Division of Cerebrovascular Diseases and Neurocritical Care, Department of Neurology, The Ohio State University, Columbus, OH, USA.
Bloomberg School of Public Health, The Johns Hopkins University, Baltimore, MD, USA.
Resuscitation. 2020 Sep;154:101-109. doi: 10.1016/j.resuscitation.2020.06.023. Epub 2020 Jul 3.
To quantitatively assess the severity of anoxic-ischemic brain injury early after cardiac arrest (CA) using a novel automated method applied to head computed tomography (HCT).
Adult patients who were comatose and underwent HCT < 24 h after arrest were included in a retrospective analysis. Principal endpoint was unfavorable outcome (UO) defined as Cerebral Performance Category (CPC) of 3-5 at hospital discharge. We developed an automated processing algorithm for HCT images to be registered, atlas-segmented in 181 regions, and region-specific radiologic densities determined in Hounsfield Units. This approach was compared with an established manual method evaluating grey-white matter ratios (GWR). We tested univariable and multivariable prognostic models which integrated clinical and HCT features including densities in lobes and in nodes of cerebral networks linked to CA recovery.
Ninety-one patients were enrolled among whom 66 (73%) had an UO. HCTs were interpreted as normal or without acute abnormality by a neuroradiologist in 77 cases (85%). Compared to the favorable outcome group, UO patients had significantly lower densities in all lobes and in nodes of cerebral networks. A model combining clinical variables with the automated method applied to cerebral network nodes had the highest prognostic performance although not significantly different than the combined clinical-GWR method (AUC [95% CI] 0.94 [0.86-1.00] and 0.92 [0.83-1.00] respectively).
In comatose survivors of CA, automated quantitative analysis of HCT revealed very early multifocal changes in brain tissue density which are mostly overlooked on conventional neuroradiologic interpretation and are associated with neurological outcome.
使用一种新的自动方法对头部 CT(HCT)进行定量评估心脏骤停(CA)后早期缺氧缺血性脑损伤的严重程度。
纳入昏迷且在发作后 24 小时内进行 HCT 的成年患者进行回顾性分析。主要终点是不良结局(UO)定义为出院时的脑功能预后评分(CPC)为 3-5 分。我们开发了一种用于 HCT 图像的自动处理算法,以进行注册、在 181 个区域中进行图谱分割,并确定每个区域的 Hounsfield 单位的放射密度。这种方法与评估灰白质比(GWR)的既定手动方法进行了比较。我们测试了包括与 CA 恢复相关的脑网络的叶和节点中的密度在内的临床和 HCT 特征的单变量和多变量预后模型。
在 91 例患者中,66 例(73%)发生 UO。77 例(85%)神经放射科医生将 HCT 解读为正常或无急性异常。与良好预后组相比,UO 患者所有叶和脑网络节点的密度均显著降低。虽然结合临床变量和自动方法应用于脑网络节点的模型的预后性能没有明显优于结合临床-GWR 方法(AUC[95%CI]分别为 0.94[0.86-1.00]和 0.92[0.83-1.00]),但它具有最高的预测性能。
在 CA 的昏迷幸存者中,HCT 的自动定量分析显示脑组织密度的早期多灶性变化,这在常规神经放射学解释中大多被忽视,并且与神经功能结局相关。