fNIRS脑信号恢复:用独立分量分析抑制生理干扰

Y. Zhang, M. Shi, J. Sun, C. Yang, Yajuan Zhang, F. Scopesi, P. Makobore, C. Chin, G. Serra, Y. Wickramasinghe, P. Rolfe
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摘要

通过功能近红外光谱(fNIRS)可以无创地监测大脑活动,与其他方法相比,它具有灵活性,便携性,低成本和更少的物理限制等优点。然而,在实践中,近红外光谱测量经常受到由心脏收缩、呼吸和血压波动引起的生理干扰的污染,从而严重限制了该方法的实用性。因此,需要进一步的改进来减少或消除这种干扰,以便能够可靠地从近红外光谱数据中提取诱发的脑活动信息。本文采用了多距离fNIRS探头结构。将近距离近红外测量作为虚拟通道,将远距离近红外测量作为测量通道。采用独立分量分析(ICA)对近红外光谱记录进行脑信号和干扰的分离。采用最小绝对偏差(Least-absolute deviation, LAD)估计器对脑活动信号进行恢复。我们还利用基于成人头部五层模型的蒙特卡罗模拟来评估我们的方法。结果表明,ICA算法具有分离近红外光谱数据中生理干扰的潜力,LAD估计器可作为恢复脑活动信号的有效准则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recovering fNIRS brain signals: physiological interference suppression with independent component analysis
Brain activity can be monitored non-invasively by functional near-infrared spectroscopy (fNIRS), which has several advantages in comparison with other methods, such as flexibility, portability, low cost and fewer physical restrictions. However, in practice fNIRS measurements are often contaminated by physiological interference arising from cardiac contraction, breathing and blood pressure fluctuations, thereby severely limiting the utility of the method. Hence, further improvement is necessary to reduce or eliminate such interference in order that the evoked brain activity information can be extracted reliably from fNIRS data. In the present paper, the multi-distance fNIRS probe configuration has been adopted. The short-distance fNIRS measurement is treated as the virtual channel and the long-distance fNIRS measurement is treated as the measurement channel. Independent component analysis (ICA) is employed for the fNIRS recordings to separate the brain signals and the interference. Least-absolute deviation (LAD) estimator is employed to recover the brain activity signals. We also utilized Monte Carlo simulations based on a five-layer model of the adult human head to evaluate our methodology. The results demonstrate that the ICA algorithm has the potential to separate physiological interference in fNIRS data and the LAD estimator could be a useful criterion to recover the brain activity signals.
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