Aortic Pressure Waveforms Reconstruction Using Simplified Kalman Filter

Wenyan Liu, Zongpeng Li, Yang Yao, Shuran Zhou, Yuelan Zhang, Lisheng Xu
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Abstract

Aortic pressure (Pa) waveforms are important for diagnosis of cardiovascular disease. However, the direct measurement of Pa is invasive and expensive. In the paper, a new simplified Kalman filter (SKF) algorithm for blind system identification was employed for the reconstruction of Pa waveforms using two peripheral artery pressure waveforms. The data of Pa waveforms are collected from 24 human subjects. Simultaneously, brachial artery and femoral artery pressure waveforms data are generated from the simulation of a known two-channel finite impulse response system. In order to study the performance of the proposed SKF algorithm, different amounts of signal-to-noise ratio of the output signal were used in the experiment. Experimental results demonstrated that the proposed SKF algorithm had advantages in comparison with the canonical correlation analysis (CCA) algorithm. It is notable that the proposed SKF algorithm works much more noise-robust than the CCA algorithm in a wide range of SNR.
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基于简化卡尔曼滤波的主动脉压力波形重建
主动脉压(Pa)波形对心血管疾病的诊断具有重要意义。然而,直接测量Pa是有创且昂贵的。本文采用一种新的简化卡尔曼滤波(SKF)盲系统识别算法,利用两种外周动脉压力波形重建Pa波形。采集了24例人体的Pa波形数据。同时,通过模拟已知的双通道有限脉冲响应系统生成肱动脉和股动脉压力波形数据。为了研究所提出的SKF算法的性能,实验中使用了不同量的输出信号信噪比。实验结果表明,与典型相关分析(CCA)算法相比,所提出的SKF算法具有优势。值得注意的是,在较宽的信噪比范围内,所提出的SKF算法比CCA算法具有更好的噪声鲁棒性。
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