Characterizing the distribution of neural and non-neural components in multi-echo EPI data across echo times based on tensor-ICA

IF 4.7 2区 医学 Q1 NEUROIMAGING
Tengfei Feng , Halim Ibrahim Baqapuri , Jana Zweerings , Huanjie Li , Fengyu Cong , Klaus Mathiak
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引用次数: 0

Abstract

Multi-echo echo-planar imaging (ME-EPI) acquires images at multiple echo times (TEs), enabling the differentiation of BOLD and non-BOLD fluctuations through TE-dependent analysis of transverse relaxation time and initial intensity. Decomposing ME-EPI in tensor space is a promising approach to characterize the distribution of changes across TEs (TE patterns) directly and aid the classification of components by providing information from an additional domain. In this study, the tensorial extension of independent component analysis (tensor-ICA) is used to characterize the TE patterns of neural and non-neural components in ME-EPI data. With the constraints of independent spatial maps, an ME-EPI dataset was decomposed into spatial, temporal, and TE domains to understand the TE patterns of noise or signal-related independent components. Our analysis revealed three distinct groups of components based on their TE patterns. Motion-related and other non-BOLD origin components followed decreased TE patterns. While the long-TE-peak components showed a large overlay on grey matter and signal patterns, the components that peaked at short TEs reflected noise that may be related to the vascular system, respiration, or cardiac pulsation, amongst others. Accordingly, removing short-TE peak components as part of a denoising strategy significantly improved quality control metrics and revealed clearer, more interpretable activation patterns compared to non-denoised data. To our knowledge, this work is the first application of decomposing ME-EPI in a tensor way. Our findings demonstrate that tensor-ICA is efficient in decomposing ME-EPI and characterizing the neural and non-neural TE patterns aiding in classifying components which is important for denoising fMRI data.
基于张量-ICA描述多回波 EPI 数据中神经和非神经成分在不同回波时间的分布特征
多回波回波平面成像(ME-EPI)获取多个回波时间(TEs)的图像,通过te相关的横向松弛时间和初始强度分析,能够区分BOLD和非BOLD波动。在张量空间中分解ME-EPI是一种很有前途的方法,可以直接表征TE (TE模式)之间变化的分布,并通过提供来自附加域的信息来帮助对组件进行分类。在本研究中,独立分量分析的张量扩展(张量- ica)用于表征ME-EPI数据中神经和非神经成分的TE模式。在独立空间映射的约束下,将ME-EPI数据集分解为空间、时间和TE域,以了解噪声或信号相关独立分量的TE模式。我们的分析根据TE模式揭示了三组不同的组件。运动相关成分和其他非bold来源成分的TE模式下降。虽然长te峰成分在灰质和信号模式上显示出很大的覆盖,但短te峰成分反射的噪声可能与血管系统、呼吸或心脏搏动等有关。因此,作为去噪策略的一部分,去除短te峰分量显著提高了质量控制指标,与未去噪的数据相比,显示出更清晰、更可解释的激活模式。据我们所知,这项工作是第一次以张量方式分解ME-EPI的应用。我们的研究结果表明,张量ica在分解ME-EPI和表征神经和非神经TE模式方面是有效的,这有助于对fMRI数据去噪的重要成分进行分类。
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来源期刊
NeuroImage
NeuroImage 医学-核医学
CiteScore
11.30
自引率
10.50%
发文量
809
审稿时长
63 days
期刊介绍: NeuroImage, a Journal of Brain Function provides a vehicle for communicating important advances in acquiring, analyzing, and modelling neuroimaging data and in applying these techniques to the study of structure-function and brain-behavior relationships. Though the emphasis is on the macroscopic level of human brain organization, meso-and microscopic neuroimaging across all species will be considered if informative for understanding the aforementioned relationships.
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