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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >A short-time multifractal approach for arrhythmia detection based on fuzzy neural network
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A short-time multifractal approach for arrhythmia detection based on fuzzy neural network

机译:基于模糊神经网络的心律失常的短时多重分形检测

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摘要

The authors have proposed the notion of short-time multifractality and used it to develop a novel approach for arrhythmia detection. Cardiac rhythms are characterized by short-time generalized dimensions (STGDs), and different kinds of arrhythmias are discriminated using a neural network. To advance the accuracy of classification, a new fuzzy Kohonen network, which overcomes the shortcomings of the classical algorithm, is presented. In the authors' paper, the potential of their method for clinical uses and real-time detection was examined using 180 electrocardiogram records [60 atrial fibrillation, 60 ventricular fibrillation, and 60 ventricular tachycardia]. The proposed algorithm has achieved high accuracy (more than 97%) and is computationally fast in detection.
机译:作者提出了短时多重分形的概念,并将其用于开发心律失常检测的新方法。心脏节律的特征是短时广义尺度(STGD),并使用神经网络来区分不同类型的心律失常。为了提高分类的准确性,提出了一种克服传统算法缺点的新型模糊Kohonen网络。在作者的论文中,使用180份心电图记录[60例房颤,60例室颤和60例室性心动过速]检验了他们的临床应用和实时检测方法的潜力。所提出的算法已经达到了较高的准确性(超过97%),并且检测速度很快。

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