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Dictionary learning based on sparse representations for resting-state functional MRI data analysis

机译:基于稀疏表示的字典学习用于静态功能性MRI数据分析

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Functional Magnetic Resonance Imaging (fMRI) has been valuable to the current understanding of brain function and pre-operative evaluation of patients. In the recent years, the technique has been increasingly applied to the cases when the subject is at rest, also referred to as the resting-state fMRI. Resting-state fMRI measures spontaneous fluctuations in the blood oxygen level-dependent (BOLD) signal to investigate the functional topology of the brain. It is possible to identify various anatomically distinct areas of the brain that demonstrate synchronous BOLD fluctuations at rest, also referred to as the brain functional networks. Conventional approach to extract these functional dynamics is the datadriven Independent Component Analysis (ICA) method. In this work, we propose to utilize sparse representations for identifying functional connectivity networks. Specifically, fMRI signals are decomposed into morphological components which have sparse spatial overlap. Allowing sparse spatial overlap between components is a more physically plausible assumption to the statistical independence assumption of the conventional ICA method. The dictionary is learnt from the data using a K-SVD algorithm. Experimental results show that the proposed MCA-KSVD method can be used as an alternative to the conventional ICA method.
机译:功能磁共振成像(fMRI)对于当前对脑功能的了解和对患者的术前评估非常有价值。近年来,该技术已越来越多地应用于对象处于静止状态的情况,也称为静止状态功能磁共振成像。静止状态功能磁共振成像测量血氧水平依赖性(BOLD)信号的自发波动,以研究大脑的功能拓扑。可以识别大脑的各种解剖学不同区域,这些区域表现出静止时同步的BOLD波动,也称为大脑功能网络。提取这些功能动力学的常规方法是数据驱动的独立组件分析(ICA)方法。在这项工作中,我们建议利用稀疏表示来识别功能连接网络。具体地,fMRI信号被分解成具有稀疏的空间重叠的形态成分。与常规ICA方法的统计独立性假设相比,允许组件之间的稀疏空间重叠在物理上更为合理。使用K-SVD算法从数据中学习字典。实验结果表明,所提出的MCA-KSVD方法可以替代传统的ICA方法。

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