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A Novel Sparse Dictionary Learning Separation (SDLS) Model With Adaptive Dictionary Mutual Incoherence Constraint for fMRI Data Analysis

机译:fMRI数据分析的具有自适应字典互不相关约束的新型稀疏字典学习分离(SDLS)模型

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Objective: Many studies have shown that the independence assumption in the widely-used ICAs is not adaptive enough for brain functional networks (BFN) detection due to the complex brain hemodynamics, functional integration, artifacts embedded in functional magnetic resonance imaging (fMRI) data, etc. In this paper, inspired by sparse coding behavior of human brain, we propose an effective BFNs detection model, called sparse dictionary learning separation (SDLS). Methods: In the SDLS, facing the dilemma of huge training samples in sparse learning, an efficient spatial-domain data reduction algorithm was first designed to sharply alleviate the training cost and suppress noise. Then, an improved K singular value decomposition was proposed to speed up the correct convergence of the dictionary learning process. Furthermore, considering the variant degrees of functional integration and sparsity of BFNs across different fMRI datasets, a minimum description length-based framework was proposed to formulate two key factors, i.e., the dictionary mutual incoherence level and sparsity level, self-adaptively resulting in effective temporal dynamics model. Finally, a least-square-based functional network reconstruction was presented to extract the final BFNs. Results: The simulated and real data experiments demonstrated that SDLS had the superiority in the spatial/temporal sources identification, and stronger spatial robustness against the variant smoothing kernels, in contrast to ICAs. Conclusion: SDLS was a novel data-driven BFN separation model, which had an overall consideration of multiple factors, e.g., huge samples dilemma, artifacts removal, and variant degrees of functional integration and sparsity of BFNs. Significance: SDLS as an extension to current fMRI analysis methods was a promising model, which declared the advantage of sparsity.
机译:目的:许多研究表明,由于复杂的大脑血液动力学,功能整合,功能磁共振成像(fMRI)数据中嵌入的伪像,因此,广泛使用的ICA中的独立性假设不足以适应大脑功能网络(BFN)的检测,在本文中,受人脑稀疏编码行为的启发,我们提出了一种有效的BFNs检测模型,称为稀疏字典学习分离(SDLS)。方法:在SDLS中,面对稀疏学习中大量训练样本的困境,首先设计了一种有效的空间域数据约简算法,以大幅降低训练成本并抑制噪声。然后,提出了一种改进的K奇异值分解,以加快字典学习过程的正确收敛。此外,考虑到不同fMRI数据集之间BFN的功能集成度和稀疏度的变化程度,提出了一个基于最小描述长度的框架来制定两个关键因素,即字典互不连贯度和稀疏度,自适应地导致了有效时间动力学模型。最后,提出了基于最小二乘的功能网络重构,以提取最终的BFN。结果:模拟和真实数据实验表明,与ICA相比,SDLS在时空源识别方面具有优势,并且对变种平滑核具有更强的空间鲁棒性。结论:SDLS是一种新型的数据驱动的BFN分离模型,它综合考虑了多个因素,例如巨大的样品困境,伪影去除以及BFN的功能集成度和稀疏度的不同程度。启示:SDLS是当前fMRI分析方法的扩展,是一种很有前途的模型,它宣告了稀疏性的优势。

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