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Predicting risk of complications following a drug eluting stent procedure: A SVM approach for imbalanced data

机译:预测药物洗脱支架过程后并发症的风险:用于不平衡数据的SVM方法

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Drug Eluting Stents (DES) have distinct advantages over other Percutaneous Coronary Intervention procedures, but have recently been associated with the development of serious complications after the procedure. There is a growing need for understanding the risk of these complications, which has led to the development of simple statistical models. In this work, we have developed a predictive model based on Support Vector Machines on a real world live dataset consisting of clinical variables of patients being treated at a cardiac care facility to predict the risk of complications at 12 months following a DES procedure. A significant challenge in this work, common to most clinical machine learning datasets, was imbalanced data, and our results showed the effectiveness of the Synthetic Minority Over-sampling Technique (SMOTE) to address this issue. The developed predictive model provided an accuracy of 94% with a 0.97 AUC (Area under ROC curve), indicating high potential to be used as a decision support for management of patients following a DES procedure in real-world cardiac care facilities
机译:药物洗脱支架(DES)与其他经皮冠状动脉干预程序具有明显的优势,但最近与在程序后的严重并发症的发展有关。了解这些并发症的风险越来越需要,这导致了简单统计模型的发展。在这项工作中,我们已经开发了一种基于支持向量机的预测模型,其现场实时数据集包括由心脏护理机构治疗的患者的临床变量,以预测DES程序后12个月的并发症的风险。对于大多数临床机器学习数据集,这项工作中的一项重大挑战是数据集的不平衡数据,我们的结果表明了合成少数群体过采样技术(SMOTE)的有效性来解决这个问题。开发的预测模型提供了94%的精度,具有0.97 AUC(ROC曲线区域),表明在现实世界心脏护理设施中的DES程序之后的患者的决策支持中使用的高潜力

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