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A k-Nearest Neighbours Classifier for Predicting Catheter Ablation Responses Using Noncontact Electrograms During Persistent Atrial Fibrillation

机译:k近邻分类器,用于在持续性心房颤动期间使用非接触电图预测导管消融反应

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摘要

The mechanisms for the initiation and maintenance of atrial fibrillation (AF) are still poorly understood. Identification of atrial sites which are effective ablation targets remains challenging. Supervised machine learning has emerged as an effective tool for handling classification problems with multiple features. The main goal of this work is to use learning algorithms in predicting the responses of ablating electrograms and their effect on terminating AF and the cycle length changes. A total of 3,206 electrograms (EGMs) from ten persistent AF (persAF) patients were used. 5-fold cross-validation was applied, in which 80 % of the data were used as training set and 20 % used as validation. Dominant frequency (DF) and organisation index (OI) were calculated from EGMs (264 seconds) for all patients and used as input features. A k-nearest neighbour (KNN) classifier was trained using ablation lesion data and deployed in additional 17,274 EGMs that were not ablated. The classification accuracy of 85.2 % was achieved for the KNN classifier. We have proposed a supervised learning algorithm using DF features, which has shown the ability of accurately performing EGM signal classification that could be potentially used to identify ablation targets and become a robust real-time patient diagnosis system.
机译:房颤(AF)引发和维持的机制仍然知之甚少。确定有效消融目标的心房部位仍然具有挑战性。监督机器学习已成为一种有效的工具,可以处理具有多个功能的分类问题。这项工作的主要目的是使用学习算法来预测消融电描记图的响应及其对终止房颤和周期长度变化的影响。总共使用了来自10位持续性AF(persAF)患者的3,206幅电描记图(EGM)。应用了5倍交叉验证,其中80%的数据用作训练集,而20%的数据用作验证。根据所有患者的EGM(264秒)计算主导频率(DF)和组织指数(OI),并将其用作输入特征。使用消融病变数据训练了k近邻(KNN)分类器,并将其部署在未消融的其他17,274个EGM中。 KNN分类器的分类精度达到85.2%。我们提出了一种使用DF功能的监督学习算法,该算法显示了能够准确执行EGM信号分类的功能,该功能可潜在地用于识别消融目标并成为强大的实时患者诊断系统。

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