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半多模态融合分层特征约简框架下的重度抑郁症预测性脑网络

Predictive brain networks for major depression in a semi-multimodal fusion hierarchical feature reduction framework.

作者信息

Yang Jie, Yin Yingying, Zhang Zuping, Long Jun, Dong Jian, Zhang Yuqun, Xu Zhi, Li Lei, Liu Jie, Yuan Yonggui

机构信息

School of Information Science and Engineering, Central South University, Changsha, Hunan, PR China.

Department of Psychosomatics and Psychiatry, ZhongDa Hospital, School of Medicine, Southeast University, Nanjing, PR China; Institute of Psychosomatics, Medical School of Southeast University, Nanjing, PR China.

出版信息

Neurosci Lett. 2018 Feb 5;665:163-169. doi: 10.1016/j.neulet.2017.12.009. Epub 2017 Dec 5.

Abstract

Major depressive disorder (MDD) is characterized by dysregulation of distributed structural and functional networks. It is now recognized that structural and functional networks are related at multiple temporal scales. The recent emergence of multimodal fusion methods has made it possible to comprehensively and systematically investigate brain networks and thereby provide essential information for influencing disease diagnosis and prognosis. However, such investigations are hampered by the inconsistent dimensionality features between structural and functional networks. Thus, a semi-multimodal fusion hierarchical feature reduction framework is proposed. Feature reduction is a vital procedure in classification that can be used to eliminate irrelevant and redundant information and thereby improve the accuracy of disease diagnosis. Our proposed framework primarily consists of two steps. The first step considers the connection distances in both structural and functional networks between MDD and healthy control (HC) groups. By adding a constraint based on sparsity regularization, the second step fully utilizes the inter-relationship between the two modalities. However, in contrast to conventional multi-modality multi-task methods, the structural networks were considered to play only a subsidiary role in feature reduction and were not included in the following classification. The proposed method achieved a classification accuracy, specificity, sensitivity, and area under the curve of 84.91%, 88.6%, 81.29%, and 0.91, respectively. Moreover, the frontal-limbic system contributed the most to disease diagnosis. Importantly, by taking full advantage of the complementary information from multimodal neuroimaging data, the selected consensus connections may be highly reliable biomarkers of MDD.

摘要

重度抑郁症(MDD)的特征是分布式结构和功能网络失调。现在人们认识到,结构和功能网络在多个时间尺度上是相关的。多模态融合方法的最新出现使得全面、系统地研究脑网络成为可能,从而为疾病诊断和预后提供重要信息。然而,此类研究受到结构和功能网络之间维度特征不一致的阻碍。因此,提出了一种半多模态融合分层特征约简框架。特征约简是分类中的一个重要步骤,可用于消除无关和冗余信息,从而提高疾病诊断的准确性。我们提出的框架主要由两个步骤组成。第一步考虑MDD组和健康对照组(HC)在结构和功能网络中的连接距离。通过添加基于稀疏正则化的约束,第二步充分利用了两种模态之间的相互关系。然而,与传统的多模态多任务方法不同,结构网络在特征约简中仅被视为起辅助作用,且未包含在后续分类中。所提出的方法分别实现了84.91%、88.6%、81.29%的分类准确率、特异性、敏感性以及0.91的曲线下面积。此外,额-边缘系统对疾病诊断的贡献最大。重要的是,通过充分利用多模态神经影像数据中的互补信息,所选的一致性连接可能是MDD高度可靠的生物标志物。

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