We consider the challenges in extracting stimulus-related neural dynamics from other intrinsic processes and noise in naturalistic functional magnetic resonance imaging (fMRI). Most studies rely on inter-subject correlations (ISC) of low-level regional activity and neglect varying responses in individuals. We propose a novel, data-driven approach based on low-rank plus sparse (L+S) decomposition to isolate stimulus-driven dynamic changes in brain functional connectivity (FC) from the background noise, by exploiting shared network structure among subjects receiving the same naturalistic stimuli. The time-resolved multi-subject FC matrices are modeled as a sum of a low-rank component of correlated FC patterns across subjects, and a sparse component of subject-specific, idiosyncratic background activities. To recover the shared low-rank subspace, we introduce a fused version of principal component pursuit (PCP) by adding a fusion-type penalty on the differences between the rows of the low-rank matrix. The method improves the detection of stimulus-induced group-level homogeneity in the FC profile while capturing inter-subject variability. We develop an efficient algorithm via a linearized alternating direction method of multipliers to solve the fused-PCP. Simulations show accurate recovery by the fused-PCP even when a large fraction of FC edges are severely corrupted. When applied to natural fMRI data, our method reveals FC changes that were time-locked to auditory processing during movie watching, with dynamic engagement of sensorimotor systems for speech-in-noise. It also provides a better mapping to auditory content in the movie than ISC.
翻译:我们考虑了在从其他内在过程和自然功能磁共振成像(fMRI)中提取刺激相关神经动态和噪音方面的挑战。大多数研究都依赖于低层次区域活动以及个人不同反应的低层次区域活动之间的主题相关性(ISC)和分散反应。我们提出基于低层次和稀疏(L+S)分解的新颖、数据驱动的方法,将大脑功能连通(FC)中由刺激驱动的动态变化与背景噪音隔离开来,方法是利用接受同样自然结构平庸的主体之间的共享网络结构。时间破解的多主题FC矩阵建模为各主题之间相对的FC模式的低级别组合组合组合组合,以及缺乏特定主题和超典型背景背景活动的一部分。为了恢复共同的低层次子空间,我们引入了主要组成部分追踪(PCP)的混合版本,对低层次矩阵的行之间差异加了一种混合型惩罚。在FC版本的语音-CP中应用的由刺激导致的集团级级共振动的共产分级组合,同时捕捉到直流的直线性C的系统,我们通过直流的变压法化的系统显示一个高效的系统。