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首页> 外文期刊>NeuroImage >Discriminant analysis of functional connectivity patterns on Grassmann manifold.
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Discriminant analysis of functional connectivity patterns on Grassmann manifold.

机译:格拉斯曼流形上的功能连通性模式的判别分析。

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The functional brain networks, extracted from fMRI images using independent component analysis, have been demonstrated informative for distinguishing brain states of cognitive function and brain disorders. Rather than analyzing each network encoded by a spatial independent component separately, we propose a novel algorithm for discriminant analysis of functional brain networks jointly at an individual level. The functional brain networks of each individual are used as bases for a linear subspace, referred to as a functional connectivity pattern, which facilitates a comprehensive characterization of fMRI data. The functional connectivity patterns of different individuals are analyzed on the Grassmann manifold by adopting a principal angle based Riemannian distance. In conjunction with a support vector machine classifier, a forward component selection technique is proposed to select independent components for constructing the most discriminative functional connectivity pattern. The discriminant analysis method has been applied to an fMRI based schizophrenia study with 31 schizophrenia patients and 31 healthy individuals. The experimental results demonstrate that the proposed method not only achieves a promising classification performance for distinguishing schizophrenia patients from healthy controls, but also identifies discriminative functional brain networks that are informative for schizophrenia diagnosis.
机译:使用独立成分分析从fMRI图像中提取的功能性大脑网络已被证明可用于区分认知功能和脑部疾病的大脑状态。而不是单独分析由空间独立组件编码的每个网络,我们提出了一种用于在单个级别上共同进行功能性脑网络判别分析的新颖算法。每个人的功能性大脑网络都用作线性子空间(称为功能连接模式)的基础,这有助于对fMRI数据进行全面表征。通过基于主角的黎曼距离,在格拉斯曼流形上分析不同个体的功能连通性模式。结合支持向量机分类器,提出了一种前向组件选择技术,以选择独立的组件以构建最具区分性的功能连接模式。判别分析方法已应用于基于fMRI的精神分裂症研究,涉及31位精神分裂症患者和31位健康个体。实验结果表明,所提出的方法不仅在区分精神分裂症患者和健康对照方面获得了有希望的分类性能,而且还识别了有助于精神分裂症诊断的区分性功能性大脑网络。

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