Kamal Noreen, Han Joon-Ho, Alim Simone, Taeb Behzad, Devpura Abhishek, Aljendi Shadi, Goldstein Judah, Fok Patrick T, Hill Michael D, Naoum-Sawaya Joe, Cora Elena Adela
Department of Industrial Engineering, Dalhousie University, Halifax, NS B3H 4R2, Canada.
Department of Community Health and Epidemiology, Dalhousie University, Halifax, NS B3H 4R2, Canada.
Healthcare (Basel). 2025 Jun 16;13(12):1435. doi: 10.3390/healthcare13121435.
: Endovascular thrombectomy (EVT) is highly effective for ischemic stroke patients with a large vessel occlusion. EVT is typically only offered at urban hospitals; therefore, patients are transferred for EVT from hospitals that solely offer thrombolysis. There is uncertainly around patient selection for transfer, which results in a large number of futile transfers. Machine learning (ML) may be able to provide a model that better predicts patients to transfer for EVT. : The objective of the study is to determine if ML can provide decision support to more accurately select patients to transfer for EVT. : This is a retrospective study. Data from Nova Scotia, Canada from 1 January 2018 to 31 December 2022 was used. Four supervised binary classification ML algorithms were applied, as follows: logistic regression, decision tree, random forest, and support vector machine. We also applied an ensemble method using the results of these four classification algorithms. The data was split into 80% training and 20% testing, and five-fold cross-validation was employed. Missing data was accounted for by the k-nearest neighbour's algorithm. Model performance was assessed using accuracy, the futile transfer rate, and the false negative rate. : A total of 5156 ischemic stroke patients were identified during the time period. After exclusions, a final dataset of 93 patients was obtained. The accuracy of logistic regression, decision tree, random forest, support vector machine, and ensemble models was 68%, 79%, 74%, 63%, and 68%, respectively. The futile transfer rate with random forest and decision tree was 0% and 18.9%, respectively, and the false negative rate was 5.37 and 4.3%, respectively : ML models can potentially reduce futile transfer rates, but future studies with larger datasets are needed to validate this finding and generalize it to other systems.
血管内血栓切除术(EVT)对患有大血管闭塞的缺血性中风患者非常有效。EVT通常只在城市医院提供;因此,患者从仅提供溶栓治疗的医院转至可进行EVT的医院。关于转院患者的选择存在不确定性,这导致大量无效转院。机器学习(ML)或许能够提供一个更好地预测适合转院进行EVT治疗患者的模型。
本研究的目的是确定ML是否能提供决策支持,以更准确地选择适合转院进行EVT治疗的患者。
这是一项回顾性研究。使用了加拿大新斯科舍省2018年1月1日至2022年12月31日的数据。应用了四种监督二元分类ML算法,具体如下:逻辑回归、决策树、随机森林和支持向量机。我们还使用这四种分类算法的结果应用了一种集成方法。数据被分为80%用于训练和20%用于测试,并采用五折交叉验证。缺失数据由k近邻算法处理。使用准确率、无效转院率和假阴性率评估模型性能。
在此期间共识别出5156例缺血性中风患者。排除后,最终获得了93例患者的数据集。逻辑回归、决策树、随机森林、支持向量机和集成模型的准确率分别为68%、79%、74%、63%和68%。随机森林和决策树的无效转院率分别为0%和18.9%,假阴性率分别为5.37和4.3%。
ML模型可能会降低无效转院率,但需要未来更大数据集的研究来验证这一发现并将其推广到其他系统。