Citrulline in all patients | [ | |
| Sepsis/NO ARDS = 91 | – | – | 6 and 10.1 uM | – | – | ↓ ARDS compared to the no ARDS group, | |||
| Age = 55 ± 16 | – | – | – | – | – | Citrulline levels were associated with ARDS | |||
| I-FABP | Serum | Sepsis = 30 | – | – | 27.46 and 36.95 μg/l | – | – | ↑ I-FABP sepsis and septic shock group, | [ |
| Septic shock = 30 | – | ↑ I-FABP no difference between survivors and non-survivors | |||||||
| Control = 20 | – | – | – | – | |||||
| Zonulin | Plasma | Sepsis = 25 | – | – | 6.61 ng/ml | – | – | ↑ Zonulin sepsis compared to post-surgical and control groups, | [ |
| Post-surgical = 18 | – | – | – | – | – | No difference between survivors and non-survivors, | |||
| Control = 20 | – | – | – | – | 0.01, − 0.46, − 0.19, and 0.10 | ↑ Zonulin, no correlation with CRP, APACHE-II, SAPSII, SOFA, | |||
| D-lactic acid | Serum | Sepsis = 30 | – | – | 15.32 and 27.95 mg/l | – | – | ↑ D-lactic acid sepsis and septic shock groups, | [ |
| Septic shock = 30 | – | – | – | – | ↑ D-lactic acid is no different between survivors and non-survivors | ||||
| Control = 20 | |||||||||
| Non-coding RNAs | |||||||||
| Lnc-MALAT1 | Plasma | Sepsis = 196 | – | – | – | – | 0.866 | ↑ Lnc‐MALAT1/miR‐125a axis in sepsis patients | [ |
| Age = 58.2 ± 11.2 | – | – | – | – | – | ↑ Lnc‐MALAT1 relative expression in sepsis patients | |||
| Control = 196 | – | – | – | – | – | Lnc-MALAT1/miRNA-125a axis discriminates sepsis patients from healthy controls and exhibits a positive association with general disease severity, organ injury, inflammation level, and mortality in sepsis patients | |||
| Age = 57.1 ± 12.1 | |||||||||
| Plasma | Sepsis = 152 | 68.50% | 65.90% | – | – | 0,674 (ARDS | ↑ lnc-MALAT1 correlates with raised ARDS risk, disease severity, and increased mortality in septic patients | [ | |
| Age = 59.7 ± 11.2 | 38.30% | 88.60% | – | – | 0.651 | High mortality in sepsis patients | |||
| – | – | – | – | – | Lnc-MALAT1 expression was positively correlated with inflammatory factor levels (CRP, PCT, TNF-α, IL-1β, IL-6, and IL-17) in septic patients | ||||
| Plasma | Sepsis = 120 | – | – | – | – | 0.91 | ↑ lnc-MALAT1 in septic patients, distinguishing patients with sepsis from control | [ | |
| Control = 60 | – | – | – | – | 0.836 | Septic shock patients compared to patients without septic shock | |||
| – | – | – | – | 0.886 | Non-survivors compared to surviving patients | ||||
| – | – | – | – | – | ↑ Lnc-MALAT1 expression was an independent risk factor for sepsis, septic shock, and poor prognosis | ||||
| lnc-MEG3 | Plasma | Sepsis = 219 | – | – | – | – | 0,887 | ↑ lnc‐MEG3 expression predicting elevated sepsis risk | [ |
| Control = 219 | – | – | – | – | 0.934 | lnc-MEG3/miR-21 axis predicting elevated sepsis risk | |||
| Age = 56.5 ± 10.3 | – | – | – | – | 0.801 | miR-21 was predicting reduced sepsis risk | |||
| – | – | – | – | 0.704 | lnc‐MEG3 predicting 28‐day mortality risk | ||||
| – | – | – | – | 0.669 | lnc‐MEG3/miR‐21 axis predicting 28‐day mortality risk | ||||
| – | – | – | – | – | ↑ lnc-MEG3/miR-21 axis, while ↓ miR-21 expression was decreased in sepsis patients | ||||
