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Predicting transthoracic defibrillation shocks outcome in the cardioversion of atrial fibrillation employing support vector machines

机译:使用支持向量机预测房颤复律中的经胸除颤电击结果

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In this work, we use support vector machines (SVM) to predict if a defibrillation shock is likely to be successful or not in the cardioversion of persistent AF patients. The ECG signals of 47 patients elected for electrical cardioversion treatment were collected at the Royal Victoria Hospital in Belfast city, NI-UK. Signal processing was performed on ECG segments prior each shock. Three electrocardiographic indexes were extracted and used as input: the dominant atrial fibrillatory frequency, the mean and the standard deviation of the R-R interval time series of the ECG segments. We trained SVM using about 40% of the data. SVM could predict the outcome of 89% of low-energy shocks ≤ 100 [J], with a sensitivity (SE) of 87.50% and specificity (SP) of 98.8%. As a remarkable result, the outcome of higher energy shocks (≥ 150 [J]) could be predicted with 100% exactitude.
机译:在这项工作中,我们使用支持向量机(SVM)来预测持续性AF患者的心脏复律除颤电击是否可能成功。当选为电复律治疗47例患者ECG信号在NI-英国皇家维多利亚医院在贝尔法斯特市,收集。在每次电击之前,对ECG段进行信号处理。提取了三个心电图指标并将其用作输入:心房纤颤的主要频率,心电图节段的R-R间隔时间序列的平均值和标准偏差。我们使用约40%的数据训练了SVM。 SVM可以预测89%≤100 [J]的低能电击的结果,灵敏度(SE)为87.50%,特异性(SP)为98.8%。作为一个显着的结果,可以以100%的准确度预测更高的能量冲击(≥150 [J])的结果。

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