Enhancing Multichannel Laser-Doppler Vibrometry Signals with Application to (Carotid-Femoral) Pulse Transit Time Estimation.

Simeon Beeckman, Yanlu Li, Soren Aasmul, Roel Baets, Pierre Boutouyrie, Patrick Segers, Nilesh Madhu
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Abstract

Pulse-wave velocity (PWV) can be used to quantify arterial stiffness, allowing for a diagnosis of this condition. Multi-beam laser-doppler vibrometry offers a cheap, non-invasive and user-friendly alternative to measuring PWV, and its feasibility has been previously demonstrated in the H2020 project CARDIS. The two handpieces of the prototype CARDIS device measure skin displacement above main arteries at two different sites, yielding an estimate of the pulse-transit time (PTT) and, consequently, PWV. The presence of multiple beams (channels) on each handpiece can be used to enhance the underlying signal, improving the quality of the signal for PTT estimation and further analysis. We propose two methods for multi-channel LDV data processing: beamforming and beamforming-driven ICA. Beamforming is done by an SNR-weighted linear combination of the time-aligned channels, where the SNR is blindly estimated from the signal statistics. ICA uses the beamformer to resolve its inherent permutation and scale ambiguities. Both methods yield a single enhanced signal at each handpiece, where spurious peaks in the individual channels as well as stochastic noise are well suppressed in the output. Using the enhanced signals yields individual PTT estimates with a low spread compared to the baseline approach. While the enhancement is introduced in the context of PTT estimation, the approaches can be used to enhance signals in other biomedical applications of multi-channel LDV as well.

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增强多通道激光多普勒测振仪信号,并将其应用于(颈动脉-股骨)脉搏传输时间估算。
脉搏波速度(PWV)可用于量化动脉僵化,从而对这种情况进行诊断。多光束激光多普勒测振仪为测量脉搏波速度提供了一种廉价、无创和用户友好的替代方法,其可行性已在 H2020 项目 CARDIS 中得到证实。CARDIS 原型设备的两个手机可测量两个不同部位主动脉上方的皮肤位移,从而估算出脉搏传输时间 (PTT),进而估算出脉搏波速度。每个手机上的多波束(通道)可用于增强底层信号,提高用于 PTT 估测和进一步分析的信号质量。我们提出了两种处理多通道 LDV 数据的方法:波束成形和波束成形驱动 ICA。波束成形是通过时间对齐信道的 SNR 加权线性组合来完成的,其中 SNR 是根据信号统计盲估计的。ICA 利用波束成形器解决其固有的排列和尺度模糊问题。这两种方法都能在每个手机上产生单一的增强信号,在输出中能很好地抑制各个信道中的杂散峰值以及随机噪声。与基线方法相比,使用增强后的信号产生的单个 PTT 估计值传播较小。虽然增强是在 PTT 估计的背景下引入的,但这些方法也可用于增强多通道 LDV 的其他生物医学应用中的信号。
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