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Combining Disrupted and Discriminative Topological Properties of Functional Connectivity Networks as Neuroimaging Biomarkers for Accurate Diagnosis of Early Tourette Syndrome Children

机译:结合功能连接网络的中断和判别拓扑特性作为神经影像生物标记物,以准确诊断早期抽动秽语综合征儿童

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摘要

Tourette syndrome (TS) is a childhood-onset neurological disorder. To date, accurate TS diagnosis remains challenging due to its varied clinical expressions and dependency on qualitative description of symptoms. Therefore, identifying accurate and objective neuroimaging biomarkers may help improve early TS diagnosis. As resting-state functional MRI (rs-fMRI) has been demonstrated as a promising neuroimaging tool for TS diagnosis, previous rs-fMRI studies on TS revealed functional connectivity (FC) changes in a few local brain networks or circuits. However, no study explored the disrupted topological organization of whole-brain FC networks in TS children. Meanwhile, very few studies have examined brain functional networks using machine-learning methods for diagnostics. In this study, we construct individual whole-brain, ROI-level FC networks for 29 drug-naive TS children and 37 healthy children. Then, we use graph theory analysis to investigate the topological disruptions between groups. The identified disrupted regions in FC networks not only involved the sensorimotor association regions but also the visual, default-mode and language areas, all highly related to TS. Furthermore, we propose a novel classification framework based on similarity network fusion (SNF) algorithm, to both diagnose an individual subject and explore the discriminative power of FC network topological properties in distinguishing between TS children and controls. We achieved a high accuracy of 88.79%, and the involved discriminative regions for classification were also highly related to TS. Together, both the disrupted topological properties between groups and the discriminative topological features for classification may be considered as comprehensive and helpful neuroimaging biomarkers for assisting the clinical TS diagnosis.
机译:抽动秽语综合征(TS)是儿童期神经系统疾病。迄今为止,由于其多样的临床表达以及对症状定性描述的依赖,准确的TS诊断仍然具有挑战性。因此,鉴定准确和客观的神经影像生物标记物可能有助于改善早期TS诊断。由于已经证明静息状态功能性MRI(rs-fMRI)是用于TS诊断的有前途的神经影像工具,以前的TS rs-fMRI研究表明在某些局部脑网络或电路中功能连接(FC)发生了变化。然而,没有研究探讨TS儿童中全脑FC网络的拓扑结构破坏。同时,很少有研究使用机器学习方法进行诊断来检查大脑功能网络。在这项研究中,我们为29名未吸毒的TS儿童和37名健康儿童构建了单独的全脑,ROI级FC网络。然后,我们使用图论分析来研究组之间的拓扑破坏。在FC网络中确定的中断区域不仅涉及感觉运动关联区域,还涉及视觉,默认模式和语言区域,这些区域都与TS高度相关。此外,我们提出了一种基于相似性网络融合(SNF)算法的新颖分类框架,既可以诊断单个受试者,又可以探索FC网络拓扑属性在区分TS儿童和控制者方面的判别力。我们达到了88.79%的高精度,并且所涉及的区分区域也与TS高度相关。在一起,群体之间的拓扑特性被破坏和分类的可辨别拓扑特征都可以被认为是有助于临床TS诊断的全面而有用的神经影像生物标记。

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