Alessandro Scarano, Ascensión Fumero, Teresa Baggio, Francisco Rivero, Rosario J Marrero, Teresa Olivares, Wenceslao Peñate, Yolanda Álvarez-Pérez, Juan Manuel Bethencourt, Alessandro Grecucci
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引用次数: 0
摘要
特定恐惧症是一种焦虑症,其特征是对特定刺激产生强烈恐惧。在特异性恐惧症中,小动物恐惧症(SAP)是神经科学文献中研究较少的一种特殊病症。此外,以往有关这一主题的少数研究大多采用单变量分析,样本有限且不平衡,导致结果不一致。为了克服这些局限性,并描述 SAP 的神经基础,本研究旨在利用一种被称为二元支持向量机的机器学习方法,开发一种基于灰质特征的 SAP 患者分类模型。此外,研究还评估了特定结构宏网络(如默认模式网络、突出网络、执行网络和情感网络)在区分恐惧症受试者和对照组方面的贡献。为此,我们对 32 名 SAP 患者和 90 名匹配的健康对照者进行了测试。在全脑水平上,我们发现了一个重要的预测模型,包括与情绪调节、认知控制和感觉整合相关的大脑结构,如小脑、颞极、额叶皮层、颞叶、杏仁核和丘脑。相反,在对宏观网络进行分析时,我们发现默认网络、情感网络以及部分中央执行网络和感觉运动网络在对 SAP 患者进行分类时明显优于其他网络。总之,本研究拓展了有关 SAP 神经基础的知识,提出了新的研究方向和潜在的诊断策略。
The phobic brain: Morphometric features correctly classify individuals with small animal phobia.
Specific phobia represents an anxiety disorder category characterized by intense fear generated by specific stimuli. Among specific phobias, small animal phobia (SAP) denotes a particular condition that has been poorly investigated in the neuroscientific literature. Moreover, the few previous studies on this topic have mostly employed univariate analyses, with limited and unbalanced samples, leading to inconsistent results. To overcome these limitations, and to characterize the neural underpinnings of SAP, this study aims to develop a classification model of individuals with SAP based on gray matter features, by using a machine learning method known as the binary support vector machine. Moreover, the contribution of specific structural macro-networks, such as the default mode, the salience, the executive, and the affective networks, in separating phobic subjects from controls was assessed. Thirty-two subjects with SAP and 90 matched healthy controls were tested to this aim. At a whole-brain level, we found a significant predictive model including brain structures related to emotional regulation, cognitive control, and sensory integration, such as the cerebellum, the temporal pole, the frontal cortex, temporal lobes, the amygdala and the thalamus. Instead, when considering macro-networks analysis, we found the Default, the Affective, and partially the Central Executive and the Sensorimotor networks, to significantly outperform the other networks in classifying SAP individuals. In conclusion, this study expands knowledge about the neural basis of SAP, proposing new research directions and potential diagnostic strategies.
期刊介绍:
Founded in 1964, Psychophysiology is the most established journal in the world specifically dedicated to the dissemination of psychophysiological science. The journal continues to play a key role in advancing human neuroscience in its many forms and methodologies (including central and peripheral measures), covering research on the interrelationships between the physiological and psychological aspects of brain and behavior. Typically, studies published in Psychophysiology include psychological independent variables and noninvasive physiological dependent variables (hemodynamic, optical, and electromagnetic brain imaging and/or peripheral measures such as respiratory sinus arrhythmia, electromyography, pupillography, and many others). The majority of studies published in the journal involve human participants, but work using animal models of such phenomena is occasionally published. Psychophysiology welcomes submissions on new theoretical, empirical, and methodological advances in: cognitive, affective, clinical and social neuroscience, psychopathology and psychiatry, health science and behavioral medicine, and biomedical engineering. The journal publishes theoretical papers, evaluative reviews of literature, empirical papers, and methodological papers, with submissions welcome from scientists in any fields mentioned above.