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首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >Abnormal hubs of white matter networks in the frontal-parieto circuit contribute to depression discrimination via pattern classification
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Abnormal hubs of white matter networks in the frontal-parieto circuit contribute to depression discrimination via pattern classification

机译:额顶回路中白质网络的异常中心通过模式分类促进了抑郁症的辨别

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Previous studies had explored the diagnostic and prognostic value of the structural neuroimaging data of MDD and treated the whole brain voxels, the fractional anisotropy and the structural connectivity as classification features. To our best knowledge, no study examined the potential diagnostic value of the hubs of anatomical brain networks in MDD. The purpose of the current study was to provide an exploratory examination of the potential diagnostic and prognostic values of hubs of white matter brain networks in MDD discrimination and the corresponding impaired hub pattern via a multi-pattern analysis. We constructed white matter brain networks from 29 depressions and 30 healthy controls based on diffusion tensor imaging data, calculated nodal measures and identified hubs. Using these measures as features, two types of feature architectures were established, one only included hubs (HUB) and the other contained both hubs and non hubs. The support vector machine classifiers with Gaussian radial basis kernel were used after the feature selection. Moreover, the relative contribution of the features was estimated by means of the consensus features. Our results presented that the hubs (including the bilateral dorsolateral part of superior frontal gyrus, the left middle frontal gyrus, the bilateral middle temporal gyrus, and the bilateral inferior temporal gyrus) played an important role in distinguishing the depressions from healthy controls with the best accuracy of 83.05%. Moreover, most of the HUB consensus features located in the frontal-parieto circuit. These findings provided evidence that the hubs could be served as valuable potential diagnostic measure for MDD, and the hub-concentrated lesion distribution of MDD was primarily anchored within the frontal-parieto circuit. (C) 2014 Elsevier Inc. All rights reserved.
机译:先前的研究已经探索了MDD的结构神经影像数据的诊断和预后价值,并将全脑体素,分数各向异性和结构连通性作为分类特征。据我们所知,没有研究检查MDD中解剖脑网络枢纽的潜在诊断价值。本研究的目的是通过多模式分析对白质脑网络中枢在MDD鉴别中的潜在诊断和预后价值以及相应的中枢模式受损提供探索性研究。我们基于扩散张量成像数据,29个抑郁症和30个健康对照建立了白质脑网络,计算了节度并确定了枢纽。使用这些度量作为特征,建立了两种类型的特征体系结构,一种仅包含集线器(HUB),另一种既包含集线器又包含非集线器。特征选择后,使用具有高斯径向基核的支持向量机分类器。此外,这些特征的相对贡献是通过共识特征来估计的。我们的研究结果表明,枢纽(包括上额回的双侧背外侧部分,左额中回,左颞中回和双边颞下回)在区分抑郁症和健康对照方面发挥了重要作用,最好准确度为83.05%。此外,大多数HUB共识功能都位于额顶电路中。这些发现提供了证据,表明轮毂可以作为有价值的潜在的MDD诊断手段,并且MDD的轮毂集中病变分布主要锚定在额顶回路中。 (C)2014 Elsevier Inc.保留所有权利。

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