Subgraph entropy based network approaches for classifying bipolar disorder from resting-state magnetoencephalography.

IF 2.9 2区 医学 Q2 NEUROSCIENCES
Qi Sun, Shuming Zhong, Tongtong Li, Ziyang Zhao, Shunkai Lai, Yiliang Zhang, Pan Chen, Ying Wang, Yanbin Jia, Zhijun Yao, Bin Hu
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引用次数: 0

Abstract

Currently, bipolar disorder diagnosis is primarily based on clinical interviews. Magnetoencephalography signals reflect changes in the brain's magnetic field induced by neuronal activity. As a result, the combination of magnetoencephalography and network science holds great promise for identifying bipolar disorder biomarkers. However, the existing methods remain limited in capturing the complexity of nodes and their connections within resting-state brain networks, making it difficult to fully reveal underlying pathological mechanisms. In this work, we measured the uncertainty associated with a subgraph, an information-theoretic metric called "subgraph entropy," and used it to identify individuals with bipolar disorder. This method enabled a more accurate characterization of brain network complexity, facilitating the identification of regions closely associated with disease states. The results showed that subgraph entropy features significantly contributed to the classification of bipolar disorder, particularly within the beta frequency band. In addition, two special forms of subgraph entropy, namely node entropy and edge entropy, were examined to identify important brain regions and functional connectivity in bipolar disorder patients across multiple frequency bands. Notably, in the beta frequency band, the method based on edge entropy achieved 0.8462 accuracy, 0.7308 specificity, and 0.9231 sensitivity through leave-one-out cross-validation, effectively distinguishing individuals with bipolar disorder from healthy controls.

基于子图熵的静息状态脑磁图双相情感障碍分类方法。
目前,双相情感障碍的诊断主要是基于临床访谈。脑磁图信号反映了神经元活动引起的大脑磁场的变化。因此,脑磁图和网络科学的结合为识别双相情感障碍的生物标志物提供了巨大的希望。然而,现有的方法在捕获静息状态大脑网络中节点及其连接的复杂性方面仍然有限,因此难以充分揭示潜在的病理机制。在这项工作中,我们测量了与子图相关的不确定性,一种称为“子图熵”的信息理论度量,并用它来识别双相情感障碍患者。这种方法能够更准确地表征大脑网络的复杂性,有助于识别与疾病状态密切相关的区域。结果表明,子图熵特征显著有助于双相情感障碍的分类,特别是在β频带内。此外,研究了两种特殊形式的子图熵,即节点熵和边缘熵,以识别双相情感障碍患者在多个频带上的重要大脑区域和功能连接。值得注意的是,在beta频段,基于边缘熵的方法通过留一交叉验证,准确率为0.8462,特异性为0.7308,灵敏度为0.9231,有效地将双相情感障碍个体与健康对照组区分开来。
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来源期刊
Cerebral cortex
Cerebral cortex 医学-神经科学
CiteScore
6.30
自引率
8.10%
发文量
510
审稿时长
2 months
期刊介绍: Cerebral Cortex publishes papers on the development, organization, plasticity, and function of the cerebral cortex, including the hippocampus. Studies with clear relevance to the cerebral cortex, such as the thalamocortical relationship or cortico-subcortical interactions, are also included. The journal is multidisciplinary and covers the large variety of modern neurobiological and neuropsychological techniques, including anatomy, biochemistry, molecular neurobiology, electrophysiology, behavior, artificial intelligence, and theoretical modeling. In addition to research articles, special features such as brief reviews, book reviews, and commentaries are included.
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