| Literature DB >> 29255443 |
Teemu M Luoto1, Rahul Raj2, Jussi P Posti3, Andrew J Gardner4,5, William J Panenka6, Grant L Iverson7.
Abstract
BACKGROUND: The extensive use of computed tomography (CT) after acute head injury is costly and carries potential iatrogenic risk. This systematic review examined the usefulness of blood-based glial fibrillary acidic protein (GFAP) for predicting acute trauma-related CT-positive intracranial lesions following head trauma. The main objective was to summarize the current evidence on blood-based GFAP as a potential screening test for acute CT-positive intracranial lesions following head trauma.Entities:
Keywords: brain injury; computed tomography; emergency departments; glial fibrillary acidic protein; head injury
Year: 2017 PMID: 29255443 PMCID: PMC5722790 DOI: 10.3389/fneur.2017.00652
Source DB: PubMed Journal: Front Neurol ISSN: 1664-2295 Impact factor: 4.003
Figure 1PRISMA flow chart.
Summary of study results.
| Controls | TBI | ||||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Reference | Method (GFAP) | Lower level of detection (ng/mL) | Age, years | Male (%) | GFAP level, | Age, | Male (%) | Time of blood sampling (h after injury) | CT-positive, | CT-negative, | Acute traumatic lesions on head CT, | GFAP related to lesions | Extracranial injuries accounted for | ||
| Bogoslovsky et al. ( | Quanterix Corporation | 0.0008 | Md = 45, | Md = 0.0008, | Md = 39, | Admission, | Md = 0.0176, | N/A | Yes | No | |||||
| Study design, setting, country, and number of sites; study year(s): case–control; trauma center; USA, eight sites; 2007–2011 | |||||||||||||||
| Main findings: CT-positive TBIs had significantly higher GFAP levels than controls. GFAP was able to discriminate CT-positive TBIs from controls | |||||||||||||||
| AU-ROC: 0.94 (CT+ vs. controls); cutoff: N/A | |||||||||||||||
| Buonora et al. ( | Meso Scale discovery | 0.21 | M = 47, | <0.3 | Mild-moderate: | At admission, | N/A | N/A | No | Yes | |||||
| Study design, setting, country, and number of sites; study year(s): case–control; trauma center; USA, two sites; Canada, four sites; N/A | |||||||||||||||
| Main findings: no relation between GFAP and CT findings in the cohort with mild-moderate TBI. Higher levels of GFAP in moderate-severe TBI patients compared to controls | |||||||||||||||
| AU-ROC: N/A; cutoff: N/A | |||||||||||||||
| Diaz-Arrastia et al. ( | Banyan biomarkers | 0.1 | M = 34, | N/A | M = 42, | M = 10.9, | N/A | N/A | Yes | No | |||||
| Study design, setting, country, and number of sites; study year(s): case–control; trauma center; USA, three sites; N/A | |||||||||||||||
| Main findings: GFAP was able to discriminate: (i) CT-positive TBIs from CT-negative TBIs and (ii) TBIs from controls. | |||||||||||||||
| AU-ROC: 0.88 (CT+ vs. CT−) and 0.91 (TBI vs. controls); cutoff: N/A | |||||||||||||||
| Honda et al. ( | BioVendor | 0.1 | N/A | N/A | N/A | N/A | CT-positives: | At admission, | N/A | N/A | Yes | No | |||
| Study design, setting, country, and number of sites; study year(s): cohort; trauma center, Japan, one site; 2006–2007 | |||||||||||||||
| Main findings: GFAP was able to discriminate CT-positive TBIs from CT-negative TBIs. | |||||||||||||||
| AU-ROC: 0.98 (CT+ vs. CT−); cutoff: N/A | |||||||||||||||
