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Integration of a novel attribute and classical topology metrics of hyper-networks for automatic diagnosis of Major depressive disorder

机译:一种新颖的属性和经典拓扑度量的超网络,用于自动抑制紊乱的自动诊断

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Conventional hyper-network coefficients ignore the weighted hyper-edge information which could be vital in researching the specificity of brain disease. Functional hyper-networks for 64 healthy controls (HC) and 56 patients with major depressive disorder (MDD) were constructed using the least absolute shrinkage and selection operator (Lasso). Not only the classical topology metrics but also a novel hyper-edge weight (HEW) attribute were extracted as features to promote the functional-based auto-diagnosis accuracy of MDD. We compared the categorization performance of each hyper-network coefficient. A multi-feature ensemble model was applied to fuse different kinds of features. We obtained 82.15 % accuracy with the classical hyper-network clustering coefficient (HCC) and 84.08 % accuracy with the HEW attribute on the MDD dataset. The performance was further improved to 89.24% by combining all the properties of the hyper-networks. The multi-feature ensemble model combining different hyper-network coefficients provides new insights into the automatic diagnosis with diverse information of MDD.
机译:传统的超网络系数忽略了对研究脑疾病的特异性至关重要的加权超边缘信息。使用最小的绝对收缩和选择操作员(套索)构建64例健康对照(HC)和56名重大抑郁症(MDD)的功能性超网络。不仅是古典拓扑度量,而且提取了一种新的超边级重量(HEW)属性作为特征,以促进MDD的基于功能的自动诊断精度。我们比较了每个超网络系数的分类性能。应用多功能集合模型熔断不同类型的功能。我们在MDD数据集上的HEW属性获得了82.15%的准确性和84.08%的准确性。通过组合超网络的所有属性,该性能进一步提高到89.24%。组合不同的超网络系数的多特征集合模型为具有MDD的不同信息的自动诊断提供了新的洞察。

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