Machine learning applied to functional magnetic resonance imaging in anxiety disorders

功能磁共振成像 惊恐障碍 特异性恐惧症 心理学 扣带回前部 眶额皮质 焦虑 静息状态功能磁共振成像 默认模式网络 广场恐怖症 神经科学 扁桃形结构 广泛性焦虑症 焦虑症 精神科 认知 前额叶皮质
作者
Sahar Rezaei,Esmaeil Gharepapagh,Fatemeh Rashidi,Giulia Cattarinussi,Hossein Sanjari Moghaddam,Fabio Di Camillo,Giandomenico Schiena,Fabio Sambataro,Paolo Brambilla,Giuseppe Delvecchio
出处
期刊:Journal of Affective Disorders [Elsevier]
卷期号:342: 54-62 被引量:9
标识
DOI:10.1016/j.jad.2023.09.006
摘要

Brain functional abnormalities have been commonly reported in anxiety disorders, including generalized anxiety disorder, social anxiety disorder, panic disorder, agoraphobia, and specific phobias. The role of functional abnormalities in the discrimination of these disorders can be tested with machine learning (ML) techniques. Here, we aim to provide a comprehensive overview of ML studies exploring the potential discriminating role of functional brain alterations identified by functional magnetic resonance imaging (fMRI) in anxiety disorders. We conducted a search on PubMed, Web of Science, and Scopus of ML investigations using fMRI as features in patients with anxiety disorders. A total of 12 studies (resting-state fMRI n = 5, task-based fMRI n = 6, resting-state and task-based fMRI n=1) met our inclusion criteria. Overall, the studies showed that, regardless of the classifiers, alterations in functional connectivity and aberrant neural activation involving the amygdala, anterior cingulate cortex, hippocampus, insula, orbitofrontal cortex, temporal pole, cerebellum, default mode network, dorsal attention network, sensory network, and affective network were able to discriminate patients with anxiety from controls, with accuracies spanning from 36 % to 94 %. The small sample size, different ML approaches and heterogeneity in the selection of regions included in the multivariate pattern analyses limit the conclusions of the present review. ML methods using fMRI as features can distinguish patients with anxiety disorders from healthy controls, indicating that these techniques could be used as a helpful tool for the diagnosis and the development of more targeted treatments for these disorders.
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