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Early GFAP and UCH-L1 Point-of-care Biomarker Measurements for the Prediction of Traumatic Brain Injury and Progression in Patients with Polytrauma and Hemorrhagic Shock

Journal of neurosurgery(2024)

Univ Pittsburgh | Univ Texas | Univ Penn | Oregon Hlth & Sci Univ | Univ Colorado | Univ Miami | Univ Texas Southwestern Med Ctr Dallas

Cited 1|Views29
Abstract
OBJECTIVE Traumatic brain injury (TBI) and hemorrhage are responsible for the largest proportion of all trauma- related deaths. In polytrauma patients at risk of hemorrhage and TBI, the diagnosis, prognosis, and management of TBI remain poorly characterized. The authors sought to characterize the predictive capabilities of glial fibrillary acidic protein (GFAP) and ubiquitin C-terminal hydrolase L1 (UCH-L1) measurements in patients with hemorrhagic shock with and without concomitant TBI. METHODS The authors performed a secondary analysis on serial blood samples derived from a prospective observational cohort study that focused on comparing early whole-blood and component resuscitation. A convenience sample of patients was used in which samples were collected at three time points and the presence of TBI or no TBI via CT imaging was documented. GFAP and UCH-L1 measurements were performed on plasma samples using the i-STAT Alinity point-of-care platform. Using classification tree recursive partitioning, the authors determined the measurement cut points for each biomarker to maximize the abilities for predicting the diagnosis of TBI, Rotterdam CT imaging scores, and 6-month Glasgow Outcome Scale-Extended (GOSE) scores. RESULTS Biomarker comparisons demonstrated that GFAP and UCH-L1 measurements were associated with the presence of TBI at all time points. Classification tree analyses demonstrated that a GFAP level > 286 pg/ml for the sample taken upon the patient's arrival had an area under the receiver operating characteristic curve of 0.77 for predicting the presence of TBI. The classification tree results demonstrated that a cut point of 3094 pg/ml for the arrival GFAP measurement was the most predictive for an elevated Rotterdam score on the initial and second CT scans and for TBI progression between scans. No significant associations between any of the most predictive cut points for UCH-L1 and Rotterdam CT scores or TBI progression were found. The predictive capabilities of UCH-L1 were limited by the range allowed by the point-of-care platform. Arrival GFAP cut points remained strong independent predictors after controlling for all potential polytrauma confounders, including injury characteristics, shock severity, and resuscitation. CONCLUSIONS Early measurements of GFAP and UCH-L1 on a point-of-care device are significantly associated with CT-diagnosed TBI in patients with polytrauma and shock. Early elevated GFAP measurements are associated with worse head CT scan Rotterdam scores, TBI progression, and worse GOSE scores, and these associations are independent of other injury attributes, shock severity, and early resuscitation characteristics.
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point of care,traumatic brain injury,shock,polytrauma,trauma
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要点】:该研究探讨了在多发伤和失血性休克的病人中,早期使用GFAP和UCH-L1两项生物标志物进行创伤性脑损伤(TBI)的预测及其进展情况,发现GFAP具有显著的预测能力。

方法】:通过在已有前瞻性观察队列研究中进行二次分析,对病人三个时间点的血液样本进行检测,使用i-STAT Alinity床旁检测平台测量GFAP和UCH-L1水平,并通过分类树递归分割法确定生物标志物的最佳截断值。

实验】:在便利样本的病人中,通过CT成像确定是否存在TBI,分析结果显示,入院时GFAP水平超过286 pg/ml对预测TBI具有0.77的曲线下面积,而UCH-L1的预测能力受限。入院时GFAP的最佳截断值对预测初始和第二次CT扫描的高Rotterdam评分以及TBI进展最为准确。在控制了所有潜在的混杂因素后,GFAP的预测能力仍然显著。