School of Automation, Northwestern Polytechnical University, China; Cortical Architecture Imaging and Discovery Lab, Department of Computer Science and Bioimaging Research Center, The University of Georgia, Athens, GA, United States.
Cortical Architecture Imaging and Discovery Lab, Department of Computer Science and Bioimaging Research Center, The University of Georgia, Athens, GA, United States.
Med Image Anal. 2015 Feb;20(1):112-34. doi: 10.1016/j.media.2014.10.011. Epub 2014 Nov 8.
There have been several recent studies that used sparse representation for fMRI signal analysis and activation detection based on the assumption that each voxel's fMRI signal is linearly composed of sparse components. Previous studies have employed sparse coding to model functional networks in various modalities and scales. These prior contributions inspired the exploration of whether/how sparse representation can be used to identify functional networks in a voxel-wise way and on the whole brain scale. This paper presents a novel, alternative methodology of identifying multiple functional networks via sparse representation of whole-brain task-based fMRI signals. Our basic idea is that all fMRI signals within the whole brain of one subject are aggregated into a big data matrix, which is then factorized into an over-complete dictionary basis matrix and a reference weight matrix via an effective online dictionary learning algorithm. Our extensive experimental results have shown that this novel methodology can uncover multiple functional networks that can be well characterized and interpreted in spatial, temporal and frequency domains based on current brain science knowledge. Importantly, these well-characterized functional network components are quite reproducible in different brains. In general, our methods offer a novel, effective and unified solution to multiple fMRI data analysis tasks including activation detection, de-activation detection, and functional network identification.
最近有几项研究使用稀疏表示进行 fMRI 信号分析和激活检测,其假设是每个体素的 fMRI 信号是由稀疏成分线性组成的。以前的研究已经采用稀疏编码来模拟各种模态和尺度的功能网络。这些先前的贡献激发了对稀疏表示是否可以用于以体素为基础和全脑尺度的方式识别功能网络的探索。本文提出了一种新颖的、替代的方法,通过全脑任务 fMRI 信号的稀疏表示来识别多个功能网络。我们的基本思想是,将一个被试者的全脑内的所有 fMRI 信号聚合到一个大数据矩阵中,然后通过有效的在线字典学习算法将其分解为一个过完备的字典基矩阵和一个参考权重矩阵。我们广泛的实验结果表明,这种新颖的方法可以揭示出多个功能网络,这些网络可以根据当前的脑科学知识在空间、时间和频率域中得到很好的描述和解释。重要的是,这些特征良好的功能网络组件在不同的大脑中具有很好的可重复性。总的来说,我们的方法为包括激活检测、去激活检测和功能网络识别在内的多个 fMRI 数据分析任务提供了一种新颖、有效和统一的解决方案。