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Classifying social anxiety disorder using multivoxel pattern analyses of brain function and structure

机译:使用大脑功能和结构的多体素模式分析对社交焦虑症进行分类

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摘要

Functional neuroimaging of social anxiety disorder (SAD) support altered neural activation to threat-provoking stimuli focally in the fear network, while structural differences are distributed over the temporal and frontal cortices as well as limbic structures. Previous neuroimaging studies have investigated the brain at the voxel level using mass-univariate methods which do not enable detection of more complex patterns of activity and structural alterations that may separate SAD from healthy individuals. Support vector machine (SVM) is a supervised machine learning method that capitalizes on brain activation and structural patterns to classify individuals. The aim of this study was to investigate if it is possible to discriminate SAD patients (n = 14) from healthy controls (n = 12) using SVM based on (1) functional magnetic resonance imaging during fearful face processing and (2) regional gray matter volume. Whole brain and region of interest (fear network) SVM analyses were performed for both modalities. For functional scans, significant classifications were obtained both at whole brain level and when restricting the analysis to the fear network while gray matter SVM analyses correctly classified participants only when using the whole brain search volume. These results support that SAD is characterized by aberrant neural activation to affective stimuli in the fear network, while disorder-related alterations in regional gray matter volume are more diffusely distributed over the whole brain. SVM may thus be useful for identifying imaging biomarkers of SAD.
机译:社交焦虑症(SAD)的功能性神经影像学支持在恐惧网络中将神经激活改变为激发威胁的刺激,而结构差异则分布在颞叶和额叶皮质以及边缘结构上。以前的神经影像学研究已经使用质量单变量方法在体素水平上研究了大脑,这种方法无法检测到可能使SAD与健康个体分离的更复杂的活动模式和结构改变。支持向量机(SVM)是一种受监督的机器学习方法,它利用大脑的激活作用和结构模式对个人进行分类。这项研究的目的是研究基于(1)可怕的面部处理过程中的功能磁共振成像和(2)局部灰色,是否有可能使用SVM将SAD患者(n = 14)与健康对照(n = 12)进行区分物质量。两种模式均进行了全脑和感兴趣区域(恐惧网络)的SVM分析。对于功能性扫描,只有在使用全脑搜索量时,在全脑水平以及将分析限制在恐惧网络中时才能获得显着分类,而灰质SVM仅能正确分类参与者。这些结果表明,SAD的特征在于恐惧网络中对情感刺激的异常神经激活,而与区域灰质体积相关的与疾病相关的变化则更分散地分布在整个大脑中。因此,SVM可用于识别SAD的成像生物标记。

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