{"title":"急性缺血性脑卒中血管内治疗后无效再通的预测:混合机器学习模型的开发与验证。","authors":"Ximing Nie, Jinxu Yang, Xinxin Li, Tianming Zhan, Dongdong Liu, Hongyi Yan, Yufei Wei, Xiran Liu, Jiaping Chen, Guoyang Gong, Zhenzhou Wu, Zhonghua Yang, Miao Wen, Weibin Gu, Yuesong Pan, Yong Jiang, Xia Meng, Tao Liu, Jian Cheng, Zixiao Li, Zhongrong Miao, Liping Liu","doi":"10.1136/svn-2023-002500","DOIUrl":null,"url":null,"abstract":"<p><strong>Background: </strong>Identification of futile recanalisation following endovascular therapy (EVT) in patients with acute ischaemic stroke is both crucial and challenging. Here, we present a novel risk stratification system based on hybrid machine learning method for predicting futile recanalisation.</p><p><strong>Methods: </strong>Hybrid machine learning models were developed to address six clinical scenarios within the EVT and perioperative management workflow. 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引用次数: 0
摘要
背景:识别急性缺血性卒中患者血管内治疗(EVT)后的无效再通既关键又具有挑战性。方法:针对血管内治疗和围手术期管理工作流程中的六种临床情况开发了混合机器学习模型。使用混合特征选择技术在前瞻性数据库上对这些模型进行了训练,以预测EVT术后无效再通。在多中心前瞻性队列中对最佳模型进行了验证,并与现有模型和评分系统进行了比较,从而开发出一种基于混合机器学习的风险分层系统,用于预测徒劳性再狭窄:利用混合特征选择方法,我们在两个独立的患者队列(n=1122)中训练并测试了多个分类器,从而开发出基于混合机器学习的预测模型。与其他模型和评分系统相比,该模型显示出更优越的分辨能力(曲线下面积=0.80,95% CI 0.73至0.87),并被转化为一个网络应用程序(RESCUE-FR指数),为个体预测提供了一个风险分层系统(可在线访问fr-index.biomind.cn/RESCUE-FR/):结论:所提出的混合机器学习方法可用作个体化风险预测模型,以促进临床实践指南的遵守和共同决策,从而为接受EVT的患者选择最佳候选者和评估预后。
Prediction of futile recanalisation after endovascular treatment in acute ischaemic stroke: development and validation of a hybrid machine learning model.
Background: Identification of futile recanalisation following endovascular therapy (EVT) in patients with acute ischaemic stroke is both crucial and challenging. Here, we present a novel risk stratification system based on hybrid machine learning method for predicting futile recanalisation.
Methods: Hybrid machine learning models were developed to address six clinical scenarios within the EVT and perioperative management workflow. These models were trained on a prospective database using hybrid feature selection technique to predict futile recanalisation following EVT. The optimal model was validated and compared with existing models and scoring systems in a multicentre prospective cohort to develop a hybrid machine learning-based risk stratification system for futile recanalisation prediction.
Results: Using a hybrid feature selection approach, we trained and tested multiple classifiers on two independent patient cohorts (n=1122) to develop a hybrid machine learning-based prediction model. The model demonstrated superior discriminative ability compared with other models and scoring systems (area under the curve=0.80, 95% CI 0.73 to 0.87) and was transformed into a web application (RESCUE-FR Index) that provides a risk stratification system for individual prediction (accessible online at fr-index.biomind.cn/RESCUE-FR/).
Conclusions: The proposed hybrid machine learning approach could be used as an individualised risk prediction model to facilitate adherence to clinical practice guidelines and shared decision-making for optimal candidate selection and prognosis assessment in patients undergoing EVT.
期刊介绍:
Journal of Investigative Medicine (JIM) is the official publication of the American Federation for Medical Research. The journal is peer-reviewed and publishes high-quality original articles and reviews in the areas of basic, clinical, and translational medical research.
JIM publishes on all topics and specialty areas that are critical to the conduct of the entire spectrum of biomedical research: from the translation of clinical observations at the bedside, to basic and animal research to clinical research and the implementation of innovative medical care.