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首页> 外文期刊>Journal of Neuroscience Methods >Evoked hemodynamic response estimation using ensemble empirical mode decomposition based adaptive algorithm applied to dual channel functional near infrared spectroscopy (fNIRS)
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Evoked hemodynamic response estimation using ensemble empirical mode decomposition based adaptive algorithm applied to dual channel functional near infrared spectroscopy (fNIRS)

机译:使用基于整体经验模式分解的自适应算法对诱发的血液动力学反应进行评估,该算法适用于双通道功能近红外光谱(fNIRS)

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Background: The quality of the functional near infrared spectroscopy (fNIRS) recordings is highly degraded by the presence of physiological interferences. It is crucial to efficiently separate the evoked hemodynamic responses (EHRs) from other background hemodynamic activities prior to any further processing. New method: This paper presents a novel algorithm for physiological interferences reduction from the dual channel fNIRS measurements using ensemble empirical mode decomposition (EEMD) technique. The proposed algorithm is comprised of two main steps: (1) decomposing reference signal into its constituents called intrinsic mode functions (IMFs) and (2) adaptively defining appropriate weights of the corresponding IMFs to estimate the proportion of physiological interference in standard channel measurement. Results: Performance of the proposed algorithm was evaluated using both synthetic and semi-real brain hemodynamic data based on four parameters of relative mean squared error (rMSE), Pearson's correlation coefficient (R2), percentage estimation error of peak amplitude (EPA) and peak latency (EL). Comparison with existing methods: Results obtained from synthetic data revealed that both the EEMD based normalized least mean squares (EEMD-NLMS) and EEMD based recursive least squares (EEMD-RLS) methods could reduce the average rMSE by at least 34% and 49%, respectively, when compared with widely used methods: block averaging, band-pass filtering and principal and/or independent component analysis. Furthermore, the two proposed methods outperform the regression method in reducing rMSE by at least 21% and 35% respectively when applied to semi-real data. Conclusions: An effective algorithm for estimating the EHRs from raw fNIRS data was proposed in which no assumption about the amplitude, shape and duration of the responses is considered.
机译:背景:由于生理干扰,功能性近红外光谱(fNIRS)记录的质量大大降低。在进行任何进一步处理之前,有效地将诱发的血流动力学反应(EHR)与其他背景血流动力学活动区分开来至关重要。新方法:本文提出了一种使用整体经验模态分解(EEMD)技术从双通道fNIRS测量中减少生理干扰的新算法。所提出的算法包括两个主要步骤:(1)将参考信号分解为称为固有模式函数(IMF)的成分;(2)自适应定义相应IMF的适当权重,以估计标准信道测量中生理干扰的比例。结果:基于相对均方误差(rMSE),皮尔逊相关系数(R2),峰幅度百分比(EPA)和峰的百分比估计误差四个参数,使用合成和半真实的大脑血液动力学数据评估了该算法的性能延迟(EL)。与现有方法的比较:从综合数据中获得的结果表明,基于EEMD的归一化最小均方(EEMD-NLMS)方法和基于EEMD的递归最小二乘(EEMD-RLS)方法均可将平均rMSE降低至少34%和49%与广泛使用的方法相比:块平均,带通滤波以及主成分和/或独立成分分析。此外,在应用于半实数数据时,两种建议的方法在将rMSE分别降低至少21%和35%方面优于回归方法。结论:提出了一种有效的从原始fNIRS数据估算EHR的算法,该算法不考虑响应幅度,形状和持续时间的假设。

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