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Classifying Treated vs. Untreated MDD Adolescents from Anatomical Connectivity using Nonlinear SVM

机译:使用非线性SVM从解剖学连通性对已治疗和未治疗的MDD青少年进行分类

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Identification of the treatment-related responders for adolescent Major Depressive Disorder (MDD) is urgently needed to develop effective treatments. In this paper, machine learning based classifiers are used to reveal anatomical features as responders for distinguishing MDD patients who have received treatment from those who never received any treatment. The features are drawn from two sets of measurements: 1) anatomical connectivity defined by diffusion tensor imaging measurements between a pair of brain regions, and 2) topological measurements from anatomical networks. Feature selection was performed based on p-value and minimum redundancy maximum relevance (mRMR) method to achieve improved classification accuracy. The classification performance is evaluated with a leave-one-out cross-validation method using 37 treated and 15 untreated subjects. The proposed methodology achieves 73% accuracy, 100% specificity, and 100% precision for 52 subjects. The most distinguishing features are the strength of the right hippocampus of the mean diffusivity (MD) network at 18% density and of the track-count (TR) network, the participation coefficient of the left middle temporal gyrus of the radial diffusivity (RD) network at 20% density, the axial diffusivity (AD) connectivity between right middle temporal gyrus and right supramarginal gyrus, the betweenness centrality of the right hippocampus of the TR network at 11% density, the apparent diffusion coefficient (ADC) connectivity between the left pars opercularis and the left rostral anterior cingulate cortex, the clustering coefficient of the middle anterior corpus callosum of the TR network at 11% density, and the AD connectivity between the left pars opercularis and the left rostral anterior cingulate cortex.
机译:为了开发有效的治疗方法,迫切需要确定与青少年重性抑郁症(MDD)有关的治疗反应者。在本文中,基于机器学习的分类器被用作揭示解剖特征,作为区分已接受治疗的MDD患者和从未接受过治疗的MDD患者的反应者。这些特征来自两组测量值:1)由一对大脑区域之间的扩散张量成像测量值定义的解剖学连通性,以及2)来自解剖学网络的拓扑学测量值。基于p值和最小冗余最大相关性(mRMR)方法进行特征选择,以提高分类精度。使用留一法交叉验证方法对37位接受治疗的受试者和15位未经治疗的受试者进行分类,以评估其分类性能。所提出的方法可以对52位受试者实现73%的准确性,100%的特异性和100%的准确性。最显着的特征是密度为18%时平均弥散性(MD)网络的右海马的强度和径迹(TR)网络的径向弥散性(RD)的左中间颞回的参与系数密度为20%的神经网络,右中颞回和右上颌上回之间的轴向扩散(AD)连通性,密度为11%的TR网络的右海马的中间中心性,左侧之间的表观扩散系数(ADC)连通性pars opercularis和左喙前扣带回皮层,TR网络中前体的聚集系数(密度为11%)以及左par opercularis和左喙扣带前皮层之间的AD连通性。

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