| - | lnc-MEG3 expression and lnc‐MEG3/miR‐21 axis positively correlated, whereas miR‐21 expression negatively correlated with APACHE-II, SOFA, and inflammatory molecules in sepsis patients | ||||||||
| ↑ lnc‐MEG3 relative expression and lnc‐MEG3/miR‐21 axis in deaths than that in survivor | |||||||||
| miRNA | |||||||||
| miR-125a, miR-125b | Plasma | Sepsis = 120 | – | – | – | – | 0.557 | ↔ miR‐125a expression between groups of patients and not differentiate sepsis patients from controls | [ |
| Control = 120 | – | – | – | – | 0.658 | ↑ miR-125b in sepsis patients and can distinguish sepsis patients from control healths | |||
| 59.1 ± 12.1 | – | – | – | – | – | Positive correlation between miR‐125a and miR‐125b in sepsis patients and controls | |||
| – | – | – | – | – | miR-125a was not correlated with APACHE-II or SOFA score, while miR-125b was positively associated with both scores | ||||
| – | – | – | – | – | ↓ miR-125b in survivors compared with non‐survivors | ||||
| – | – | – | – | – | ↑ miR-125b, but not miR‐125a, is correlated with ↑ disease severity, inflammation, and ↑ mortality in sepsis patients | ||||
| Plasma | Sepsis = 126 | – | – | – | – | 0.817 | ↓ miR-125a good predictive values for sepsis risk | [ | |
| Control = 125 | – | – | – | – | 0.843 | ↑ lnc‐ANRIL/miR‐125a axis for sepsis risk | |||
| Age = 56.6 ± 13 | – | – | – | – | 0.745 | ↓ miR‐125a expression in deaths than those in survivors | |||
| – | – | – | – | 0.785 | ↑ lnc‐ANRIL/miR‐125a differentiating deaths from survivors | ||||
| – | – | – | – | – | lnc-ANRIL/miR-125a axis positively correlated, and miR-125a was negatively associated with disease severity and inflammation in sepsis patients | ||||
| Plasma | Sepsis = 150 | – | – | – | – | 0.749 and 0.839 | ↑ miR-125a and miR-125b distinguish sepsis patients from controls | [ | |
| Age = 56.9 ± 10.3 | – | – | – | – | 0.588 | miR-125a to predict 28-day mortality risk | |||
| Control = 150 | – | – | – | – | 0.699 | miR-125b had a potential value in predicting elevated 28-day mortality risk | |||
| Age = 55.1 ± 11.4 | – | – | – | – | – | miR-125a failed to predict the 28-day mortality risk in sepsis patients | |||
| – | – | – | – | – | 1. The predictive value of miR‐125b for sepsis risk | ||||
| – | – | – | – | ||||||
| miR‐125a and miR‐125b relative expressions were positively associated with disease severity in sepsis patients | |||||||||
| Plasma | Sepsis = 196 | – | – | – | – | – | ↑ lnc‐MALAT1/miR‐125a axis in sepsis patients, | [ | |
| Age = 58.2 ± 11.2 | – | – | – | – | 0.931 | lnc-MALAT1/miRNA-125a axis discriminates sepsis patients from control | |||
| Control = 196 | – | – | – | – | 0.866 | lnc-MALAT1 discriminates sepsis patients from control | |||
| Age = 57.1 ± 12.1 | |||||||||
| Membrane receptors, cell proteins, and metabolites | |||||||||
| CD64 | Blood | Sepsis = 119 | – | – | – | – | – | ↑ nCD64 and SOFA score in the sepsis compared to control | [ |
| Septic shock = 32 | – | – | 4.1, 9, and 2.2 MFI | – | – | ↑ Sepsis and septic shock compared to control | |||
| Control = 20 | – | – | – | – | 0.879 | nCD64 in bacterial infection | |||
