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Probabilistic Source Separation on Resting-State fMRI and Its Use for Early MCI Identification

机译:静态fMRI的概率源分离及其在早期MCI识别中的应用

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In analyzing rs-fMRI, blind source separation has been studied extensively and various machine-learning techniques have been proposed in the literature. However, to our best knowledge, most of the existing methods do not explicitly separate noise components that naturally corrupt the observed BOLD signals, thus hindering from the understanding of underlying functional mechanisms in a human brain. In this paper, we formulate the problem of latent source separation in a probabilistic manner, where we explicitly separate the observed signals into a true source signal and a noise component. As for the inference of the latent source distribution with respect to an input regional mean signal, we use a stochastic variational Bayesian inference and implement it in a neural network framework. Further, in order for identification of a subject with early mild cognitive impairment (eMCI) rs-fMRI, we also propose to use the relations of the inferred source signals as features, i.e., potential imaging-biomarkers. We presented the validity of the proposed methods by conducting experiments on the publicly available ADNI2 dataset and comparing with the existing methods.
机译:在分析rs-fMRI中,对盲源分离进行了广泛的研究,并且在文献中提出了各种机器学习技术。然而,据我们所知,大多数现有方法并未明确地分离自然破坏观察到的BOLD信号的噪声成分,从而阻碍了对人脑潜在功能机制的理解。在本文中,我们以概率方式阐述了潜在源分离的问题,其中我们将观测到的信号明确地分离为真实的源信号和噪声分量。关于相对于输入区域均值信号的潜在源分布的推断,我们使用随机变分贝叶斯推断并将其实现在神经网络框架中。此外,为了鉴定具有早期轻度认知障碍(eMCI)rs-fMRI的受试者,我们还建议使用推断的源信号的关系作为特征,即潜在的成像生物标记。我们通过在可公开获得的ADNI2数据集上进行实验并与现有方法进行比较,展示了所提出方法的有效性。

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