Orlando Alessandro, Levy A Stewart, Carrick Matthew M, Tanner Allen, Mains Charles W, Bar-Or David
Trauma Research Department, Swedish Medical Center, Englewood, Colorado, USA; Trauma Research Department, St. Anthony Hospital, Lakewood, Colorado, USA; Trauma Services Department, Medical City Plano, Plano, Texas, USA; Trauma Services Department, Penrose Hospital, Colorado Springs, Colorado, USA.
Department of Neurosurgery, St. Anthony Hospital, Lakewood, Colorado, USA.
World Neurosurg. 2017 Nov;107:94-102. doi: 10.1016/j.wneu.2017.07.130. Epub 2017 Jul 31.
To outline differences in neurosurgical intervention (NI) rates between intracranial hemorrhage (ICH) types in mild traumatic brain injuries and help identify which ICH types are most likely to benefit from creation of predictive models for NI.
A multicenter retrospective study of adult patients spanning 3 years at 4 U.S. trauma centers was performed. Patients were included if they presented with mild traumatic brain injury (Glasgow Coma Scale score 13-15) with head CT scan positive for ICH. Patients were excluded for skull fractures, "unspecified hemorrhage," or coagulopathy. Primary outcome was NI. Stepwise multivariable logistic regression models were built to analyze the independent association between ICH variables and outcome measures.
The study comprised 1876 patients. NI rate was 6.7%. There was a significant difference in rate of NI by ICH type. Subdural hematomas had the highest rate of NI (15.5%) and accounted for 78% of all NIs. Isolated subarachnoid hemorrhages had the lowest, nonzero, NI rate (0.19%). Logistic regression models identified ICH type as the most influential independent variable when examining NI. A model predicting NI for isolated subarachnoid hemorrhages would require 26,928 patients, but a model predicting NI for isolated subdural hematomas would require only 328 patients.
This study highlighted disparate NI rates among ICH types in patients with mild traumatic brain injury and identified mild, isolated subdural hematomas as most appropriate for construction of predictive NI models. Increased health care efficiency will be driven by accurate understanding of risk, which can come only from accurate predictive models.
概述轻度创伤性脑损伤中不同类型颅内出血(ICH)的神经外科干预(NI)率差异,并帮助确定哪些ICH类型最有可能受益于NI预测模型的建立。
对美国4家创伤中心3年内的成年患者进行多中心回顾性研究。纳入标准为头部CT扫描显示有ICH且患有轻度创伤性脑损伤(格拉斯哥昏迷量表评分为13 - 15分)的患者。排除有颅骨骨折、“未明确出血”或凝血功能障碍的患者。主要结局为NI。构建逐步多变量逻辑回归模型,以分析ICH变量与结局指标之间的独立关联。
该研究共纳入1876例患者。NI率为6.7%。不同类型ICH的NI率存在显著差异。硬膜下血肿的NI率最高(15.5%),占所有NI的78%。孤立性蛛网膜下腔出血的NI率最低但非零(0.19%)。在检查NI时,逻辑回归模型将ICH类型确定为最具影响力的独立变量。预测孤立性蛛网膜下腔出血NI的模型需要26928例患者,但预测孤立性硬膜下血肿NI的模型仅需328例患者。
本研究强调了轻度创伤性脑损伤患者中不同类型ICH的NI率存在差异,并确定轻度孤立性硬膜下血肿最适合构建NI预测模型。准确了解风险(这只能来自准确的预测模型)将提高医疗保健效率。