| – | – | – | – | 0.888 | ↑ AUC of nCD64 combined with SOFA than that of any other parameter alone or in combination | ||||
| – | – | – | – | 0.85 | CD64 for predicting death | ||||
| – | – | – | – | 0.916 | Combination of nCD64 and SOFA score | ||||
| – | – | 4.1 versus 8.9 MFI | – | – | ↑ nCD64 survivors versus non-survivors | ||||
| Blood | Sepsis = 20 | 0.82, 0.67 and 0.67 | 0.67, 0.76, and 0.76 | < 90.40, < 3.01, and < 0.825 | – | 0.843, 0.824, and 0.804 | ↑ CD64, ↓CD13, and ↓HLA-DR predict mortality in septic patients | [ | |
| Age = 54.35 ± 17.97 | |||||||||
| Control = 20 | |||||||||
| Age = 51.55 ± 13.37 | |||||||||
| CD68 | Brain | Septic shock = 16 | – | – | – | – | – | ↑CD68 in the hippocampus (1.5 fold), putamen (2.2 fold), and cerebellum (2.5 fold) in patients with sepsis than control patients | [ |
| Age = 8.9–71.7 | |||||||||
| Control = 15 | |||||||||
| Age = 65.2–87.4 | |||||||||
| NFL | CSF and plasma | Sepsis = 20 | – | – | 1723.4, 1905.2 | – | – | Day 1 – sepsis versus control | [ |
| Age = 66.7 ± 14.0 | – | – | 2753.1, 2208.0 | – | – | Day 3 – sepsis versus control | |||
| Control = 5 | – | – | 5309.6, 3701.3 pg/ml | – | – | Day 7 – sepsis versus control | |||
| Age = 61.2 ± 24.7 | – | – | – | – | – | ↑ NFL in patient septic compared to control from day 1 | |||
| – | – | – | – | – | ↑ NFL patients with sepsis-associated encephalopathy | ||||
| – | – | – | – | – | ↑ NFL correlated with the severity of sepsis-associated encephalopathy | ||||
| – | – | – | – | ↑ NFL at CSF in non-survivors compared to survivors | |||||
| NFH | CSF and plasma | Sepsis = 20 | – | – | 17.6, 100.3 | - | - | Day 1 – sepsis versus control | [ |
| Age = 66.7 ± 14 | – | – | 18.9, 163.1 | – | – | Day 3 – sepsis versus control | |||
| Control = 5 | – | – | 164.3, 519.9 | – | – | Day 7 – sepsis versus control | |||
| Age = 61.2 ± 24.7 | – | – | ng/ml | – | – | ↑ NFH from day 1 in septic patients | |||
| NSE | Serum | Sepsis/ sepsis-associated encephalopathy = 48 | – | – | 24.87 and 15.49 ng/ml | – | – | ↑ NSE in sepsis-associated encephalopathy group versus no- sepsis-associated encephalopathy group | [ |
| Age = 56 ± 16 Sepsis/non- sepsis-associated encephalopathy = 64 | 24.15 ng/ml | Diagnostic of sepsis-associated encephalopathy | |||||||
| Age = 52 ± 17 | 82.80% | 54.20% | – | – | 0.664 | ↔ NSE, sepsis-survivors versus sepsis-non-survivors | |||
| – | – | – | – | ||||||
| Plasma | Sepsis = 124 | – | – | > 12.5 ug/l | – | – | 23.3%, increased risk of 30-day mortality, | [ | |
| Mean age = 52–71 | – | – | – | – | – | ↑ NSE is associated with mortality | |||
| CSF and plasma | Sepsis/ sepsis-associated encephalopathy = 12 | – | – | Eight versus 3.8 ng/ml | – | – | ↑ CSF NSE in sepsis group compared to controls | [ | |
| Control = 21 | ↔ Plasma NSE sepsis group versus control group | ||||||||
| Mean age = 67.8 ± 1 2.1 | – | – | – | – | – | ||||
| Presepsin | Blood | Sepsis = 33 | 90.70% | 98.60% | 407 pg/ml | – | 0.954 | ↑ Presepsin in sepsis patients compared to SIRS group | [ |
| Severe sepsis = 24 | ↑ Presepsin and APACHE-II score in severe sepsis group than sepsis group | ||||||||
