Department of Computer Science and Information Engineering, National Taiwan University, Taipei, 106216, Taiwan R.O.C.
Department of Emergency Medicine, National Taiwan University Hospital, Taipei, 100225, Taiwan R.O.C.
Crit Care. 2024 Apr 9;28(1):118. doi: 10.1186/s13054-024-04895-2.
This study aimed to develop an automated method to measure the gray-white matter ratio (GWR) from brain computed tomography (CT) scans of patients with out-of-hospital cardiac arrest (OHCA) and assess its significance in predicting early-stage neurological outcomes.
Patients with OHCA who underwent brain CT imaging within 12 h of return of spontaneous circulation were enrolled in this retrospective study. The primary outcome endpoint measure was a favorable neurological outcome, defined as cerebral performance category 1 or 2 at hospital discharge. We proposed an automated method comprising image registration, K-means segmentation, segmentation refinement, and GWR calculation to measure the GWR for each CT scan. The K-means segmentation and segmentation refinement was employed to refine the segmentations within regions of interest (ROIs), consequently enhancing GWR calculation accuracy through more precise segmentations.
Overall, 443 patients were divided into derivation N=265, 60% and validation N=178, 40% sets, based on age and sex. The ROI Hounsfield unit values derived from the automated method showed a strong correlation with those obtained from the manual method. Regarding outcome prediction, the automated method significantly outperformed the manual method in GWR calculation (AUC 0.79 vs. 0.70) across the entire dataset. The automated method also demonstrated superior performance across sensitivity, specificity, and positive and negative predictive values using the cutoff value determined from the derivation set. Moreover, GWR was an independent predictor of outcomes in logistic regression analysis. Incorporating the GWR with other clinical and resuscitation variables significantly enhanced the performance of prediction models compared to those without the GWR.
Automated measurement of the GWR from non-contrast brain CT images offers valuable insights for predicting neurological outcomes during the early post-cardiac arrest period.
本研究旨在开发一种自动方法,从院外心脏骤停(OHCA)患者的脑计算机断层扫描(CT)中测量灰质-白质比(GWR),并评估其预测早期神经预后的意义。
本回顾性研究纳入了在自主循环恢复后 12 小时内接受脑 CT 成像的 OHCA 患者。主要结局终点测量是出院时的良好神经结局,定义为脑功能分类 1 或 2。我们提出了一种自动方法,包括图像配准、K-均值分割、分割细化和 GWR 计算,以测量每个 CT 扫描的 GWR。K-均值分割和分割细化用于细化感兴趣区域(ROI)内的分割,从而通过更精确的分割提高 GWR 计算的准确性。
总体而言,根据年龄和性别,443 例患者被分为推导集 N=265(占 60%)和验证集 N=178(占 40%)。从自动方法获得的 ROI 亨斯菲尔德单位值与从手动方法获得的 ROI 亨斯菲尔德单位值具有很强的相关性。在预测结局方面,在整个数据集上,自动方法在 GWR 计算方面明显优于手动方法(AUC 0.79 比 0.70)。使用推导集确定的截断值,自动方法在灵敏度、特异性、阳性和阴性预测值方面也表现出较好的性能。此外,GWR 是逻辑回归分析中结局的独立预测因子。与不包含 GWR 的预测模型相比,将 GWR 与其他临床和复苏变量结合使用可显著提高预测模型的性能。
从非对比脑 CT 图像自动测量 GWR 可为预测心脏骤停后早期神经预后提供有价值的信息。