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Wavelet Based Ventricular Tachyarrhythmia Detection System

机译:基于小波的心室性心律失常检测系统

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Wavelet transform has emerged over recent years as a powerful time-frequency analysis tool favoured for the interrogation of complex non-stationary signals. In this paper a new wavelet based algorithm for detection of Ventricular Tachyarrhythmia (VT) by analyzing ECG is presented. The proposed algorithm uses an efficient method for detecting VT in wavelet preprocessed ECG signals. A MATLAB routine using built in library functions for preprocessing removes high frequency noise. The preprocessed signal is applied to the spectral algorithm (SPEC) which works in frequency domain and analyses the energy content. If the algorithm decides that the ECG part contains VT, the result is accepted as true and no further investigation is required. On the other hand a further investigation is carried out to confirm the result or to disprove it. The terminal parts of the ECG signal are processed with a continuous wavelet transform, which leads to a time-frequency representation of the signal. The diagnostic feature vectors are obtained by subdividing the representations into several regions and by processing the sum of the decomposition coefficients belonging to each region. Wavelet based efficient algorithm is used for detection of VT. With this method, underlying features within the VT waveform are made visible in the wavelet time-scale half space. The proposed algorithm overcomes the non-sensitivity of SPEC algorithm utilizing its highly specific nature to the fullest, enabling the cardiologists and electro physiologists to detect VT with accuracy of more than 85%.
机译:近年来,小波变换是一个强大的时频分析工具,优先考虑复杂的非静止信号的询问。本文介绍了一种新的基于小波通过分析ECG检测心室性心律失常(VT)的基于小波算法。所提出的算法使用了一种用于检测小波预处理ECG信号中VT的有效方法。使用内置库函数的MATLAB例程用于预处理,消除了高频噪声。预处理信号被施加到频域中的光谱算法(规格)并分析能量内容。如果算法决定ECG部分包含VT,则结果被接受为真实,并且不需要进一步调查。另一方面,进行进一步的调查以确认结果或反驳它。 ECG信号的终端部分用连续小波变换处理,这导致信号的时频表示。通过将表示分为几个区域并通过处理属于每个区域的分解系数的总和来获得诊断特征向量。基于小波的高效算法用于检测VT。利用这种方法,VT波形内的底层特征在小波时间尺度半空间中可见。该算法克服了利用其高度特异性的规范算法的非敏感性,使心脏病学家和电力生理学家以超过85%的准确度检测VT。

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