An Explainable Artificial Intelligence Model to Predict Malignant Cerebral Edema after Acute Anterior Circulating Large Hemisphere Infarction.

Liping Cao, Xiaoming Ma, Wendie Huang, Geman Xu, Yumei Wang, Meng Liu, Shiying Sheng, Keshi Mao
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Abstract

INTRODUCTION Malignant cerebral edema (MCE) is a serious complication and the main cause of poor prognosis in patients with large-hemisphere infarction (LHI). Therefore, the rapid and accurate identification of potential patients with MCE is essential for timely therapy. This study utilized an artificial intelligence-based machine learning approach to establish an interpretable model for predicting MCE in patients with LHI. METHODS This study included 314 patients with LHI not undergoing recanalization therapy. The patients were divided into MCE and non-MCE groups, the extreme Gradient boosting (XGBoost) model was developed. A confusion matrix was used to measure the prediction performance of the XGBoost model. We also utilized the SHapley Additive extension (SHAP) method to explain the XGBoost model. Decision curve analysis and receiver operating characteristic (ROC) curve were performed to evaluate the net benefits of the model. RESULTS MCE was observed in 121(38.5%) of the 314 patients with LHI. The model showed excellent predictive performance, with an area under the curve of 0.916. The SHAP method revealed the top 10 predictive variables of the MCE such as ASPECTS score, NIHSS score, CS score, APACHE II score, HbA1c, AF, NLR, PLT, GCS and Age based on their importance ranking. CONCLUSION An interpretable predictive model can increase transparency and help doctors accurately predict the occurrence of MCE in LHI patients, not undergoing recanalization therapy within 48h from onset, providing patients with better treatment strategies and enabling optimal resource allocation.
预测急性前循环大脑梗塞后恶性脑水肿的可解释人工智能模型
引言 恶性脑水肿(MCE)是一种严重的并发症,也是导致大半球脑梗塞(LHI)患者预后不良的主要原因。因此,快速准确地识别潜在的 MCE 患者对于及时治疗至关重要。本研究利用基于人工智能的机器学习方法建立了一个可解释的模型,用于预测 LHI 患者的 MCE。这些患者被分为 MCE 组和非 MCE 组,并建立了极端梯度提升(XGBoost)模型。混淆矩阵用于衡量 XGBoost 模型的预测性能。我们还使用了 SHapley Additive extension (SHAP) 方法来解释 XGBoost 模型。结果 在 314 例 LHI 患者中,有 121 例(38.5%)观察到 MCE。该模型显示出卓越的预测性能,曲线下面积为 0.916。SHAP方法显示了MCE的前10个预测变量,如ASPECTS评分、NIHSS评分、CS评分、APACHE II评分、HbA1c、AF、NLR、PLT、GCS和年龄(根据重要性排名)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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