A general detection framework for weak electrophysiological signals based on multi-channel flexible information fusion

Guojun Li, Changrong Ye, Xiaona Zhou, Bao-Jun Yang
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Abstract

Existing decision-level information fusion methods for weak electrophysiological signals detection cannot effectively integrate conflicting information. Meanwhile, data-level information fusion methods lose physiological significance of channels. In this study, the evidence on each channel with a soft-decision method is first proposed. Then, a general multi-channel flexible information fusion detection framework for weak electrophysiological signals is established based on DSmT uncertain information fusion theory. Microvolt T wave alternans in ECG signal as an example, the proposed algorithm is verified on the simulation data and the measured data under various kinds of strong noise environments. These results demonstrate that the proposed method enables robust detection of weak electrocardiogram signals under strong noise background with significantly higher detection probability in the case of low false alarm probability by comparison with the existing decision-level fusion method, applying to the weak electrophysiological signals detection for mobile monitoring environments.
基于多通道柔性信息融合的弱电生理信号通用检测框架
现有的用于弱电生理信号检测的决策级信息融合方法不能有效地整合冲突信息。同时,数据级信息融合方法也失去了通道的生理意义。在本研究中,首先提出了一种软决策方法对每个通道的证据。然后,基于DSmT不确定信息融合理论,建立了弱电生理信号通用多通道柔性信息融合检测框架。以心电信号中的微伏T波交替为例,在各种强噪声环境下的仿真数据和实测数据上对所提算法进行了验证。结果表明,与现有决策级融合方法相比,该方法能够在强噪声背景下对微弱心电图信号进行鲁棒检测,在虚警概率较低的情况下检测概率显著提高,适用于移动监测环境下的微弱电生理信号检测。
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