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Extracting atrial activations from intracardiac signals during atrial fibrillation using adaptive mathematical morphology

机译:使用自适应数学形态学从心房纤颤期间心内信号中提取心房激活

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The detection of intracardiac activities is a major issue in the processing of atrial fibrillation signals. we evaluate a method based on mathematical morphology with an adaptive structuring element in order to extract the atrial activations from intracardiac electrograms. The structuring element is continuously updated for each activation based on the morphological characteristics of the previously detected activations. A dataset of recordings from patients with chronic atrial fibrillation who underwent catheter ablation were used in order to evaluate the performance of the proposed method. Results show high performance compared to a dataset manually annotated by an expert. The detection rate, sensitivity and positive prediction value (PPV) were respectively 99.1%, 99.5%, 99.5%. The proposed method is fast and offers low computational cost, which makes it a suitable approach for real-time/online scenarios.
机译:心内活动的检测是房颤信号处理中的主要问题。我们评估一种基于数学形态学并带有自适应结构元素的方法,以便从心内电描记图提取心房激活。基于先前检测到的激活的形态特征,针对每个激活连续更新结构元素。为了评估所提出的方法的性能,使用了来自经历了导管消融的慢性心房颤动患者的记录的数据集。与专家手动注释的数据集相比,结果显示出高性能。检出率,灵敏度和阳性预测值(PPV)分别为99.1%,99.5%,99.5%。所提出的方法是快速的并且提供了低的计算成本,这使其成为用于实时/在线场景的合适方法。

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