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Total-activation regularized deconvolution of resting-state fMRI leads to reproducible networks with spatial overlap

机译:静态fMRI的全激活正则反卷积导致具有空间重叠的可复制网络

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Spontaneous activations in resting-state fMRI have been shown to corroborate recurrent intrinsic functional networks. Recent studies have explored integration of brain function in terms of spatially overlapping networks. We have proposed a method to recover not only spatially but also temporally overlapping networks, which we named innovation-driven co-activation patterns (iCAPs). These networks are driven by the sparse innovation signals recovered from Total Activation (TA), a spatiotemporal regularization framework for fMRI deconvolution. The fMRI data is processed with TA, which uses the inverse of the hemodynamic response function - as a linear differential operator - combined with the derivative in the regularization with ℓ1-norm. As a result, sparse innovation signals are reconstructed as the deconvolved fMRI time series. Temporal clustering of innovation signals lead to iCAPs. In this work, we investigate the reproducible iCAPs in individuals with relapsing-remitting multiple sclerosis and healthy volunteers.
机译:静止状态功能磁共振成像中的自发激活已被证实可以证实复发性内在功能网络。最近的研究已经在空间重叠网络方面探索了大脑功能的整合。我们提出了一种不仅在空间上而且在时间上重叠的网络的恢复方法,我们将其命名为创新驱动的共激活模式(iCAP)。这些网络由从总激活(TA)中恢复的稀疏创新信号驱动,总激活是用于fMRI去卷积的时空正则化框架。用TA处理fMRI数据,TA使用血液动力学响应函数的逆函数(作为线性微分算子),并结合ℓ1-范数的正则化中的导数。结果,稀疏的创新信号被重建为反卷积的fMRI时间序列。创新信号的时间聚集导致了iCAP。在这项工作中,我们调查了复发缓解型多发性硬化症患者和健康志愿者中可再生的iCAP。

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