| Lumpkins et al. ( | BioVendor | N/A | N/A | N/A | N/A | N/A | M = 43, | At admission, no details provided | M = 0.00677, | M = 0.00007, | Yes | Yes | |||
| Study design, setting, country, and number of sites; study year(s): cohort; trauma center, USA, one site; 2005–2006 | |||||||||||||||
| Main findings: CT-positive TBIs had significantly higher GFAP levels than CT-negative TBIs. GFAP could discriminate CT-positive TBIs from CT-negative TBIs. Also, patients with surgical CT lesions had significantly higher GFAP levels than patients with diffuse lesions. | |||||||||||||||
| AU-ROC: 0.90 (CT+ vs. CT−); cutoff: 0.001 ng/mL, sensitivity = 62%, specificity = 100% | |||||||||||||||
| McMahon et al. ( | Banyan Biomarkers | 0.01 | N/A | N/A | N/A | N/A | M = 42, | At admission, ≤24 | M = 2.86, | M = 0.26, | Yes | Yes | |||
| Study design, setting, country, and number of sites; study year(s): cohort; trauma center, USA, one site; N/A | |||||||||||||||
| Main findings: CT-positive TBIs had significantly higher GFAP levels than CT-negative TBIs. GFAP could discriminate CT-positive TBIs from CT-negative TBIs. | |||||||||||||||
| AU-ROC: 0.87 (CT+ vs. CT−); cutoff: 1.66 ng/mL, sensitivity = 45%, specificity = 99%, Brier score = 0.29 | |||||||||||||||
| Metting et al. ( | BioVendor | 0.045 | N/A | N/A | N/A | N/A | M = 34.3, | N/A | M = 2.4, | M = 1.20, | M = 0.05, | Yes | Yes | ||
| Study design, setting, country, and number of sites; study year(s): cohort; University hospital, The Netherlands, one site; 2005–2007 | |||||||||||||||
| Main Findings: CT-positive TBIs had significantly higher GFAP levels than CT-negative TBIs | |||||||||||||||
| AU-ROC: N/A; cutoff: N/A | |||||||||||||||
| Okonkwo et al. ( | Banyan Biomarkers | 0.1 | N/A | N/A | N/A | N/A | M = 42, | M = 10.9, | M = 2.86, | M = 0.26, | Yes | No | |||
| Study design, setting, country, and number of sites; study year(s): cohort; trauma center, USA, three sites; N/A | |||||||||||||||
| Main Findings: GFAP was able to discriminate CT-positive TBIs from CT-negative TBIs | |||||||||||||||
| AU-ROC: 0.88 (CT+ vs. CT−); cutoff: 0.68 ng/mL, sensitivity = 73%, specificity = 89%, positive predictive value = 87% | |||||||||||||||
| Papa et al. ( | Banyan Biomarkers | 0.000008 | M = 40, | N/A | M = 40, | M = 3.1, | N/A | N/A | Yes | Yes | |||||
| Study design, setting, country, and number of sites; study year(s): case–control; trauma center, USA, one site; N/A | |||||||||||||||
| Main Findings: GFAP was able to discriminate CT-positive TBIs from CT-negative TBIs | |||||||||||||||
| AU-ROC: 0.84 (CT+ vs. CT−); cutoff: 0.067 ng/mL, sensitivity = 100%, specificity = 55%, negative predictive value = 100%, positive predictive value = 20% | |||||||||||||||
| Papa et al. ( | Banyan Biomarkers | 0.02 | No injuries: | M = 0.057, | M = 39, | M = 2.6, | N/A | N/A | Yes | No | |||||
| Study design, setting, country, and number of sites; study year(s): case–control; Trauma center, USA, 3 sites; N/A | |||||||||||||||
| Main findings: GFAP could discriminate CT-positive TBIs from CT-negative TBIs. GFAP was more reliable in discriminating: (i) TBIs from controls and (ii) TBIs with surgical CT lesions from non-surgical lesions | |||||||||||||||
