首页> 外文会议>Advances in Neural Networks - ISNN 2007 pt.2; Lecture Notes in Computer Science; 4492 >Atrial Arrhythmias Detection Based on Neural Network Combining Fuzzy Classifiers
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Atrial Arrhythmias Detection Based on Neural Network Combining Fuzzy Classifiers

机译:基于模糊分类器的神经网络心律失常检测

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摘要

Accurate detection of atrial arrhythmias is important for implantable devices to treat them. A novel method is proposed to identify sinus rhythm, atrial flutter and atrial fibrillation. Here three different feature sets are firstly extracted based on the frequency-domain, the time-frequency domain and the symbolic dynamics. Then a classifier with two sub-layers is proposed. Three fuzzy classifiers are used as the first layer to perform pre-classification task corresponding to different feature sets respectively. A multilayer perceptron neural network is used as the final classifier. The performance of this algorithm is evaluated with two databases. One is the MIT-BIH arrhythmia database and the other is the endocardial electrogram database. A comparative assessment of the performance of the proposed classifier with individual fuzzy classifier shows that the algorithm can improve the overall accuracy for atrial arrhythmias classification. The implementation of this algorithm in implantable devices may provide accurate detection of atrial arrhythmias.
机译:房性心律失常的准确检测对于植入式设备进行治疗很重要。提出了一种识别窦性心律,房扑和房颤的新方法。在此首先基于频域,时频域和符号动力学提取三个不同的特征集。然后提出了具有两个子层的分类器。三个模糊分类器被用作第一层,分别执行与不同特征集相对应的预分类任务。多层感知器神经网络用作最终分类器。使用两个数据库评估该算法的性能。一个是MIT-BIH心律失常数据库,另一个是心内膜电描记图数据库。对拟议的分类器与单个模糊分类器性能的比较评估表明,该算法可以提高房性心律失常分类的整体准确性。该算法在可植入设备中的实现可以提供对房性心律不齐的准确检测。

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