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Multivariate Pattern Classification of Primary Insomnia Using Three Types of Functional Connectivity Features

机译:使用三种类型的功能连接特征对原发性失眠进行多变量模式分类

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>Objective: To explore whether or not functional connectivity (FC) could be used as a potential biomarker for classification of primary insomnia (PI) at the individual level by using multivariate pattern analysis (MVPA).>Methods: Thirty-eight drug-naive patients with PI, and 44 healthy controls (HC) underwent resting-state functional MR imaging. Voxel-wise functional connectivity strength (FCS), large-scale functional connectivity (large-scale FC) and regional homogeneity (ReHo) were calculated for each participant. We used support vector machine (SVM) with the three types of metrics as features separately to classify patients from healthy controls. Then we evaluated its classification performances. Finally, FC metrics with significant high classification performance were compared between the two groups and were correlated with clinical characteristics, i.e., Insomnia Severity Index (ISI), Pittsburgh Sleep Quality Index (PSQI), Self-rating Anxiety Scale (SAS), Self-rating Depression Scale (SDS) in the patients' group.>Results: The best classifier could reach up to an accuracy of 81.5%, with a sensitivity of 84.9%, specificity of 79.1%, and area under the receiver operating characteristic curve (AUC) of 83.0% (all P < 0.001). Right anterior insular cortex (BA48), left precuneus (BA7), and left middle frontal gyrus (BA8) showed high classification weights. In addition, the right anterior insular cortex (BA48) and left middle frontal gyrus (BA8) were the overlapping regions between MVPA and group comparison. Correlation analysis showed that FCS in left middle frontal gyrus and head of right caudate nucleus were correlated with PSQI and SDS, respectively.>Conclusion: The current study suggests abnormal FCS in right anterior insular cortex (BA48) and left middle frontal gyrus (BA8) might serve as a potential neuromarkers for PI.
机译:>目的:通过使用多变量模式分析(MVPA)探索功能连接性(FC)是否可以用作个体一级原发性失眠(PI)分类的潜在生物标记。>方法: 38名单纯药物治疗的PI患者和44名健康对照(HC)接受了静息状态功能性MR成像。计算每个参与者的三维像素功能连接强度(FCS),大规模功能连接(大规模FC)和区域同质性(ReHo)。我们将支持向量机(SVM)与三种类型的指标作为特征分别用于对健康对照者进行分类。然后,我们评估了其分类性能。最后,将两组具有显着高分类性能的FC指标进行比较,并将其与临床特征相关联,例如失眠严重度指数(ISI),匹兹堡睡眠质量指数(PSQI),自评焦虑量表(SAS),自我评估>结果:最好的分类器可以达到81.5%的准确度,灵敏度为84.9%,特异性为79.1%,并且在接收器工作特性曲线(AUC)为83.0%(所有P <0.001)。右前岛突皮质(BA48),左前突(BA7)和左中额回(BA8)表现出较高的分类权重。此外,右前岛叶皮层(BA48)和左中额回(BA8)是MVPA和组比较之间的重叠区域。相关分析表明,左中额回和右尾状核头部的FCS分别与PSQI和SDS相关。>结论:目前的研究提示右前岛突皮质(BA48)和左中额回(BA8)可能是PI的潜在神经标记。

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