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Hierarchical Bayesian model for diffuse optical tomography of human brains

机译:人脑弥散光学层析成像的多层贝叶斯模型

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Diffuse optical tomography (DOT) is emerging technology to improve spatial resolution of conventional multichannel near infrared spectroscopy (NIRS). Although the scalp blood flow heavily contaminates the cerebral blood flow, all of previously proposed DOT algorithms fail to provide a way to segregate these two components. Here we propose a hierarchical Bayesian model and DOT reconstruction algorithm to segregate the cerebral blood flow from the scalp blood flow. The key idea of our method is that the different prior distributions for the scalp and cerebral blood flow are assumed based on observations that spatial distribution of scalp blood flow is broad whereas that of the cerebral blood flow is focal. Our DOT results were compared with fMRI data using human experimental data.
机译:漫射光学层析成像(DOT)是新兴技术,旨在提高传统多通道近红外光谱(NIRS)的空间分辨率。尽管头皮血流严重污染了脑部血流,但是所有先前提出的DOT算法都无法提供分离这两个成分的方法。在这里,我们提出了一种分层贝叶斯模型和DOT重建算法,以将脑部血流与头皮血流隔离开来。我们方法的关键思想是,基于观察到的头皮和脑血流的空间分布是宽泛的而脑部血流的空间分布是局灶性的观察结果,假定了先验的头皮和脑血流的分布是不同的。使用人体实验数据将我们的DOT结果与fMRI数据进行了比较。

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