| Septic shock = 15 | – | – | – | – | – | ↑ Presepsin and APACHE-II score in septic shock group compared to severe sepsis group | |||
| SIRS = 23 | |||||||||
| Normal = 20 | – | – | – | – | – | ||||
| Mean age = 62.1 | |||||||||
| TREM-1 | Serum | Severe sepsis = 34 | – | – | 129 pg/ml versus 105 pg/ml | – | – | ↑ TREM-1 levels in septic shock compared to severe sepsis | [ |
| Septic shock = 53 | – | – | – | – | – | ↔ TREM-1 did not differentiate between septic shock and severe sepsis | |||
| Age = 2 mo to 16 years | 56% | 60% | 116.47 pg/ml | – | 0.62 | Predict septic shock | |||
| 52% | 71% | 116.47 pg/ml | – | 0.63 | Predict mortality | ||||
| – | – | – | – | – | ↔ TREM-1 non-survivors versus survivors | ||||
| Serum | SIRS = 38 | 73.30% | 71.10% | ≥ 133 pg/ml | – | – | sTREM-1 cut-off for sepsis | [ | |
| Sepsis = 52 | – | – | – | – | – | ↑ sTREM-1 in sepsis group | |||
| Age = 20 to 92 | – | – | – | – | – | ↑ sTREM-1 in the patients with positive blood culture | |||
| Plasma and leukocytes | Septic shock = 60 Postoperative = 30 | 100% | 98.30% | 30.0 pg/ml | – | – | ↑ sTREM-1 plasma in septic shock compared to control and postoperative groups | [ | |
| Control = 30 | – | – | – | – | – | ↑ sTREM-1 compared with postoperative group | |||
| – | – | – | – | 0.955 | ↑ TREM-1 expression on human monocytes of a septic shock compared to control and postoperative groups | ||||
| Peptide precursor of the hormone and hormone | |||||||||
| MR-proADM | Plasma | Sepsis/bacterial isolate = 39 | 78% | 74.20% | ≥ 1.5 | – | 0.82 | ↑ MR-proADM sepsis versus control | [ |
| Sepsis w/bacterial isolate = 23 | 80% | 89.36% | ≥ 1.70 | – | 0.92 | ↑ MR-proADM septic shock versus control | |||
| Septic shock = 47 | 77.40% | 59.60% | > 3.00 | – | 0.7 | ↑ MR-proADM septic shock versus sepsis | |||
| Control = 50 | – | – | 4.37 versus 2.34 nmol/l | – | – | ↑ MR-proADM, non-survivor versus survivor | |||
| Bio-ADM | Sepsis = 632 | – | – | – | – | Median sepsis patients = 74 pg/mL; septic shock = 107 pg/mL, and 29 pg/mL in non-septic patients | [ | ||
| Septic shock = 267 | – | – | – | Mortality in sepsis patients OR of 1.23 | |||||
| Non-septic = 1235 | – | – | – | – | ↑ Dialysis: OR 1.97 in sepsis patients | ||||
| – | – | 70 pg/mL | ↑ bio-ADM ↑ Use of vasopressors, OR 1.33 | ||||||
| – | – | 108 pg/mL | – | Survivors and non-survivors in sepsis | |||||
| – | – | – | Youden’s index derived threshold of performed better | ||||||
| – | – | – | ↑ bio-ADM non-survivors | ||||||
| – | |||||||||
| – | |||||||||
| – | |||||||||
| PCT | Serum | Sepsis = 59 | – | – | – | – | – | ↑ PCT | [ |
| Severe sepsis/septic shock = 71 | – | – | 0.67 versus 3.81 | – | – | Survivor versus non-survivor at seven days | |||
| Mean age = 80 | – | – | 0.48 versus 1.82 ng/mL | – | – | Survivor versus non-survivor at 30 days | |||
| Serum | SIRS = 38 | 65.79% | 67.33% | 1.57 ng/ml | – | – | PCT cut-off for sepsis | [ | |
| Sepsis = 52 | – | – | – | – | – | ↑ PCT in sepsis group, | |||
| Age = 20 to 92 | |||||||||
| Serum | Sepsis = 79 | – | – | – | – | – | ↑ PCT concentrations in patients with sepsis and infection | [ | |