| AU-ROC: 0.79 (CT+ vs. CT−) and 0.90 (TBI vs. controls); cutoff: 0.035 ng/mL, sensitivity = 97%, specificity = 18%, negative predictive value = 94% | |||||||||||||||
| Papa et al. ( | Banyan Biomarkers | 0.008 | M = 41, | Md = 0.008, | M = 39, | M = 3.0, | Md = 0.588, | Md = 0.033, | Yes | No | |||||
| Study design, setting, country, and number of sites; study year(s): case–control; trauma center, USA, one site; 2010–2004 | |||||||||||||||
| Main findings: CT-positive TBIs had significantly higher GFAP levels than CT-negative TBIs. GFAP could discriminate CT-positive TBIs from CT-negative TBIs | |||||||||||||||
| AU-ROC: 0.86 (CT+ vs. CT−); cutoff: N/A | |||||||||||||||
| Posti et al. ( | The Evidence Investigator Cerebral Custom Array IV | N/A | M = 44.9, | N/A | M = 45.3, | At admission, | N/A | N/A | Yes | No | |||||
| Study design, setting, country, and number of sites; study year(s): cohort; University hospital; Finland, one site; the United Kingdom, one site; 2011–2003 | |||||||||||||||
| Main findings: CT-positive TBIs had significantly higher GFAP levels than CT-negative TBIs. GFAP could discriminate CT-positive TBIs from CT-negative TBIs. Also, GFAP levels were significantly higher in patients with mass lesions than with non-mass lesions | |||||||||||||||
| AU-ROC: 0.74 (CT+ vs. CT−); cutoff: N/A | |||||||||||||||
| Shehab and Nassar ( | ELISA assay, not otherwise specified | N/A | N/A | N/A | M = 0.0015, | M = 40.8, | At admission, | M = 0.1029, | M = 0.0668, | Yes | Yes | ||||
| Study design, setting, country, and number of sites; study year(s): case–control; University hospital, Egypt, one site; N/A | |||||||||||||||
| Main findings: CT-positive TBIs had significantly higher GFAP levels than CT-negative TBIs. Also, TBIs had significantly higher GFAP levels than controls | |||||||||||||||
| AU-ROC: N/A; cutoff: N/A | |||||||||||||||
| Welch et al. ( | Banyan Biomarkers | 0.02 | N/A | N/A | N/A | N/A | M = 45.6, | At admission, | Md = 0.1105, | Md = 0.0078, | Yes | No | |||
| Study design, setting, country, and number of sites; study year(s): cohort; trauma center; USA, five sites; Hungary, two sites; N/A | |||||||||||||||
| Main findings: GFAP could discriminate CT-positive TBIs from CT-negative TBIs | |||||||||||||||
| AU-ROC: 0.79 (CT+ vs. CT−); cutoff: 0.015 ng/mL, sensitivity = 81%, specificity = 67% | |||||||||||||||
| Welch et al. ( | Banyan Biomarkers | 0.02 | N/A | N/A | N/A | N/A | M = 46.0, | Multiple time points: | Md = 0.122, | Md = 0.010, | Yes | No | |||
| Study design, setting, country, and number of sites; study year(s): cohort; trauma center; USA, five sites; Hungary, two sites; N/A | |||||||||||||||
| Main findings: GFAP could discriminate CT-positive TBIs from CT-negative TBIs | |||||||||||||||
| AU-ROC: 0.84–0.94 (CT+ vs. CT−); cutoff: N/A | |||||||||||||||
| Lei et al. ( | BioVendor | 0.045 | M = 39.2, | Md = 0, | M = 37.2, | At admission, | Md = 1.924, | N/A | Yes | No | |||||
| Study design, setting, country, and number of sites; study year(s): case–control; trauma center, China, one site; 2011–2004 | |||||||||||||||
| Main findings: TBIs had significantly higher GFAP levels than controls. Also, patients with surgical CT lesions had significantly higher GFAP levels than patients with diffuse lesions | |||||||||||||||
| AU-ROC: N/A; cutoff: N/A | |||||||||||||||
