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Classification of social anhedonia using temporal and spatial network features from a social cognition fMRI task

机译:社会和空间网络特征的社会厌氧区分类来自社会认知FMRI任务

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Abstract Previous studies have suggested that the degree of social anhedonia reflects the vulnerability for developing schizophrenia. However, only few studies have investigated how functional network changes are related to social anhedonia. The aim of this fMRI study was to classify subjects according to their degree of social anhedonia using supervised machine learning. More specifically, we extracted both spatial and temporal network features during a social cognition task from 70 subjects, and used support vector machines for classification. Since impairment in social cognition is well established in schizophrenia‐spectrum disorders, the subjects performed a comic strip task designed to specifically probe theory of mind (ToM) and empathy processing. Features representing both temporal (time series) and network dynamics were extracted using task activation maps, seed region analysis, independent component analysis (ICA), and a newly developed multi‐subject archetypal analysis (MSAA), which here aimed to further bridge aspects of both seed region analysis and decomposition by incorporating a spotlight approach.We found significant classification of subjects with elevated levels of social anhedonia when using the times series extracted using MSAA, indicating that temporal dynamics carry important information for classification of social anhedonia. Interestingly, we found that the same time series yielded the highest classification performance in a task classification of the ToM condition. Finally, the spatial network corresponding to that time series included both prefrontal and temporal‐parietal regions as well as insula activity, which previously have been related schizotypy and the development of schizophrenia.
机译:摘要以前的研究表明,社会安德尼亚的程度反映了发展精神分裂症的脆弱性。但是,只有很少的研究已经调查了功能性网络变化如何与社会安德尼亚有关。这种FMRI研究的目的是根据他们使用受监督机器学习的社会安德尼亚的学位对受试者进行分类。更具体地,我们在70个科目的社交认知任务期间提取了空间和时间网络特征,并使用了用于分类的支持向量机。由于社会认知的损害是精神分裂症歧视障碍的损害,因此受试者进行了一个漫画表任务,旨在专门探测心灵理论(汤姆)和同理化处理。用任务激活图,种子区域分析,独立分量分析(ICA)提取代表时间(时间序列)和网络动态的特征,以及新开发的多对象原型分析(MSAA),其目的是进一步桥接方面通过结合聚光方法来分析和分解。我们发现使用MSAA提取的时序系列时,在使用时序序列时发现具有高度的社会Anhedonia的受试者分类,表明时间动态为社会anhedonia分类提供重要信息。有趣的是,我们发现同一时间序列在Tom条件的任务分类中产生了最高的分类性能。最后,对应于该时间序列的空间网络包括前额叶和颞间区域以及insula活性,其先前已经相关的酶和精神分裂症的发展。

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