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基于最小生成树分析的多特征融合 fMRI 分类方法。

fMRI classification method with multiple feature fusion based on minimum spanning tree analysis.

机构信息

College of Computer Science and Technology, Taiyuan University of Technology, Taiyuan, PR China; National Laboratory of Pattern Recognition, Institute of Automation, The Chinese Academy of Sciences, Beijing, PR China.

College of Computer Science and Technology, Taiyuan University of Technology, Taiyuan, PR China.

出版信息

Psychiatry Res Neuroimaging. 2018 Jul 30;277:14-27. doi: 10.1016/j.pscychresns.2018.05.001. Epub 2018 May 22.

Abstract

Resting state functional brain networks have been widely studied in brain disease research. Conventional network analysis methods are hampered by differences in network size, density and normalization. Minimum spanning tree (MST) analysis has been recently suggested to ameliorate these limitations. Moreover, common MST analysis methods involve calculating quantifiable attributes and selecting these attributes as features in the classification. However, a disadvantage of these methods is that information about the topology of the network is not fully considered, limiting further improvement of classification performance. To address this issue, we propose a novel method combining brain region and subgraph features for classification, utilizing two feature types to quantify two properties of the network. We experimentally validated our proposed method using a major depressive disorder (MDD) patient dataset. The results indicated that MSTs of MDD patients were more similar to random networks and exhibited significant differences in certain regions involved in the limbic-cortical-striatal-pallidal-thalamic (LCSPT) circuit, which is considered to be a major pathological circuit of depression. Moreover, we demonstrated that this novel classification method could effectively improve classification accuracy and provide better interpretability. Overall, the current study demonstrated that different forms of feature representation provide complementary information.

摘要

静息态功能脑网络在脑疾病研究中得到了广泛的研究。传统的网络分析方法受到网络大小、密度和归一化的差异的限制。最小生成树(MST)分析最近被建议来改善这些限制。此外,常见的 MST 分析方法涉及计算可量化的属性,并选择这些属性作为分类的特征。然而,这些方法的一个缺点是没有充分考虑网络的拓扑结构信息,限制了分类性能的进一步提高。为了解决这个问题,我们提出了一种新的方法,结合脑区和子图特征进行分类,利用两种特征类型来量化网络的两个属性。我们使用一个重度抑郁症(MDD)患者数据集对我们提出的方法进行了实验验证。结果表明,MDD 患者的 MST 与随机网络更为相似,并且在涉及边缘-皮质-纹状体-苍白球-丘脑(LCSPT)回路的某些区域存在显著差异,LCSPT 回路被认为是抑郁的主要病理回路。此外,我们证明了这种新的分类方法可以有效地提高分类准确性,并提供更好的可解释性。总的来说,本研究表明不同形式的特征表示提供了互补的信息。

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