| Mondello et al. ( | BioVendor | N/A | M = 36.9, | M = 0.07, | M = 47.9, | At admission, | N/A | N/A | Yes | Yes | |||||
| Study design, setting, country, and number of sites; study year(s): case–control; trauma center; USA, two sites; Hungary, two sites; N/A | |||||||||||||||
| Main findings: TBIs had significantly higher GFAP levels than controls. Also, patients with mass lesions on CT had significantly higher GFAP levels than patients with diffuse lesions | |||||||||||||||
| AU-ROC: N/A; cutoff: N/A | |||||||||||||||
| Mondello et al. ( | BioVendor | N/A | N/A | N/A | N/A | N/A | M = 46.7, | M = 9, | N/A | N/A | Yes | No | |||
| Study design, setting, country, and number of sites; study year(s): cohort; trauma center; USA, two sites; Hungary, two sites; N/A | |||||||||||||||
| Main findings: TBI patients with mass lesions on CT had significantly higher GFAP levels than patients with diffuse lesions. GFAP was able to discriminate TBIs with mass lesions from TBIs with diffuse lesions | |||||||||||||||
| AU-ROC: 0.72 (mass lesions vs. diffuse lesions); cutoff: N/A | |||||||||||||||
| Pelinka et al. ( | LIAISON® GFAP and S100B assay | 0.03 | N/A | N/A | N/A | N/A | Md = 39, | At admission, | N/A | N/A | Yes | No | |||
| Study design, setting, country, and number of sites; study year(s): cohort; trauma center, Austria, three sites; 1999–2002 | |||||||||||||||
| Main Findings: GFAP levels were positively related to the severity of traumatic CT findings (Marshall grade) | |||||||||||||||
| AU-ROC: N/A; cutoff: N/A | |||||||||||||||
| Pelinka et al. ( | LIAISON® GFAP and S100B assay | 0.03 | Md = 39, | N/A | Md = 39, | At admission, | N/A | N/A | Yes | No | |||||
| Study design, setting, country, and number of sites; study year(s): case–control; trauma center, Austria, three sites; 1999–2003 | |||||||||||||||
| Main findings: GFAP levels were positively related to the severity of traumatic CT findings (Marshall grade) | |||||||||||||||
| AU-ROC: N/A; cutoff: N/A | |||||||||||||||
| Vos et al. ( | Future diagnostics | N/A | N/A | N/A | N/A | N/A | M = 47.0, | Md = 1, | Md = 0.1–2.17 | Md = 0.02, | Yes | No | |||
| Study design, setting, country, and number of sites; study year(s): cohort; trauma center, The Netherlands, one site; 2004–2006 | |||||||||||||||
| Main findings: GFAP levels were significantly related to the severity of traumatic CT findings (Marshall grade) | |||||||||||||||
| AU-ROC: N/A; cutoff: N/A | |||||||||||||||
| Vos et al. ( | ELISA assay, | N/A | N/A | N/A | N/A | N/A | Md = 32, | Md = 2.5, | N/A | N/A | Yes | No | |||
| Study design, setting, country, and number of sites; study year(s): Cohort; University hospital, The Netherlands, one site, 1999–2000 | |||||||||||||||
| Main findings: GFAP levels were significantly related to the severity of traumatic CT findings (Marshall grade) | |||||||||||||||
| AU-ROC: N/A; cutoff: N/A | |||||||||||||||
| Fraser et al. ( | Ridascreen Risk Material 10/5 | N/A | N/A | N/A | N/A | N/A | M = 10.6, | At admission, | N/A | N/A | No | Yes | |||
| Study design, setting, country, and number of sites; study year(s): cohort; pediatric intensive care unit, Canada, four sites; N/A | |||||||||||||||
| Main findings: only severe CT-positive TBI cases included in the study. GFAP failed to correlate with traumatic CT abnormalities | |||||||||||||||
