Tong Lin, Sun Yun, Zhu Yueqi, Luo Hui, Wan Wan, Wu Ying
Department of Radiology Intervention, Shanghai Putuo District Liqun Hospital, Shanghai, China.
Department of Emergency, Shanghai Putuo District Liqun Hospital, Shanghai, China.
Front Neuroinform. 2023 Oct 13;17:1273827. doi: 10.3389/fninf.2023.1273827. eCollection 2023.
Mechanical thrombectomy (MT) is effective for acute ischemic stroke with large vessel occlusion (AIS-LVO) within an extended therapeutic window. However, successful reperfusion does not guarantee positive prognosis, with around 40-50% of cases yielding favorable outcomes. Preoperative prediction of patient outcomes is essential to identify those who may benefit from MT. Although machine learning (ML) has shown promise in handling variables with non-linear relationships in prediction models, its "black box" nature and the absence of ML models for extended-window MT prognosis remain limitations.
This study aimed to establish and select the optimal model for predicting extended-window MT outcomes, with the Shapley additive explanation (SHAP) approach used to enhance the interpretability of the selected model.
A retrospective analysis was conducted on 260 AIS-LVO patients undergoing extended-window MT. Selected patients were allocated into training and test sets at a 3:1 ratio following inclusion and exclusion criteria. Four ML classifiers and one logistic regression (Logit) model were constructed using pre-treatment variables from the training set. The optimal model was selected through comparative validation, with key features interpreted using the SHAP approach. The effectiveness of the chosen model was further evaluated using the test set.
Of the 212 selected patients, 159 comprised the training and 53 the test sets. Extreme gradient boosting (XGBoost) showed the highest discrimination with an area under the curve (AUC) of 0.93 during validation, and maintained an AUC of 0.77 during testing. SHAP analysis identified ischemic core volume, baseline NHISS score, ischemic penumbra volume, ASPECTS, and patient age as the top five determinants of outcome prediction.
XGBoost emerged as the most effective for predicting the prognosis of AIS-LVO patients undergoing MT within the extended therapeutic window. SHAP interpretation improved its clinical confidence, paving the way for ML in clinical decision-making.
机械取栓术(MT)对处于延长治疗窗内的急性大血管闭塞性缺血性卒中(AIS-LVO)有效。然而,成功再灌注并不能保证良好的预后,约40%-50%的病例能获得良好结局。术前预测患者预后对于确定可能从MT中获益的患者至关重要。尽管机器学习(ML)在处理预测模型中具有非线性关系的变量方面显示出前景,但其“黑箱”性质以及缺乏用于延长治疗窗MT预后的ML模型仍然是局限性。
本研究旨在建立并选择预测延长治疗窗MT结局的最佳模型,并使用Shapley加性解释(SHAP)方法增强所选模型的可解释性。
对260例接受延长治疗窗MT的AIS-LVO患者进行回顾性分析。入选患者按照纳入和排除标准以3:1的比例分为训练集和测试集。使用来自训练集的治疗前变量构建四个ML分类器和一个逻辑回归(Logit)模型。通过比较验证选择最佳模型,并使用SHAP方法解释关键特征。使用测试集进一步评估所选模型的有效性。
在212例入选患者中,159例组成训练集,53例组成测试集。极限梯度提升(XGBoost)在验证期间显示出最高的区分度,曲线下面积(AUC)为0.93,在测试期间保持AUC为0.77。SHAP分析确定缺血核心体积、基线美国国立卫生研究院卒中量表(NHISS)评分、缺血半暗带体积、脑缺血性病变的早期CT评分(ASPECTS)和患者年龄是结局预测的前五个决定因素。
XGBoost被证明是预测延长治疗窗内接受MT的AIS-LVO患者预后最有效的方法。SHAP解释提高了其临床可信度,为ML在临床决策中的应用铺平了道路。