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An improved Bayesian tensor regularization and sampling algorithm to track neuronal fiber pathways in the language circuit

机译:改进的贝叶斯张量正则化和采样算法以跟踪语言电路中的神经元纤维通路

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摘要

Purpose: The purpose of this work is to design a neuronal fiber tracking algorithm, which will be more suitable for reconstruction of fibers associated with functionally important regions in the human brain. The functional activations in the brain normally occur in the gray matter regions. Hence the fibers bordering these regions are weakly myelinated, resulting in poor performance of conventional tractography methods to trace the fiber links between them. A lower fractional anisotropy in this region makes it even difficult to track the fibers in the presence of noise. In this work, the authors focused on a stochastic approach to reconstruct these fiber pathways based on a Bayesian regularization framework.
机译:目的:这项工作的目的是设计一种神经元纤维跟踪算法,该算法将更适合于重建与人脑中功能重要区域相关的纤维。大脑中的功能激活通常发生在灰质区域。因此,与这些区域接壤的纤维几乎没有髓鞘,导致传统的放射线照相法在追踪它们之间的纤维连接方面表现不佳。在该区域中较低的分数各向异性使得在存在噪声的情况下甚至难以追踪光纤。在这项工作中,作者集中于基于贝叶斯正则化框架的随机方法来重建这些纤维路径。

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