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首页> 外文期刊>EURASIP journal on advances in signal processing >Real time reconstruction of quasiperiodic multi parameter physiological signals
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Real time reconstruction of quasiperiodic multi parameter physiological signals

机译:准周期多参数生理信号的实时重建

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A modern intensive care unit (ICU) has automated analysis systems that depend on continuous uninterrupted real time monitoring of physiological signals such as electrocardiogram (ECG), arterial blood pressure (ABP), and photo-plethysmogram (PPG). These signals are often corrupted by noise, artifacts, and missing data. We present an automated learning framework for real time reconstruction of corrupted multi-parameter nonstationary quasiperiodic physiological signals. The key idea is to learn a patient-specific model of the relationships between signals, and then reconstruct corrupted segments using the information available in correlated signals. We evaluated our method on MIT-BIH arrhythmia data, a two-channel ECG dataset with many clinically significant arrhythmias, and on the CinC challenge 2010 data, a multi-parameter dataset containing ECG, ABP, and PPG. For each, we evaluated both the residual distance between the original signals and the reconstructed signals, and the performance of a heartbeat classifier on a reconstructed ECG signal. At an SNR of 0 dB, the average residual distance on the CinC data was roughly 3% of the energy in the signal, and on the arrhythmia database it was roughly 16%. The difference is attributable to the large amount of diversity in the arrhythmia database. Remarkably, despite the relatively high residual difference, the classification accuracy on the arrhythmia database was still 98%, indicating that our method restored the physiologically important aspects of the signal.
机译:现代重症监护病房(ICU)具有自动分析系统,该系统依赖于对生理信号(如心电图(ECG),动脉血压(ABP)和光电容积描记图(PPG))的连续不间断实时监控。这些信号通常会因噪声,伪影和丢失的数据而损坏。我们提出了一个自动化的学习框架,用于实时重建损坏的多参数非平稳拟周期生理信号。关键思想是学习信号之间关系的患者特定模型,然后使用相关信号中可用的信息来重建损坏的部分。我们对MIT-BIH心律失常数据(具有许多临床上重要的心律不齐的两通道ECG数据集)和CinC Challenge 2010数据(包含ECG,ABP和PPG的多参数数据集)进行了评估。对于每个信号,我们都评估了原始信号和重建信号之间的剩余距离,以及心跳分类器对重建ECG信号的性能。在SNR为0 dB时,CinC数据上的平均剩余距离约为信号能量的3%,而在心律失常数据库上则约为16%。差异归因于心律失常数据库中大量的多样性。值得注意的是,尽管残留差异相对较高,但心律失常数据库上的分类准确性仍为98%,这表明我们的方法恢复了信号的生理学重要方面。

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