融合高阶和低阶有效连接网络进行 MCI 分类。

Yang Li, Jingyu Liu, Ke Li, Pew-Thian Yap, Minjeong Kim, Chong-Yaw Wee, Dinggang Shen
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引用次数: 0

摘要

研究发现,从静息态 fMRI 数据中提取的功能连接网络是从健康老人中识别轻度认知障碍患者的有效生物标志物。然而,普通的功能连接网络本质上是一种低阶网络,其假设是大脑在整个扫描期间是静止的,忽略了脑区对相关性之间的时间变化。为了克服这一缺陷,我们提出了一种新型的高阶网络,以更准确地描述脑区之间的时间变化关系。具体来说,我们首先根据一种新颖的稀疏回归算法估算了低阶有效连接网络,而不是常用的无向成对皮尔逊相关系数。通过类似的方法,我们从低阶连通性中构建了高阶有效连通性网络,以纳入脑区之间的信号流信息。最后,我们利用两棵决策树将低阶和高阶有效连通性网络结合起来进行 MCI 分类,实验结果表明,与传统的无定向低阶和高阶功能连通性网络相比,以及与低阶和高阶有效连通性网络分别使用时相比,所提出的方法更具优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Fusion of High-Order and Low-Order Effective Connectivity Networks for MCI Classification.

Functional connectivity network derived from resting-state fMRI data has been found as effective biomarkers for identifying patients with mild cognitive impairment from healthy elderly. However, the ordinary functional connectivity network is essentially a low-order network with the assumption that the brain is static during the entire scanning period, ignoring the temporal variations among correlations derived from brain region pairs. To overcome this weakness, we proposed a new type of high-order network to more accurately describe the relationship of temporal variations among brain regions. Specifically, instead of the commonly used undirected pairwise Pearson's correlation coefficient, we first estimated the low-order effective connectivity network based on a novel sparse regression algorithm. By using the similar approach, we then constructed the high-order effective connectivity network from low-order connectivity to incorporate signal flow information among the brain regions. We finally combined the low-order and the high-order effective connectivity networks using two decision trees for MCI classification and experimental results obtained demonstrate the superiority of the proposed method over the conventional undirected low-order and high-order functional connectivity networks, as well as the low-order and high-order effective connectivity networks when they were used separately.

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