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Pattern Classification of Large-Scale Functional Brain Networks: Identification of Informative Neuroimaging Markers for Epilepsy

机译:大型功能性脑网络的模式分类:癫痫的信息性神经影像标记物的鉴定

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摘要

The accurate prediction of general neuropsychiatric disorders, on an individual basis, using resting-state functional magnetic resonance imaging (fMRI) is a challenging task of great clinical significance. Despite the progress to chart the differences between the healthy controls and patients at the group level, the pattern classification of functional brain networks across individuals is still less developed. In this paper we identify two novel neuroimaging measures that prove to be strongly predictive neuroimaging markers in pattern classification between healthy controls and general epileptic patients. These measures characterize two important aspects of the functional brain network in a quantitative manner: (i) coordinated operation among spatially distributed brain regions, and (ii) the asymmetry of bilaterally homologous brain regions, in terms of their global patterns of functional connectivity. This second measure offers a unique understanding of brain asymmetry at the network level, and, to the best of our knowledge, has not been previously used in pattern classification of functional brain networks. Using modern pattern-recognition approaches like sparse regression and support vector machine, we have achieved a cross-validated classification accuracy of 83.9% (specificity: 82.5%; sensitivity: 85%) across individuals from a large dataset consisting of 180 healthy controls and epileptic patients. We identified significantly changed functional pathways and subnetworks in epileptic patients that underlie the pathophysiological mechanism of the impaired cognitive functions. Specifically, we find that the asymmetry of brain operation for epileptic patients is markedly enhanced in temporal lobe and limbic system, in comparison with healthy individuals. The present study indicates that with specifically designed informative neuroimaging markers, resting-state fMRI can serve as a most promising tool for clinical diagnosis, and also shed light onto the physiology behind complex neuropsychiatric disorders. The systematic approaches we present here are expected to have wider applications in general neuropsychiatric disorders.
机译:使用静息状态功能磁共振成像(fMRI)单独准确预测一般神经精神疾病是一项具有重大临床意义的挑战性任务。尽管在组水平上绘制健康对照组和患者之间差异的图表方面取得了进展,但是跨个体的功能性大脑网络的模式分类仍然不发达。在本文中,我们确定了两种新的神经影像学方法,它们被证明是健康对照与一般癫痫患者之间模式分类中的强预测性神经影像学标记。这些措施以定量的方式表征了功能性大脑网络的两个重要方面:(i)在空间分布的大脑区域之间的协调操作,以及(ii)就其功能连通性的整体模式而言,双侧同源大脑区域的不对称性。第二项措施提供了在网络级别上对大脑不对称性的独特理解,据我们所知,以前从未在功能性大脑网络的模式分类中使用过。使用稀疏回归和支持向量机等现代模式识别方法,我们从包含180个健康对照和癫痫病患者的大型数据集中获得了交叉验证的分类准确性,为83.9%(特异性:82.5%;敏感性:85%)耐心。我们发现癫痫患者的功能通路和子网显着改变,这是认知功能受损的病理生理机制的基础。具体而言,我们发现与健康个体相比,癫痫患者的大脑操作的不对称性在颞叶和边缘系统中明显增强。本研究表明,通过专门设计的信息性神经影像学标记,静止状态功能磁共振成像可以作为临床诊断中最有前途的工具,也可以揭示复杂的神经精神疾病背后的生理学。我们在这里介绍的系统方法有望在一般的神经精神疾病中得到更广泛的应用。

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