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Motion artifacts in functional near-infrared spectroscopy: A comparison of motion correction techniques applied to real cognitive data

机译:功能近红外光谱中的运动伪影:运动校正技术的比较应用于真实认知数据

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Motion artifacts are a significant source of noise in many functional near-infrared spectroscopy (fNIRS) experiments. Despite this, there is no well-established method for their removal. Instead, functional trials of fNIRS data containing a motion artifact are often rejected completely. However, in most experimental circumstances the number of trials is limited, and multiple motion artifacts are common, particularly in challenging populations. Many methods have been proposed recently to correct for motion artifacts, including principle component analysis, spline interpolation, Kalman filtering, wavelet filtering and correlation-based signal improvement. The performance of different techniques has been often compared in simulations, but only rarely has it been assessed on real functional data. Here, we compare the performance of these motion correction techniques on real functional data acquired during a cognitive task, which required the participant to speak aloud, leading to a low-frequency, low-amplitude motion artifact that is correlated with the hemodynamic response. To compare the efficacy of these methods, objective metrics related to the physiology of the hemodynamic response have been derived. Our results show that it is always better to correct for motion artifacts than reject trials, and that wavelet filtering is the most effective approach to correcting this type of artifact, reducing the area under the curve where the artifact is present in 93% of the cases. Our results therefore support previous studies that have shown wavelet filtering to be the most promising and powerful technique for the correction of motion artifacts in fNIRS data. The analyses performed here can serve as a guide for others to objectively test the impact of different motion correction algorithms and therefore select the most appropriate for the analysis of their own fNIRS experiment.
机译:运动伪影是许多功能近红外光谱(FNIR)实验中的重要噪声来源。尽管如此,没有既有良好的去除方法。相反,含有运动伪像的FNIR数据的功能试验通常完全拒绝。然而,在大多数实验情况下,试验的数量有限,多种运动伪像常见,特别是在挑战性的人群中。最近已经提出了许多方法来纠正运动伪影,包括原理分析,样条插值,卡尔曼滤波,小波滤波和基于相关的信号改进。在仿真中经常比较不同技术的性能,但只有很少被评估在真正的功能数据上。这里,我们比较这些运动校正技术对认知任务所获取的实际功能数据的性能,这需要参与者大声说出,导致低频,低幅度运动伪像与血液动力学响应相关。为了比较这些方法的功效,衍生出与血流动力学反应的生理学相关的客观度量。我们的结果表明,纠正运动伪影总是更好的,而不是拒绝试验,并且小波滤波是纠正这种类型的伪像的最有效方法,减少了伪像以93%的情况下存在的曲线下的区域。因此,我们的结果支持先前的研究,这些研究表明小波滤波是最有前途和最强大的技术,用于校正FNIRS数据中的运动伪影。此处执行的分析可以作为其他人客观地测试不同运动校正算法的影响的指导,因此选择最适合于分析自己的Fnirs实验。

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