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Automatic ECG-based Discrimination of 20 Atrial Flutter Mechanisms: Influence of Atrial and Torso Geometries

机译:基于ECG的20个心房颤动机制的自动识别:心房和躯干几何形状的影响

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Atrial flutter (AFl) is a common heart rhythm disorder driven by different self-sustaining electrophysiological atrial mechanisms. In the present work, we sought to discriminate which mechanism is sustaining the arrhythmia in an individual patient using non-invasive 12-lead electrocardiogram (ECG) signals. Specifically, we analyse the influence of atrial and torso geometries for the success of such discrimination. 2,512 ECG were simulated and 151 features were extracted from the signals. Three classification scenarios were investigated: random set classification; leave-one-atrium-out (LOAO); and leave-one-torso-out (LOTO). A radial basis neural network classifier achieved test accuracies of 89.84%, 88.98%, and 59.82% for the random set classification, LOTO, and LOAO, respectively. The most discriminative single feature was the F-wave duration (74% test accuracy). Our results show that a machine learning approach can potentially identify a high number of different AFl mechanisms using the 12-lead ECG. More than the 8 atrial models used in this work should be included during training due to the significant influence that the atrial geometry has on the ECG signals and thus on the resulting classification. This non-invasive classification can help to identify the optimal ablation strategy, reducing time and resources required to conduct invasive cardiac mapping and ablation procedures.
机译:心房扑动(AFL)是由不同自我维持电生理风险机制驱动的常见心律病。在目前的工作中,我们试图使用非侵入性12-铅心电图(ECG)信号来区分哪种机制在个体患者中维持心律失常。具体而言,我们分析心房和躯干几何对这种歧视成功的影响。模拟了2,512CG,并从信号中提取了151个特征。调查了三种分类方案:随机设置分类;留下一巢(Loao);并留下一躯干(Loto)。径向基本神经网络分类器分别实现了89.84%,88.98%,88.98%和59.82%的试验准确性,分别为随机设定分类,loto和loao。最辨别的单个特征是F波持续时间(测试精度为74%)。我们的结果表明,使用12引导ECG可能会识别机器学习方法可能识别大量不同的AFL机制。由于心房几何形状在ECG信号上的显着影响,因此应在训练期间包括这项工作中使用的8个专柜模型,因此应包括在训练期间。这种非侵入性分类可以有助于确定最佳消融策略,减少进行侵入性心脏映射和消融程序所需的时间和资源。

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