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用于预测两中心静脉溶栓治疗后中风患者长期预后的可解释机器学习方法

Explainable machine learning for long-term outcome prediction in two-center stroke patients after intravenous thrombolysis.

作者信息

Ping Zheng, Huiyu She, Min Li, Qingke Bai, Qiuyun Lu, Xu Chen

机构信息

Department of Neurosurgery, Shanghai Pudong New Area People's Hospital, Shanghai, China.

The Center for Pediatric Liver Diseases, Children's Hospital of Fudan University, Shanghai, China.

出版信息

Front Neurosci. 2023 Feb 22;17:1146197. doi: 10.3389/fnins.2023.1146197. eCollection 2023.

Abstract

OBJECTIVE

Neurological outcome prediction in patients with ischemic stroke is very critical in treatment strategy and post-stroke management. Machine learning techniques with high accuracy are increasingly being developed in the medical field. We studied the application of machine learning models to predict long-term neurological outcomes in patients with after intravenous thrombolysis.

METHODS

A retrospective cohort study was performed to review all stroke patients with intravenous thrombolysis. Patients with modified Rankin Score (mRs) less than two at three months post-thrombolysis were considered as good outcome. The clinical features between stroke patients with good and with poor outcomes were compared using three different machine learning models (Random Forest, Support Vector Machine and Logistic Regression) to identify which performed best. Two datasets from the other stroke center were included accordingly for external verification and performed with explainable AI models.

RESULTS

Of the 488 patients enrolled in this study, and 374 (76.6%) patients had favorable outcomes. Patients with higher mRs at 3 months had increased systolic pressure, blood glucose, cholesterol (TC), and 7-day National Institute of Health Stroke Scale (NIHSS) score compared to those with lower mRs. The predictability and the areas under the curves (AUC) for the random forest model was relatively higher than support vector machine and LR models. These findings were further validated in the external dataset and similar results were obtained. The explainable AI model identified the risk factors as well.

CONCLUSION

Explainable AI model is able to identify NIHSS_Day7 is independently efficient in predicting neurological outcomes in patients with ischemic stroke after intravenous thrombolysis.

摘要

目的

缺血性中风患者的神经功能预后预测在治疗策略和中风后管理中至关重要。医疗领域中越来越多地开发出具有高精度的机器学习技术。我们研究了机器学习模型在预测静脉溶栓后患者长期神经功能预后中的应用。

方法

进行了一项回顾性队列研究,以回顾所有接受静脉溶栓的中风患者。溶栓后三个月改良Rankin量表(mRs)评分低于2分的患者被视为预后良好。使用三种不同的机器学习模型(随机森林、支持向量机和逻辑回归)比较预后良好和预后不良的中风患者的临床特征,以确定哪种模型表现最佳。相应地纳入了来自另一个中风中心的两个数据集进行外部验证,并使用可解释人工智能模型进行分析。

结果

本研究纳入的488例患者中,374例(76.6%)患者预后良好。与mRs评分较低的患者相比,3个月时mRs评分较高的患者收缩压、血糖、胆固醇(TC)和7天美国国立卫生研究院卒中量表(NIHSS)评分更高。随机森林模型的预测能力和曲线下面积(AUC)相对高于支持向量机和逻辑回归模型。这些发现在外部数据集中得到了进一步验证,并获得了类似的结果。可解释人工智能模型也识别出了危险因素。

结论

可解释人工智能模型能够识别NIHSS_Day7,其在预测静脉溶栓后缺血性中风患者的神经功能预后方面具有独立的有效性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2aa8/9992421/629e0884e7ce/fnins-17-1146197-g001.jpg

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