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首页> 外文期刊>Research journal of applied science, engineering and technology >Abnormal Functional Brain Network Metrics for Machine Learning Classifier in Depression Patients Identification
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Abnormal Functional Brain Network Metrics for Machine Learning Classifier in Depression Patients Identification

机译:机器学习分类器在抑郁症患者识别中的异常功能性脑网络指标

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摘要

Brain network is a widely used tool for identifying abnormal topological properties in whole-brain networks which has been applied to neurological disease diagnosis such as Major Depressive Disorder (MDD). But there is not any study showing that abnormal brain network topological metrics can be used in machine learning classification methods for the identification of MDD patients. In order to find an appropriate feature selection method, we hypothesize that MDD disrupts the topological organization of functional brain networks and the abnormal topological metrics could be used as effective features in constructing a classifier. Resting state functional brain networks were constructed for 26 healthy controls and 34 MDD patients by thresholding partial correlation matrices of 90 regions. The topological metrics, including global and local, were calculated using graph theory-based approaches. Non-parametric permutation tests were then used for group comparisons of topological metrics, which were used as classified features in support vector machine algorithm. Result showed that both the MDD and control groups showed small-world architecture in brain functional networks. However, some of the regions exhibited significantly abnormal nodal centralities, including the limbic system, basal ganglia and medial temporal and prefrontal regions. Support vector machine with radial basis kernel function algorithm exhibited the highest average accuracy (86.01%) with 28 features (p<0.05). Overall, the current study suggested that MDD is associated with abnormal functional brain network topological metrics and statistically significant network metrics can be successfully used in classification algorithms as features.
机译:脑网络是一种用于识别全脑网络中异常拓扑特性的广泛使用的工具,该工具已被用于神经系统疾病的诊断,例如重性抑郁症(MDD)。但是,没有任何研究表明异常的大脑网络拓扑指标可以用于机器学习分类方法中以识别MDD患者。为了找到合适的特征选择方法,我们假设MDD破坏了功能性大脑网络的拓扑组织,并且异常的拓扑度量可以用作构建分类器的有效特征。通过阈值90个区域的部分相关矩阵,为26名健康对照和34名MDD患者构建了静止状态功能性大脑网络。使用基于图论的方法计算包括全局和局部在内的拓扑度量。然后,将非参数置换测试用于拓扑指标的组比较,将其用作支持向量机算法中的分类特征。结果表明,MDD组和对照组均在大脑功能网络中显示了小世界结构。然而,一些区域表现出明显的异常节点中心,包括边缘系统,基底神经节以及内侧颞叶和前额叶区域。带有径向基核函数算法的支持向量机表现出最高的平均精度(86.01%),具有28个特征(p <0.05)。总体而言,当前研究表明MDD与异常的功能性大脑网络拓扑指标相关,并且统计上有效的网络指标可以成功地用作分类算法中的特征。

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