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Wavelet-based motion artifact removal for functional near-infrared spectroscopy

机译:基于小波的运动伪影去除,用于功能近红外光谱

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Functional near-infrared spectroscopy (fNIRS) is a powerful tool for monitoring brain functional activities. Due to its non-invasive and non-restraining nature, fNIRS has found broad applications in brain functional studies. However, for fNIRS to work well, it is important to reduce its sensitivity to motion artifacts. We propose a new wavelet-based method for removing motion artifacts from fNIRS signals. The method relies on differences between artifacts and fNIRS signal in terms of duration and amplitude and is specifically designed for spike artifacts. We assume a Gaussian distribution for the wavelet coefficients corresponding to the underlying hemodynamic signal in detail levels and identify the artifact coefficients using this distribution. An input parameter controls the intensity of artifact attenuation in trade-off with the level of distortion introduced in the signal. The method only modifies wavelet coefficients in levels adaptively selected based on the degree of contamination with motion artifact. To demonstrate the feasibility of the method, we tested it on experimental fNIRS data collected from three infant subjects. Normalized mean-square error and artifact energy attenuation were used as criteria for performance evaluation. The results show 18.29 and 16.42 dB attenuation in motion artifacts energy for 700 and 830 nm wavelength signals in a total of 29 motion events with no more than 16.7 dB distortion in terms of normalized mean-square error in the artifact-free regions of the signal.
机译:功能近红外光谱(fNIRS)是监视大脑功能活动的强大工具。由于其非侵入性和非限制性,fNIRS已在脑功能研究中发现了广泛的应用。但是,为了使fNIRS正常工作,重要的是降低其对运动伪影的敏感性。我们提出了一种新的基于小波的方法来从fNIRS信号中去除运动伪像。该方法依赖于伪像和fNIRS信号在持续时间和幅度方面的差异,并且专门针对尖峰伪像而设计。我们假设小波系数的高斯分布对应于详细级别的潜在血液动力学信号,并使用此分布来识别伪影系数。输入参数控制权衡伪影衰减的强度与信号中引入的失真水平。该方法仅将小波系数修改为基于运动伪影的污染程度而自适应选择的级别。为了证明该方法的可行性,我们在收集自三个婴儿受试者的实验性fNIRS数据上对其进行了测试。归一化的均方误差和伪影能量衰减被用作性能评估的标准。结果表明,在总共29个运动事件中,对于700和830 nm波长信号,运动伪影能量的衰减分别为18.29和16.42 dB,根据信号无伪影区域中的归一化均方误差,失真不超过16.7 dB 。

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