| Age = newborn to 12 | ↓ PCT concentrations with antibiotic treatment | ||||||||
| Control = 21 | – | – | – | – | |||||
| Age = newborn to 10 | |||||||||
| Blood | Sepsis = 119 | – | – | 17.1, 1.8, and 0.04 ng/ml | – | – | ↑ PCT septic shock and sepsis compared to the control group | [ | |
| Septic shock = 32 | – | – | 1.8 and 9.2 ng/ml | – | – | ↑ PCT levels in survivors versus non-survivors | |||
| Control = 20 | |||||||||
| Blood | Sepsis = 33 | 90.70% | 98.60% | 407 pg/ml | – | 0.874 | ↑ PCT sepsis patients compared to SIRS group | [ | |
| Severe sepsis = 24 | – | – | – | – | – | ↑ PCT and APACHEII score in severe sepsis group compared to sepsis group | |||
| Septic shock = 15 | |||||||||
| SIRS = 23 | |||||||||
| Normal = 20 | |||||||||
| Mean age = 62.1 | |||||||||
| Plasma | Sepsis and shock septic = 1089 | ↔ There was no statistic difference in the primary outcome regarding PCT-guidance 27.9% versus no PCT-guidance 22.9% to predict mortality | [ | ||||||
| PCT-guidance n = 279 | ↔ PCT-guidance versus no PCT-guidance there was no statistic difference in 28-day mortality, 25.6% versus 28.2% | ||||||||
| No PCT-guidance n = 267 | |||||||||
| Serum | Severe sepsis = 34 | – | – | 129 pg/ml versus 105 pg/ml | – | – | ↔ PCT did not differentiate septic shock from severe sepsis | [ | |
| Septic shock = 53 | |||||||||
| Age = 2 mo to 16 years | |||||||||
| NT-proBNP | Serum | Sepsis = 60 | – | – | 1.209 ng/l | – | – | ↑ NT-proBNP level at 24 h after sepsis diagnosis | [ |
| Severe sepsis = 89 | – | – | – | – | – | ↑ NT-proBNP levels at 24 h after sepsis onset were associated with ↓ SPPB scores at 12 months | |||
| Septic shock = 47 | |||||||||
| Age = 59.1 ± 15.1 | |||||||||
| Plasma | Sepsis = 142 | 4 (2.6–8.8) versus 8.2 nmol/L (5.2–12.6) | - | ↑ NT-proBNP levels in non-survivors compared with survivors | [ | ||||
| Septic shock = 947 | - | ↑ NT-proBNP prediction of 28-day mortality in total population, sepsis group, and shock septic group, respectively | |||||||
| 0.73, 0.73, and 0.72 | |||||||||
| Neutrophil, cells, and related biomarkers | |||||||||
| Lactate | Plasma | Sepsis = 59 | – | – | – | – | ↑ Lactate | [ | |
| Severe sepsis/septic shock = 71 | – | – | 1.7 versus 3.4 | – | Survivor versus non-survivor at seven days | ||||
| Mean age = 80 | – | – | 1.6 versus 2.2 | – | Survivor versus non-survivor at 30 days | ||||
| – | – | mmol/l | 0.79 and 0.77 | Predictors of mortality at 7 and 30 days | |||||
| Serum | Non- sepsis-associated encephalopathy = 2513 Sepsis-associated encephalopathy = 2474 | – | – | – | – | – | ↑ Lactate predicted 30-day mortality of patients with sepsis-associated encephalopathy, OR: 1.19 | [ | |
| Blood | Sepsis = 33 | 90.70% | 98.60% | 407 pg/ml | – | 0.859 and 0.723 | ↑ Lactate and APACHE-II score in severe sepsis group compared to sepsis group | [ | |
| Severe sepsis = 24 | – | – | – | – | – | ↑ APACHE-II score and lactate in septic shock group when compared with severe sepsis group | |||
| Septic shock = 15 | |||||||||
| SIRS = 23 | |||||||||
| Normal = 20 | |||||||||
| Mean age = 62.1 | |||||||||
