Zha Yu-tong, Liu Guang-da, Zhou Run-dong, Zhang Xiao-feng, Niu Jun-qi, Yu Yong, Wang Wei
Guang Pu Xue Yu Guang Pu Fen Xi. 2015 Oct;35(10):2746-51.
Currently, functional near-infrared spectroscopy (fNIRS) is widely used in the field of Neuroimaging. To solve the signal-noise frequency spectrum aliasing in non-linear and non-stationary fNIRS characteristic signal extraction, a new joint multi-resolution algorithm, EEMD-ICA, is proposed based on combining Independent Component Analysis with Ensemble Empirical Mode Decomposing. After functional brain imaging instrument detected the multi-channel and multi-wavelength NIR optical density signals, EEMD was performed to decompose measurement signals into multiple intrinsic mode function according to the signal frequency component. Then ICA was applied to extract the interest data from IMFs into ICs. Finally, reconstructed signals were obtained by accumulating the ICs set. EEMD-ICA was applied in de-noising Valsalva test signals which were considered as original signals and compared with Empirical Mode Decomposing and Ensemble Empirical Mode Decomposing to illustrate validity of this algorithm. It is proved that useful information loss during de-noising and invalidity of noise elimination are completely solved by EEMD-ICA. This algorithm is more optimized than other two de-noising methods in error parameters and signal-noise-ratio analysis.
目前,功能近红外光谱技术(fNIRS)在神经成像领域得到了广泛应用。为了解决非线性、非平稳的fNIRS特征信号提取中的信号噪声频谱混叠问题,提出了一种基于独立成分分析(ICA)与总体经验模态分解(EEMD)相结合的联合多分辨率算法EEMD-ICA。在功能性脑成像仪器检测到多通道、多波长近红外光密度信号后,进行EEMD,根据信号频率成分将测量信号分解为多个固有模态函数。然后应用ICA从固有模态函数中提取感兴趣的数据到独立成分中。最后,通过累加独立成分集获得重构信号。将EEMD-ICA应用于被视为原始信号的瓦氏试验信号去噪,并与经验模态分解和总体经验模态分解进行比较,以说明该算法的有效性。结果表明,EEMD-ICA完全解决了去噪过程中的有用信息丢失和噪声消除无效问题。在误差参数和信噪比分析方面,该算法比其他两种去噪方法更优化。