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Decoding Unattended Fearful Faces with Whole-Brain Correlations: An Approach to Identify Condition-Dependent Large-Scale Functional Connectivity

机译:解码全脑关联的无人值守的恐惧面孔:一种识别条件相关的大规模功能连接的方法

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Processing of unattended threat-related stimuli, such as fearful faces, has been previously examined using group functional magnetic resonance (fMRI) approaches. However, the identification of features of brain activity containing sufficient information to decode, or “brain-read”, unattended (implicit) fear perception remains an active research goal. Here we test the hypothesis that patterns of large-scale functional connectivity (FC) decode the emotional expression of implicitly perceived faces within single individuals using training data from separate subjects. fMRI and a blocked design were used to acquire BOLD signals during implicit (task-unrelated) presentation of fearful and neutral faces. A pattern classifier (linear kernel Support Vector Machine, or SVM) with linear filter feature selection used pair-wise FC as features to predict the emotional expression of implicitly presented faces. We plotted classification accuracy vs. number of top N selected features and observed that significantly higher than chance accuracies (between 90–100%) were achieved with 15–40 features. During fearful face presentation, the most informative and positively modulated FC was between angular gyrus and hippocampus, while the greatest overall contributing region was the thalamus, with positively modulated connections to bilateral middle temporal gyrus and insula. Other FCs that predicted fear included superior-occipital and parietal regions, cerebellum and prefrontal cortex. By comparison, patterns of spatial activity (as opposed to interactivity) were relatively uninformative in decoding implicit fear. These findings indicate that whole-brain patterns of interactivity are a sensitive and informative signature of unattended fearful emotion processing. At the same time, we demonstrate and propose a sensitive and exploratory approach for the identification of large-scale, condition-dependent FC. In contrast to model-based, group approaches, the current approach does not discount the multivariate, joint responses of multiple functional connections and is not hampered by signal loss and the need for multiple comparisons correction.
机译:以前已经使用组功能磁共振(fMRI)方法检查了无人值守的与威胁相关的刺激,例如可怕的面孔的处理。然而,识别大脑活动的特征包含足够的信息以解码或“脑读”,无人看管(隐性)恐惧感仍然是一个积极的研究目标。在这里,我们测试了以下假设:大规模功能连接(FC)模式使用来自不同主题的训练数据来解码单个人内隐式感知的面孔的情感表达。在恐惧和中性面孔的隐式(与任务无关)呈现过程中,使用了fMRI和受阻设计来获取BOLD信号。具有线性过滤器特征选择的模式分类器(线性内核支持向量机或SVM)使用成对FC作为特征来预测隐式呈现的面孔的情感表达。我们绘制了分类精度与前N个选定特征的数量的关系图,发现15-40个特征的准确率大大高于偶然性(90-100%)。在令人恐惧的面部表情呈现过程中,信息量最大且正向调节的FC位于角回和海马之间,而最大的总体贡献区域是丘脑,与双侧颞中回和岛状连接的正向调节连接。预测恐惧的其他功能障碍包括枕上和顶叶区域,小脑和前额叶皮层。相比之下,空间活动的模式(与交互作用相对)在解码隐含恐惧方面相对没有信息。这些发现表明,全脑互动模式是无人值守的恐惧情绪处理的敏感和有益的特征。同时,我们演示并提出了一种敏感且探索性的方法来识别大规模的,与条件相关的FC。与基于模型的组方法相比,当前方法不会降低多功能连接的多变量联合响应,并且不会因信号丢失和需要进行多个比较校正而受到阻碍。

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