| AU-ROC: N/A; cutoff: N/A | |||||||||||||||
| Mondello et al. ( | Meso Scale Discovery | N/A | M = 3.9, | Md = 0.01, | M = 3.8, | Md = 4.7, | Md = 0.73, | Md = 0.21, | Yes | No | |||||
| Study design, setting, country, and number of sites; study year(s): case–control; trauma center, USA, one site; N/A | |||||||||||||||
| Main findings: CT-positive TBIs had significantly higher GFAP levels than controls. GFAP could discriminate mild TBIs from controls. However, GFAP could not discriminate between CT-positive and CT-negative TBIs | |||||||||||||||
| AU-ROC: 0.81 (mild TBI vs. control); cutoff: N/A | |||||||||||||||
| Zurek and Fedora ( | BioVendor | N/A | N/A | N/A | N/A | N/A | M = 8.9 | At admission, | N/A | N/A | N/A | No | No | ||
| Study design, setting, country, and number of sites; study year(s): cohort; University hospital, The Czech Republic, one site; 2007–2009 | |||||||||||||||
| Main findings: GFAP failed to correlate with traumatic CT abnormalities | |||||||||||||||
| AU-ROC: N/A; cutoff: N/A | |||||||||||||||
| Papa et al. ( | Banyan Biomarkers | 0.000008 | M = 12, | Md = 0.03, | M = 11.5, | M = 3.3, | Md = 1.01, | Md = 0.18, | Yes | No | |||||
| Study design, setting, country, and number of sites; study year(s): case–control; trauma center, USA, three sites; N/A | |||||||||||||||
| Main findings: CT-positive TBIs had significantly higher GFAP levels than CT-negative TBIs. GFAP could discriminate CT-positive TBIs from CT-negative TBIs | |||||||||||||||
| AU-ROC: 0.82 (CT+ vs. CT−); cutoff: 0.15 ng/mL, sensitivity = 94%, specificity = 47%, negative prediction value = 98% | |||||||||||||||
| Papa et al. ( | Banyan Biomarkers | 0.000008 | M = 13, | Md = 0.03, | M = 13, | At admission, | Md = 1.19, | Md = 0.25, | Yes | No | |||||
| Study design, setting, country, and number of sites; study year(s): case–control; trauma center, USA, three sites; N/A | |||||||||||||||
| Main findings: head injury patients had significantly higher GFAP levels than controls. GFAP could discriminate CT-positive TBIs from CT-negative TBIs | |||||||||||||||
| AU-ROC: 0.85 (CT+ vs. CT−); cutoff: 0.15 ng/mL, sensitivity = 100%, specificity = 36%, likelihood ratio = 1.6 | |||||||||||||||
M, mean; Md, median; GFAP, glial fibrillary acidic protein; GFAP-BDP, glial fibrillary acidic protein breakdown product; CT, computed tomography; CDE, common data elements; AU-ROC, area under the receiver operating curve; IQR, interquartile range; 95% CI, 95% confidence interval; TBI, traumatic brain injury; CT+, CT-positive (patients with acute traumatic intracranial lesions on head CT); CT−, CT-negative (patients with no acute traumatic intracranial lesions on head CT); cutoff, GFAP cutoff level for a trauma-positive head CT.
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GFAP platforms:
1. Quanterix Corporation, Lexington, MA, USA (method:single molecule array).
2. Banyan Biomarkers, Alachua, FL, USA [method: enzyme-linked immunosorbent assay (ELISA)].
3. BioVendor, Brno, Czech Republic; Candler, NC, USA; and Heidelberg, Germany (method: ELISA).
4. The Evidence Investigator Cerebral Custom Array IV Randox Laboratories Ltd., Crumlin, County Antrim, United Kingdom (method: digital immonoassay technology).
