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静息态功能近红外光谱测量的独立成分分析揭示的功能连接。

Functional connectivity as revealed by independent component analysis of resting-state fNIRS measurements.

机构信息

State Key Laboratory of Cognitive Neuroscience and Learning, Beijing Normal University, Beijing 100875, PR China.

出版信息

Neuroimage. 2010 Jul 1;51(3):1150-61. doi: 10.1016/j.neuroimage.2010.02.080. Epub 2010 Mar 6.

Abstract

As a promising non-invasive imaging technique, functional near infrared spectroscopy (fNIRS) has recently earned increasing attention in resting-state functional connectivity (RSFC) studies. Preliminary fNIRS-based RSFC studies adopted a seed correlation approach and yielded interesting results. However, the seed correlation approach has several inherent problems, such as neglecting of interactions among multiple regions and a dependence on seed region selection. Moreover, ineffectively reduced noise and artifacts in fNIRS measurements also negatively affect RSFC results. In this study, independent component analysis (ICA) was introduced to meet these challenges in RSFC detection based on resting-state fNIRS measurements. The results of ICA on data from the sensorimotor and the visual systems both showed functional system-specific RSFC maps. Results from comparison between ICA and the conventional seed correlation approach demonstrated, both qualitatively and quantitatively, the superior performance of ICA with higher sensitivity and specificity, especially in the case of higher noise level. The capability of ICA to separate noise and artifacts from resting-state fNIRS data was also demonstrated, and the extracted noise and artifacts were illustrated. Finally, some practical issues on performing ICA on resting-state fNIRS data were discussed.

摘要

作为一种很有前途的无创成像技术,功能近红外光谱(fNIRS)在静息态功能连接(RSFC)研究中越来越受到关注。基于初步 fNIRS 的 RSFC 研究采用了种子相关方法,得到了有趣的结果。然而,种子相关方法存在一些固有问题,例如忽略多个区域之间的相互作用以及对种子区域选择的依赖。此外,fNIRS 测量中的噪声和伪影也会对 RSFC 结果产生负面影响。在这项研究中,引入了独立成分分析(ICA)来应对基于静息态 fNIRS 测量的 RSFC 检测中的这些挑战。对感觉运动系统和视觉系统数据进行 ICA 的结果均显示出功能系统特异性的 RSFC 图谱。ICA 与传统种子相关方法的比较结果从定性和定量两方面均表明,ICA 具有更高的灵敏度和特异性,性能优于后者,尤其是在噪声水平较高的情况下。ICA 能够从静息态 fNIRS 数据中分离噪声和伪影的能力也得到了证明,并展示了提取的噪声和伪影。最后,讨论了在静息态 fNIRS 数据上执行 ICA 时的一些实际问题。

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