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Sparse temporally dynamic resting-state functional connectivity networks for early MCI identification

机译:早期MCI识别的稀疏时间动态静止状态功能连接网络

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In conventional resting-state functional MRI (R-fMRI) analysis, functional connectivity is assumed to be temporally stationary, overlooking neural activities or interactions that may happen within the scan duration. Dynamic changes of neural interactions can be reflected by variations of topology and correlation strength in temporally correlated functional connectivity networks. These connectivity networks may potentially capture subtle yet short neural connectivity disruptions induced by disease pathologies. Accordingly, we are motivated to utilize disrupted temporal network properties for improving control-patient classification performance. Specifically, a sliding window approach is firstly employed to generate a sequence of overlapping R-fMRI sub-series. Based on these sub-series, sliding window correlations, which characterize the neural interactions between brain regions, are then computed to construct a series of temporal networks. Individual estimation of these temporal networks using conventional network construction approaches fails to take into consideration intrinsic temporal smoothness among successive overlapping R-fMRI sub-series. To preserve temporal smoothness of R-fMRI sub-series, we suggest to jointly estimate the temporal networks by maximizing a penalized log likelihood using a fused sparse learning algorithm. This sparse learning algorithm encourages temporally correlated networks to have similar network topology and correlation strengths. We design a disease identification framework based on the estimated temporal networks, and group level network property differences and classification results demonstrate the importance of including temporally dynamic R-fMRI scan information to improve diagnosis accuracy of mild cognitive impairment patients.
机译:在传统的静止状态功能MRI(R-fMRI)分析中,功能连接被假定为暂时稳定的,可以忽略在扫描持续时间内可能发生的神经活动或相互作用。神经相互作用的动态变化可以通过时间相关的功能连接网络中拓扑和相关强度的变化来反映。这些连通性网络可能潜在地捕获由疾病病理引起的细微但短暂的神经连通性破坏。因此,我们有动机利用中断的时态网络属性来改善控制患者分类的性能。具体而言,首先采用滑动窗口方法来生成一系列重叠的R-fMRI子系列。基于这些子系列,然后计算表征大脑区域之间神经相互作用的滑动窗口相关性,以构建一系列时间网络。使用常规网络构造方法对这些时态网络的单独估计未能考虑到连续重叠的R-fMRI子系列之间的固有时态平滑度。为了保留R-fMRI子系列的时间平滑度,我们建议使用融合的稀疏学习算法,通过最大化惩罚对数似然来共同估计时间网络。这种稀疏的学习算法鼓励时间相关的网络具有相似的网络拓扑和相关强度。我们基于估计的时态网络设计了疾病识别框架,并且组级网络的属性差异和分类结果证明了包括时态动态R-fMRI扫描信息对提高轻度认知障碍患者的诊断准确性的重要性。

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