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Abnormal Functional Resting-State Networks in ADHD: Graph Theory and Pattern Recognition Analysis of fMRI Data

机译:ADHD中异常的功能性静止状态网络:fMRI数据的图论和模式识别分析

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摘要

The framework of graph theory provides useful tools for investigating the neural substrates of neuropsychiatric disorders. Graph description measures may be useful as predictor variables in classification procedures. Here, we consider several centrality measures as predictor features in a classification algorithm to identify nodes of resting-state networks containing predictive information that can discriminate between typical developing children and patients with attention-deficit/hyperactivity disorder (ADHD). The prediction was based on a support vector machines classifier. The analyses were performed in a multisite and publicly available resting-state fMRI dataset of healthy children and ADHD patients: the ADHD-200 database. Network centrality measures contained little predictive information for the discrimination between ADHD patients and healthy subjects. However, the classification between inattentive and combined ADHD subtypes was more promising, achieving accuracies higher than 65% (balance between sensitivity and specificity) in some sites. Finally, brain regions were ranked according to the amount of discriminant information and the most relevant were mapped. As hypothesized, we found that brain regions in motor, frontoparietal, and default mode networks contained the most predictive information. We concluded that the functional connectivity estimations are strongly dependent on the sample characteristics. Thus different acquisition protocols and clinical heterogeneity decrease the predictive values of the graph descriptors.
机译:图论的框架为研究神经精神疾病的神经基质提供了有用的工具。图描述度量可用作分类过程中的预测变量。在这里,我们将几种中心性度量作为分类算法中的预测器特征,以识别包含可区分典型发育中的儿童和患有注意力不足/多动障碍(ADHD)的患者的预测信息的静止状态网络的节点。该预测基于支持向量机分类器。分析在健康儿童和ADHD患者的多站点,公开可用的静息状态fMRI数据集中进行:ADHD-200数据库。网络集中度测量几乎没有关于多动症患者与健康受试者之间区别的预测信息。但是,注意力不集中和联合注意力缺陷多动障碍亚型之间的分类更有希望,在某些部位的准确率高于65%(敏感性和特异性之间的平衡)。最后,根据判别信息的数量对大脑区域进行排名,并绘制最相关的图。如假设的那样,我们发现运动,额叶和默认模式网络中的大脑区域包含了最具预测性的信息。我们得出的结论是,功能连接性估计很大程度上取决于样本特征。因此,不同的采集协议和临床异质性降低了图描述符的预测值。

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