Feyen Ludger, Rohde Stefan, Weinzierl Martin, Katoh Marcus, Haage Patrick, Münnich Nico, Kniep Helge
Department of Diagnostic and Interventional Radiology, Helios Klinikum Krefeld, Krefeld, Germany.
Faculty of Health, School of Medicine, University Witten/Herdecke, Witten, Germany.
Interv Neuroradiol. 2025 Jun;31(3):386-394. doi: 10.1177/15910199231168164. Epub 2023 Apr 10.
PurposeVarious studies have identified prognostic factors for a favorable outcome of endovascular treatment in posterior circulation. We evaluated various machine learning algorithms in their ability to classify between patients with favorable (defined as 0-2 points on the modified Rankin scale [mRS]), unfavorable (mRS 3-6), poor (mRS 5-6), and nonpoor (mRS 0-4) outcomes at dismissal.MethodsWe retrospectively analyzed data from 415 patients that were treated between 2018 and 2021 from the multicentric DGNR registry. Five models (random forest, support vector machine, k-nearest neighbor, neural network [NN], and generalized linear model [GLM]) were trained with clinical input variables and evaluated with a test dataset of 82 patients. The model with the highest accuracy on the training dataset was defined as the best model.ResultsA total of 132 patients showed poor and 162 patients showed favorable outcome. All baseline variables except sex were highly significantly different between patients with favorable and unfavorable outcomes. The variables NIHSS, the presence of wake-up stroke, the administration of IV-thrombolysis and mRS pretreatment were significantly different between patients with poor and nonpoor outcomes. The best-performing NN achieved a sensitivity of 0.56, a specificity of 0.86 and an area under the curve (AUC) of 0.77 on the test dataset in the classification analysis between favorable and unfavorable outcomes. The best-performing GLM achieved a sensitivity of 0.65, a specificity of 0.91 and an AUC of 0.81 in the classification analysis between poor and nonpoor outcomes.ConclusionShort-term favorable and poor outcomes in patients with acute ischemic stroke of the posterior circulation can be predicted prior to thrombectomy with moderate sensitivity and high specificity with machine learning models.
目的
多项研究已确定后循环血管内治疗取得良好预后的预测因素。我们评估了各种机器学习算法对出院时预后良好(改良Rankin量表[mRS]评分为0 - 2分)、预后不良(mRS 3 - 6分)、预后差(mRS 5 - 6分)和预后不差(mRS 0 - 4分)的患者进行分类的能力。
方法
我们回顾性分析了多中心DGNR登记处2018年至2021年期间治疗的415例患者的数据。使用临床输入变量训练了五个模型(随机森林、支持向量机、k近邻、神经网络[NN]和广义线性模型[GLM]),并使用82例患者的测试数据集进行评估。在训练数据集中准确率最高的模型被定义为最佳模型。
结果
共有132例患者预后差,162例患者预后良好。除性别外,所有基线变量在预后良好和预后不良的患者之间均存在高度显著差异。NIHSS评分、觉醒期卒中的存在、静脉溶栓治疗的使用和mRS治疗前评分在预后差和预后不差的患者之间存在显著差异。在预后良好和预后不良的分类分析中,表现最佳的NN在测试数据集上的灵敏度为0.56,特异度为0.86,曲线下面积(AUC)为0.77。在预后差和预后不差的分类分析中,表现最佳的GLM的灵敏度为0.65,特异度为0.91,AUC为0.81。
结论
对于后循环急性缺血性卒中患者,在血栓切除术之前,使用机器学习模型可以以中等灵敏度和高特异度预测短期预后良好和预后差的情况。