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Anatomical Biomarkers for Adolescent Major Depressive Disorder from Diffusion Weighted Imaging using SVM Classifier

机译:使用SVM分类器扩散加权成像的青春期主要抑郁症的解剖学生物标志物

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Adolescent Major Depressive Disorder (MDD) is a common and serious mental illness that could lead to tragic outcomes including chronic adult disability and suicide. In this paper, we explore anatomical features and apply machine learning approaches to identify responsive biomarkers distinguishing MDD patients from healthy subjects. The features of interest include metrics in two categories: a) anatomical connectivity defined by diffusion tensor imaging measurements between a pair of brain regions, and b) topological measurements from anatomical networks. A combination of p-value based filtering and minimum redundancy maximum relevance method is performed to select features for optimal classification accuracy. A leave-one-out cross-validation method is used for the classification performance evaluation. The proposed methodology achieves an improved accuracy of 78%, 90.39% sensitivity, and 79.66% precision for 79 subjects. The most distinguishing features are the betweenness centrality of the right lingual gyrus of the ADC network at 12% sparsity, the participation coefficient of the right lateral occipital sulcus of the ADC network at 22% sparsity, the participation coefficient of the right pars opercularis of the AD network at 16% sparsity, and the participation coefficient of the right lateral orbitofrontal cortex in the ADC network at 10% sparsity. Those network measures reflect the change of connectivity between the regions and their associated anatomical subnetworks.
机译:青少年主要抑郁症(MDD)是一种常见和严重的精神疾病,可能导致包括慢性成人残疾和自杀的悲惨结果。在本文中,我们探讨了解剖学特征,并应用了机器学习方法,以确定区分MDD患者免受健康受试者的响应生物标志物。感兴趣的特征包括两类的指标:a)由一对大脑区域和b)来自解剖网络的一对脑区域和b)拓扑测量之间的扩散张量成像测量来定义的解剖连接。基于p值的滤波和最小冗余最大相关方法的组合进行了选择以选择最佳分类精度的特征。休假交叉验证方法用于分类性能评估。该方法的敏感性提高了78%,灵敏度为78%,敏感度为79.66%的精度。最显着的特征是ADC网络右侧舌回在12%稀疏中介中心,右边的参与系数侧枕叶在22%稀疏,右面睫状opercularis的参与系数的ADC网络的沟广告网络以16%的稀疏性,ADC网络中右侧眶间皮质的参与系数为10%的稀疏性。这些网络措施反映了地区与其相关解剖区之间连接之间的变化。

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