5. Meso Scale Discovery, Gaithersburg, MD, USA (method: electro-chemiluminescent immunoassay).
6. LIAISON.
7. Future diagnostics, Wijchen, the Netherlands (method: 2-site luminometric immunoassay).
8. Ridascreen Risk Material 10/5, R-Biopharm AG, Darmstadt, Germany (method: ELISA).
Figure 2Serum glial fibrillary acidic protein (GFAP) findings (means and medians) from individual studies stratified into different subgroups: (i) controls, (ii) CT-negative traumatic brain injury (TBI) (TBI CT−), and (iii) CT-positive TBIs (TBI CT+). For comparison, the findings are subdivided into adult and pediatric subpopulations, and also results of the most commonly used Banyan Biomarkers (Banyan Biomarkers, Inc., Alachua, FL, USA) assay are presented separately.
The Newcastle–Ottawa Scale scores and the level of evidence of the included studies.
| Newcastle–Ottawa Scale | Center of evidence-based medicine | |||
|---|---|---|---|---|
| Reference | Selection (0–4) | Comparability (0–2) | Outcome (0–3) | Level of evidence (1–5) |
| Bogoslovsky et al. ( | ⋆⋆⋆ | ⋆ | ⋆⋆⋆ | 4 |
| Buonora et al. ( | ⋆⋆⋆ | ⋆ | ⋆⋆ | 4 |
| Diaz-Arrastia et al. ( | ⋆⋆⋆ | ⋆⋆ | ⋆⋆⋆ | 4 |
| Honda et al. ( | ⋆⋆⋆ | ⋆ | ⋆⋆⋆ | 4 |
| Lei et al. ( | ⋆⋆⋆ | ⋆ | ⋆⋆⋆ | 4 |
| Lumpkins et al. ( | ⋆⋆⋆ | ⋆⋆ | ⋆⋆⋆ | 4 |
| McMahon et al. ( | ⋆⋆⋆ | ⋆ | ⋆⋆⋆ | 3 |
| Mondello et al. ( | ⋆⋆⋆ | ⋆ | ⋆⋆⋆ | 4 |
| Mondello et al. ( | ⋆⋆⋆ | ⋆⋆⋆ | 4 | |
| Metting et al. ( | ⋆⋆⋆ | ⋆ | ⋆⋆⋆ | 3 |
| Okonkwo et al. ( | ⋆⋆⋆ | ⋆⋆ | ⋆⋆⋆ | 3 |
| Papa et al. ( | ⋆⋆⋆⋆ | ⋆ | ⋆⋆⋆ | 3 |
| Papa et al. ( | ⋆⋆⋆⋆ | ⋆⋆ | ⋆⋆⋆ | 3 |
| Papa et al. ( | ⋆⋆⋆ | ⋆⋆ | ⋆⋆⋆ | 3 |
| Pelinka et al. ( | ⋆⋆ | ⋆⋆⋆ | 4 | |
| Pelinka et al. ( | ⋆⋆ | ⋆⋆⋆ | 4 | |
| Posti et al. ( | ⋆⋆⋆ | ⋆⋆⋆ | 4 | |
| Shehab and Nassar ( | ⋆⋆ | ⋆⋆⋆ | 4 | |
| Welch et al. ( | ⋆⋆⋆ | ⋆⋆⋆ | 4 | |
| Welch et al. ( | ⋆⋆⋆⋆ | ⋆⋆ | ⋆⋆⋆ | 3 |
| Vos et al. ( | ⋆⋆⋆ | ⋆⋆⋆ | 4 | |
| Vos et al. ( | ⋆⋆⋆ | ⋆⋆⋆ | 4 | |
| Fraser et al. ( | ⋆⋆ | ⋆⋆⋆ | 4 | |
| Mondello et al. ( | ⋆⋆⋆ | ⋆⋆ | ⋆⋆⋆ | 3 |
| Zurek and Fedora ( | ⋆⋆⋆ | ⋆⋆⋆ | 4 | |
| Papa et al. ( | ⋆⋆⋆ | ⋆⋆ | ⋆⋆⋆ | 3 |
| Papa et al. ( | ⋆⋆⋆ | ⋆⋆ | ⋆⋆⋆ | 3 |