| Serum | Severe sepsis = 34 | – | – | – | – | – | ↔ Lactate did not differentiate septic shock from severe sepsis | [ | |
| Septic shock = 53 | |||||||||
| Age = 2 mo to 16 years | |||||||||
| MPO | Plasma | Sepsis = 957 | – | – | 128.1 ng/ml | – | – | ↑ MPO day 1 and progressively decreased until day 7 | [ |
| – | – | – | – | – | ↑ MPO increase on days on days 1, 2, and 7 in 90-day non-survivors | ||||
| Septic shock = 55 | – | – | – | – | – | ↑ MPO-DNA and cf-DNA in patients with septic shock on day 1 | [ | ||
| Control = 13 | – | – | – | – | – | ↑ MPO-DNA on days 3 and 7 of sepsis was associated with 28-day mortality | |||
| Mean age = 68 | – | – | – | 0.303 and 0.434 | – | ↑ MPO-DNA on day 3 and 7 positive correlation with SOFA score | |||
| ♂ = 71% | |||||||||
| Resistin | Plasma | Sepsis = 957 | – | – | 192.9 ng/ml | – | – | ↑ Resistin on day one and progressively decreased until day 7 | [ |
| Mean age = 70 | – | – | – | – | – | ↑ Resistin increase on days 1, 2, and 7 in 90-day non-survivors | |||
| ♂ = 60% | |||||||||
| Serum | Sepsis = 50 | 72%, 80%, and 100% | 82%, 95%, and 100% | 5.2, 6.1, and 7,5 ng/ml | – | – | ↑ Resistin levels on day 1, 4, and 7 | [ | |
| Patient without sepsis = 22 | – | – | – | – | 0.864, 0.987, and 0.987 | ↑ Resistin levels on days 1, 4, and 7 were associated with sepsis | |||
| Control = 25 | |||||||||
| Age ≤ 12 | |||||||||
| Serum | Sepsis = 60 | – | – | 36.45 | – | – | ↑ Resistin in sepsis/septic shock groups | [ | |
| Septic shock = 42 | – | – | 48.13 versus 31.58 | – | – | ↑ Resistin levels in non-survivors versus Survivors on day 1 and 7 | |||
| Control = 102 | – | – | 46.20 versus 25.22 | – | – | ↑ Resistin septic shock versus sepsis on day 1 and 3 | |||
| 40.8 versus 33.4 | |||||||||
| 37.1 versus 27.4 | |||||||||
| µg/l | |||||||||
| Soluble receptors | |||||||||
| sPD-L1 | Serum | Sepsis = 483 | – | – | 0.16 ng/ml | – | – | ↑ sPD-L1 immunosuppression phenotype, ↑ risk of hospital readmission and mortality, OR = 8.26 | [ |
| Mean age = 60.5 | ↑ sPD-L1, 45 (46.4%) at 3 months, 40 (44.9%) at 6 months, and 44 (49.4%) at 12 months | ||||||||
| ♂ 54.9% | – | – | – | – | – | ↑ sPD-L1 to predict 28-day mortality ≅ APACHE-II and SOFA scores | |||
| – | – | – | – | – | |||||
| Serum | Sepsis = 91 | – | – | 2.09 ng/ml | – | – | ↑ sPD-L1 and sPD-1 in septic patients | [ | |
| Control = 29 | – | – | – | – | – | ↑ sPD-L1 increased in non-survivors | |||
| – | – | – | – | 0.71 | ↑ sPD-L1 level to predict 28-day mortality | ||||
| suPAR | Serum | Sepsis = 59 | – | – | – | – | – | ↑ suPAR, | [ |
| Severe sepsis/septic shock = 71 | – | – | 6.9 versus 9.8 | – | – | Survivor versus non-survivor at seven days | |||
| Mean age = 80 | – | – | 6.4 versus 9.3 | – | – | Survivor versus non-survivor at 30 days | |||
| – | – | ng/ml | 0.72 and 0.77 | Predictors of mortality at 7 and 30 days | |||||
| – | – | – | – | – | ↓ suPAR from day 1 to day seven sepsis and severe sepsis/septic shock | ||||
| Serum | Sepsis = 60 | – | – | 13 | – | – | ↑ suPAR in sepsis and septic shock | [ | |
| Septic shock = 42 | – | – | 10.5 versus 14.1 | – | – | ↑ suPAR in septic shock compared with sepsis on day one but not on day 7 | |||
