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基于深度学习的光纤传感器心冲击图重建算法。

Deep learning-based ballistocardiography reconstruction algorithm on the optical fiber sensor.

出版信息

Opt Express. 2022 Apr 11;30(8):13121-13133. doi: 10.1364/OE.452408.

Abstract

Ballistocardiography (BCG) is a vibration signal related to cardiac activity, which can be obtained in a non-invasive way by optical fiber sensors. In this paper, we propose a modified generative adversarial network (GAN) to reconstruct BCG signals by solving signal fading problems in a Mach-Zehnder interferometer (MZI). Based on this algorithm, additional modulators and demodulators are not needed in the MZI, which reduces the cost and hardware complexity. The correlation between reconstructed BCG and reference BCG is 0.952 in test data. To further test the model performance, we collect special BCG signals including sinus arrhythmia data and post-exercise cardiac activities data, and analyze the reconstructed results. In conclusion, a BCG reconstruction algorithm is presented to solve the signal fading problem in the optical fiber interferometer innovatively, which greatly simplifies the BCG monitoring system.

摘要

心冲击图(BCG)是一种与心脏活动相关的振动信号,可以通过光纤传感器以非侵入的方式获得。在本文中,我们提出了一种改进的生成对抗网络(GAN),通过解决马赫-曾德尔干涉仪(MZI)中的信号衰落问题来重建 BCG 信号。基于该算法,MZI 中不需要额外的调制器和解调器,从而降低了成本和硬件复杂性。在测试数据中,重建的 BCG 与参考 BCG 的相关性为 0.952。为了进一步测试模型性能,我们收集了特殊的 BCG 信号,包括窦性心律失常数据和运动后心脏活动数据,并对重建结果进行了分析。总之,提出了一种 BCG 重建算法,创新性地解决了光纤干涉仪中的信号衰落问题,大大简化了 BCG 监测系统。

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