用直方图法检测和识别心电波

B. Halder, S. Mitra, M. Mitra
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引用次数: 12

摘要

本文提出了一种基于直方图的简单新颖的方法来检测和识别去噪心电信号中的R波、P波和T波。心电波形及其特征的识别是心电诊断的一项重要任务。在这项工作中,直方图,一种图形化的等大小的数值数据演示,被用作心电信号的上述波的估计器。为此,整个信号被分成几个预定义宽度的小窗口,每个窗口最多有60个采样值。直方图基本上是通过测量这些样本值在某些量化方向上的方向变化而生成的。在获得直方图之后,很少有区域被描述为面积超过预定义阈值的QRS区域。这些区域的局部最大值被认为是r峰。基于同样的技术,也可以检测到P波和T波。该方法的优点是可以直接用于在线分析,而不需要使用任何复杂的数学模型。整个技术已被确定为适用于从CSE多导联ECG数据库中提取的所有12导联的各种ECG记录,该数据库包含以500Hz采样频率记录的5000个样本。该算法在MATLAB R2010a环境下实现。对所提技术的性能进行了评价。所提出的技术在灵敏度(Se=99.86%)、阳性预测(+p=99.76%)和检测精度(DA 99.8%)方面达到了准确性,因此我们得出结论,所提出的技术可用于ECG分析和分类。
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Detection and identification of ECG waves by histogram approach
A histogram based simple and novel idea is proposed here for detection and identification of R wave, P wave and T wave from noise removal ECG Signal. The identification of ECG waveforms and their characteristic features is an important task for the diagnosis. In this work, histograms, a graphical demonstration of numerical data of equal size, is used as an estimator of the above mentioned waves of ECG signal. For this purpose the whole signal is divided into few small windows of predefined width having maximum 60 sample values in each. The Histograms are basically generated by measuring the variations of the orientations among these sample values in some quantized directions. After getting the histograms, few zones are depicted as QRS zones having the area more than a pre-defined threshold. The local maxima of these zones are considered as the R-peak. Based on same technique, P and T wave can also be detected. The method is advantageous as it can be used directly for online analysis without using any complex mathematical models. The whole technique has been established to be useful to a variety of ECG records for all the 12 leads taken from CSE Multi-lead ECG database which contains 5000 samples recorded at a sampling frequency of 500Hz. The algorithm is implemented on MATLAB R2010a environment. The performance of the proposed technique is evaluated. The accuracy of the proposed technique is achieved in Sensitivity (Se=99.86%), Positive Predictivity (+p=99.76%) and Detection accuracy (DA 99.8%) and hence we conclude that the proposed technique may be used for ECG analysis and classification.
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