| Control = 102 | 11.3 versus 12.9 μg/l | ||||||||
| sTNFR-1 | Plasma | SIRS = 943 | – | – | 7719 versus 18,197 | – | – | ↑ sTNFR-1 in non-survivor versus survivor, | [ |
| Sepsis = 330 | – | – | pg/ml | – | – | ↑ sTNFR-1 sepsis compared to SIRS | |||
| Shock = 216 | |||||||||
| Pneumonia = 169 | |||||||||
| Others = 152 | |||||||||
| Age = 55.1 ± 16.1 | |||||||||
| ♂ 63.9% | |||||||||
| Plasma | No delirium = 47 | – | – | 3.843 and 10.250 pg/ml | – | – | ↑ sTNFR1 and sTNFR2 delirium cutoff | [ | |
| Delirium = 31 | – | – | – | – | – | ↑ sTNFR1 and sTNFR2 in delirium group compared with non-delirium | |||
| OR: 18 to sTNFR1, | |||||||||
| STNFR2, | |||||||||
| – | – | – | – | – | |||||
| Lipoproteins | |||||||||
| LDL | Serum | Sepsis = 594 | – | – | – | – | – | Risk of sepsis, OR, 0.86, | [ |
| ↓Quartile greater risk of sepsis; OR, 1.48; and admission to the ICU, OR, 1.45, versus highest quartile | |||||||||
| ↔ When comorbidities were considered | |||||||||
| HDL | Serum | Sepsis = 63 | – | – | – | – | – | ↓ HDL in non-survivors on days 1 to 4 | [ |
| Mean age = 72 | – | – | – | – | 0.84 | Predicts mortality within 30 days | |||
| 80% | 92% | 20 mg/dl | – | – | 83% accuracy to predict 30-day overall mortality | ||||
| – | – | – | – | – | HDL < 20 mg/dl increases attributable mortality, risk of prolonged ICU stay, and hospital-acquired infection rate | ||||
| Plasma | Suspected sepsis = 200 | 0.690 | 0.716 | 30.9 mg/dl | – | 0,749 | MODS predictor | [ | |
| 0.699 | 0.857 | 25,1 mg/dl | – | 0,818 | Mortality in 28 days | ||||
| – | – | < 25.1 mg/dl | – | – | ↑ Mortality, | ||||
| – | – | – | – | – | 74% of patients with HDL < 25.1 mg/dl required ICU compared to 35% above cutoff; development of severe acute renal dysfunction was 47% versus 21%, respectively; multiple organ dysfunction was 60% versus 25%; and mechanical ventilation was 53% versus 21% | ||||
| – | – | – | – | – | ↓ HD, the 28-day mortality is more than ten-fold higher (17.6% versus 1.5%) and a mean of 6.2 fewer days without mechanical ventilation and vasopressor support | ||||
| T-chol | Serum | Sepsis = 136 | – | – | – | – | – | ↓ T-chol associated with risk of death in septic patients | [ |
Ang-1 angiopoietin-1, Ang-2 angiopoietin-2, APACHE-II acute physiology and chronic health evaluation II, ARDS acute respiratory distress syndrome, AUC area under the curve, BBB blood–brain barrier, BMVEC brain microvascular endothelial cells, CD cluster of differentiation, CLDN-5 claudin-5, CRP C reactive protein, CSF cerebrospinal fluid, DAMPs damage-associated molecular patterns, DIC disseminated intravascular coagulation, EEG electroencephalography, GCS Glasgow coma scale, HDL high-density lipoprotein, HLA-DR human leukocyte antigen, HMGB1 high mobility group box 1, hsCRP high-sensitivity C reactive protein, I-FABP intestinal fatty acid binding protein, IL interleukin, LDL low-density lipoprotein, lnc-ANRIL long non-coding antisense non-coding RNA in the INK4 locus, lnc-MALAT1 long non-coding metastasis-associated lung adenocarcinoma transcript 1, lnc-MEG3 long non-coding RNA maternally expressed