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首页> 外文期刊>Journal of medical systems >Performance Evaluation of Time-Frequency Distributions for ECG Signal Analysis
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Performance Evaluation of Time-Frequency Distributions for ECG Signal Analysis

机译:ECG信号分析时频分布性能评估

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摘要

The non-stationary and multi-frequency nature of biomedical signal activities makes the use of time-frequency distributions (TFDs) for analysis inevitable. Time-frequency analysis provides simultaneous interpretations in both time and frequency domain enabling comprehensive explanation, presentation and interpretation of electrocardiogram (ECG) signals. The diversity of TFDs and specific properties for each type show the need to determine the best TFD for ECG analysis. In this study, a performance evaluation of five TFDs in term of ECG abnormality detection is presented. The detection criteria based on extracted features from most important ECG signal components (QRS) to detect normal and abnormal cases. This is achieved by estimating its energy concentration magnitude using the TFDs. The TFDs analyse ECG signals in one-minute interval instead of conventional time domain approach that analyses based on beat or frame containing several beats. The MIT-BIH normal sinus rhythm ECG database total records of 18 long-term ECG sampled at 128 Hz have been analysed. The tested TFDs include Dual-Tree Wavelet Transform, Spectrogram, Pseudo Wigner-Ville, Choi-Williams, and Born-Jordan. Each record is divided into one-minute slots, which is not considered previously, and analysed. The sample periods (slots) are randomly selected ten minutes interval for each record. This result with 99.44% detection accuracy for 15,735 ECG beats shows that Choi-Williams distribution is most reliable to be used for heart problem detection especially in automated systems that provide continuous monitoring for long time duration.
机译:生物医学信号活动的非静止和多频性质使得使用时频分布(TFD)来分析不可避免。时频分析在时间和频域中提供了同时解释,从而实现了心电图(ECG)信号的全面解释,呈现和解释。每种类型的TFD和特定属性的多样性表明需要确定ECG分析的最佳TFD。在本研究中,提出了ECG异常检测期间五个TFD的性能评估。基于来自大多数重要ECG信号分量(QRS)的提取特征的检测标准检测正常和异常情况。这是通过使用TFD估计其能量浓度幅度来实现的。 TFDS以一分钟的间隔分析E​​CG信号,而不是传统的时域方法,该方法基于包含多个节拍的节拍或帧分析。分析了MIT-BIH正常窦性心律ECG数据库18个长期ECG的总记录,在128Hz时采样。测试的TFD包括双树小波变换,谱图,伪Wigner-Ville,Choi-Williams和Born-Jordan。每个记录都分为一分钟的插槽,以前不考虑并分析。对于每条记录,采样周期(插槽)是随机选择的十分钟间隔。这一结果具有99.44%的检测精度为15,735个ECG节拍,表明Choi-Williams分布最可靠,用于用于心脏问题检测,特别是在自动化系统中,在长时间持续时间提供连续监测。

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