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Detection of abnormalities in the signal averaged electrocardiogram: a subspace system identification approach

机译:检测信号平均心电图中的异常:子空间系统识别方法

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This paper addresses the detection and classification of low amplitude signals within the QRS complex of the signal-averaged electrocardiogram. The raw data is used to fit a state-space model using the N4SID algorithm and the residual from the model are then used for detection. The fundamental assumption behind the state-space model is that the residuals are a white noise process. Therefore, anything that cannot be modeled with the state-space model will show up in the residuals as flow amplitude signal+noise. Compared to typical residuals, the low amplitude signal behaves as influential observations and can be treated as outliers. Diagnostic tests and analysis on the residuals will then lead to detection and classification of abnormalities in the intra-QRS complex. Residual analysis in this paper includes whiteness and Gaussian tests, statistical process control, and the use of a tracking signal. The end result is a tool to aid the physician in diagnosing the heart condition of a patient.
机译:本文探讨了信号平均心电图QRS波群内低振幅信号的检测和分类。使用N4SID算法将原始数据用于拟合状态空间模型,然后将模型中的残差用于检测。状态空间模型背后的基本假设是残差是白噪声过程。因此,无法用状态空间模型建模的任何事物都将在残差中显示为流量幅度信号+噪声。与典型残差相比,低振幅信号表现为有影响的观察结果,可以视为异常值。然后,对残留物进行诊断测试和分析,将导致对QRS内复合物的异常进行检测和分类。本文中的残差分析包括白度和高斯测试,统计过程控制以及跟踪信号的使用。最终结果是帮助医师诊断患者心脏状况的工具。

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