gene 3, lncRNA long non-coding RNA, MCP-1 monocyte chemoattractant protein-1, miR-125a micro RNA-125a, miR-125b micro RNA-125b, MODS multiple organ dysfunction syndrome, MOF multiple organ failure, MPO myeloperoxidase, MR-proADM mid-regional pro adrenomedullin, NFL neurofilament light, NfH neurofilament heavy, NSE neuron specific enolase, NT-proBNP N-terminal pro-brain natriuretic peptide, OCLN occludin, OR odds ratio, PAI-1 plasminogen activator inhibitor 1, PCT procalcitonin, PTX-3 pentraxin-3, RNA ribonucleic acid, S100B calcium-binding protein B, sE-Selectin soluble E-selectin, sFlt-1 soluble fms-like tyrosine kinase 1, sICAM-1 soluble intercellular adhesion molecule 1, SIRS systemic inflammatory response syndrome, SOFA sequential organ failure assessment, sPD-1 soluble programmed death protein 1, sPD-L1 soluble programmed death ligand 1, SPPB short physical performance battery, sTNFR1 soluble tumor necrosis factor receptor type 1, sTNFR2 soluble tumor necrosis factor receptor type 2, sTREM-1 soluble triggering receptor expressed on myeloid cells 1, suPAR soluble form of the urokinase plasminogen activator receptor, sVCAM-1 soluble vascular cell adhesion molecule 1, T-chol total cholesterol, TNF-α tumour necrosis factor alpha, TREM-1 triggering receptor expressed on myeloid cells-1, VLA-3/a3β1 integrin alpha 3 beta 1, ZO-1 zonula-occluden 1). ↑ increase, ↓ decrease, ↔ no difference
Fig. 1Sepsis, septic shock, and sepsis-associated encephalopathy biomarkers. The infection triggers a cascade of signaling pathways that activate several transcription factors and promote proinflammatory mediators such as acute-phase proteins, cytokines, chemokines, and antimicrobial peptides necessary to eliminate the invading pathogens. The unbalanced host immune response triggers vascular endothelial damage, increasing gut and BBB permeability, culminating in organ dysfunction. Ang-2 (angiopoietin-2), APP (acute phase proteins), aPPT (activated partial thromboplastin), AST (astrocytes), AT (antithrombin), BBB (blood–brain barrier), C5aR (complement component 5a receptor), CD (cluster of differentiation), CD14-ST (soluble subtype of CD14), CRP (C reactive protein), DAMPs (damage-associated molecular patterns), GFAP (glial fibrillary acidic protein), HMGB-1 (high mobility group box 1), ICAM-1 (intercellular adhesion molecule 1), I-FABP (intestinal fatty acid binding protein), LBP (lipopolysaccharide binding protein), mHLA-DR (monocytic human leukocyte antigen DR), Mo (macrophage), NFL (neurofilament light), NSE (neuron specific enolase), NT-proBNP (N-terminal pro-brain natriuretic peptide), OCLN (occludin), OLG (oligodendrocyte), PAMPs (pathogen-associated molecular patterns), PCT (procalcitonin), PMNL (polymorphonuclear leukocytes), PT (prothrombin), PTX-3 (pentraxin-3), S100B (calcium-binding protein B), sFlt-1 (soluble fms-like tyrosine kinase 1), suPAR (soluble form of the urokinase plasminogen activator receptor), TNFR (tumor necrosis factor receptor type), TREM-1 (triggering receptor expressed on myeloid cells 1), VCAM-1 (vascular cell adhesion molecule 1), ZO-1 (zonula-occluden 1)