Zeng Weixiong, Li Wei, Huang Kaibin, Lin Zhenzhou, Dai Hui, He Zilong, Liu Renyi, Zeng Zhaodong, Qin Genggeng, Chen Weiguo, Wu Yongming
Department of Radiology, Nanfang Hospital, Southern Medical University, Guangzhou, China.
Department of Neurology, The Second Hospital of Jilin University, Changchun, China.
Front Neurol. 2022 Sep 28;13:982783. doi: 10.3389/fneur.2022.982783. eCollection 2022.
To establish an ensemble machine learning (ML) model for predicting the risk of futile recanalization, malignant cerebral edema (MCE), and cerebral herniation (CH) in patients with acute ischemic stroke (AIS) who underwent mechanical thrombectomy (MT) and recanalization.
This prospective study included 110 patients with premorbid mRS ≤ 2 who met the inclusion criteria. Futile recanalization was defined as a 90-day modified Rankin Scale score >2. Clinical and imaging data were used to construct five ML models that were fused into a logistic regression algorithm using the stacking method (LR-Stacking). We added the Shapley Additive Explanation method to display crucial factors and explain the decision process of models for each patient. Prediction performances were compared using area under the receiver operating characteristic curve (AUC), F1-score, and decision curve analysis (DCA).
A total of 61 patients (55.5%) experienced futile recanalization, and 34 (30.9%) and 22 (20.0%) patients developed MCE and CH, respectively. In test set, the AUCs for the LR-Stacking model were 0.949, 0.885, and 0.904 for the three outcomes mentioned above. The F1-scores were 0.882, 0.895, and 0.909, respectively. The DCA showed that the LR-Stacking model provided more net benefits for predicting MCE and CH. The most important factors were the hypodensity volume and proportion in the corresponding vascular supply area.
Using the ensemble ML model to analyze the clinical and imaging data of AIS patients with successful recanalization at admission and within 24 h after MT allowed for accurately predicting the risks of futile recanalization, MCE, and CH.
建立一个集成机器学习(ML)模型,用于预测接受机械取栓术(MT)和血管再通的急性缺血性卒中(AIS)患者出现无效再通、恶性脑水肿(MCE)和脑疝(CH)的风险。
这项前瞻性研究纳入了110例病前改良Rankin量表评分≤2且符合纳入标准的患者。无效再通定义为90天改良Rankin量表评分>2。临床和影像数据用于构建五个ML模型,采用堆叠方法将其融合到逻辑回归算法中(LR-堆叠)。我们添加了Shapley值法来显示关键因素,并解释每个患者模型的决策过程。使用受试者操作特征曲线下面积(AUC)、F1分数和决策曲线分析(DCA)比较预测性能。
共有61例患者(55.5%)出现无效再通,分别有34例(30.9%)和22例(20.0%)患者发生MCE和CH。在测试集中,上述三种结果的LR-堆叠模型的AUC分别为0.949、0.885和0.904。F1分数分别为0.882、0.895和0.909。DCA显示,LR-堆叠模型在预测MCE和CH方面提供了更多的净效益。最重要的因素是相应血管供应区域的低密度体积和比例。
使用集成ML模型分析入院时及MT后24小时内血管再通成功的AIS患者的临床和影像数据,能够准确预测无效再通、MCE和CH的风险。