Department of Neuroradiology, Heidelberg University Hospital, Im Neuenheimer Feld 400, 69120, Heidelberg, Germany.
Division of Computational Neuroimaging, Heidelberg University Hospital, Heidelberg, Germany.
Eur Radiol. 2024 Feb;34(2):1358-1366. doi: 10.1007/s00330-023-10107-2. Epub 2023 Aug 15.
Multiple variables beyond the extent of recanalization can impact the clinical outcome after acute ischemic stroke due to large vessel occlusions. Here, we assessed the influence of small vessel disease and cortical atrophy on clinical outcome using native cranial computed tomography (NCCT) in a large single-center cohort.
A total of 1103 consecutive patients who underwent endovascular treatment (EVT) due to occlusion of the middle cerebral artery territory were included. NCCT data were visually assessed for established markers of age-related white matter changes (ARWMC) and brain atrophy. All images were evaluated separately by two readers to assess the inter-observer variability. Regression and machine learning models were built to determine the predictive relevance of ARWMC and atrophy in the presence of important baseline clinical and imaging metrics.
Patients with favorable outcome presented lower values for all measured metrics of pre-existing brain deterioration (p < 0.001). Both ARWMC (p < 0.05) and cortical atrophy (p < 0.001) were independent predictors of clinical outcome at 90 days when controlled for confounders in both regression analyses and led to a minor improvement of prediction accuracy in machine learning models (p < 0.001), with atrophy among the top-5 predictors.
NCCT-based cortical atrophy and ARWMC scores on NCCT were strong and independent predictors of clinical outcome after EVT.
Visual assessment of cortical atrophy and age-related white matter changes on CT could improve the prediction of clinical outcome after thrombectomy in machine learning models which may be integrated into existing clinical routines and facilitate patient selection.
• Cortical atrophy and age-related white matter changes were quantified using CT-based visual scores. • Atrophy and age-related white matter change scores independently predicted clinical outcome after mechanical thrombectomy and improved machine learning-based prediction models. • Both scores could easily be integrated into existing clinical routines and prediction models.
除再通程度以外的多个变量会影响大动脉闭塞引起的急性缺血性脑卒中的临床预后。在此,我们使用原始头颅 CT(NCCT)在一个大型单中心队列中评估小血管疾病和皮质萎缩对临床结局的影响。
共纳入 1103 例因大脑中动脉区域闭塞而行血管内治疗(EVT)的连续患者。对 NCCT 数据进行视觉评估,以确定与年龄相关的白质改变(ARWMC)和脑萎缩相关的标志物。所有图像均由两名观察者单独评估,以评估观察者间的变异性。构建回归和机器学习模型,以确定 ARWMC 和萎缩在存在重要基线临床和影像学指标时的预测相关性。
预后良好的患者在所有预先存在的脑退化测量指标上的数值均较低(p<0.001)。在回归分析中控制混杂因素后,ARWMC(p<0.05)和皮质萎缩(p<0.001)都是 90 天时临床结局的独立预测因子,并在机器学习模型中导致预测准确性略有提高(p<0.001),其中萎缩是前 5 个预测因子之一。
NCCT 基于皮质萎缩和 ARWMC 的评分是 EVT 后临床结局的有力且独立的预测因子。
CT 上皮质萎缩和与年龄相关的白质改变的视觉评估可以提高血栓切除术后临床结局的预测,机器学习模型可能会整合到现有的临床常规中,并有助于患者选择。
使用 CT 基于视觉评分定量评估皮质萎缩和与年龄相关的白质改变。
萎缩和与年龄相关的白质改变评分独立预测机械血栓切除术的临床预后,并改善基于机器学习的预测模型。
两种评分都可以轻松地整合到现有的临床常规和预测模型中。