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Tensor-based analysis of ECG changes prior to in-hospital cardiac arrest

机译:院内心脏骤停前基于张量的心电图变化分析

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This works presents an analysis in the changes in beat morphology prior to in-hospital cardiac arrest. We have used tensor decomposition methods to extract features from the ECG signal. After preprocessing and R peak detection, a tensor is constructed for each ECG signal by segmenting the signal in individual heartbeats and stacking them in a 3D manner. The result of the tensor decomposition are 3 factor vectors corresponding to each tensor dimension. The temporal vector, representing the standard heartbeat over all leads in the signal, is further processed to calculate 10 different features: 4 features characterizing global changes in beat morphology and 6 detailed features describing changes in timing and amplitude of the waveforms. We analyzed a dataset of 20 patients who experienced a cardiac arrest in the intensive care unit at the end of the recording. For each patient, a stable signal (in the beginning of the recording) and an unstable signal (near the cardiac arrest) were extracted and processed. Statistical analysis of the results in both time windows (e.g. stable and unstable) show significant changes in the values of 2 out of 4 global parameters and 4 out of 6 detailed parameters. The results indicate that the use of tensor-based methods can be a robust way to characterize ECG changes, and may be a useful tool in identifying patients at risk for cardiac arrest.
机译:这项工作提出了院内心脏骤停之前的搏动形态变化的分析。我们已经使用张量分解方法从ECG信号中提取特征。在预处理和R峰值检测之后,通过将信号分成单独的心跳并以3D方式堆叠,为每个ECG信号构造一个张量。张量分解的结果是对应于每个张量维数的3个因子向量。表示信号中所有导线上的标准心跳的时间向量将被进一步处理,以计算出10个不同的特征:4个特征描述了搏动形态的整体变化,而6个详细特征描述了波形的时序和振幅。我们分析了记录结束时在重症监护室发生心脏骤停的20名患者的数据集。对于每个患者,提取并处理一个稳定的信号(在记录开始时)和一个不稳定的信号(在心脏骤停附近)。在两个时间窗口(例如稳定和不稳定)中对结果进行统计分析,显示4个全局参数中的2个和6个详细参数中的4个的值发生了显着变化。结果表明,使用基于张量的方法可能是表征ECG变化的可靠方法,并且可能是识别有心脏骤停风险的患者的有用工具。

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