Department of Neurological Surgery, University Hospitals Cleveland Medical Center, Cleveland, Ohio.
Department of Neurology, University Hospitals Cleveland Medical Center, Cleveland, Ohio.
Neurosurgery. 2018 Nov 1;83(5):948-956. doi: 10.1093/neuros/nyx548.
A reliable method to specifically identify low vasospasm risk in aneurysmal subarachnoid hemorrhage (aSAH) patients has not been previously proposed.
To develop a clinical algorithm using admission aSAH clinical severity and subarachnoid blood distribution to identify patients at low risk of clinical vasospasm.
Clinical severities, admission noncontrasted head computerized tomography (CT) scan, and incidences of vasospasm among 291 aSAH patients treated at our institution were evaluated. Admission head CTs were assessed for distributions of cisternal and ventricular blood. Patients with the following 4 criteria experienced considerably lower risk of vasospasm: (1) Hunt Hess grade 1 to 2, (2) Lack of thick subarachnoid blood filling 2 adjacent cisterns, (3) Lack of thick interhemispheric blood, and (4) Lack of biventricular intraventricular hemorrhage.
One hundred thirty-three patients (45.7%) developed cerebral vasospasm. Hunt Hess grade greater than 2 (odds ratio [OR] 4.52, 95% confidence interval [CI] 2.74-7.46), adjacent cistern blood (OR 4.1, 95% CI 2.51-6.7), interhemispheric thick blood (OR 5.72, 95% CI 3.41-9.59), and biventricular intraventricular hemorrhage (OR 1.92, 95% CI 1.19-3.02) were significant risk factors. Application of our algorithm yielded a sensitivity of 29%, specificity of 100%, positive predictive value of 100%, and negative predictive value of 54.5%, which was superior compared to metrics from current institutional practice criteria. Inter-rater agreement was substantial at mean kappa = 0.75.
Application of our novel clinical algorithm produced successful identification of aSAH patients who experience zero risk of clinical vasospasm. Our algorithm is simple to apply with high reliability and is superior to currently available clinical and radiographic metrics.
目前尚未提出一种可靠的方法来专门识别颅内动脉瘤性蛛网膜下腔出血(aSAH)患者的低血管痉挛风险。
利用入院时 aSAH 临床严重程度和蛛网膜下腔血液分布来制定一种临床算法,以识别临床血管痉挛风险低的患者。
评估了在我们机构治疗的 291 例 aSAH 患者的临床严重程度、入院时未增强头部计算机断层扫描(CT)和血管痉挛的发生率。入院头部 CT 用于评估脑池和脑室血液的分布。具有以下 4 个标准的患者发生血管痉挛的风险明显较低:(1)Hunt Hess 分级 1 至 2 级,(2)无 2 个相邻脑池的厚蛛网膜下腔血液填充,(3)无大脑间血液,以及(4)无双侧脑室的脑室内出血。
133 例患者(45.7%)发生了脑血管痉挛。Hunt Hess 分级大于 2 级(比值比 [OR] 4.52,95%置信区间 [CI] 2.74-7.46)、相邻脑池血液(OR 4.1,95% CI 2.51-6.7)、大脑间血液(OR 5.72,95% CI 3.41-9.59)和双侧脑室脑室内出血(OR 1.92,95% CI 1.19-3.02)是显著的危险因素。应用我们的算法得出的敏感性为 29%,特异性为 100%,阳性预测值为 100%,阴性预测值为 54.5%,优于当前机构实践标准的指标。平均κ值为 0.75,表明组内一致性较好。
应用我们的新临床算法成功识别了经历零临床血管痉挛风险的 aSAH 患者。我们的算法简单易用,可靠性高,优于目前可用的临床和影像学指标。