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Diffuse Optical Tomography Enhanced by Clustered Sparsity for Functional Brain Imaging

机译:聚类稀疏增强的功能性脑成像的弥散光学层析成像。

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摘要

Diffuse optical tomography (DOT) is a noninvasive technique which measures hemodynamic changes in the tissue with near infrared light, which has been increasingly used to study brain functions. Due to the nature of light propagation in the tissue, the reconstruction problem is severely ill-posed. For linearized DOT problems, sparsity regularization has achieved promising results over conventional Tikhonov regularization in recent experimental research. As extensions to standard sparsity, it is widely known that structured sparsity based methods are often superior in terms of reconstruction accuracy, when the data follows some structures. In this paper, we exploit the structured sparsity of diffuse optical images. Based on the functional specialization of the brain, it is observed that the in vivo absorption changes caused by a specific brain function would be clustered in certain region(s) and not randomly distributed. Thus, a new algorithm is proposed for this clustered sparsity reconstruction (CSR). Results of numerical simulations and phantom experiments have demonstrated the superiority of the proposed method over the state-of-the-art methods. An example from human in vivo measurements further confirmed the advantages of the proposed CSR method.
机译:漫射光学层析成像(DOT)是一种非侵入性技术,可通过近红外光测量组织中的血液动力学变化,近来越来越多的研究脑功能。由于光在组织中传播的性质,重建问题非常严重。对于线性化的DOT问题,在最近的实验研究中,稀疏正则化比常规的Tikhonov正则化取得了可喜的结果。作为标准稀疏性的扩展,众所周知,当数据遵循某些结构时,基于结构稀疏性的方法通常在重建精度方面更为优越。在本文中,我们利用了漫射光学图像的结构稀疏性。基于大脑的功能专长,可以观察到,由特定大脑功能引起的体内吸收变化将聚集在某些区域,而不是随机分布。因此,提出了一种新的算法用于该簇稀疏重建(CSR)。数值模拟和幻影实验的结果表明,该方法优于最新方法。来自人体体内测量的例子进一步证实了所提出的CSR方法的优点。

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