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Research on Functional Brain Network Metrics for Depression Patients Automatic Identification

机译:抑郁症患者功能脑网络指标研究自动识别

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摘要

Nowadays, Brain network as a means of emerging brain disease research has been fully recognized which is applied to the neurological diseases, such as major depressive disorder (MDD). It also can detect the exception of the whole brain network topological. But there is no evidence to prove that abnormal brain network topology metrics can be an effective feature in the classification model to distinguish the healthy control and MDD. So, we hypothesize the abnormal brain network topology metrics can be used as an valid classification feature. Resting state functional brain networks were constructed for 26 healthy controls and 34 MDD patients by thresholding partial correlation matrices of 90 regions. According to the theory-based approaches, the global and local metrics were calculated. Non-parametric permutation tests were then used for group comparisons of topological metrics, which were used as classified features in support vector machine algorithm. The current study demonstrate that MDD is associated with abnormal function brain network topological metrics and statistically significance network metrics can be successfully used for feature selection in classification algorithms.
机译:如今,脑网络作为一种新兴脑病研究的手段,已得到充分认可,其应用于神经疾病,例如主要抑郁症(MDD)。它还可以检测到整个脑网络拓扑的例外。但没有证据证明,异常脑网络拓扑度量可以是分类模型中的有效特征,以区分健康控制和MDD。因此,我们假设异常大脑网络拓扑度量可以用作有效的分类功能。通过阈值化90个区域的部分相关矩阵来构建休息状态功能脑网络和34名MDD患者。根据基于理论的方法,计算了全局和地方指标。然后使用非参数置换测试进行拓扑度量的组比较,其用作支持向量机算法中的分类特征。目前的研究表明,MDD与异常函数脑网络拓扑度量相关联,并且可以成功地用于分类算法中的特征选择的统计学意义的网络度量。

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